| import os |
| import json |
| import re |
| import gradio as gr |
| import pandas as pd |
| import requests |
| import random |
| import feedparser |
| import urllib.parse |
| from tempfile import NamedTemporaryFile |
| from typing import List |
| from bs4 import BeautifulSoup |
| from langchain.prompts import PromptTemplate |
| from langchain.chains import LLMChain |
| from langchain_core.prompts import ChatPromptTemplate |
| from langchain_community.vectorstores import FAISS |
| from langchain_community.document_loaders import PyPDFLoader |
| from langchain_core.output_parsers import StrOutputParser |
| from langchain_community.embeddings import HuggingFaceEmbeddings |
| from langchain_text_splitters import RecursiveCharacterTextSplitter |
| from langchain_community.llms import HuggingFaceHub |
| from langchain_core.runnables import RunnableParallel, RunnablePassthrough |
| from langchain_core.documents import Document |
| from sklearn.feature_extraction.text import TfidfVectorizer |
| from sklearn.metrics.pairwise import cosine_similarity |
| from openpyxl import load_workbook |
| from openpyxl.utils.dataframe import dataframe_to_rows |
|
|
|
|
|
|
| huggingface_token = os.environ.get("HUGGINGFACE_TOKEN") |
|
|
| |
| memory_database = {} |
| conversation_history = [] |
| news_database = [] |
|
|
| def load_and_split_document_basic(file): |
| """Loads and splits the document into pages.""" |
| loader = PyPDFLoader(file.name) |
| data = loader.load_and_split() |
| return data |
|
|
| def load_and_split_document_recursive(file: NamedTemporaryFile) -> List[Document]: |
| """Loads and splits the document into chunks.""" |
| loader = PyPDFLoader(file.name) |
| pages = loader.load() |
| |
| text_splitter = RecursiveCharacterTextSplitter( |
| chunk_size=1000, |
| chunk_overlap=200, |
| length_function=len, |
| ) |
| |
| chunks = text_splitter.split_documents(pages) |
| return chunks |
|
|
| def get_embeddings(): |
| return HuggingFaceEmbeddings(model_name="sentence-transformers/all-mpnet-base-v2") |
|
|
| def create_or_update_database(data, embeddings): |
| if os.path.exists("faiss_database"): |
| db = FAISS.load_local("faiss_database", embeddings, allow_dangerous_deserialization=True) |
| db.add_documents(data) |
| else: |
| db = FAISS.from_documents(data, embeddings) |
| db.save_local("faiss_database") |
|
|
| def clear_cache(): |
| if os.path.exists("faiss_database"): |
| os.remove("faiss_database") |
| return "Cache cleared successfully." |
| else: |
| return "No cache to clear." |
|
|
| def get_similarity(text1, text2): |
| vectorizer = TfidfVectorizer().fit_transform([text1, text2]) |
| return cosine_similarity(vectorizer[0:1], vectorizer[1:2])[0][0] |
|
|
| prompt = """ |
| Answer the question based on the following information: |
| |
| Conversation History: |
| {history} |
| |
| Context from documents: |
| {context} |
| |
| Current Question: {question} |
| |
| If the question is referring to the conversation history, use that information to answer. |
| If the question is not related to the conversation history, use the context from documents to answer. |
| If you don't have enough information to answer, say so. |
| |
| Provide a concise and direct answer to the question: |
| """ |
|
|
| def get_model(temperature, top_p, repetition_penalty): |
| return HuggingFaceHub( |
| repo_id="mistralai/Mistral-7B-Instruct-v0.3", |
| model_kwargs={ |
| "temperature": temperature, |
| "top_p": top_p, |
| "repetition_penalty": repetition_penalty, |
| "max_length": 1000 |
| }, |
| huggingfacehub_api_token=huggingface_token |
| ) |
|
|
| def generate_chunked_response(model, prompt, max_tokens=1000, max_chunks=5): |
| full_response = "" |
| for i in range(max_chunks): |
| chunk = model(prompt + full_response, max_new_tokens=max_tokens) |
| chunk = chunk.strip() |
| if chunk.endswith((".", "!", "?")): |
| full_response += chunk |
| break |
| full_response += chunk |
| return full_response.strip() |
|
|
| def manage_conversation_history(question, answer, history, max_history=5): |
