🐦 Twitter Post Details

Viewing enriched Twitter post

@llama_index

Define a Research Workflow for a RAG-powered agent 📖🤖 This is a cool notebook by @quantoceanli showing how you can build an agentic workflow to do scientific research from ArXiv, Wikipedia, textbooks, and more. Have it first fetch relevant abstracts from ArXiv, propose an idea, and lookup information through sources. Afterwards trace through intermediate responses in between tool lookups. Built with @llama_index + LionAGI - check it out! https://t.co/gpedEXHMps

Media 1

📊 Media Metadata

{
  "media": [
    {
      "url": "https://pbs.twimg.com/media/GGQtK4KagAAnVpY.jpg",
      "type": "photo",
      "original_url": "https://pbs.twimg.com/media/GGQtK4KagAAnVpY.jpg"
    }
  ],
  "conversion_date": "2025-08-13T00:43:14.245448",
  "format_converted": true,
  "original_structure": "had_media_only"
}

🔧 Raw API Response

{
  "user": {
    "created_at": "2022-12-18T00:52:44.000Z",
    "default_profile_image": false,
    "description": "The way to connect LLMs to your data.\n\nGithub: https://t.co/HC19j7vMwc\nDocs: https://t.co/QInqg2zksh\nDiscord: https://t.co/3ktq3zzYII\nhttps://t.co/UXeIlwvvbA",
    "fast_followers_count": 0,
    "favourites_count": 973,
    "followers_count": 53335,
    "friends_count": 21,
    "has_custom_timelines": false,
    "is_translator": false,
    "listed_count": 975,
    "location": "",
    "media_count": 756,
    "name": "LlamaIndex 🦙",
    "normal_followers_count": 53335,
    "possibly_sensitive": false,
    "profile_banner_url": "https://pbs.twimg.com/profile_banners/1604278358296055808/1696908553",
    "profile_image_url_https": "https://pbs.twimg.com/profile_images/1623505166996742144/n-PNQGgd_normal.jpg",
    "screen_name": "llama_index",
    "statuses_count": 2026,
    "translator_type": "none",
    "url": "https://t.co/epzefqQqZx",
    "verified": true,
    "withheld_in_countries": [],
    "id_str": "1604278358296055808"
  },
  "id": "1757579982879260891",
  "conversation_id": "1757579982879260891",
  "full_text": "Define a Research Workflow for a RAG-powered agent 📖🤖\n\nThis is a cool notebook by @quantoceanli showing how you can build an agentic workflow to do scientific research from ArXiv, Wikipedia, textbooks, and more.\n\nHave it first fetch relevant abstracts from ArXiv, propose an idea, and lookup information through sources. Afterwards trace through intermediate responses in between tool lookups.\n\nBuilt with @llama_index + LionAGI - check it out!\n\nhttps://t.co/gpedEXHMps",
  "reply_count": 3,
  "retweet_count": 49,
  "favorite_count": 219,
  "hashtags": [],
  "symbols": [],
  "user_mentions": [
    {
      "id_str": "1695804536647041024",
      "name": "Ocean Li",
      "screen_name": "quantoceanli",
      "profile": "https://twitter.com/quantoceanli"
    }
  ],
  "urls": [],
  "media": [
    {
      "media_url": "https://pbs.twimg.com/media/GGQtK4KagAAnVpY.jpg",
      "type": "photo"
    }
  ],
  "url": "https://twitter.com/llama_index/status/1757579982879260891",
  "created_at": "2024-02-14T01:38:16.000Z",
  "#sort_index": "1757579982879260891",
  "view_count": 18235,
  "quote_count": 1,
  "is_quote_tweet": false,
  "is_retweet": false,
  "is_pinned": false,
  "is_truncated": true,
  "startUrl": "https://twitter.com/llama_index/status/1757579982879260891"
}