How to use from the
Use from the
llama-cpp-python library
# !pip install llama-cpp-python

from llama_cpp import Llama

llm = Llama.from_pretrained(
	repo_id="Chungulus/Agents-A1-Q5_K_M-imatrix-gguf-fable5-calibrated",
	filename="Agents-A1-Q5_K_M-imatrix-gguf-fable5-calibrated.gguf",
)
llm.create_chat_completion(
	messages = "No input example has been defined for this model task."
)

A1-Q5_K_M-imatrix

Static imatrix-calibrated GGUF quant of InternScience/Agents-A1.

llama-cli -hf Chungulus/Agents-A1-Q5_K_M-imatrix-gguf-fable5-calibrated:Agents-A1-Q5_K_M-imatrix-gguf-fable5-calibrated.gguf -p "Write a Python sorting function" -n 160

File

File Size SHA-256
Agents-A1-Q5_K_M-imatrix-gguf-fable5-calibrated.gguf 23.03 GiB 1e95ead178c1cfc187fcac4627515644c0105d3e5ec08f3f2fb9e317470b7840

Quality Snapshot

F16 baseline mini accuracy: 89.58%. F16 baseline PPL on KL holdout: 13.0194.

Metric Value
Mini accuracy 89.58%
Retention vs F16 100.00%
Mean KLD vs F16 0.007785
Same top p 96.83%

Notes

  • Calibration source: Glint-Research/Fable-5-traces
  • MTP is not included because the downloaded checkpoint did not contain MTP tensors.
  • Static imatrix GGUF, not Unsloth Dynamic 2.0 / UD2.
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