| history.append({"question": question, "answer": answer}) |
| if len(history) > max_history: |
| history.pop(0) |
| return history |
|
|
| def is_related_to_history(question, history, threshold=0.3): |
| if not history: |
| return False |
| history_text = " ".join([f"{h['question']} {h['answer']}" for h in history]) |
| similarity = get_similarity(question, history_text) |
| return similarity > threshold |
|
|
| def extract_text_from_webpage(html): |
| soup = BeautifulSoup(html, 'html.parser') |
| for script in soup(["script", "style"]): |
| script.extract() |
| text = soup.get_text() |
| lines = (line.strip() for line in text.splitlines()) |
| chunks = (phrase.strip() for line in lines for phrase in line.split(" ")) |
| text = '\n'.join(chunk for chunk in chunks if chunk) |
| return text |
|
|
| _useragent_list = [ |
| "Mozilla/5.0 (Windows NT 10.0; Win64; x64) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/91.0.4472.124 Safari/537.36", |
| "Mozilla/5.0 (Macintosh; Intel Mac OS X 10_15_7) AppleWebKit/537.36 (KHTML, like Gecko) Chrome/91.0.4472.124 Safari/537.36", |
| "Mozilla/5.0 (Windows NT 10.0; Win64; x64) AppleWebKit/537.36 (KHTML, like Gecko) Edge/91.0.864.59 Safari/537.36", |
| "Mozilla/5.0 (Macintosh; Intel Mac OS X 10_15_7) AppleWebKit/537.36 (KHTML, like Gecko) Edge/91.0.864.59 Safari/537.36", |
| "Mozilla/5.0 (Windows NT 10.0; Win64; x64) AppleWebKit/537.36 (KHTML, like Gecko) Safari/537.36", |
| "Mozilla/5.0 (Macintosh; Intel Mac OS X 10_15_7) AppleWebKit/537.36 (KHTML, like Gecko) Safari/537.36", |
| ] |
|
|
| def google_search(term, num_results=5, lang="en", timeout=5, safe="active", ssl_verify=None): |
| escaped_term = urllib.parse.quote_plus(term) |
| start = 0 |
| all_results = [] |
| max_chars_per_page = 8000 |
|
|
| print(f"Starting Google search for term: '{term}'") |
|
|
| with requests.Session() as session: |
| while start < num_results: |
| try: |
| user_agent = random.choice(_useragent_list) |
| headers = { |
| 'User-Agent': user_agent |
| } |
| resp = session.get( |
| url="https://www.google.com/search", |
| headers=headers, |
| params={ |
| "q": term, |
| "num": num_results - start, |
| "hl": lang, |
| "start": start, |
| "safe": safe, |
| }, |
| timeout=timeout, |
| verify=ssl_verify, |
| ) |
| resp.raise_for_status() |
| print(f"Successfully retrieved search results page (start={start})") |
| except requests.exceptions.RequestException as e: |
| print(f"Error retrieving search results: {e}") |
| break |
|
|
| soup = BeautifulSoup(resp.text, "html.parser") |
| result_block = soup.find_all("div", attrs={"class": "g"}) |
| if not result_block: |
| print("No results found on this page") |
| break |
| |
| print(f"Found {len(result_block)} results on this page") |
| for result in result_block: |
| link = result.find("a", href=True) |
| if link: |
| link = link["href"] |
| print(f"Processing link: {link}") |
| try: |
| webpage = session.get(link, headers=headers, timeout=timeout) |
| webpage.raise_for_status() |
| visible_text = extract_text_from_webpage(webpage.text) |
| if len(visible_text) > max_chars_per_page: |
| visible_text = visible_text[:max_chars_per_page] + "..." |
| all_results.append({"link": link, "text": visible_text}) |
| print(f"Successfully extracted text from {link}") |
| except requests.exceptions.RequestException as e: |
| print(f"Error retrieving webpage content: {e}") |
| all_results.append({"link": link, "text": None}) |
| else: |
| print("No link found for this result") |
| all_results.append({"link": None, "text": None}) |
| start += len(result_block) |
|
|
| print(f"Search completed. Total results: {len(all_results)}") |
| print("Search results:") |
| for i, result in enumerate(all_results, 1): |
| print(f"Result {i}:") |
| print(f" Link: {result['link']}") |
| if result['text']: |
| print(f" Text: {result['text'][:100]}...") |
| else: |
| print(" Text: None") |
| print("End of search results") |
|
|
| if not all_results: |
