MiniMax M1 40k
Description
MiniMax-M1 is an open-source, large-scale reasoning model that uses a hybrid-attention architecture for efficient long-context processing. It supports up to a 1 million token context window and 80,000-token reasoning output, matching Gemini 2.5 Pro’s scale while being highly cost-effective. Its Lightning Attention mechanism reduces compute requirements to about 30% of DeepSeek R1’s, and a new reinforcement learning algorithm, CISPO, doubles convergence speed compared to other RL methods. Trained on 512 H800s over three weeks, M1 achieves near state-of-the-art results across software engineering, long-context, and tool-use benchmarks, outperforming most open models and rivaling top closed systems.
Capability Radar
Science uses a reasoning proxy when dedicated science benchmarks are unavailable.
Rankings
| Domain | #Rank | Score | Source |
|---|---|---|---|
| Code Ranking | 223 | 38.0 | AA |
| General Ranking | 235 | 44.0 | AA |
| Math Reasoning | 201 | 45.0 | AA |
| Reasoning | 31 | 80.0 | LS |
| Science | 190 | 49.0 | AA |
Benchmark Scores (LLM Stats)
Biology
Code
Communication
Factuality
Finance
General
Long Context
Math
Reasoning
AA Evaluation Indices
LLM Stats Category Scores
Pricing
Speed
Available Providers
(LS internal units)No provider data available