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AWorld: Orchestrating the Training Recipe for Agentic AI

AWorld, an open-source system for large-scale agent-environment interaction, accelerates experience collection and enhances reinforcement learning, leading to significant improvements in agentic AI performance on complex benchmarks.

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Year
2025
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arXiv 2025
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17
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arxiv.org/abs/2508.20404v2ARXIV-DEFAULT
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Abstract

The learning from practice paradigm is crucial for developing capable Agentic AI systems, yet it is severely hampered by inefficient experience generation, a bottleneck especially pronounced in complex benchmarks like GAIA. To address this, we introduce AWorld, an open-source system engineered for large-scale agent-environment interaction. By distributing tasks across a cluster, AWorld accelerates experience collection by 14.6x compared to standard single-node, sequential execution. This critical speedup makes extensive reinforcement learning practical and scalable. Leveraging this capability, we trained a Qwen3-32B-based agent that achieves pass@1 accuracy of 32.23% on the GAIA test set, which surpasses GPT-4o (27.91%) and rivals DeepSeek-V3 (31.89%). Our open-source system and the resulting agent provide a practical blueprint for a complete agentic AI training pipeline, from efficient interaction to demonstrable model improvement.

Authors

17