| print("No search results found. Returning a default message.") |
| return [{"link": None, "text": "No information found in the web search results."}] |
|
|
| return all_results |
|
|
| def fetch_google_news_rss(query, num_results=10): |
| base_url = "https://news.google.com/rss/search" |
| params = { |
| "q": query, |
| "hl": "en-US", |
| "gl": "US", |
| "ceid": "US:en" |
| } |
| url = f"{base_url}?{urllib.parse.urlencode(params)}" |
| |
| try: |
| feed = feedparser.parse(url) |
| articles = [] |
| |
| for entry in feed.entries[:num_results]: |
| article = { |
| "published_date": entry.get("published", "N/A"), |
| "title": entry.get("title", "N/A"), |
| "url": entry.get("link", "N/A"), |
| "content": entry.get("summary", "N/A") |
| } |
| articles.append(article) |
| |
| return articles |
| except Exception as e: |
| print(f"Error fetching news: {str(e)}") |
| return [] |
|
|
| def summarize_news_content(content, model): |
| prompt_template = """ |
| Summarize the following news article in a concise manner: |
| {content} |
| |
| Summary: |
| """ |
| prompt = ChatPromptTemplate.from_template(prompt_template) |
| formatted_prompt = prompt.format(content=content) |
| full_response = generate_chunked_response(model, formatted_prompt, max_tokens=200) |
| |
| |
| summary_parts = full_response.split("Summary:") |
| if len(summary_parts) > 1: |
| summary = summary_parts[-1].strip() |
| else: |
| summary = full_response.strip() |
| |
| |
| lines = summary.split('\n') |
| cleaned_lines = [line for line in lines if not line.strip().startswith(("Human:", "Assistant:", "Summary:"))] |
| cleaned_summary = ' '.join(cleaned_lines).strip() |
| |
| return summary, cleaned_summary |
|
|
| def process_news(query, temperature, top_p, repetition_penalty, news_source): |
| model = get_model(temperature, top_p, repetition_penalty) |
| embed = get_embeddings() |
| |
| if news_source == "Google News RSS": |
| articles = fetch_google_news_rss(query) |
| elif news_source == "Golomt Bank": |
| articles = fetch_golomt_bank_news() |
| else: |
| return "Invalid news source selected." |
| |
| if not articles: |
| return f"No news articles found for the given {news_source}." |
| |
| processed_articles = [] |
| |
| for article in articles: |
| try: |
| |
| clean_content = BeautifulSoup(article["content"], "html.parser").get_text() |
| |
| |
| if len(clean_content) < 50: |
| clean_content = article["title"] |
| |
| full_summary, cleaned_summary = summarize_news_content(clean_content, model) |
| relevance_score = calculate_relevance_score(cleaned_summary, model) |
| print(f"Relevance score for article '{article['title']}': {relevance_score}") |
| |
| processed_article = { |
| "published_date": article["published_date"], |
| "title": article["title"], |
| "url": article["url"], |
| "content": clean_content, |
| "summary": full_summary, |
| "cleaned_summary": cleaned_summary, |
| "relevance_score": relevance_score |
| } |
| processed_articles.append(processed_article) |
| except Exception as e: |
| print(f"Error processing article: {str(e)}") |
| |
| |
| print("Processed articles:") |
| for article in processed_articles: |
| print(f"Title: {article['title']}, Score: {article['relevance_score']}") |
| |
| if not processed_articles: |
| return f"Failed to process any news articles from {news_source}. Please try again or check the summarization process." |
| |
| |
| docs = [Document(page_content=article["cleaned_summary"], metadata={ |
| "source": article["url"], |
| "title": article["title"], |
| "published_date": article["published_date"], |
| "relevance_score": article["relevance_score"] |
| }) for article in processed_articles] |
| |
| try: |
| if os.path.exists("faiss_database"): |
| database = FAISS.load_local("faiss_database", embed, allow_dangerous_deserialization=True) |
| database.add_documents(docs) |
| else: |
| database = FAISS.from_documents(docs, embed) |
| |
| database.save_local("faiss_database") |
| |
| |
| global news_database |
| news_database = processed_articles |
| |
