Datasets:
AIAT
/

Modalities:
Text
Formats:
csv
Size:
< 1K
Libraries:
Datasets
Dask
License:
thai_instruction
stringlengths
22
82
eng_instruction
stringlengths
33
93
table
stringclasses
1 value
sql
float64
pandas
stringlengths
13
130
real_table
stringclasses
1 value
Ticket ID สำหรับบันทึกแรกคือ 1 หรือไม่
Is the Ticket ID for the first record 1?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Ticket_ID'].iloc[0] == 1
customer
ลูกค้าที่มีอายุสูงสุดมากกว่า 70 ปีใช่หรือไม่
Is the highest customer age greater than 70?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Customer_Age'].max() > 70
customer
คะแนนความพึงพอใจของลูกค้าต่ำสุดน้อยกว่า 2 หรือไม่
Is the lowest customer satisfaction rating less than 2?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Customer_Satisfaction_Rating'].min() < 2
customer
ลูกค้าท่านใดมีสถานะตั๋ว 'ปิด' แล้วบ้าง
Does any customer have 'Closed' ticket status?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Ticket_Status'].str.contains('Closed').any()
customer
จำนวนตั๋วทั้งหมดน้อยกว่า 20 ใบใช่หรือไม่
Is the total number of tickets less than 20?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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len(data) < 20
customer
มีลูกค้าชื่อ 'เจสสิก้า ริออส' มั้ย
Is there a customer named 'Jessica Rios'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Name'].str.contains('Jessica Rios').any()
customer
'การสอบถามการเรียกเก็บเงิน' เป็นตั๋วประเภทหนึ่งหรือไม่
Is 'Billing inquiry' a type of ticket?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Ticket_Type'].str.contains('Billing inquiry').any()
customer
'อีเมล' เป็นช่องทางตั๋วสำหรับบันทึกที่ห้าหรือไม่
Is 'Email' a ticket channel for the fifth record?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Ticket_Channel'].iloc[4] == 'Email'
customer
เป็นเวลาตอบกลับครั้งแรกสำหรับบันทึกครั้งแรกในปี 2023 หรือไม่
Is the first response time for the first record in 2023?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['First_Response_Time'].iloc[0].year == 2023
customer
ตั๋วใด ๆ ที่ถูกทำเครื่องหมายว่า 'สำคัญ' หรือไม่
Is any ticket marked as 'Critical'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Ticket_Priority'].str.contains('Critical').any()
customer
มีลูกค้าอายุเกิน 50 บ้างไหม
Are there any customers older than 50?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Age'] > 50
customer
มีตั๋วจากลูกค้าผู้หญิงหรือเปล่า
Is any ticket from a female customer?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Gender'].str.contains('Female').any()
customer
มีการซื้อใดๆ ในปี 2021 หรือไม่
Has any purchase been made in 2021?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Date_of_Purchase'].dt.year == 2021
customer
มีสินค้าที่ซื้อชื่อ 'GoPro Hero' หรือไม่
Is there any product purchased named 'GoPro Hero'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Product_Purchased'].str.contains('GoPro Hero').any()
customer
บันทึกล่าสุดมีคะแนนความพึงพอใจของลูกค้าสูงกว่า 4 หรือไม่
Does the last record have a customer satisfaction rating above 4?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Satisfaction_Rating'].iloc[-1] > 4
customer
ตั๋วใดๆ เกี่ยวข้องกับปัญหาทางเทคนิคหรือไม่
Does any ticket involve a technical issue?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Ticket_Type'].str.contains('Technical issue').any()
customer
อายุเฉลี่ยของลูกค้าต่ำกว่า 30 ปีหรือไม่
Is the average customer age below 30?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Age'].mean() < 30
customer
มีลูกค้าที่ได้รับอีเมลจาก 'example.com' หรือไม่
Is there any customer with an email from 'example.com'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Customer_Email'].str.contains('example.com').any()
customer
ตั๋วทั้งหมดเปิดหรือปิดแล้ว
Are all tickets either open or closed?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
(data['Ticket_Status'] == 'Open') | (data['Ticket_Status'] == 'Closed')
customer
