from ragatouille import RAGPretrainedModel import subprocess import json import firebase_admin from firebase_admin import credentials, firestore import logging from pathlib import Path from time import perf_counter from datetime import datetime import gradio as gr from jinja2 import Environment, FileSystemLoader import numpy as np from sentence_transformers import CrossEncoder from backend.query_llm import generate_hf, generate_openai from backend.semantic_search import table, retriever VECTOR_COLUMN_NAME = "vector" TEXT_COLUMN_NAME = "text" proj_dir = Path(__file__).parent # Setting up the logging logging.basicConfig(level=logging.INFO) logger = logging.getLogger(__name__) # Set up the template environment with the templates directory env = Environment(loader=FileSystemLoader(proj_dir / 'templates')) # Load the templates directly from the environment template = env.get_template('template.j2') template_html = env.get_template('template_html.j2') service_account_key='firebase.json' # Create a Certificate object from the service account info cred = credentials.Certificate(service_account_key) # Initialize the Firebase Admin firebase_admin.initialize_app(cred) # # Create a reference to the Firestore database db = firestore.client() # Examples examples = ['when i have to report to constituency?','what is social media and what are rules related to it for expenditure monitoring ', 'how many reports to be submitted by Expenditure observer with annexure names ?','what is expenditure limits for parlimentary constituency and assembly constituency' ] #db usage collection_name = 'Nirvachana' # Replace with your collection name field_name = 'message_count' # Replace with your field name for count def get_and_increment_value_count(db , collection_name, field_name): """ Retrieves a value count from the specified Firestore collection and field, increments it by 1, and updates the field with the new value.""" collection_ref = db.collection(collection_name) doc_ref = collection_ref.document('count_doc') # Assuming a dedicated document for count # Use a transaction to ensure consistency across reads and writes try: with db.transaction() as transaction: # Get the current value count (or initialize to 0 if it doesn't exist) current_count_doc = doc_ref.get() current_count_data = current_count_doc.to_dict() if current_count_data: current_count = current_count_data.get(field_name, 0) else: current_count = 0 # Increment the count new_count = current_count + 1 # Update the document with the new count transaction.set(doc_ref, {field_name: new_count}) return new_count except Exception as e: print(f"Error retrieving and updating value count: {e}") return None # Indicate error def update_count_html(): usage_count = get_and_increment_value_count(db ,collection_name, field_name) ccount_html = gr.HTML(value=f"""
No of Usages: {usage_count}
""") return count_html def store_message(db,query,answer,cross_encoder): timestamp = datetime.now().strftime("%Y-%m-%d_%H-%M-%S") # Create a new document reference with a dynamic document name based on timestamp new_completion= db.collection('Nirvachana').document(f"chatlogs_{timestamp}") new_completion.set({ 'query': query, 'answer':answer, 'created_time': firestore.SERVER_TIMESTAMP, 'embedding': cross_encoder, 'title': 'Expenditure observer bot' }) def add_text(history, text): history = [] if history is None else history history = history + [(text, None)] return history, gr.Textbox(value="", interactive=False) def bot(history, cross_encoder): top_rerank = 15 top_k_rank = 10 query = history[-1][0] if not query: gr.Warning("Please submit a non-empty string as a prompt") raise ValueError("Empty string was submitted") logger.warning('Retrieving documents...') # if COLBERT RAGATATOUILLE PROCEDURE : if cross_encoder=='(HIGH ACCURATE) ColBERT': gr.Warning('Retrieving using ColBERT.. First time query will take a minute for model to load..pls wait') RAG= RAGPretrainedModel.from_pretrained("colbert-ir/colbertv2.0") RAG_db=RAG.from_index('.ragatouille/colbert/indexes/mockingbird') documents_full=RAG_db.search(query,k=top_k_rank) documents=[item['content'] for item in documents_full] # Create Prompt prompt = template.render(documents=documents, query=query) prompt_html = template_html.render(documents=documents, query=query) generate_fn = generate_hf history[-1][1] = "" for character in generate_fn(prompt, history[:-1]): history[-1][1] = character print('Final history is ',history) yield history, prompt_html store_message(db,history[-1][0],history[-1][1],cross_encoder) else: # Retrieve documents relevant to query document_start = perf_counter() query_vec = retriever.encode(query) logger.warning(f'Finished query vec') doc1 = table.search(query_vec, vector_column_name=VECTOR_COLUMN_NAME).limit(top_k_rank) logger.warning(f'Finished search') documents = table.search(query_vec, vector_column_name=VECTOR_COLUMN_NAME).limit(top_rerank).to_list() documents = [doc[TEXT_COLUMN_NAME] for doc in documents] logger.warning(f'start cross encoder {len(documents)}') # Retrieve documents relevant to query query_doc_pair = [[query, doc] for doc in documents] if cross_encoder=='(FAST) MiniLM-L6v2' : cross_encoder1 = CrossEncoder('cross-encoder/ms-marco-MiniLM-L-6-v2') elif cross_encoder=='(ACCURATE) BGE reranker': cross_encoder1 = CrossEncoder('BAAI/bge-reranker-base') cross_scores = cross_encoder1.predict(query_doc_pair) sim_scores_argsort = list(reversed(np.argsort(cross_scores))) logger.warning(f'Finished cross encoder {len(documents)}') documents = [documents[idx] for idx in sim_scores_argsort[:top_k_rank]] logger.warning(f'num documents {len(documents)}') document_time = perf_counter() - document_start logger.warning(f'Finished Retrieving documents in {round(document_time, 2)} seconds...') # Create Prompt prompt = template.render(documents=documents, query=query) prompt_html = template_html.render(documents=documents, query=query) generate_fn = generate_hf history[-1][1] = "" for character in generate_fn(prompt, history[:-1]): history[-1][1] = character print('Final history is ',history) yield history, prompt_html store_message(db,history[-1][0],history[-1][1],cross_encoder) with gr.Blocks(theme='Insuz/SimpleIndigo') as demo: gr.HTML(value="""