| print("Updated news_database:") |
| for article in news_database: |
| print(f"Title: {article['title']}, Score: {article['relevance_score']}") |
| |
| return f"Processed and added {len(processed_articles)} news articles from {news_source} to the database." |
| except Exception as e: |
| return f"Error adding articles to the database: {str(e)}" |
|
|
| def fetch_articles_from_page(url): |
| response = requests.get(url) |
| response.raise_for_status() |
| soup = BeautifulSoup(response.content, 'html.parser') |
| articles = soup.find_all('div', class_='entry-post gt-box-shadow-2') |
| return articles, soup |
|
|
| def fetch_articles_from_page(url): |
| response = requests.get(url) |
| response.raise_for_status() |
| soup = BeautifulSoup(response.content, 'html.parser') |
| articles = soup.find_all('div', class_='entry-post gt-box-shadow-2') |
| return articles, soup |
|
|
| def extract_articles(articles): |
| article_data = [] |
| for article in articles: |
| title_div = article.find('h2', class_='entry-title') |
| title = title_div.get_text(strip=True) if title_div else "No Title" |
| date_div = article.find('div', class_='entry-date gt-meta') |
| date = date_div.get_text(strip=True) if date_div else "No Date" |
| link_tag = article.find('a') |
| link = link_tag['href'] if link_tag else "No Link" |
| if not link.startswith('http'): |
| link = "https://golomtbank.com" + link |
| article_response = requests.get(link) |
| article_response.raise_for_status() |
| article_soup = BeautifulSoup(article_response.content, 'html.parser') |
| article_content_div = article_soup.find('div', class_='entry-content') |
| article_content = article_content_div.get_text(strip=True) if article_content_div else "No content found" |
| article_data.append({ |
| 'title': title, |
| 'date': date, |
| 'link': link, |
| 'content': article_content |
| }) |
| return article_data |
|
|
| def fetch_golomt_bank_news(num_results=20): |
| base_url = "https://golomtbank.com/en/rnews" |
| current_page_url = base_url |
| all_articles = [] |
| |
| try: |
| while len(all_articles) < num_results: |
| print(f"Fetching articles from: {current_page_url}") |
| articles, soup = fetch_articles_from_page(current_page_url) |
| if not articles: |
| print("No articles found on this page.") |
| break |
| all_articles.extend(extract_articles(articles)) |
| print(f"Total articles fetched so far: {len(all_articles)}") |
| if len(all_articles) >= num_results: |
| all_articles = all_articles[:num_results] |
| break |
| next_page_link = soup.find('a', class_='next') |
| if not next_page_link: |
| print("No next page link found.") |
| break |
| current_page_url = next_page_link['href'] |
| if not current_page_url.startswith('http'): |
| current_page_url = "https://golomtbank.com" + current_page_url |
|
|
| return [ |
| { |
| "published_date": article['date'], |
| "title": article['title'], |
| "url": article['link'], |
| "content": article['content'] |
| } for article in all_articles |
| ] |
| except Exception as e: |
| print(f"Error fetching Golomt Bank news: {str(e)}") |
| return [] |
| |
| def export_news_to_excel(): |
| global news_database |
| |
| if not news_database: |
| return "No articles to export. Please fetch news first." |
| |
| print("Exporting the following articles:") |
| for article in news_database: |
| print(f"Title: {article['title']}, Score: {article.get('relevance_score', 'N/A')}") |
| |
| df = pd.DataFrame(news_database) |
| |
| |
| if 'relevance_score' not in df.columns: |
| df['relevance_score'] = 0.0 |
| else: |
| df['relevance_score'] = pd.to_numeric(df['relevance_score'], errors='coerce').fillna(0.0) |
| |
| |
| if 'cleaned_summary' in df.columns: |
| df['summary'] = df['cleaned_summary'] |
| df = df.drop(columns=['cleaned_summary']) |
| |
| |
| columns = ['published_date', 'title', 'url', 'content', 'summary', 'relevance_score'] |
| df = df[[col for col in columns if col in df.columns]] |
| |
| print("Final DataFrame before export:") |
| print(df[['title', 'relevance_score']]) |
| |
