B2 Real News

Agon: Competitive Cross-Model RL with Implicit Rival Grading of Reasoning

Reinforcement learning from verifiable rewards (e.g. GRPO) is the engine behind today's reasoning models, yet it grades only the final answer. On hard problems this trains models to write more rather than to think better, since the trace itself is never graded and no label for good thinking exists. We introduce Agon, which makes two competing models each other's graders. Both attempt the same problem; in alternating roles, one drafts a solution and the other reads it while solving, and each is rewarded for out-solving the other. To win, a model must out-reason a rival that has seen its work, so reasoning is judged implicitly during training, with no process labels and no reward model. Because both models are optimized, each faces a progressively stronger rival, which single-model RL cannot provide. The two need only be comparably strong and behaviorally different. At inference the pair deploys as it trains, a two-stage cascade in which one model drafts and the other answers after reading the draft. On the hard split of DeepMath with Qwen3, this doubles GRPO's pass@1, roughly eight times the gain of an untrained Mixture-of-Agents pass over the same base. The ordering replicates on competitive-programming code and across model families (Qwen3.5, Gemma 4). For now the models talk in text; the next step is to let them reason together in latent space.

Cover image for Agon: Competitive Cross-Model RL with Implicit Rival Grading of Reasoning
Image: Daily English Reader / Local generated SVG (Project-owned local asset)
5 min read B2

B2 reading

Select any word for its Thai meaning and pronunciation.

0:00 0:00
Reinforcement learning from verifiable rewards (e.g. GRPO) is the engine behind today's reasoning models, yet it grades only the final answer. On hard problems this trains models to write more rather than to think better, since the trace itself is never graded and no label for good thinking exists. We introduce Agon, which makes two competing models each other's graders. Both attempt the same problem; in alternating roles, one drafts a solution and the other reads it while solving, and each is rewarded for out-solving the other. To win, a model must out-reason a rival that has seen its work, so reasoning is judged implicitly during training, with no process labels and no reward model. Because both models are optimized, each faces a progressively stronger rival, which single-model RL cannot provide. The two need only be comparably strong and behaviorally different. At inference the pair deploys as it trains, a two-stage cascade in which one model drafts and the other answers after reading the draft.

ประโยคและวลีที่ใช้ได้จริงจากเรื่องนี้

Useful phrases from this story

learning from verifiable rewardsCollocation

การเรียนรู้จากรางวัลที่สามารถตรวจสอบได้.

From the storyReinforcement learning from verifiable rewards (e.g.

is the engine behind today'sCollocation

เป็นเครื่องยนต์ที่อยู่เบื้องหลังของวันนี้.

From the storyGRPO) is the engine behind today's reasoning models, yet it grades only the final answer.

is never graded and noCollocation

ไม่เคยได้รับการประเมินและไม่.

From the storyOn hard problems this trains models to write more rather than to think better, since the trace itself is never graded and no label for good thinking exists.

competing models each other's gradersCollocation

รูปแบบแข่งขัน คะแนนกันและกัน.

From the storyWe introduce Agon, which makes two competing models each other's graders.

is rewarded for out-solving theCollocation

เป็นรางวัลสําหรับการแก้ไข.

From the storyBoth attempt the same problem; in alternating roles, one drafts a solution and the other reads it while solving, and each is rewarded for out-solving the other.

Save & Review

Only words saved from this story appear here.