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MiniMax M2.7
MiniMax M2.7 is a 230B sparse MoE model built for complex agentic workflows. 10B parameters active per token. Open weights under non-commercial license. Released March 2026.
Model Specifications
ArchitectureTEXT
Parameters230B
Familyminimax
VRAM (Q4)115.0GB
Mixture of ExpertsActive inference parameters: 10B.
Estimated Quantization Sizes
| Format | Precision | Est. VRAM | Recommendation |
|---|---|---|---|
| FP16 / BF16 | 16-bit | 460.0 GB | Uncompressed Base |
| Q8_0High | 8-bit | 230.0 GB | Near Lossless |
| Q6_K | 6-bit | 172.5 GB | Excellent Balance |
| Q4_K_MPopular | 4-bit | 115.0 GB | Standard Use |
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