ลำดับความสำคัญของตั๋วใบที่สามต่ำหรือไม่
Is the third ticket's priority low?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Ticket_Priority'].iloc[2] == 'Low'
customer
มีตั๋วที่ส่งทางอีเมลหรือไม่
Are there any tickets submitted via email?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Ticket_Channel'].str.contains('Email').any()
customer
คะแนนความพึงพอใจของลูกค้าสำหรับตั๋วใบแรกน้อยกว่า 5 หรือไม่
Is the customer satisfaction rating for the first ticket less than 5?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Satisfaction_Rating'].iloc[0] < 5
customer
มีการลงมติสำหรับตั๋วใบแรกหรือไม่
Has the resolution for the first ticket been provided?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
pd.notna(data['Resolution'].iloc[0])
customer
มีลูกค้าคนไหนอายุต่ำกว่า 25 ปี บ้างมั้ยคะ
Is there any customer under 25 years old?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Age'] < 25
customer
ชุดข้อมูลมีตั๋วมากกว่า 10 ใบหรือไม่
Are there more than 10 tickets in the dataset?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
len(data) > 10
customer
ตั๋วใด ๆ มีคะแนนความพึงพอใจอยู่ที่ 5 หรือไม่
Is any ticket rated with a satisfaction rating of 5?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Satisfaction_Rating'] == 5
customer
มีตั๋วที่มีปัญหาที่ยังไม่ได้รับการแก้ไขหรือไม่
Are there any tickets with unresolved issues?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Ticket_Status'].str.contains('Pending').any()
customer
มีตั๋วใดบ้างที่ได้รับการแก้ไขภายในหนึ่งวันนับจากการตอบกลับครั้งแรก
Has any ticket been resolved within a day of its first response?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
(data['Time_to_Resolution'] - data['First_Response_Time']).dt.days < 1
customer
ตั๋วใดๆ มีสถานะลำดับความสำคัญสูงหรือไม่
Do any tickets have a high priority status?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Ticket_Priority'].str.contains('High').any()
customer
มีผลิตภัณฑ์ที่ซื้อเรียกว่า 'Microsoft Office' หรือไม่
Is there a product purchased called 'Microsoft Office'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Product_Purchased'].str.contains('Microsoft Office').any()
customer
เวลาสูงสุดในการแก้ไขคือมากกว่า 10 วันหรือไม่
Is the maximum time to resolution over 10 days?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
(data['Time_to_Resolution'] - data['First_Response_Time']).dt.days.max() > 10
customer
ลูกค้าท่านใดให้คะแนนความพึงพอใจ 1 บ้าง
Has any customer given a satisfaction rating of 1?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Customer_Satisfaction_Rating'] == 1
customer
มีตั๋วเกี่ยวกับ 'ข้อมูลสูญหาย' หรือไม่
Is there a ticket concerning 'Data loss'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Ticket_Subject'].str.contains('Data loss').any()
customer
ชุดข้อมูลมีตั๋วจากปี 2022 หรือไม่
Does the dataset contain any tickets from 2022?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Date_of_Purchase'].dt.year == 2022
customer
มีบันทึกของลูกค้าชื่อ 'อเล็กซานเดอร์ คาร์โรลล์' หรือไม่
Is there a record of a customer named 'Alexander Carroll'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Name'].str.contains('Alexander Carroll').any()
customer
ตั๋วใบแรกส่งผ่านโซเชียลมีเดียหรือไม่
Is the first ticket submitted through social media?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Ticket_Channel'].iloc[0] == 'Social media'
customer
มีตั๋วที่มีลำดับความสำคัญที่มีป้ายกำกับว่า 'ปานกลาง' หรือไม่
Is there a ticket with a priority labeled as 'Moderate'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Ticket_Priority'].str.contains('Moderate').any()
customer
คะแนนความพึงพอใจของลูกค้าเฉลี่ยมากกว่า 3 หรือไม่
Does the customer satisfaction rating average more than 3?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Satisfaction_Rating'].mean() > 3
customer
ตั๋วทั้งหมดเป็นของลูกค้าผู้ชายหรือเปล่า
Are all tickets from male customers?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Gender'].unique() == ['Male']
