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MiniMax

Join Our 💬 WeChat | 🧩 Discord community.

MiniMax-M3 is Coming

MiniMax-M3 is the next generation of the MiniMax series, building on the agent harness, software engineering, and professional-work foundations established by MiniMax-M2.7. The model is not yet released — this repository exists so the community can share what they need next.

We Want Your Feedback

Before M3 lands, we are listening. If you are using MiniMax-M2.7 (via the API, Agent, or locally) and have something to say about it, please tell us — every report directly shapes M3.

We are especially interested in:

  • 🐛 Bugs and regressions — anything that broke, hallucinated, or behaved unexpectedly in M2.7.
  • 💡 Capability requests — what M2.7 still can't do well for your workload (agent harnesses, SWE, professional work, entertainment, multilingual, long context, tool use, …).
  • 📊 Benchmark gaps — public or internal evals where you would like to see M3 improve.
  • 🧰 Deployment pain points — issues with SGLang, vLLM, Transformers, ModelScope, NIM, or the API.
  • 🧠 Agent / skill feedback — anything you observed while building Agent Teams, Skills, or dynamic tool search on top of M2.7.

How to send feedback

Channel Use for
📮 Open an Issue Bugs, capability requests, M2.7 → M3 comparisons. Pick a template.
💬 WeChat Chinese-speaking community discussion.
🧩 Discord English-speaking community discussion.
✉️ model@minimax.io Private feedback, partnership, or evaluation requests.

If you are reporting a bug from M2.7, please include:

  1. Which inference path you used (MiniMax API / Agent / SGLang / vLLM / Transformers / NIM / ModelScope).
  2. Inference parameters (temperature, top_p, top_k, system prompt).
  3. A minimal reproduction — prompt, expected output, actual output.

In the Meantime — Use M2.7

While M3 is in development, M2.7 remains our latest released model:

Recommended inference parameters for M2.7: temperature=1.0, top_p=0.95, top_k=40.

Stay Updated

Watch this repository for the M3 announcement, release notes, weights, and deployment guides.

Contact Us

Contact us at model@minimax.io.

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