# app.py import gradio as gr from bs4 import BeautifulSoup from sentence_transformers import SentenceTransformer import faiss import numpy as np import requests import time import re import base64 import logging import os import sys # Import OpenAI library import openai # Set up logging to output to the console logger = logging.getLogger(__name__) logger.setLevel(logging.INFO) # Create a console handler console_handler = logging.StreamHandler(sys.stdout) console_handler.setLevel(logging.INFO) # Create a formatter and set it for the handler formatter = logging.Formatter('%(asctime)s %(levelname)s %(name)s %(message)s') console_handler.setFormatter(formatter) # Add the handler to the logger logger.addHandler(console_handler) # Initialize models and variables logger.info("Initializing models and variables") embedding_model = SentenceTransformer('all-MiniLM-L6-v2') faiss_index = None bookmarks = [] fetch_cache = {} # Define the categories CATEGORIES = [ "Social Media", "News and Media", "Education and Learning", "Entertainment", "Shopping and E-commerce", "Finance and Banking", "Technology", "Health and Fitness", "Travel and Tourism", "Food and Recipes", "Sports", "Arts and Culture", "Government and Politics", "Business and Economy", "Science and Research", "Personal Blogs and Journals", "Job Search and Careers", "Music and Audio", "Videos and Movies", "Reference and Knowledge Bases", "Dead Link", "Uncategorized", ] # Set up Groq Cloud API key and base URL GROQ_API_KEY = os.getenv('GROQ_API_KEY') if not GROQ_API_KEY: logger.error("GROQ_API_KEY environment variable not set.") openai.api_key = GROQ_API_KEY openai.api_base = "https://api.groq.com/openai/v1" def extract_main_content(soup): """ Extract the main content from a webpage while filtering out boilerplate content. """ if not soup: return "" # Remove unwanted elements for element in soup(['script', 'style', 'header', 'footer', 'nav', 'aside', 'form', 'noscript']): element.decompose() # Extract text from
tags p_tags = soup.find_all('p') if p_tags: content = ' '.join([p.get_text(strip=True, separator=' ') for p in p_tags]) else: # Fallback to body content content = soup.get_text(separator=' ', strip=True) # Clean up the text content = re.sub(r'\s+', ' ', content) # Remove multiple spaces # Truncate content to a reasonable length (e.g., 1500 words) words = content.split() if len(words) > 1500: content = ' '.join(words[:1500]) return content def get_page_metadata(soup): """ Extract metadata from the webpage including title, description, and keywords. """ metadata = { 'title': '', 'description': '', 'keywords': '' } if not soup: return metadata # Get title title_tag = soup.find('title') if title_tag and title_tag.string: metadata['title'] = title_tag.string.strip() # Get meta description meta_desc = ( soup.find('meta', attrs={'name': 'description'}) or soup.find('meta', attrs={'property': 'og:description'}) or soup.find('meta', attrs={'name': 'twitter:description'}) ) if meta_desc: metadata['description'] = meta_desc.get('content', '').strip() # Get meta keywords meta_keywords = soup.find('meta', attrs={'name': 'keywords'}) if meta_keywords: metadata['keywords'] = meta_keywords.get('content', '').strip() # Get OG title if main title is empty if not metadata['title']: og_title = soup.find('meta', attrs={'property': 'og:title'}) if og_title: metadata['title'] = og_title.get('content', '').strip() return metadata def generate_summary(bookmark): """ Generate a concise summary for a bookmark using available content and LLM via the Groq Cloud API. """ logger.info(f"Generating summary for bookmark: {bookmark.get('url')}") try: html_content = bookmark.get('html_content', '') # Get the HTML soup object from the bookmark soup = BeautifulSoup(html_content, 'html.parser') # Extract metadata and main content metadata = get_page_metadata(soup) main_content = extract_main_content(soup) # Prepare content