NVIDIA Polar: How to Train AI Agents Without Changing Their Code
1mo agoen
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FlowtivityNVIDIA Polar: How to Train AI Agents Without Changing Their Codeflowtivity.aiNVIDIA's Polar framework lets you train any AI agent with reinforcement learning without code changes. A 4B model gained 22.6 points on SWE-Bench using simple GRPO.
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