The ARC Prize organization designs benchmarks which are specifically crafted to demonstrate tasks that humans complete easily, but are difficult for AIs like LLMs, “Reasoning” models, and Agentic frameworks.

ARC-AGI-3 is the first fully interactive benchmark in the ARC-AGI series. ARC-AGI-3 represents hundreds of original turn-based environments, each handcrafted by a team of human game designers. There are no instructions, no rules, and no stated goals. To succeed, an AI agent must explore each environment on its own, figure out how it works, discover what winning looks like, and carry what it learns forward across increasingly difficult levels.

Previous ARC-AGI benchmarks predicted and tracked major AI breakthroughs, from reasoning models to coding agents. ARC-AGI-3 points to what’s next: the gap between AI that can follow instructions and AI that can genuinely explore, learn, and adapt in unfamiliar situations.

You can try the tasks yourself here: https://arcprize.org/arc-agi/3

Here is the current leaderboard for ARC-AGI 3, using state of the art models

  • OpenAI GPT-5.4 High - 0.3% success rate at $5.2K
  • Google Gemini 3.1 Pro - 0.2% success rate at $2.2K
  • Anthropic Opus 4.6 Max - 0.2% success rate at $8.9K
  • xAI Grok 4.20 Reasoning - 0.0% success rate $3.8K.

ARC-AGI 3 Leaderboard
(Logarithmic cost on the horizontal axis. Note that the vertical scale goes from 0% to 3% in this graph. If human scores were included, they would be at 100%, at the cost of approximately $250.)

https://arcprize.org/leaderboard

Technical report: https://arcprize.org/media/ARC_AGI_3_Technical_Report.pdf

In order for an environment to be included in ARC-AGI-3, it needs to pass the minimum “easy for humans” threshold. Each environment was attempted by 10 people. Only environments that could be fully solved by at least two human participants (independently) were considered for inclusion in the public, semi-private and fully-private sets. Many environments were solved by six or more people. As a reminder, an environment is considered solved only if the test taker was able to complete all levels, upon seeing the environment for the very first time. As such, all ARC-AGI-3 environments are verified to be 100% solvable by humans with no prior task-specific training

  • tatterdemalion@programming.dev
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    9 hours ago

    Wdym? It’s existed for at least a decade. Plenty of papers about it. It mastered Atari and Mario. It became the best Go player.

    • bss03@infosec.pub
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      3 hours ago

      Yeah, for a fixed ruleset that can be provided up front the Alpha-Zero approach seems to work great.

      These tasks strike me as a bit different. I’m sure the ruleset is fixed somewhere, but it’s not disclosed to the participants. In the task I walked myself through, there was a new wrinkle in each part – a new interactable, a (more) hidden goal, or an information limit. And, of course, part of the task is “discovering” all that from the bitmap frame(s) provided.

      I’m unconvinced of the hype around “AI”, but this does seem like a legitimate research target that might stymie the Alpha{Go,Zero,Fold} series at least a bit.