NIRVACHANA - Expenditure Observer AI Assistant

Chatbot
""",elem_id='heading') gr.HTML(value=f"""

A free chat bot assistant for Expenditure Observers on Compendium on Election Expenditure Monitoring using Open source LLMs.
The bot can answer questions in natural language, taking relevant extracts from the ECI document which can be accessed CLICK HERE !.

""", elem_id='Sub-heading') usage_count = get_and_increment_value_count(db,collection_name, field_name) gr.HTML(value=f"""

Developed by Ramesh M IRS (C& CE) (R-19187), Suggestions may be sent to mramesh.irs@gov.in.

""", elem_id='Sub-heading1 ') count_html = gr.HTML(value=f"""
No of Usages: {usage_count}
""") chatbot = gr.Chatbot( [], elem_id="chatbot", avatar_images=('https://aui.atlassian.com/aui/8.8/docs/images/avatar-person.svg', 'https://huggingface.co/datasets/huggingface/brand-assets/resolve/main/hf-logo.svg'), bubble_full_width=False, show_copy_button=True, show_share_button=True, ) with gr.Row(): txt = gr.Textbox( scale=3, show_label=False, placeholder="Enter text and press enter", container=False, ) txt_btn = gr.Button(value="Submit text", scale=1) cross_encoder = gr.Radio(choices=['(FAST) MiniLM-L6v2','(ACCURATE) BGE reranker','(HIGH ACCURATE) ColBERT'], value='(ACCURATE) BGE reranker',label="Embeddings", info="Only First query to Colbert may take litte time)") prompt_html = gr.HTML() # Turn off interactivity while generating if you click txt_msg = txt_btn.click(add_text, [chatbot, txt], [chatbot, txt], queue=False).then( bot, [chatbot, cross_encoder], [chatbot, prompt_html]).then(update_count_html,[],[count_html]) # Turn it back on txt_msg.then(lambda: gr.Textbox(interactive=True), None, [txt], queue=False) # Turn off interactivity while generating if you hit enter txt_msg = txt.submit(add_text, [chatbot, txt], [chatbot, txt], queue=False).then( bot, [chatbot, cross_encoder], [chatbot, prompt_html]).then(update_count_html,[],[count_html]) # Turn it back on txt_msg.then(lambda: gr.Textbox(interactive=True), None, [txt], queue=False) # Examples gr.Examples(examples, txt) demo.queue() demo.launch(debug=True)