--- license: other license_name: modified-mit license_link: https://huggingface.co/moonshotai/Kimi-K2-Instruct-0905/blob/main/LICENSE library_name: mlx tags: - mlx pipeline_tag: text-generation base_model: moonshotai/Kimi-K2-Instruct-0905 --- # mlx-community/Kimi-K2-Instruct-0905-mlx-DQ3_K_M This model [mlx-community/Kimi-K2-Instruct-0905-mlx-DQ3_K_M](https://huggingface.co/mlx-community/Kimi-K2-Instruct-0905-mlx-DQ3_K_M) was converted to MLX format from [moonshotai/Kimi-K2-Instruct-0905](https://huggingface.co/moonshotai/Kimi-K2-Instruct-0905) using mlx-lm version **0.26.3**. This is created for people using a single Apple Mac Studio M3 Ultra with 512 GB. The 4-bit version of Kimi K2 does not fit. Using research results, we aim to get 4-bit performance from a slightly smaller and smarter quantization. It should also not be so large that it leaves no memory for a useful context window. You can find more similar MLX model quants for Apple Mac Studio with 512 GB at https://huggingface.co/bibproj ```bash pip install mlx-lm mlx_lm.generate --model mlx-community/Kimi-K2-Instruct-0905-mlx-DQ3_K_M --temp 0.6 --min-p 0.01 --max-tokens 4096 --trust-remote-code --prompt "Hallo" ``` --- ## What is this DQ3_K_M? In the Arxiv paper [Quantitative Analysis of Performance Drop in DeepSeek Model Quantization](https://arxiv.org/abs/2505.02390) the authors write, > We further propose `DQ3_K_M`, a dynamic 3-bit quantization method that significantly outperforms traditional `Q3_K_M` variant on various benchmarks, which is also comparable with 4-bit quantization (`Q4_K_M`) approach in most tasks. and > dynamic 3-bit quantization method (`DQ3_K_M`) that outperforms the 3-bit quantization implementation in `llama.cpp` and achieves performance comparable to 4-bit quantization across multiple benchmarks. The resulting multi-bitwidth quantization has been well tested and documented. --- ## How can you create your own DQ3_K_M quants? In the `convert.py` file of mlx-lm on your system ( [you can see the original code here](https://github.com/ml-explore/mlx-lm/blob/main/mlx_lm/convert.py) ), replace the code inside `def mixed_quant_predicate()` with something like ```python index = ( int(path.split(".")[layer_location]) if len(path.split(".")) > layer_location else 0 ) # Build a mixed quant like "DQ3" of Arxiv paper https://arxiv.org/abs/2505.02390 # Quantitative Analysis of Performance Drop in DeepSeek Model Quantization q_bits = 4 if "lm_head" in path: q_bits = 6 #if "tokens" in path: # q_bits = 4 if "attn.kv" in path: q_bits = 6 #if "o_proj" in path: # q_bits = 4 #if "attn.q" in path: # q_bits = 4 # For all "mlp" and "shared experts" if "down_proj" in path: q_bits = 6 #if "up_proj" in path: # q_bits = 4 #if "gate_proj" in path: # q_bits = 4 # For "switch experts" if "switch_mlp.up_proj" in path: q_bits = 3 if "switch_mlp.gate_proj" in path: q_bits = 3 if "switch_mlp.down_proj" in path: q_bits = 3 # Blocks up to 5 are higher quality if index < 5: q_bits = 6 # Every 5th block is "medium" quality if (index % 5) == 0: q_bits = 4 #print("path:", path, "index:", index, "q_bits:", q_bits) return {"group_size": group_size, "bits": q_bits} ``` Should you wish to squeeze more out of your quant, and you do not need to use a larger context window, you can change the last part of the above code to ```python if "switch_mlp.down_proj" in path: q_bits = 4 # Blocks up to 5 are higher quality if index < 5: q_bits = 6 #print("path:", path, "index:", index, "q_bits:", q_bits) return {"group_size": group_size, "bits": q_bits} ``` Then create your DQ3_K_M quant with ```bash mlx_lm.convert --hf-path moonshotai/Kimi-K2-Instruct-0905 --mlx-path your-model-DQ3_K_M -q --quant-predicate mixed_3_4 --trust-remote-code ``` --- Enjoy!