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| import streamlit as st | |
| import pandas as pd | |
| import requests | |
| model_root_url = "https://bala-ai-KartSalesPredictionBackend.hf.space" | |
| model_predict_url = model_root_url+"/v1/kart" # Base URL of the deployed Flask API on Hugging Face Spaces | |
| model_batch_url = model_root_url+"/v1/kartBatch" | |
| # Set the title of the Streamlit app | |
| st.title("Super Kart Sales Prediction") | |
| # Section for online prediction | |
| st.subheader("Online Prediction") | |
| # Collect user input for property features | |
| Product_Weight = st.number_input("Weight of the Product", min_value=0.1, max_value=100.0, step=1.0, value=20.0) | |
| Product_MRP = st.number_input("MRP of the Product", min_value=0.1, max_value=10000.0, step=1.0, value=100.0) | |
| Store_Establishment_Year = st.number_input("Store established Year", min_value=1800, step=1, value=2005, max_value=2025) | |
| Product_Sugar_Content = st.selectbox("Product Sugar Content", ["Low Sugar", "No Sugar", "Regular","reg"]) | |
| Product_Type = st.selectbox("Product Type", ["Fruits and Vegetables", "Snack Foods", "Frozen Foods", "Dairy", "Household", "Baking Goods", "Canned", "Health and Hygiene", "Meat", "Soft Drinks", "Breads", "Hard Drinks", "Others", "Starchy Foods", "Breakfast", "Seafood"]) | |
| Store_Location_City_Type = st.selectbox("Store Location City Type", ["Tier 1", "Tier 2", "Tier 3"]) | |
| Store_Id = st.selectbox("Store Id", ["OUT001", "OUT002","OUT003","OUT004"]) | |
| Store_Type = st.selectbox("Store Type", ["Supermarket Type1", "Supermarket Type2","Departmental Store","Food Mart"]) | |
| Store_Size = st.selectbox("Store Size", ["High", "Medium","Small"]) | |
| Product_Allocated_Area = st.number_input("Allocated display area", min_value=0.001, step=0.01, value=0.2,max_value=1.0) | |
| # Convert user input into a DataFrame | |
| input_data = pd.DataFrame([{ | |
| "Product_Sugar_Content": Product_Sugar_Content, | |
| "Product_Type": Product_Type, | |
| "Store_Establishment_Year": Store_Establishment_Year, | |
| "Store_Location_City_Type": Store_Location_City_Type, | |
| "Store_Id": Store_Id, | |
| "Product_MRP": Product_MRP, | |
| "Product_Weight": Product_Weight, | |
| "Store_Size": Store_Size, | |
| "Store_Type" : Store_Type, | |
| "Product_Allocated_Area" : Product_Allocated_Area | |
| }]) | |
| # Make prediction when the "Predict" button is clicked | |
| if st.button("Predict"): | |
| response = requests.post(model_predict_url, json=input_data.to_dict(orient='records')[0]) # Send data to Flask API | |
| if response.status_code == 200: | |
| prediction = response.json()['Predicted Sales'] | |
| st.success(f"Predicted Sales: {prediction}") | |
| else: | |
| st.error("Error making prediction.") | |
| # Section for batch prediction | |
| st.subheader("Batch Prediction") | |
| # Allow users to upload a CSV file for batch prediction | |
| uploaded_file = st.file_uploader("Upload CSV file for batch prediction", type=["csv"]) | |
| # Make batch prediction when the "Predict Batch" button is clicked | |
| if uploaded_file is not None: | |
| if st.button("Predict Batch"): | |
| response = requests.post(model_batch_url, files={"file": uploaded_file}) # Send file to Flask API | |
| if response.status_code == 200: | |
| predictions = response.json() | |
| st.success("Batch predictions completed!") | |
| st.write(predictions) # Display the predictions | |
| else: | |
| st.error("Error making batch prediction.") | |