@dair_ai
RT @omarsar0: New research from Google DeepMind. What if LLMs could discover entirely new multi-agent learning algorithms? Designing algo…
Viewing enriched Twitter post
RT @omarsar0: New research from Google DeepMind. What if LLMs could discover entirely new multi-agent learning algorithms? Designing algo…
{
"score": 0.38,
"score_components": {
"author": 0.09,
"engagement": 0.0,
"quality": 0.08000000000000002,
"source": 0.135,
"nlp": 0.05,
"recency": 0.025
},
"scored_at": "2026-03-01T12:16:10.165675",
"import_source": "api_import",
"source_tagged_at": "2026-03-01T12:16:10.165698",
"enriched": true,
"enriched_at": "2026-03-01T12:16:10.165701"
} {
"type": "tweet",
"id": "2026044270109433887",
"url": "https://x.com/dair_ai/status/2026044270109433887",
"twitterUrl": "https://twitter.com/dair_ai/status/2026044270109433887",
"text": "RT @omarsar0: New research from Google DeepMind.\n\nWhat if LLMs could discover entirely new multi-agent learning algorithms?\n\nDesigning algo…",
"source": "Twitter for iPhone",
"retweetCount": 80,
"replyCount": 15,
"likeCount": 380,
"quoteCount": 4,
"viewCount": 41008,
"createdAt": "Mon Feb 23 21:19:30 +0000 2026",
"lang": "en",
"bookmarkCount": 377,
"isReply": false,
"inReplyToId": null,
"conversationId": "2026044270109433887",
"displayTextRange": [
0,
140
],
"inReplyToUserId": null,
"inReplyToUsername": null,
"author": {
"type": "user",
"userName": "dair_ai",
"url": "https://x.com/dair_ai",
"twitterUrl": "https://twitter.com/dair_ai",
"id": "889050642903293953",
"name": "DAIR.AI",
"isVerified": false,
"isBlueVerified": true,
"verifiedType": null,
"profilePicture": "https://pbs.twimg.com/profile_images/1643277398522187778/31dedbLo_normal.jpg",
"coverPicture": "https://pbs.twimg.com/profile_banners/889050642903293953/1742055232",
"description": "",
"location": "",
"followers": 90586,
"following": 1,
"status": "",
"canDm": true,
"canMediaTag": true,
"createdAt": "Sun Jul 23 09:12:45 +0000 2017",
"entities": {
"description": {
"urls": []
},
"url": {}
},
"fastFollowersCount": 0,
"favouritesCount": 4185,
"hasCustomTimelines": true,
"isTranslator": false,
"mediaCount": 161,
"statusesCount": 2963,
"withheldInCountries": [],
"affiliatesHighlightedLabel": {},
"possiblySensitive": false,
"pinnedTweetIds": [
"2028094132090966088"
],
"profile_bio": {
"description": "Democratizing AI research, education, and technologies.",
"entities": {
"description": {
"hashtags": [],
"symbols": [],
"urls": [],
"user_mentions": []
},
"url": {
"urls": [
{
"display_url": "dair.ai",
"expanded_url": "https://www.dair.ai/",
"indices": [
0,
23
],
"url": "https://t.co/lkqPZtMmfU"
}
]
}
}
},
"isAutomated": false,
"automatedBy": null
},
"extendedEntities": {},
"card": null,
"place": {},
"entities": {
"hashtags": [],
"symbols": [],
"timestamps": [],
"urls": [],
"user_mentions": [
{
"id_str": "3448284313",
"indices": [
3,
12
],
"name": "elvis",
"screen_name": "omarsar0"
}
]
},
"quoted_tweet": null,
"retweeted_tweet": {
"type": "tweet",
"id": "2026044154040742150",
"url": "https://x.com/omarsar0/status/2026044154040742150",
"twitterUrl": "https://twitter.com/omarsar0/status/2026044154040742150",
"text": "New research from Google DeepMind.\n\nWhat if LLMs could discover entirely new multi-agent learning algorithms?\n\nDesigning algorithms for multi-agent systems is hard.\n\nClassic approaches like PSRO and counterfactual regret minimization took years of expert effort to develop. Each new game-theoretic setting often demands its own specialized solution.\n\nBut what if you could automate the discovery process itself?\n\nThis research uses LLMs to automatically generate novel multi-agent learning algorithms through iterative prompting and refinement. The LLM proposes algorithm pseudocode, which gets evaluated against game-theoretic benchmarks, and feedback drives the next iteration.