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import asyncio
from fastapi import FastAPI
from fastapi.middleware.cors import CORSMiddleware
import requests
import pandas as pd
import json
import os,datetime
import pandas as pd
from sklearn.model_selection import train_test_split, GridSearchCV
from sklearn.preprocessing import LabelEncoder
from sklearn.utils import resample
from xgboost import XGBClassifier
from sklearn.metrics import accuracy_score, classification_report
from joblib import dump, load
import numpy as np
try: from pip._internal.operations import freeze
except ImportError: # pip < 10.0
from pip.operations import freeze
pkgs = freeze.freeze()
for pkg in pkgs: print(pkg)
app = FastAPI()
app.add_middleware(
CORSMiddleware,
allow_origins=["*"],
allow_credentials=True,
allow_methods=["*"],
allow_headers=["*"],
)
def train_the_model():
data = pd.read_csv("trainer_data.csv")
print(data["customer_name"].count())
data = pd.read_csv("trainer_data_balanced.csv")
print(data["customer_name"].count())
# Select columns
selected_columns = ['customer_name', 'customer_address', 'customer_phone_no',
'weight','cod','pickup_address','client_number','destination_city',
'status_name']
# Handling missing values
#data_filled = data[selected_columns].fillna('Missing')
data_filled = data[selected_columns].dropna()
# Encoding categorical variables
encoders = {col: LabelEncoder() for col in selected_columns if data_filled[col].dtype == 'object'}
for col, encoder in encoders.items():
data_filled[col] = encoder.fit_transform(data_filled[col])
# Splitting the dataset
X = data_filled.drop('status_name', axis=1)
y = data_filled['status_name']
X_train, X_test, y_train, y_test = train_test_split(X, y, test_size=0.2, random_state=42)
# Parameters to use for the model
# Parameters to use for the model
"""params = {
'colsample_bytree': 0.3,
'learning_rate': 0.6,
'max_depth': 6,
'n_estimators': 100,
'subsample': 0.9,
'use_label_encoder': False,
'eval_metric': 'logloss'
}"""
params = {
'colsample_bytree': 0.9,
'learning_rate': 0.1,
'max_depth': 30,
'n_estimators': 500,
'subsample': 0.9,
'use_label_encoder': False,
'eval_metric': 'logloss'
}
# Initialize the classifier with the specified parameters
xgb = XGBClassifier(**params)
# Train the model
xgb.fit(X_train, y_train)
# Predict on the test set
y_pred = xgb.predict(X_test)
y_pred_proba = xgb.predict_proba(X_test)
# Evaluate the model
accuracy = accuracy_score(y_test, y_pred)
classification_rep = classification_report(y_test, y_pred)
# Save the model
model_filename = 'transexpress_xgb_model.joblib'
dump(xgb, model_filename)
# Save the encoders
encoders_filename = 'transexpress_encoders.joblib'
dump(encoders, encoders_filename)
return accuracy,classification_rep,"Model trained with new data"
@app.get("/trigger_the_data_fecher")
async def your_continuous_function(page: str,paginate: str):
print("data fetcher running.....")
# Initialize an empty DataFrame to store the combined data
combined_df = pd.DataFrame()
# Update the payload for each page
url = "https://report.transexpress.lk/api/orders/delivery-success-rate/return-to-client-orders?page="+page+"&per_page="+paginate
payload = {}
headers = {
'Cookie': 'development_trans_express_session=NaFDGzh5WQCFwiortxA6WEFuBjsAG9GHIQrbKZ8B'
}
response = requests.request("GET", url, headers=headers, data=payload)
# Sample JSON response
json_response = response.json()
# Extracting 'data' for conversion
data = json_response["return_to_client_orders"]['data']
data_count = len(data)
df = pd.json_normalize(data)
df['status_name'] = df['status_name'].replace('Partially Delivered', 'Delivered')
df['status_name'] = df['status_name'].replace('Received by Client', 'Returned to Client')
print("data collected from page : "+page)
#return "done"
try:
file_path = 'trainer_data.csv' # Replace with your file path
source_csv = pd.read_csv(file_path)
new_data = df
combined_df_final = pd.concat([source_csv,new_data], ignore_index=True)
combined_df_final.to_csv("trainer_data.csv")
print("data added")
except:
df.to_csv("trainer_data.csv")
print("data created")
# Load the dataset
file_path = 'trainer_data.csv' # Update to the correct file path
data = pd.read_csv(file_path)
# Analyze class distribution
class_distribution = data['status_name'].value_counts()
print("Class Distribution before balancing:\n", class_distribution)
# Get the size of the largest class to match other classes' sizes
max_class_size = class_distribution.max()
# Oversampling
oversampled_data = pd.DataFrame()
for class_name, group in data.groupby('status_name'):
oversampled_group = resample(group,
replace=True, # Sample with replacement
n_samples=max_class_size, # to match majority class
random_state=123) # for reproducibility
oversampled_data = pd.concat([oversampled_data, oversampled_group], axis=0)
# Verify new class distribution
print("Class Distribution after oversampling:\n", oversampled_data['status_name'].value_counts())
# Save the balanced dataset if needed
oversampled_data.to_csv('trainer_data_balanced.csv', index=False)
accuracy,classification_rep,message = train_the_model()
return {"message":message,"page_number":page,"data_count":data_count,"accuracy":accuracy,"classification_rep":classification_rep}
@app.get("/get_latest_model_updated_time")
async def model_updated_time():
try:
m_time_encoder = os.path.getmtime('transexpress_encoders.joblib')
m_time_model = os.path.getmtime('transexpress_xgb_model.joblib')
return {"base model created time ":datetime.datetime.fromtimestamp(m_time_encoder),
"last model updated time":datetime.datetime.fromtimestamp(m_time_model)}
except:
return {"no model found so first trained the model using data fecther"}
# Endpoint for making predictions
@app.post("/predict")
def predict(
date : str,
customer_name: str,
customer_address: str,
customer_phone: str,
weight: float,
cod: int,
pickup_address: str,
client_number:str,
destination_city:str
):
try:
# Load your trained model and encoders
xgb_model = load('transexpress_xgb_model.joblib')
encoders = load('transexpress_encoders.joblib')
except:
return {"no model found so first trained the model using data fecther"}
# Function to handle unseen labels during encoding
def safe_transform(encoder, column):
classes = encoder.classes_
return [encoder.transform([x])[0] if x in classes else -1 for x in column]
# Convert input data to DataFrame
input_data = {
'customer_name': customer_name,
'customer_address': customer_address,
'customer_phone_no': customer_phone,
'weight': float(weight),
'cod': int(cod),
'pickup_address':pickup_address,
'client_number':client_number,
'destination_city':destination_city
}
input_df = pd.DataFrame([input_data])
# Encode categorical variables using the same encoders used during training
for col in input_df.columns:
if col in encoders:
input_df[col] = safe_transform(encoders[col], input_df[col])
# Predict and obtain probabilities
pred = xgb_model.predict(input_df)
pred_proba = xgb_model.predict_proba(input_df)
# Output
predicted_status = "Unknown" if pred[0] == -1 else encoders['status_name'].inverse_transform([pred])[0]
probability = pred_proba[0][pred[0]] * 100 if pred[0] != -1 else "Unknown"
print(predicted_status)
if predicted_status == "Returned to Client":
probability = 100 - probability
return {"Probability": round(probability,2)}