customer
มีตั๋วใดบ้างที่ได้รับการกำหนดสถานะลำดับความสำคัญเป็น 'ด่วน' หรือไม่
Has any ticket been assigned a priority status of 'Urgent'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Ticket_Priority'].str.contains('Urgent').any()
customer
มีการส่งตั๋วในเดือนมิถุนายน 2023 หรือไม่
Is there a ticket submitted in June 2023?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['First_Response_Time'].dt.month == 6 and data['First_Response_Time'].dt.year == 2023
customer
ตั๋วใดบ้างที่มีเวลาในการแก้ไขปัญหาเกิน 48 ชั่วโมง
Do any tickets have a resolution time over 48 hours?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
(data['Time_to_Resolution'] - data['First_Response_Time']).dt.total_seconds() / 3600 > 48
customer
Ticket ID 10 เชื่อมโยงกับลูกค้าที่มีอายุต่ำกว่า 30 ปีหรือไม่
Is the Ticket ID 10 associated with a customer under 30?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data.loc[data['Ticket_ID'] == 10, 'Customer_Age'].iloc[0] < 30
customer
มีลูกค้ารายใดที่ซื้อผลิตภัณฑ์มากกว่าหนึ่งรายการหรือไม่
Has any customer purchased more than one product?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Customer_Email'].duplicated().any()
customer
มีตั๋วที่ยังไม่ได้รับการแก้ไขจากปี 2020 หรือไม่
Are there any unresolved tickets from 2020?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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(data['Date_of_Purchase'].dt.year == 2020) & (data['Ticket_Status'].str.contains('Pending').any())
customer
ตั๋วประเภท 'ปัญหาทางเทคนิค' ที่พบบ่อยที่สุดใช่หรือไม่
Is the most common ticket type 'Technical issue'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Ticket_Type'].mode()[0] == 'Technical issue'
customer
มีตั๋วจากลูกค้าอายุ 40 พอดีหรือไม่
Is there a ticket from a customer aged exactly 40?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Age'] == 40
customer
ลูกค้ารายใดมีคะแนนความพึงพอใจต่ำกว่า 3 หรือไม่
Does any customer have a satisfaction rating below 3?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Satisfaction_Rating'] < 3
customer
มีตั๋วใดบ้างที่มีการแก้ไขเกี่ยวกับ 'การเข้าถึงบัญชี' หรือไม่
Are there any tickets with a resolution involving 'account access'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Resolution'].str.contains('account access', case=False, na=False).any()
customer
มีลูกค้าชื่อ 'Christina Dillon' ที่มีตั๋วสอบถามเรื่องการเรียกเก็บเงินหรือไม่
Is there a customer named 'Christina Dillon' with a billing inquiry ticket?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
(data['Customer_Name'] == 'Christina Dillon') & (data['Ticket_Type'] == 'Billing inquiry')
customer
มีตั๋วจากลูกค้าที่มีอายุมากกว่า 80 ปีหรือไม่
Is there any ticket from a customer over 80 years old?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Age'] > 80
customer
ลูกค้ารายแรกชื่อ 'มาริสา โอเบรียน' หรือเปล่าคะ
Is the first customer named 'Marisa Obrien'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Name'].iloc[0] == 'Marisa Obrien'
customer
ตั๋วใดบ้างที่เกี่ยวข้องกับ 'ความเข้ากันได้ของอุปกรณ์ต่อพ่วง' หรือไม่
Are any tickets related to 'Peripheral compatibility'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Ticket_Subject'].str.contains('Peripheral compatibility').any()
customer
มีผลิตภัณฑ์ใดบ้างที่ซื้อชื่อ 'Dell XPS'
Is any product purchased named 'Dell XPS'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Product_Purchased'].str.contains('Dell XPS').any()
customer
ตั๋วใด ๆ ได้รับการแก้ไขภายใน 5 ชั่วโมงหลังจากการตอบกลับครั้งแรกหรือไม่
Has any ticket been resolved within 5 hours of its first response?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
(data['Time_to_Resolution'] - data['First_Response_Time']).dt.total_seconds() / 3600 < 5
customer
มีตั๋วจากลูกค้าที่มีโดเมนอีเมล '@example.org' หรือไม่
Is there a ticket from a customer with the email domain '@example.org'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Email'].str.contains('@example.org').any()