\n\nLLMs have absorbed enough algorithmic knowledge from training to serve as creative search engines over the space of possible algorithms. They generate candidates that humans wouldn't think to try.\n\nThe discovered algorithms achieve competitive performance against established hand-crafted baselines across multiple game-theoretic domains.\n\nThis shifts algorithm design from manual expert craft to automated discovery. The same approach could generalize beyond games to any domain where we need novel optimization procedures.\n\nPaper: https://t.co/9AeQYo2LFS\n\nLearn to build effective AI agents in our academy: https://t.co/1e8RZKs4uX",
"source": "Twitter for iPhone",
"retweetCount": 80,
"replyCount": 15,
"likeCount": 380,
"quoteCount": 4,
"viewCount": 41008,
"createdAt": "Mon Feb 23 21:19:03 +0000 2026",
"lang": "en",
"bookmarkCount": 377,
"isReply": false,
"inReplyToId": null,
"conversationId": "2026044154040742150",
"displayTextRange": [
0,
278
],
"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": 291571,
"following": 776,
"status": "",
"canDm": true,
"canMediaTag": true,
"createdAt": "Fri Sep 04 12:59:26 +0000 2015",
"entities": {
"description": {
"urls": []
},
"url": {}
},
"fastFollowersCount": 0,
"favouritesCount": 34909,
"hasCustomTimelines": true,
"isTranslator": true,
"mediaCount": 4525,
"statusesCount": 17379,
"withheldInCountries": [],
"affiliatesHighlightedLabel": {},
"possiblySensitive": false,
"pinnedTweetIds": [
"2028103978190590118"
],
"profile_bio": {
"description": "Building @dair_ai • Prev: Meta AI, Elastic, PhD • New AI learning portal: https://t.co/1e8RZKs4uX",
"entities": {
"description": {
"hashtags": [],
"symbols": [],
"urls": [
{
"display_url": "academy.dair.ai",
"expanded_url": "https://academy.dair.ai/",
"indices": [
74,
97
],
"url": "https://t.co/1e8RZKs4uX"
}
],
"user_mentions": [
{
"id_str": "0",
"indices": [
9,
17
],
"name": "",
"screen_name": "dair_ai"
}
]
},
"url": {
"urls": [
{
"display_url": "dair.ai",
"expanded_url": "https://www.dair.ai/",
"indices": [
0,
23
],
"url": "https://t.co/XQto5ypSIk"
}
]
}
}
},
"isAutomated": false,
"automatedBy": null
},
"extendedEntities": {
"media": [
{
"display_url": "pic.twitter.com/hEHGMPihWV",
"expanded_url": "https://twitter.com/omarsar0/status/2026044154040742150/photo/1",
"ext_media_availability": {
"status": "Available"
},
"features": {
"large": {
"faces": []
},
"orig": {
"faces": []
}
},
"id_str": "2026044150878191616",
"indices": [
279,
302
],
"media_key": "3_2026044150878191616",
"media_results": {
"id": "QXBpTWVkaWFSZXN1bHRzOgwAAQoAARwd9Gu4WkAACgACHB30bHTa8QYAAA==",
"result": {
"__typename": "ApiMedia",
"id": "QXBpTWVkaWE6DAABCgABHB30a7haQAAKAAIcHfRsdNrxBgAA",
"media_key": "3_2026044150878191616"
}
},
"media_url_https": "https://pbs.twimg.com/media/HB30a7haQAAomhP.jpg",
"original_info": {
"focus_rects": [
{
"h": 717,
"w": 1280,
"x": 0,
"y": 0
},
{
"h": 1280,
"w": 1280,
"x": 0,
"y": 0
},
{
"h": 1459,
"w": 1280,
"x": 0,
"y": 0
},
{
"h": 1778,
"w": 889,
"x": 0,
"y": 0
},
{
"h": 1778,
"w": 1280,
"x": 0,
"y": 0
}
],
"height": 1778,
"width": 1280
},
"sizes": {
"large": {
"h": 1778,
"w": 1280
}
},
"type": "photo",
"url": "https://t.co/hEHGMPihWV"
}
]
},
"card": null,
"place": {},
"entities": {
"hashtags": [],
"symbols": [],
"urls": [
{
"display_url": "arxiv.org/abs/2602.16928",
"expanded_url": "https://arxiv.org/abs/2602.16928",
"indices": [
1214,
1237
],
"url": "https://t.co/9AeQYo2LFS"
},
{
"display_url": "academy.dair.ai",
"expanded_url": "https://academy.dair.ai/",
"indices": [
1290,
1313
],
"url": "https://t.co/1e8RZKs4uX"
}
],
"user_mentions": []
},
"quoted_tweet": null,
"retweeted_tweet": null,
"isLimitedReply": false,
"article": null
},
"isLimitedReply": false,
"article": null
}