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# +++
import os
import uuid
import joblib
import json
# IMPORTANT: I already installed the package "gradio" in my current Virtual Environment (VEnvDSDIL_gpu_Py3.12) as: pip install -q gradio_client
# Do NOT install "gradio_client" package again in Anaconda otherwise it will mess up the package.
import gradio as gr
import pandas as pd
# must install the package "huggingface_hub" first in the current python Virtual Environment, with pip, not with conda, as follows
# pip install huggingface_hub
# i.e., in the command line interface within the activated Virtual Environment:
# (VEnvDSDIL_gpu_Py3.12) epalvarez@DSDILmStation01:~ $ pip install huggingface_hub
from huggingface_hub import CommitScheduler
from pathlib import Path
# path = Path.cwd()
log_file = Path("logs/") / f"data_{uuid.uuid4()}.json"
log_folder = log_file.parent
hf_token = os.environ.get('HF_TOKEN')
print(hf_token)
# Scheduler will log every 2 API calls:
scheduler = CommitScheduler(
repo_id="term-deposit-logs",
repo_type="dataset",
folder_path=log_folder,
path_in_repo="data",
every=2
)
term_deposit_predictor = joblib.load('model_bt.joblib')
age_input = gr.Number(label="Age")
duration_input = gr.Number(label='Duration(Sec)')
cc_contact_freq_input = gr.Number(label='CC Contact Freq')
days_since_pc_input = gr.Number(label='Days Since PC')
pc_contact_freq_input = gr.Number(label='PC Contact Freq')
job_input = gr.Dropdown(['admin.', 'blue-collar', 'technician', 'services', 'management',
'retired', 'entrepreneur', 'self-employed', 'housemaid', 'unemployed',
'student', 'unknown'], label="Job")
marital_status_input = gr.Dropdown(['married', 'single', 'divorced', 'unknown'], label='Marital Status')
education_input = gr.Dropdown(['experience', 'university degree', 'high school', 'professional.course',
'Others', 'illiterate'], label='Education')
defaulter_input = gr.Dropdown(['no', 'unknown', 'yes'], label='Defaulter')
home_loan_input = gr.Dropdown(['yes', 'no', 'unknown'], label='Home Loan')
personal_loan_input = gr.Dropdown(['yes', 'no', 'unknown'], label='Personal Loan')
communication_type_input = gr.Dropdown(['cellular', 'telephone'], label='Communication Type')
last_contacted_input = gr.Dropdown(['mar', 'apr', 'may', 'jun', 'jul', 'aug', 'sep', 'oct', 'nov', 'dec'], label='Last Contacted')
day_of_week_input = gr.Dropdown(['mon', 'tue', 'wed', 'thu', 'fri'], label='Day of Week')
pc_outcome_input = gr.Dropdown(['nonexistent', 'failure', 'success'], label='PC Outcome')
model_output = gr.Label(label="Subscribed")
# -------------------------------------------------------------------------------------------------------------------------------------------------------------
def predict_term_deposit(age, duration, cc_contact_freq, days_since_pc, pc_contact_freq, job, marital_status, education,
defaulter, home_loan, personal_loan, communication_type, last_contacted,
day_of_week, pc_outcome):
sample = {
'Age': age,
'Duration(Sec)': duration,
'CC Contact Freq': cc_contact_freq,
'Days Since PC': days_since_pc,
'PC Contact Freq': pc_contact_freq,
'Job': job,
'Marital Status': marital_status,
'Education': education,
'Defaulter': defaulter,
'Home Loan': home_loan,
'Personal Loan': personal_loan,
'Communication Type': communication_type,
'Last Contacted': last_contacted,
'Day of Week': day_of_week,
'PC Outcome': pc_outcome,
}
data_point = pd.DataFrame([sample])
prediction = term_deposit_predictor.predict(data_point).tolist()
# Push prediction to a dataset repo for logging
# Each time we get a prediction we will determine if we should log it to a hugging_face dataset according to the schedule definition outside this function
with scheduler.lock:
with log_file.open("a") as f:
f.write(json.dumps(
{
'Age': age,
'Duration(Sec)': duration,
'CC Contact Freq': cc_contact_freq,
'Days Since PC': days_since_pc,
'PC Contact Freq': pc_contact_freq,
'Job': job,
'Marital Status': marital_status,
'Education': education,
'Defaulter': defaulter,
'Home Loan': home_loan,
'Personal Loan': personal_loan,
'Communication Type': communication_type,
'Last Contacted': last_contacted,
'Day of Week': day_of_week,
'PC Outcome': pc_outcome,
'prediction': prediction[0]
}
))
f.write("\n")
return prediction[0]
# -------------------------------------------------------------------------------------------------------------------------------------------------------------
demo = gr.Interface(
fn=predict_term_deposit,
inputs=[age_input,
duration_input,
cc_contact_freq_input,
days_since_pc_input,
pc_contact_freq_input,
job_input,
marital_status_input,
education_input,
defaulter_input,
home_loan_input,
personal_loan_input,
communication_type_input,
last_contacted_input,
day_of_week_input,
pc_outcome_input],
outputs=model_output,
title="Term Deposit Prediction",
description="This API allows you to predict the person who are going to likely subscribe to the term deposit",
allow_flagging="auto", # automatically push to the HuggingFace Dataset
concurrency_limit=8
)
demo.queue()
demo.launch(share=False) # To create a public link, set "share=True" in launch() .... but if I execute this app.py locally, then I have to have my computer on for the public users to access the browser interface