customer
มีตั๋ว 15 ใบในชุดข้อมูลหรือไม่
Are there exactly 15 tickets in the dataset?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
len(data) == 15
customer
มีลูกค้ารายใดจากชุดข้อมูลที่ได้รับคะแนนความพึงพอใจตั้งแต่ 4 ขึ้นไป
Has any customer from the dataset given a satisfaction rating of 4 or higher?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Satisfaction_Rating'] >= 4
customer
มีตั๋วที่มีลำดับความสำคัญ 'ต่ำ' ที่ถูกปิดแล้วหรือไม่
Is there a ticket with a 'Low' priority that has been closed?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
((data['Ticket_Priority'] == 'Low') & (data['Ticket_Status'] == 'Closed')).any()
customer
ชุดข้อมูลรวมตั๋วใดๆ ที่เพิ่มขึ้นในเดือนมกราคมหรือไม่
Does the dataset include any tickets raised in January?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Date_of_Purchase'].dt.month == 1
customer
อายุของลูกค้าทุกคนในชุดข้อมูลมากกว่า 20 ปีหรือไม่
Are all customer ages in the dataset above 20?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Age'].min() > 20
customer
มีการยื่นตั๋วใด ๆ ภายใต้ 'การเข้าถึงบัญชี' หรือไม่
Has any ticket been filed under 'Account access'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Ticket_Subject'].str.contains('Account access').any()
customer
ตั๋วมีเวลาตอบกลับครั้งแรกในช่วงสุดสัปดาห์หรือไม่
Is any ticket's first response time on a weekend?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['First_Response_Time'].dt.weekday >= 5
customer
มีตั๋วที่มีสถานะลำดับความสำคัญสูงที่ยังคงเปิดอยู่หรือไม่
Is there a ticket with a high priority status that is still open?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
((data['Ticket_Priority'] == 'High') & (data['Ticket_Status'].str.contains('Open'))).any()
customer
มีตั๋วใดบ้างที่ถูกทำเครื่องหมายว่า 'ด่วน' โดยมีคะแนนความพึงพอใจต่ำกว่า 2 หรือไม่
Has any ticket been marked as 'Urgent' with a satisfaction rating below 2?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
((data['Ticket_Priority'] == 'Urgent') & (data['Customer_Satisfaction_Rating'] < 2)).any()
customer
มีตั๋วใดบ้างที่มีเวลาแก้ไขเป็นหนึ่งวันพอดี
Are there any tickets with a resolution time of exactly one day?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
(data['Time_to_Resolution'] - data['First_Response_Time']).dt.days == 1
customer
มีบันทึกเกี่ยวกับผลิตภัณฑ์ที่ลูกค้ารายอื่นซื้อมากกว่า 10 ครั้งหรือไม่
Is there any record of a product purchased more than 10 times by different customers?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Product_Purchased'].value_counts().max() > 10
customer
เวลาเฉลี่ยในการแก้ปัญหาสำหรับตั๋วเกิน 12 ชั่วโมงหรือไม่
Is the average resolution time for tickets over 12 hours?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
(data['Time_to_Resolution'] - data['First_Response_Time']).dt.total_seconds().mean() / 3600 > 12
customer
หัวข้อตั๋ว 'การตั้งค่าผลิตภัณฑ์' เกี่ยวข้องกับลำดับความสำคัญสูงหรือไม่
Is the ticket subject 'Product setup' associated with a high priority?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
(data[data['Ticket_Subject'] == 'Product setup']['Ticket_Priority'] == 'High').any()
customer
ตั๋วใด ๆ จาก 'โซเชียลมีเดีย' ถูกทำเครื่องหมายว่าได้รับการแก้ไขแล้วหรือไม่
Has any ticket from 'Social media' been marked as resolved?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
((data['Ticket_Channel'] == 'Social media') & (data['Ticket_Status'] == 'Closed')).any()
customer
มีลูกค้าชื่อ 'John Doe' ในชุดข้อมูลหรือไม่
Is there a customer named 'John Doe' in the dataset?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Customer_Name'].str.contains('John Doe').any()
customer
มีการออกตั๋วในวันคริสต์มาส (25 ธ.ค. ) หรือไม่
Has any ticket been issued on Christmas Day (Dec 25)?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Date_of_Purchase'].dt.month == 12 and data['Date_of_Purchase'].dt.day == 25
customer
