β‘ Each donation = another big MoE quantized
I host 25+ free APEX MoE quantizations as independent research. My only local hardware is an NVIDIA DGX Spark (122 GB unified memory) β enough for ~30-50B-class MoEs, but bigger ones (200B+) require rented compute on H100/H200/Blackwell, typically $20-100 per quant.
If APEX quants are useful to you, your support directly funds those bigger runs.
π Patreon (Monthly) | β Buy Me a Coffee | β GitHub Sponsors
π Big thanks to Hugging Face for generously donating additional storage β much appreciated.
MiniMax-M2.5 APEX GGUF
APEX (Adaptive Precision for EXpert Models) quantizations of MiniMax-M2.5.
Brought to you by the LocalAI team | APEX Project | Technical Report
Benchmark Results
Benchmarks coming soon. For reference APEX benchmarks on the Qwen3.5-35B-A3B architecture, see mudler/Qwen3.5-35B-A3B-APEX-GGUF.
Available Files
| File | Profile | Size | Best For |
|---|---|---|---|
| MiniMax-M2.5-APEX-I-Balanced.gguf | I-Balanced | 155 GB | Best overall quality/size ratio |
| MiniMax-M2.5-APEX-I-Quality.gguf | I-Quality | 130 GB | Highest quality with imatrix |
| MiniMax-M2.5-APEX-Quality.gguf | Quality | 130 GB | Highest quality standard |
| MiniMax-M2.5-APEX-Balanced.gguf | Balanced | 155 GB | General purpose |
| MiniMax-M2.5-APEX-I-Compact.gguf | I-Compact | 100 GB | Multi-GPU setups, best quality/size |
| MiniMax-M2.5-APEX-Compact.gguf | Compact | 100 GB | Multi-GPU setups |
| MiniMax-M2.5-APEX-I-Mini.gguf | I-Mini | 81 GB | Smallest viable |
What is APEX?
APEX is a quantization strategy for Mixture-of-Experts (MoE) models. It classifies tensors by role (routed expert, shared expert, attention) and applies a layer-wise precision gradient -- edge layers get higher precision, middle layers get more aggressive compression. I-variants use diverse imatrix calibration (chat, code, reasoning, tool-calling, agentic traces, Wikipedia).
See the APEX project for full details, technical report, and scripts.
Architecture
- Model: MiniMax-M2.5 (MiniMaxM2)
- Layers: 62
- Experts: 256 routed + 1 shared (8 active per token)
- Total Parameters: 228.7B
- Active Parameters: ~45B per token
- APEX Config: 5+5 symmetric edge gradient across 62 layers
- Calibration: v1.3 diverse dataset (chat, code, reasoning, multilingual, tool-calling, Wikipedia)
Run with LocalAI
local-ai run mudler/MiniMax-M2.5-APEX-GGUF@MiniMax-M2.5-APEX-I-Balanced.gguf
Credits
APEX is brought to you by the LocalAI team. Developed through human-driven, AI-assisted research. Built on llama.cpp.
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Model tree for mudler/MiniMax-M2.5-APEX-GGUF
Base model
MiniMaxAI/MiniMax-M2.5