🐦 Twitter Post Details
Viewing enriched Twitter post
📊 Media Metadata
{
"score": 0.34,
"score_components": {
"author": 0.09,
"engagement": 0.0,
"quality": 0.04000000000000001,
"source": 0.135,
"nlp": 0.05,
"recency": 0.025
},
"scored_at": "2026-03-10T20:22:56.622093",
"import_source": "api_import",
"source_tagged_at": "2026-03-10T20:22:56.622103",
"enriched": true,
"enriched_at": "2026-03-10T20:22:56.622106"
} 🔧 Raw API Response
{
"type": "tweet",
"id": "2031421162123870239",
"url": "https://x.com/GoogleAIStudio/status/2031421162123870239",
"twitterUrl": "https://twitter.com/GoogleAIStudio/status/2031421162123870239",
"text": "https://t.co/mIXzM657cR",
"source": "Twitter for iPhone",
"retweetCount": 234,
"replyCount": 48,
"likeCount": 2897,
"quoteCount": 59,
"viewCount": 214232,
"createdAt": "Tue Mar 10 17:25:21 +0000 2026",
"lang": "zxx",
"bookmarkCount": 1813,
"isReply": false,
"inReplyToId": null,
"conversationId": "2031421162123870239",
"displayTextRange": [
0,
23
],
"inReplyToUserId": null,
"inReplyToUsername": null,
"author": {
"type": "user",
"userName": "GoogleAIStudio",
"url": "https://x.com/GoogleAIStudio",
"twitterUrl": "https://twitter.com/GoogleAIStudio",
"id": "1742923424056713217",
"name": "Google AI Studio",
"isVerified": false,
"isBlueVerified": false,
"verifiedType": "Business",
"profilePicture": "https://pbs.twimg.com/profile_images/1957558782067896323/6jXpPKD4_normal.png",
"coverPicture": "https://pbs.twimg.com/profile_banners/1742923424056713217/1773068211",
"description": "",
"location": "It's time to build",
"followers": 121218,
"following": 2,
"status": "",
"canDm": true,
"canMediaTag": true,
"createdAt": "Thu Jan 04 14:58:26 +0000 2024",
"entities": {
"description": {
"urls": []
},
"url": {}
},
"fastFollowersCount": 0,
"favouritesCount": 153,
"hasCustomTimelines": true,
"isTranslator": false,
"mediaCount": 40,
"statusesCount": 88,
"withheldInCountries": [],
"affiliatesHighlightedLabel": {},
"possiblySensitive": false,
"pinnedTweetIds": [],
"profile_bio": {
"description": "The fastest path from prompt to production with Gemini",
"entities": {
"description": {
"hashtags": [],
"symbols": [],
"urls": [],
"user_mentions": []
},
"url": {
"urls": [
{
"display_url": "ai.studio/build",
"expanded_url": "https://ai.studio/build",
"indices": [
0,
23
],
"url": "https://t.co/dp8FrcqyIA"
}
]
}
}
},
"isAutomated": false,
"automatedBy": null
},
"extendedEntities": {},
"card": null,
"place": {},
"entities": {
"hashtags": [],
"symbols": [],
"timestamps": [],
"urls": [
{
"display_url": "x.com/i/article/2031…",
"expanded_url": "http://x.com/i/article/2031415977049731077",
"indices": [
0,
23
],
"url": "https://t.co/mIXzM657cR"
}
],
"user_mentions": []
},
"quoted_tweet": null,
"retweeted_tweet": null,
"isLimitedReply": false,
"article": {
"title": "Gemini Embedding 2: Our first natively multimodal embedding model",
"preview_text": "Gemini Embedding 2 is our first natively multimodal embedding model that maps text, images, video, audio and documents into a single embedding space, enabling multimodal retrieval and classification",
"cover_media_img_url": "https://pbs.twimg.com/media/HDEOl73a0AAqw4G.jpg"
}
}