🐦 Twitter Post Details

Viewing enriched Twitter post

@omarsar0

New research from Meta. Building synthetic training data has stayed a fixed pipeline that you hand-tune and then freeze. Autodata casts an AI agent as a data scientist that builds training and evaluation data, with an implementation called Agentic Self-Instruct that extends classic Self-Instruct with agentic planning and tool use. Think of it as meta-optimization, where the data scientist agent is itself trained to produce stronger data, so the pipeline keeps improving instead of staying static. Across computer science research, legal reasoning, and reasoning over mathematical objects, it beats classical synthetic-data methods, and meta-optimizing the agent delivers an even larger uplift. Paper: https://t.co/TgFN6EHZas Learn to build effective AI agents in our academy: https://t.co/1e8RZKs4uX

Media 1

📊 Media Metadata

{
  "media": [
    {
      "url": "https://crmoxkoizveukayfjuyo.supabase.co/storage/v1/object/public/media/posts/2070235085732000228/media_0.jpg",
      "media_url": "https://crmoxkoizveukayfjuyo.supabase.co/storage/v1/object/public/media/posts/2070235085732000228/media_0.jpg",
      "type": "photo",
      "filename": "media_0.jpg"
    }
  ],
  "processed_at": "2026-06-29T15:03:00.372663",
  "pipeline_version": "2.0"
}