for the prompt content_parts = [] if metadata['title']: content_parts.append(f"Title: {metadata['title']}") if metadata['description']: content_parts.append(f"Description: {metadata['description']}") if metadata['keywords']: content_parts.append(f"Keywords: {metadata['keywords']}") if main_content: content_parts.append(f"Main Content: {main_content}") content_text = '\n'.join(content_parts) # Detect insufficient or erroneous content error_keywords = ['Access Denied', 'Security Check', 'Cloudflare', 'captcha', 'unusual traffic'] if not content_text or len(content_text.split()) < 50: use_prior_knowledge = True logger.info(f"Content for {bookmark.get('url')} is insufficient. Instructing LLM to use prior knowledge.") elif any(keyword.lower() in content_text.lower() for keyword in error_keywords): use_prior_knowledge = True logger.info(f"Content for {bookmark.get('url')} contains error messages. Instructing LLM to use prior knowledge.") else: use_prior_knowledge = False if use_prior_knowledge: # Construct prompt to use prior knowledge prompt = f""" You are a knowledgeable assistant with up-to-date information as of 2023. The user provided a URL: {bookmark.get('url')} Please provide a concise summary in **no more than two sentences** about this website. Focus on: - The main purpose or topic of the website. - Key information or features. Be concise and objective. """ else: # Construct the prompt with the extracted content prompt = f""" You are a helpful assistant that creates concise webpage summaries. Analyze the following webpage content: {content_text} Provide a concise summary in **no more than two sentences** focusing on: - The main purpose or topic of the page. - Key information or features. Be concise and objective. """ # Call the LLM via Groq Cloud API response = openai.ChatCompletion.create( model='llama-3.1-70b-versatile', messages=[ {"role": "user", "content": prompt} ], max_tokens=100, temperature=0.5, ) summary = response['choices'][0]['message']['content'].strip() if not summary: raise ValueError("Empty summary received from the model.") logger.info("Successfully generated LLM summary") bookmark['summary'] = summary time.sleep(3) # Wait to respect rate limits except Exception as e: logger.error(f"Error generating summary: {e}", exc_info=True) bookmark['summary'] = 'No summary available.' def assign_category(bookmark): """ Assign a category to a bookmark using the LLM based on its summary via the Groq Cloud API. """ if bookmark.get('dead_link'): bookmark['category'] = 'Dead Link' logger.info(f"Assigned category 'Dead Link' to bookmark: {bookmark.get('url')}") return summary = bookmark.get('summary', '') if not summary: bookmark['category'] = 'Uncategorized' return # Prepare the prompt categories_str = ', '.join([f'"{cat}"' for cat in CATEGORIES if cat != 'Dead Link']) prompt = f""" You are a helpful assistant that categorizes webpages. Based on the following summary, assign the most appropriate category from the list below. Summary: {summary} Categories: {categories_str} Respond with only the category name. """ try: response = openai.ChatCompletion.create( model='llama-3.1-70b-versatile', messages=[ {"role": "user", "content": prompt} ], max_tokens=10, temperature=0, ) category = response['choices'][0]['message']['content'].strip().strip('"') # Validate the category if category in CATEGORIES: bookmark['category'] = category logger.info(f"Assigned category '{category}' to bookmark: {bookmark.get('url')}") else: bookmark['category'] = 'Uncategorized' logger.warning(f"Invalid category '{category}' returned by LLM for bookmark: {bookmark.get('url')}") time.sleep(3) # Wait to respect rate limits except Exception as e: logger.error(f"Error assigning category: {e}", exc_info=True) bookmark['category'] = 'Uncategorized' def parse_bookmarks(file_content): """ Parse bookmarks from HTML file. """ logger.info("Parsing bookmarks") try: soup = BeautifulSoup(file_content, 'html.parser') extracted_bookmarks = [] for link in soup.find_all('a'): url = link.get('href') title = link.text.strip() if url and title: extracted_bookmarks.append({'url': url, 'title': title}) logger.info(f"Extracted {len(extracted_bookmarks)} bookmarks") return extracted_bookmarks except Exception as e: logger.error("Error parsing bookmarks: %s", e, exc_info=True) raise def fetch_url_info(bookmark): """ Fetch information about a URL. """ url = bookmark['url'] if url in fetch_cache: bookmark.update(fetch_cache[url]) return try: logger.info(f"Fetching URL info for: {url}") headers = { 'User-Agent': 'Mozilla/5.0', 'Accept-Language': 'en-US,en;q=0.9', } response = requests.get(url, headers=headers, timeout=5, verify=False, allow_redirects=True) bookmark['etag'] = response.headers.get('ETag', 'N/A') bookmark['status_code'] = response.status_code content = response.text logger.info(f"Fetched content length for {url}: {len(content)} characters") # Handle status codes if response.status_code >= 500: # Server error, consider as dead link bookmark['dead_link'] = True bookmark['description'] = '' bookmark['html_content'] = '' logger.warning(f"Dead link detected: {url} with status {response.status_code}") else: bookmark['dead_link'] = False bookmark['html_content'] = content bookmark['description'] = '' logger.info(f"Fetched information for {url}") except requests.exceptions.Timeout: bookmark['dead_link'] = False # Mark as 'Unknown' instead of 'Dead' bookmark['etag'] = 'N/A' bookmark['status_code'] = 'Timeout' bookmark['description'] = '' bookmark['html_content'] = '' bookmark['slow_link'] = True # Custom flag to indicate slow response logger.warning(f"Timeout while fetching {url}. Marking as 'Slow'.") except Exception as e: bookmark['dead_link'] = True bookmark['etag'] = 'N/A' bookmark['status_code'] = 'Error' bookmark['description'] = '' bookmark['html_content'] = '' logger.error(f"Error fetching URL info for {url}: {e}", exc_info=True) finally: fetch_cache[url] = { 'etag': bookmark.get('etag'), 'status_code': bookmark.get('status_code'), 'dead_link': bookmark.get('dead_link'), 'description': bookmark.get('description'), 'html_content': bookmark.get('html_content', ''), 'slow_link': bookmark.get('slow_link', False), } def vectorize_and_index(bookmarks_list): """ Create vector embeddings for bookmarks and build FAISS index with ID mapping. """ logger.info("Vectorizing summaries and building FAISS index") try: summaries = [bookmark['summary'] for bookmark in bookmarks_list] embeddings = embedding_model.encode(summaries) dimension = embeddings.shape[1] index = faiss.IndexIDMap(faiss.IndexFlatL2(dimension)) # Assign unique IDs to each bookmark ids = np.array([bookmark['id'] for bookmark in bookmarks_list], dtype=np.int64) index.add_with_ids(np.array(embeddings).astype('float32'), ids) logger.info("FAISS index built successfully with IDs") return index except Exception as e: logger.error(f"Error in vectorizing and indexing: {e}", exc_info=True) raise def display_bookmarks(): """ Generate HTML display for bookmarks. """ logger.info("Generating HTML display for bookmarks") cards = '' for i, bookmark in enumerate(bookmarks): index = i + 1 if bookmark.get('dead_link'): status = "❌ Dead Link" card_style = "border: 2px solid red;" text_style = "color: red;" elif bookmark.get('slow_link'): status = "⏳ Slow Response" card_style = "border: 2px solid orange;" text_style = "color: orange;" else: status = "✅ Active" card_style = "border: 2px solid green;" text_style = "color: black;" title = bookmark['title'] url = bookmark['url'] etag = bookmark.get('etag', 'N/A') summary = bookmark.get('summary', '') category = bookmark.get('category', 'Uncategorized') # Escape HTML content to prevent XSS attacks from html import escape title = escape(title) url = escape(url) summary = escape(summary) category = escape(category) card_html = f'''