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 | 199 | 48.0 | AA |
| General Ranking | 254 | 42.0 | AA |
| Math Reasoning | 201 | 45.0 | AA |
| Reasoning | 33 | 80.0 | LS |
| Science | 207 | 48.0 | AA |
Benchmark Scores (LLM Stats)
Biology
Code
Communication
Factuality
Finance
General
Long Context
Math
Reasoning
AA Evaluation Indices
LLM Stats Category Scores
Pricing
Speed
Provider Price Ranking
Provider Price Ranking
2 providers
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