| with NamedTemporaryFile(delete=False, suffix='.xlsx') as tmp: |
| excel_path = tmp.name |
| df.to_excel(excel_path, index=False, engine='openpyxl') |
| print(f"Excel file saved to: {excel_path}") |
| print("Final relevance scores before export:") |
| for article in news_database: |
| print(f"Title: {article['title']}, Score: {article.get('relevance_score', 'N/A')}") |
| |
| return excel_path |
|
|
| def calculate_relevance_score(summary, model): |
| prompt_template = PromptTemplate( |
| input_variables=["summary"], |
| template="""You are a financial analyst tasked with providing a relevance score to news summaries. |
| The score should be based on the financial significance and impact of the news. |
| |
| Consider the following factors when assigning relevance: |
| - Earnings reports and financial performance |
| - Debt issuance or restructuring |
| - Mergers, acquisitions, or divestments |
| - Changes in key leadership (e.g., CEO, CFO) |
| - Regulatory changes or legal issues affecting the company |
| - Major product launches or market expansion |
| - Significant shifts in market share or competitive landscape |
| - Macroeconomic factors directly impacting the company or industry |
| - Stock price movements and trading volume changes |
| - Dividend announcements or changes in capital allocation |
| - Credit rating changes |
| - Material financial events (e.g., bankruptcy, major contracts) |
| |
| Use the following scoring guide: |
| - 0.00-0.20: Not relevant to finance or economics |
| - 0.21-0.40: Slightly relevant, but minimal financial impact |
| - 0.41-0.60: Moderately relevant, some financial implications |
| - 0.61-0.80: Highly relevant, significant financial impact |
| - 0.81-1.00: Extremely relevant, major financial implications |
| |
| Provide a score between 0.00 and 1.00, where 0.00 is not relevant at all, and 1.00 is extremely relevant from a financial perspective. |
| |
| Summary: {summary} |
| |
| Relevance Score:""" |
| ) |
|
|
| chain = LLMChain(llm=model, prompt=prompt_template) |
| response = chain.run(summary=summary) |
| |
| print(f"Raw relevance score response: {response}") |
| |
| try: |
| |
| score_match = re.search(r'Relevance Score:\s*(\d+\.\d+)', response) |
| if score_match: |
| score = float(score_match.group(1)) |
| final_score = min(max(score, 0.00), 1.00) |
| print(f"Processed relevance score: {final_score}") |
| return final_score |
| else: |
| raise ValueError("No relevance score found in the response") |
| except ValueError as e: |
| print(f"Error parsing relevance score: {e}") |
| return 0.00 |
| |
| def ask_question(question, temperature, top_p, repetition_penalty, web_search, google_news_rss): |
| global conversation_history |
|
|
| if not question: |
| return "Please enter a question." |
|
|
| model = get_model(temperature, top_p, repetition_penalty) |
| embed = get_embeddings() |
|
|
| |
| if os.path.exists("faiss_database"): |
| database = FAISS.load_local("faiss_database", embed, allow_dangerous_deserialization=True) |
| else: |
| database = None |
|
|
| if web_search: |
| search_results = google_search(question) |
| web_docs = [Document(page_content=result["text"], metadata={"source": result["link"]}) for result in search_results if result["text"]] |
| |
| if database is None: |
| database = FAISS.from_documents(web_docs, embed) |
| else: |
| database.add_documents(web_docs) |
| |
| database.save_local("faiss_database") |
| |
| context_str = "\n".join([doc.page_content for doc in web_docs]) |
| |
| prompt_template = """ |
| Answer the question based on the following web search results: |
| Web Search Results: |
| {context} |
| Current Question: {question} |
| If the web search results don't contain relevant information, state that the information is not available in the search results. |
| Provide a concise and direct answer to the question without mentioning the web search or these instructions: |
| """ |
| prompt_val = ChatPromptTemplate.from_template(prompt_template) |
