import gradio as gr import pandas as pd import google.generativeai as genai import kagglehub import os # Download the Kaggle dataset path = kagglehub.dataset_download("fahmidachowdhury/food-adulteration-dataset") # List the files in the dataset folder and assign the first one (assuming it's the desired file) dataset_file = os.listdir(path)[0] path = os.path.join(path, dataset_file) # Configure Google Gemini API # gemapi = os.getenv("GeminiApi") gemapi = "AIzaSyAmDOBWfGuEju0oZyUIcn_H0k8XW0cTP7k" genai.configure(api_key=gemapi) # Load the dataset data = pd.read_csv(path) # Define the system instructions for the model system_instruction = f""" You are a public assistant who specializes in food safety. You look at data and explain to the user any question they ask; here is your data: {str(data.to_json())} You are also a food expert in the Indian context. You act as a representative of the government or public agencies, always keeping the needs of the people at the forefront. You will try to help the customer launch a feedback review whenever they complain. You are to prepare a "markdown" report, which is detailed and can be sent to the company or restaurant. In case of a complaint or a grievance, you will act like a detective gathering necessary information from the user until you are satisfied. Once you gather all the info, you are supposed to generate a markdown report. Once the customer asks you to show them the markdown report, you will use the information given to you to generate it. You will ask the customer a single question at a time, which is relevant, and you will not repeat another question until you've generated the report. """ # Initialize the model model_path = "gemini-1.5-flash" FoodSafetyAssistant = genai.GenerativeModel(model_path, system_instruction=system_instruction) # Track chat history globally chat_history = [] # Define the function to handle the chat def respond(usertxt, chat_history): # Initialize chat with the previous history chat = FoodSafetyAssistant.start_chat(history=chat_history) # Get response from the assistant response = chat.send_message(usertxt) # Append both user input and response to the chat history for context in the next interaction chat_history.append({"role": "user", "content": usertxt}) chat_history.append({"role": "assistant", "content": response.text}) return response.text, chat_history # Gradio interface def gradio_chat(usertxt, chat_history): response, updated_history = respond(usertxt, chat_history) return response, updated_history html_content = """
Our platform allows consumers to report potential food safety violations, validate reports through AI, and notify local authorities. This proactive approach fosters community involvement in ensuring food integrity.
Submit details like the restaurant name and the issue, anonymously.
Validate reports using AI, ensuring accuracy and preventing duplicates.
Notify authorities of repeated issues via email or SMS.
Enable real-time discussion between consumers and authorities.