🔧 Raw API Response

{
  "type": "tweet",
  "id": "2070235085732000228",
  "url": "https://x.com/omarsar0/status/2070235085732000228",
  "twitterUrl": "https://twitter.com/omarsar0/status/2070235085732000228",
  "text": "New research from Meta.\n\nBuilding synthetic training data has stayed a fixed pipeline that you hand-tune and then freeze.\n\nAutodata casts an AI agent as a data scientist that builds training and evaluation data, with an implementation called Agentic Self-Instruct that extends classic Self-Instruct with agentic planning and tool use.\n\nThink of it as meta-optimization, where the data scientist agent is itself trained to produce stronger data, so the pipeline keeps improving instead of staying static.\n\nAcross computer science research, legal reasoning, and reasoning over mathematical objects, it beats classical synthetic-data methods, and meta-optimizing the agent delivers an even larger uplift.\n\nPaper: https://t.co/TgFN6EHZas\n\nLearn to build effective AI agents in our academy: https://t.co/1e8RZKs4uX",
  "source": "Twitter for iPhone",
  "retweetCount": 80,
  "replyCount": 31,
  "likeCount": 497,
  "quoteCount": 6,
  "viewCount": 104697,
  "createdAt": "Thu Jun 25 19:58:02 +0000 2026",
  "lang": "en",
  "bookmarkCount": 510,
  "isReply": false,
  "inReplyToId": null,
  "conversationId": "2070235085732000228",
  "displayTextRange": [
    0,
    276
  ],
  "inReplyToUserId": null,
  "inReplyToUsername": null,
  "author": {
    "type": "user",
    "userName": "omarsar0",
    "url": "https://x.com/omarsar0",
    "twitterUrl": "https://twitter.com/omarsar0",
    "id": "3448284313",
    "name": "elvis",
    "isVerified": false,
    "isBlueVerified": true,
    "verifiedType": null,
    "profilePicture": "https://pbs.twimg.com/profile_images/939313677647282181/vZjFWtAn_normal.jpg",
    "coverPicture": "https://pbs.twimg.com/profile_banners/3448284313/1565974901",
    "description": "",
    "location": "DAIR.AI Academy",
    "followers": 309162,
    "following": 882,
    "status": "",
    "canDm": true,
    "canMediaTag": true,
    "createdAt": "Fri Sep 04 12:59:26 +0000 2015",
    "entities": {
      "description": {
        "urls": []
      },
      "url": {}
    },
    "fastFollowersCount": 0,
    "favouritesCount": 37079,
    "hasCustomTimelines": true,
    "isTranslator": true,
    "mediaCount": 4752,
    "statusesCount": 18502,
    "withheldInCountries": [],
    "affiliatesHighlightedLabel": {},
    "possiblySensitive": false,
    "pinnedTweetIds": [
      "2071595490454434214"
    ],
    "profile_bio": {
      "description": "Building self-improving AI @dair_ai • Prev: Meta AI | PhD • Learn about AI Agents for FREE here: https://t.co/P5SA9u54xO",
      "entities": {
        "description": {
          "urls": [
            {
              "display_url": "academy.dair.ai/courses/elemen…",
              "expanded_url": "https://academy.dair.ai/courses/elements-of-ai-agents",
              "indices": [
                97,
                120
              ],
              "url": "https://t.co/P5SA9u54xO"
            }
          ],
          "user_mentions": [
            {
              "id_str": "",
              "indices": [
                27,
                35
              ],
              "name": "",
              "screen_name": "dair_ai"
            }
          ]
        },
        "url": {
          "urls": [
            {
              "display_url": "dair.ai",
              "expanded_url": "https://www.dair.ai/",
              "indices": [
                0,
                23
              ],
              "url": "https://t.co/XQto5ypkSM"
            }
          ]
        }
      }
    },
    "isAutomated": false,
    "automatedBy": null
  },
  "extendedEntities": {
    "media": [
      {
        "display_url": "pic.twitter.com/EY56cyfsMZ",
        "expanded_url": "https://twitter.com/omarsar0/status/2070235085732000228/photo/1",
        "ext_master_playlist_only": [],
        "ext_media_availability": {
          "status": "Available"
        },
        "ext_playlists": [],
        "features": {
          "large": {
            "faces": []
          },
          "orig": {
            "faces": []
          }
        },
        "id_str": "2070235081596375040",
        "indices": [
          277,
          300
        ],
        "media_key": "3_2070235081596375040",
        "media_results": {
          "id": "QXBpTWVkaWFSZXN1bHRzOgwAAQoAARy689aQGpAACgACHLrz14abMeQAAA==",
          "result": {
            "__typename": "ApiMedia",
            "id": "QXBpTWVkaWE6DAABCgABHLrz1pAakAAKAAIcuvPXhpsx5AAA",
            "media_key": "3_2070235081596375040"
          }
        },
        "media_url_https": "https://pbs.twimg.com/media/HLrz1pAakAAnmjG.jpg",
        "original_info": {
          "focus_rects": [
            {
              "h": 907,
              "w": 1620,
              "x": 0,
              "y": 0
            },
            {
              "h": 1620,
              "w": 1620,
              "x": 0,
              "y": 0
            },
            {
              "h": 1847,
              "w": 1620,
              "x": 0,
              "y": 0
            },
            {
              "h": 1854,
              "w": 927,
              "x": 0,
              "y": 0
            },
            {
              "h": 1854,
              "w": 1620,
              "x": 0,
              "y": 0
            }
          ],
          "height": 1854,
          "width": 1620
        },
        "sizes": {
          "large": {
            "h": 1854,
            "w": 1620
          }
        },
        "type": "photo",
        "url": "https://t.co/EY56cyfsMZ"
      }
    ]
  },
  "card": null,
  "place": {},
  "entities": {
    "hashtags": [],
    "symbols": [],
    "urls": [
      {
        "display_url": "arxiv.org/abs/2606.25996",
        "expanded_url": "https://arxiv.org/abs/2606.25996",
        "indices": [
          710,
          733
        ],
        "url": "https://t.co/TgFN6EHZas"
      },
      {
        "display_url": "academy.dair.ai",
        "expanded_url": "https://academy.dair.ai/",
        "indices": [
          786,
          809
        ],
        "url": "https://t.co/1e8RZKs4uX"
      }
    ],
    "user_mentions": []
  },
  "quoted_tweet": null,
  "retweeted_tweet": null,
  "isLimitedReply": false,
  "communityInfo": null,
  "article": null
}