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""" | |
Credit to Derek Thomas, [email protected] | |
""" | |
import subprocess | |
# subprocess.run(["pip", "install", "--upgrade", "transformers[torch,sentencepiece]==4.34.1"]) | |
import logging | |
from pathlib import Path | |
from time import perf_counter | |
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') | |
# crossEncoder | |
#cross_encoder = CrossEncoder('cross-encoder/ms-marco-MiniLM-L-6-v2') | |
#cross_encoder = CrossEncoder('BAAI/bge-reranker-base') | |
# Examples | |
examples = ['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 ?', | |
] | |
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...') | |
# 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=='MiniLM-L6v2' : | |
cross_encoder = CrossEncoder('cross-encoder/ms-marco-MiniLM-L-6-v2') | |
else: | |
cross_encoder = CrossEncoder('BAAI/bge-reranker-base') | |
cross_scores = cross_encoder.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 | |
with gr.Blocks(theme='Insuz/SimpleIndigo') as demo: | |
gr.HTML(value="""<div style="display: flex; align-items: center; justify-content: space-between;"> | |
<h1 style="color: #008000">NIRVACHANA - <span style="color: #008000">Expenditure Observer AI Assistant</span></h1> | |
<img src='logo.png' alt="Chatbot" width="50" height="50" /> | |
</div>""",elem_id='heading') | |
gr.HTML(value="""<p style="font-family: sans-serif; font-size: 16px;">A free chat bot assistant for Expenditure Observers on Compendium on Election Expenditure Monitoring using Open source LLMs. <br> The bot can answer questions in natural language, taking relevant extracts from the ECI document which can be accessed <a href="https://www.eci.gov.in/eci-backend/public/api/download?url=LMAhAK6sOPBp%2FNFF0iRfXbEB1EVSLT41NNLRjYNJJP1KivrUxbfqkDatmHy12e%2Fzk1vx4ptJpQsKYHA87guoLjnPUWtHeZgKtEqs%2FyzfTTYIC0newOHHOjl1rl0u3mJBSIq%2Fi7zDsrcP74v%2FKr8UNw%3D%3D" style="color: #008000; text-decoration: none;">here</a>.</p>""",elem_id='Sub-heading') | |
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=['MiniLM-L6v2','BGE reranker'], value='BGE reranker',label="Embeddings", info="Choose MiniLM for Speed, BGE reranker for accuracy") | |
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]) | |
# 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]) | |
# 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) | |