import asyncio import os import random import re import tempfile import traceback from functools import partial import discord from bs4 import BeautifulSoup import aiohttp from gpt_index import ( QuestionAnswerPrompt, GPTSimpleVectorIndex, BeautifulSoupWebReader, Document, PromptHelper, LLMPredictor, OpenAIEmbedding, SimpleDirectoryReader, ) from gpt_index.readers.web import DEFAULT_WEBSITE_EXTRACTOR from langchain import OpenAI from services.environment_service import EnvService, app_root_path from services.usage_service import UsageService class Search: def __init__(self, gpt_model, usage_service): self.model = gpt_model self.usage_service = usage_service self.google_search_api_key = EnvService.get_google_search_api_key() self.google_search_engine_id = EnvService.get_google_search_engine_id() self.loop = asyncio.get_running_loop() self.qaprompt = QuestionAnswerPrompt( "You are formulating the response to a search query given the search prompt and the context. Context information is below. The text '<|endofstatement|>' is used to separate chat entries and make it easier for you to understand the context\n" "---------------------\n" "{context_str}" "\n---------------------\n" "Never say '<|endofstatement|>'\n" "Given the context information and not prior knowledge, " "answer the question, say that you were unable to answer the question if there is not sufficient context to formulate a decisive answer. The search query was: {query_str}\n" ) self.openai_key = os.getenv("OPENAI_TOKEN") self.EMBED_CUTOFF = 2000 def index_webpage(self, url) -> list[Document]: documents = BeautifulSoupWebReader( website_extractor=DEFAULT_WEBSITE_EXTRACTOR ).load_data(urls=[url]) return documents async def index_pdf(self, url) -> list[Document]: # Download the PDF at the url and save it to a tempfile async with aiohttp.ClientSession() as session: async with session.get(url) as response: if response.status == 200: data = await response.read() f = tempfile.NamedTemporaryFile(delete=False) f.write(data) f.close() else: return "An error occurred while downloading the PDF." # Get the file path of this tempfile.NamedTemporaryFile # Save this temp file to an actual file that we can put into something else to read it documents = SimpleDirectoryReader(input_files=[f.name]).load_data() print("Loaded the PDF document data") # Delete the temporary file return documents async def get_links(self, query, search_scope=2): """Search the web for a query""" async with aiohttp.ClientSession() as session: async with session.get( f"https://www.googleapis.com/customsearch/v1?key={self.google_search_api_key}&cx={self.google_search_engine_id}&q={query}" ) as response: if response.status == 200: data = await response.json() # Return a list of the top 2 links return ( [item["link"] for item in data["items"][:search_scope]], [item["link"] for item in data["items"]], ) else: print( "The Google Search API returned an error: " + str(response.status) ) return ["An error occurred while searching.", None] async def search(self, query, user_api_key, search_scope, nodes): DEFAULT_SEARCH_NODES = 1 if not user_api_key: os.environ["OPENAI_API_KEY"] = self.openai_key else: os.environ["OPENAI_API_KEY"] = user_api_key llm_predictor = LLMPredictor(llm=OpenAI(model_name="text-davinci-003")) try: llm_predictor_presearch = OpenAI(max_tokens=30, temperature=0, model_name="text-davinci-003") # Refine a query to send to google custom search API query_refined = llm_predictor_presearch.generate(prompts=["You are refining a query to send to the Google Custom Search API. Change the query such that putting it into the Google Custom Search API will return the most relevant websites to assist us in answering the original query. Respond with only the refined query for the original query. The original query is: " + query +"\nRefined Query:"]) query_refined_text = query_refined.generations[0][0].text except Exception as e: traceback.print_exc() query_refined_text = query # Get the links for the query links, all_links = await self.get_links(query, search_scope=search_scope) if all_links is None: raise ValueError("The Google Search API returned an error.") # For each link, crawl the page and get all the text that's not HTML garbage. # Concatenate all the text for a given website into one string and save it into an array: documents = [] for link in links: # First, attempt a connection with a timeout of 3 seconds to the link, if the timeout occurs, don't # continue to the document loading. pdf = False try: async with aiohttp.ClientSession() as session: async with session.get(link, timeout=2) as response: # Add another entry to links from all_links if the link is not already in it to compensate for the failed request if response.status not in [200, 203, 202, 204]: for link2 in all_links: if link2 not in links: print("Found a replacement link") links.append(link2) break continue # Follow redirects elif response.status in [301, 302, 303, 307, 308]: try: print("Adding redirect") links.append(response.url) continue except: continue else: # Detect if the link is a PDF, if it is, we load it differently if response.headers["Content-Type"] == "application/pdf": print("Found a PDF at the link " + link) pdf = True except: traceback.print_exc() try: # Try to add a link from all_links, this is kind of messy. for link2 in all_links: if link2 not in links: print("Found a replacement link") links.append(link2) break except: pass continue try: if not pdf: document = await self.loop.run_in_executor( None, partial(self.index_webpage, link) ) else: document = await self.index_pdf(link) [documents.append(doc) for doc in document] except Exception as e: traceback.print_exc() embedding_model = OpenAIEmbedding() index = await self.loop.run_in_executor( None, partial(GPTSimpleVectorIndex, documents, embed_model=embedding_model) ) await self.usage_service.update_usage( embedding_model.last_token_usage, embeddings=True ) llm_predictor = LLMPredictor( llm=OpenAI(model_name="text-davinci-003", max_tokens=-1) ) # Now we can search the index for a query: embedding_model.last_token_usage = 0 response = await self.loop.run_in_executor( None, partial( index.query, query, verbose=True, embed_model=embedding_model, llm_predictor=llm_predictor, similarity_top_k=nodes or DEFAULT_SEARCH_NODES, text_qa_template=self.qaprompt, ), ) await self.usage_service.update_usage(llm_predictor.last_token_usage) await self.usage_service.update_usage( embedding_model.last_token_usage, embeddings=True ) return response