arxiv
PublishedJune 5, 2026 at 4:00 AM
AsyncWebRL: Efficient Multi-Step RL for Visual Web Agents
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arXiv:2606.05597v1 Announce Type: new Abstract: Training vision-language web agents with multi-step RL is compute-intensive, with two dominant forms of inefficiency: idle GPUs in synchronous RL, and trajectories that use more steps and tokens than necessary. We present AsyncWebRL, which addresses bo
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Originally published on arxiv ↗