มีตั๋วที่เปิดเกิน 30 วันไหม
Is there any ticket that has been open for more than 30 days?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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(data['Ticket_Status'] == 'Open') & ((pd.Timestamp.now() - data['Date_of_Purchase']).dt.days > 30)
customer
ตั๋วทั้งหมดมาจากลูกค้าที่มีอายุ 30 ปีขึ้นไปหรือไม่
Do all tickets come from customers aged 30 or older?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Customer_Age'].min() >= 30
customer
มีตั๋วใดบ้างที่ถูกปิดภายใน 24 ชั่วโมงหลังจากเปิดหรือไม่
Has any ticket been closed within 24 hours of its opening?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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(data['Ticket_Status'] == 'Closed') & ((data['Time_to_Resolution'] - data['First_Response_Time']).dt.total_seconds() / 3600 <= 24)
customer
วิธีแก้ปัญหาที่พบบ่อยที่สุดเกี่ยวข้องกับ 'ปัญหาบัญชี' หรือไม่
Is the most common resolution related to 'account issues'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Resolution'].str.contains('account').value_counts().idxmax()
customer
มีตั๋วจากลูกค้านามสกุล 'Smith' หรือไม่
Are there any tickets from a customer with the last name 'Smith'?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Customer_Name'].str.contains('Smith').any()
customer
ลูกค้ารายใดให้คะแนนความพึงพอใจเป็นศูนย์หรือไม่
Has any customer given a satisfaction rating of zero?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Customer_Satisfaction_Rating'] == 0
customer
มีตั๋วจากลูกค้าที่มีอายุต่ำกว่า 18 ปีหรือไม่
Are there any tickets from customers under the age of 18?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
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data['Customer_Age'] < 18
customer
ชุดข้อมูลมีตั๋วจากทุกเดือนของปีหรือไม่
Does the dataset contain tickets from every month of the year?
this is a detail of this database it have 3 suffix 1.start with ###, This is a name of column 2.start with Description:, This is a Description of column 3.start with Data Type:, This is a Data Type of column """ ###Ticket_ID Description: A unique identifier for each ticket. Data Type: numerical; ##Customer_Email Description: The email address of the customer (Domain name - @example.com is intentional for user data privacy concern). Data Type: Text; ###Customer_Age Description: The age of the customer. Data Type: numeric; ###Customer_Gender Description: The gender of the customer. Data Type: Categorical; ###Product_Purchased 
Description: The tech product purchased by the customer. Data Type: Text; ###Date_of_Purchase Description: The date when the product was purchased. Data Type: Date; ###Ticket_Type Description: The type of ticket (e.g., technical issue, billing inquiry, product inquiry). Data Type: Categorical; ###Ticket_Subject Description: The subject/topic of the ticket. Data Type: Categorical; ###Ticket_Description Description: The description of the customer's issue or inquiry. Ticket_Status: The status of the ticket (e.g., open, closed, pending customer response). Data Type: Text; ###Resolution Description: The resolution or solution provided for closed tickets. Data Type: Text; ###Ticket_Priority Description: The priority level assigned to the ticket (e.g., low, medium, high, critical). Data Type: Categorical; ###Ticket_Channel Description: The channel through which the ticket was raised (e.g., email, phone, chat, social media). Data Type: Categorical; ###First_Response_Time Description:The time taken to provide the first response to the customer. Data Type: Date; ###Time_to_Resolution Description: The time taken to resolve the ticket. Data Type: Date; ###Customer_Satisfaction_Rating Description: The customer's satisfaction rating for closed tickets (on a scale of 1 to 5). Data Type: Numeric; ###
null
data['Date_of_Purchase'].dt.month.nunique() == 12
customer
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