🐦 Twitter Post Details

Viewing enriched Twitter post

@llama_index

Learn how @arcee_ai processed millions of pages of NLP research papers using LlamaParse, creating a high-quality dataset for their AI agents: šŸ”¹ Efficient PDF-to-text conversion, preserving complex elements like tables and equations šŸ”¹ Flexible prompt system for refining extraction tasks šŸ”¹ Improved accuracy through iterative prompt adjustments See how LlamaParse outperformed traditional OCR and open-source alternatives in handling intricate scientific content in our case study: https://t.co/ZS0VWaaqCY

Media 1

šŸ“Š Media Metadata

{
  "data": [
    {
      "media_url": "https://pbs.twimg.com/media/GdQrUWEaoAAaLs3.jpg",
      "type": "photo"
    }
  ],
  "score": 0.984,
  "scored_at": "2025-08-09T13:46:07.554891",
  "import_source": "network_archive_import",
  "media": [
    {
      "type": "photo",
      "url": "https://crmoxkoizveukayfjuyo.supabase.co/storage/v1/object/public/media/posts/1861167684806939019/media_0.jpg?",
      "filename": "media_0.jpg",
      "original_url": "https://pbs.twimg.com/media/GdQrUWEaoAAaLs3.jpg"
    }
  ],
  "storage_migrated": true
}

šŸ”§ Raw API Response

{
  "user": {
    "created_at": "2022-12-18T00:52:44.000Z",
    "default_profile_image": false,
    "description": "Build LLM agents over your data\n\nGithub: https://t.co/HC19j7vMwc\nDocs: https://t.co/QInqg2zksh\nDiscord: https://t.co/3ktq3zzYII",
    "fast_followers_count": 0,
    "favourites_count": 1261,
    "followers_count": 82614,
    "friends_count": 26,
    "has_custom_timelines": false,
    "is_translator": false,
    "listed_count": 1366,
    "location": "",
    "media_count": 1375,
    "name": "LlamaIndex šŸ¦™",
    "normal_followers_count": 82614,
    "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": 2997,
    "translator_type": "none",
    "url": "https://t.co/epzefqQqZx",
    "verified": true,
    "withheld_in_countries": [],
    "id_str": "1604278358296055808"
  },
  "id": "1861167684806939019",
  "conversation_id": "1861167684806939019",
  "full_text": "Learn how @arcee_ai processed millions of pages of NLP research papers using LlamaParse, creating a high-quality dataset for their AI agents:\n\nšŸ”¹ Efficient PDF-to-text conversion, preserving complex elements like tables and equations\nšŸ”¹ Flexible prompt system for refining extraction tasks\nšŸ”¹ Improved accuracy through iterative prompt adjustments\n\nSee how LlamaParse outperformed traditional OCR and open-source alternatives in handling intricate scientific content in our case study:\nhttps://t.co/ZS0VWaaqCY",
  "reply_count": 2,
  "retweet_count": 21,
  "favorite_count": 64,
  "hashtags": [],
  "symbols": [],
  "user_mentions": [
    {
      "id_str": "1699072621344923648",
      "name": "Arcee.ai",
      "screen_name": "arcee_ai",
      "profile": "https://twitter.com/arcee_ai"
    }
  ],
  "urls": [],
  "media": [
    {
      "media_url": "https://pbs.twimg.com/media/GdQrUWEaoAAaLs3.jpg",
      "type": "photo"
    }
  ],
  "url": "https://twitter.com/llama_index/status/1861167684806939019",
  "created_at": "2024-11-25T21:58:49.000Z",
  "#sort_index": "1861167684806939019",
  "view_count": 6600,
  "quote_count": 0,
  "is_quote_tweet": false,
  "is_retweet": false,
  "is_pinned": false,
  "is_truncated": true,
  "startUrl": "https://x.com/llama_index/status/1861167684806939019"
}