| formatted_prompt = prompt_val.format(context=context_str, question=question) |
| |
| elif google_news_rss: |
| if database is None: |
| return "No news articles available. Please fetch news articles first." |
|
|
| retriever = database.as_retriever() |
| relevant_docs = retriever.get_relevant_documents(question) |
| context_str = "\n".join([f"Title: {doc.metadata.get('title', 'N/A')}\nURL: {doc.metadata.get('source', 'N/A')}\nSummary: {doc.page_content}" for doc in relevant_docs]) |
|
|
| prompt_template = """ |
| Answer the question based on the following news summaries: |
| News Summaries: |
| {context} |
| Current Question: {question} |
| If the news summaries don't contain relevant information, state that the information is not available in the news articles. |
| Provide a concise and direct answer to the question without mentioning the news summaries or these instructions: |
| """ |
| prompt_val = ChatPromptTemplate.from_template(prompt_template) |
| formatted_prompt = prompt_val.format(context=context_str, question=question) |
| else: |
| if database is None: |
| return "No documents available. Please upload documents, enable web search, or fetch news articles to answer questions." |
|
|
| history_str = "\n".join([f"Q: {item['question']}\nA: {item['answer']}" for item in conversation_history]) |
|
|
| if is_related_to_history(question, conversation_history): |
| context_str = "No additional context needed. Please refer to the conversation history." |
| else: |
| retriever = database.as_retriever() |
| relevant_docs = retriever.get_relevant_documents(question) |
| context_str = "\n".join([doc.page_content for doc in relevant_docs]) |
|
|
| prompt_val = ChatPromptTemplate.from_template(prompt) |
| formatted_prompt = prompt_val.format(history=history_str, context=context_str, question=question) |
|
|
| full_response = generate_chunked_response(model, formatted_prompt) |
| |
| |
| answer_patterns = [ |
| r"Provide a concise and direct answer to the question without mentioning the web search or these instructions:", |
| r"Provide a concise and direct answer to the question without mentioning the news summaries or these instructions:", |
| r"Provide a concise and direct answer to the question:", |
| r"Answer:" |
| ] |
| |
| for pattern in answer_patterns: |
| match = re.split(pattern, full_response, flags=re.IGNORECASE) |
| if len(match) > 1: |
| answer = match[-1].strip() |
| break |
| else: |
| |
| answer = full_response.strip() |
|
|
| if not web_search and not google_news_rss: |
| memory_database[question] = answer |
| conversation_history = manage_conversation_history(question, answer, conversation_history) |
|
|
| return answer |
|
|
| def update_vectors(files, use_recursive_splitter): |
| if not files: |
| return "Please upload at least one PDF file." |
| |
| embed = get_embeddings() |
| total_chunks = 0 |
| |
| all_data = [] |
| for file in files: |
| if use_recursive_splitter: |
| data = load_and_split_document_recursive(file) |
| else: |
| data = load_and_split_document_basic(file) |
| all_data.extend(data) |
| total_chunks += len(data) |
| |
| if os.path.exists("faiss_database"): |
| database = FAISS.load_local("faiss_database", embed, allow_dangerous_deserialization=True) |
| database.add_documents(all_data) |
| else: |
| database = FAISS.from_documents(all_data, embed) |
| |
| database.save_local("faiss_database") |
| |
| return f"Vector store updated successfully. Processed {total_chunks} chunks from {len(files)} files." |
|
|
| def extract_db_to_excel(): |
| embed = get_embeddings() |
| database = FAISS.load_local("faiss_database", embed, allow_dangerous_deserialization=True) |
| |
| documents = database.docstore._dict.values() |
| data = [{"page_content": doc.page_content, "metadata": json.dumps(doc.metadata)} for doc in documents] |
| df = pd.DataFrame(data) |
| |
| with NamedTemporaryFile(delete=False, suffix='.xlsx') as tmp: |
| excel_path = tmp.name |
| df.to_excel(excel_path, index=False) |
| |
| return excel_path |
|
|
