Meta-Llama-3.1-405B-Instruct-GGUF
Low bit quantizations of Meta's Llama 3.1 405B Instruct model. Quantized from ollama q4_0 GGUF.
Quantized with llama.cpp b3449
Quant | Notes |
---|---|
BF16 | Brain floating point, very high quality, smaller than F16 |
Q8_0 | 8-bit quantization, high quality, larger size |
Q6_K | 6-bit quantization, very good quality-to-size ratio |
Q5_K | 5-bit quantization, good balance of quality and size |
Q5_0 | Alternative 5-bit quantization, slightly different balance |
Q4_K_M | 4-bit quantization, good for production use |
Q4_K_S | 4-bit quantization, faster inference, efficient for scaling |
Q4_0 | Basic 4-bit quantization, good for experimentation |
Q3_K_L | 3-bit quantization, high-quality with more VRAM requirement |
Q3_K_M | 3-bit quantization, good balance between speed and accuracy |
Q3_K_S | 3-bit quantization, faster inference with minor quality loss |
Q2_K | 2-bit quantization, suitable for general inference tasks |
IQ2_S | Integer 2-bit quantization, optimized for small VRAM environments |
IQ2_XXS | Integer 2-bit quantization, best for ultra-low memory footprint |
IQ1_M | Integer 1-bit quantization, usable |
IQ1_S | Integer 1-bit quantization, not recommended |
For higher quality quantizations (q4+), please refer to nisten/meta-405b-instruct-cpu-optimized-gguf.
Regarding the smaug-bpe
tokenizer, this doesn't make a difference (they are identical). However, if you have concerns you can use the following command to set the llama-bpe
tokenizer:
./gguf-py/scripts/gguf_new_metadata.py --pre-tokenizer "llama-bpe" Llama-3.1-405B-Instruct-old.gguf LLama-3.1-405B-Instruct-fixed.gguf
imatrix
Generated from Q2_K quant.
imatrix calibration data: groups_merged.txt
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