areal-project/AReaL
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The RL Bridge for LLM-based Agent Applications. Made Simple & Flexible.
项目介绍
AReaL is a reinforcement learning (RL) infrastructure designed to bridge foundation model training with modern agent-based applications. It was originally developed by researchers and engineers from Tsinghua IIIS and the AReaL Team at Ant Group.
Built on a fully asynchronous RL training paradigm, AReaL is optimized for efficiency and scalability, making it particularly well-suited for training large-scale reasoning and agentic models.
AReaL’s mission is to make building AI agents accessible, efficient, and cost-effective for a broad community of developers and researchers.
Like milk tea - customizable, scalable, and enjoyable - we hope AReaL brings both flexibility and delight to your AI…
最新指标
| Star | 5.5k | 2026-07-16 |
|---|---|---|
| Fork | 558 | 2026-07-16 |
| 提交 | 986 | 2026-07-16 |
| 发布 | 25 | 2026-07-16 |
| Watcher | 35 | 2026-07-16 |
| 开放 issue | 28 | 2026-07-16 |
| 开放 PR | 77 | 2026-07-16 |