MiniMax-M2 is an open-weight large language model designed specifically for high-end coding and agentic workflows while staying compact and efficient. It uses a Mixture-of-Experts (MoE) architecture with 230 billion total parameters but only 10 billion activated per token, giving it the behavior of a very large model at a fraction of the runtime cost. The model is tuned for end-to-end developer flows such as multi-file edits, compile–run–fix loops, and test-validated repairs across real repositories and diverse programming languages. It is also optimized for multi-step agent tasks, planning and executing long toolchains that span shell commands, browsers, retrieval systems, and code runners. Benchmarks show that it achieves highly competitive scores on a wide range of intelligence and agent benchmarks, including SWE-Bench variants, Terminal-Bench, BrowseComp, GAIA, and several long-context reasoning suites.

Features

  • MoE-based architecture with 230B total parameters and 10B active per token for strong performance at lower cost
  • Optimized for coding workflows, including multi-file edits, compile–run–test loops, and bug-fixing in real repositories
  • Strong agentic tool-use capabilities across shell, browser, retrieval, and code-execution environments
  • Competitive benchmark performance on SWE-Bench, Terminal-Bench, BrowseComp, GAIA, and broader intelligence suites
  • Open-weight release with deployment recipes for SGLang, vLLM, and MLX on local or cloud GPUs
  • Anthropic-compatible API surface and integration with MiniMax Agent for quick adoption in existing stacks

Project Samples

Project Activity

See All Activity >

Categories

AI Coding, AI Models

License

MIT License

Follow MiniMax-M2

MiniMax-M2 Web Site

Other Useful Business Software
Deliver trusted data with dbt Icon
Deliver trusted data with dbt

dbt Labs empowers data teams to build reliable, governed data pipelines—accelerating analytics and AI initiatives with speed and confidence.

Data teams use dbt to codify business logic and make it accessible to the entire organization—for use in reporting, ML modeling, and operational workflows.
Learn More
Rate This Project
Login To Rate This Project

User Reviews

Be the first to post a review of MiniMax-M2!

Additional Project Details

Registered

2025-12-01