| def export_memory_db_to_excel(): |
| data = [{"question": question, "answer": answer} for question, answer in memory_database.items()] |
| df_memory = pd.DataFrame(data) |
| |
| data_history = [{"question": item["question"], "answer": item["answer"]} for item in conversation_history] |
| df_history = pd.DataFrame(data_history) |
| |
| with NamedTemporaryFile(delete=False, suffix='.xlsx') as tmp: |
| excel_path = tmp.name |
| with pd.ExcelWriter(excel_path, engine='openpyxl') as writer: |
| df_memory.to_excel(writer, sheet_name='Memory Database', index=False) |
| df_history.to_excel(writer, sheet_name='Conversation History', index=False) |
| |
| return excel_path |
|
|
| |
| |
| with gr.Blocks() as demo: |
| gr.Markdown("# Chat with your PDF documents and News") |
| |
| with gr.Row(): |
| file_input = gr.Files(label="Upload your PDF documents", file_types=[".pdf"]) |
| update_button = gr.Button("Update Vector Store") |
| use_recursive_splitter = gr.Checkbox(label="Use Recursive Text Splitter", value=False) |
| |
| update_output = gr.Textbox(label="Update Status") |
| update_button.click(update_vectors, inputs=[file_input, use_recursive_splitter], outputs=update_output) |
| |
| with gr.Row(): |
| with gr.Column(scale=2): |
| chatbot = gr.Chatbot(label="Conversation") |
| question_input = gr.Textbox(label="Ask a question about your documents or news") |
| submit_button = gr.Button("Submit") |
| with gr.Column(scale=1): |
| temperature_slider = gr.Slider(label="Temperature", minimum=0.0, maximum=1.0, value=0.5, step=0.1) |
| top_p_slider = gr.Slider(label="Top P", minimum=0.0, maximum=1.0, value=0.9, step=0.1) |
| repetition_penalty_slider = gr.Slider(label="Repetition Penalty", minimum=1.0, maximum=2.0, value=1.0, step=0.1) |
| web_search_checkbox = gr.Checkbox(label="Enable Web Search", value=False) |
| google_news_rss_checkbox = gr.Checkbox(label="Google News RSS", value=False) |
| |
| with gr.Row(): |
| news_source_dropdown = gr.Dropdown( |
| choices=["Google News RSS", "Golomt Bank"], |
| label="Select News Source", |
| value="Google News RSS" |
| ) |
| news_query_input = gr.Textbox(label="Enter news query (for Google News RSS)") |
| fetch_news_button = gr.Button("Fetch News") |
| |
| news_fetch_output = gr.Textbox(label="News Fetch Status") |
| |
| def chat(question, history, temperature, top_p, repetition_penalty, web_search, google_news_rss): |
| answer = ask_question(question, temperature, top_p, repetition_penalty, web_search, google_news_rss) |
| history.append((question, answer)) |
| return "", history |
| |
| submit_button.click(chat, inputs=[question_input, chatbot, temperature_slider, top_p_slider, repetition_penalty_slider, web_search_checkbox, google_news_rss_checkbox], outputs=[question_input, chatbot]) |
| |
| def fetch_news(query, temperature, top_p, repetition_penalty, news_source): |
| return process_news(query, temperature, top_p, repetition_penalty, news_source) |
| |
| fetch_news_button.click( |
| fetch_news, |
| inputs=[news_query_input, temperature_slider, top_p_slider, repetition_penalty_slider, news_source_dropdown], |
| outputs=news_fetch_output |
| ) |
| |
| extract_button = gr.Button("Extract Database to Excel") |
| excel_output = gr.File(label="Download Excel File") |
| extract_button.click(extract_db_to_excel, inputs=[], outputs=excel_output) |
| |
| export_memory_button = gr.Button("Export Memory Database to Excel") |
| memory_excel_output = gr.File(label="Download Memory Excel File") |
| export_memory_button.click(export_memory_db_to_excel, inputs=[], outputs=memory_excel_output) |
| |
| export_news_button = gr.Button("Download News Excel File") |
| news_excel_output = gr.File(label="Download News Excel File") |
| export_news_button.click(export_news_to_excel, inputs=[], outputs=news_excel_output) |
| |
| clear_button = gr.Button("Clear Cache") |
| clear_output = gr.Textbox(label="Cache Status") |
| clear_button.click(clear_cache, inputs=[], outputs=clear_output) |
|
|
| if __name__ == "__main__": |
| demo.launch() |