language, license, library_name, pipeline_tag, base_model, tags
language license library_name pipeline_tag base_model tags
id
apache-2.0 gguf text-generation AksaraLLM/Kiel-Pro-0.5B-v3
gguf
llama.cpp
ollama
indonesian
aksarallm
qwen2

Kiel-Pro-0.5B-v3-GGUF

GGUF quantizations of AksaraLLM/Kiel-Pro-0.5B-v3 for inference with llama.cpp, Ollama, LM Studio, and other GGUF runtimes.

Files

File Quant Size Recommended use
Kiel-Pro-0.5B-v3.f16.gguf F16 0.99 GB lossless from safetensors
Kiel-Pro-0.5B-v3.q8_0.gguf Q8_0 0.53 GB near-lossless, ~2× smaller
Kiel-Pro-0.5B-v3.q6_k.gguf Q6_K 0.51 GB high quality, ~2.5× smaller
Kiel-Pro-0.5B-v3.q5_k_m.gguf Q5_K_M 0.42 GB good quality, ~3× smaller
Kiel-Pro-0.5B-v3.q4_k_m.gguf Q4_K_M 0.40 GB recommended default, ~4× smaller

CPU benchmark (AMD EPYC 7763, 2 threads, AVX2)

Quant Prompt eval (32 tok) Generation (16 tok)
q4_k_m 36.7 tok/s 20.1 tok/s

So a 494M model at q4_k_m runs comfortably on a CPU laptop. Larger quants (q5_k_m, q6_k, q8_0) trade a bit of speed for better quality.

Quick start — llama.cpp

huggingface-cli download AksaraLLM/Kiel-Pro-0.5B-v3-GGUF Kiel-Pro-0.5B-v3.q4_k_m.gguf --local-dir .
./llama-cli -m Kiel-Pro-0.5B-v3.q4_k_m.gguf -p "Indonesia adalah" -n 64

Quick start — Ollama

huggingface-cli download AksaraLLM/Kiel-Pro-0.5B-v3-GGUF Kiel-Pro-0.5B-v3.q4_k_m.gguf Modelfile --local-dir .
ollama create aksara-kiel-pro-0.5b-v3 -f Modelfile
ollama run aksara-kiel-pro-0.5b-v3 "Apa ibukota Indonesia?"

Source model

See AksaraLLM/Kiel-Pro-0.5B-v3 for architecture, training data, eval results, and limitations.

Conversion provenance

  • Converted with convert_hf_to_gguf.py from llama.cpp
  • Quantized with llama-quantize from the same build
  • Architecture detected as qwen2
  • All files listed above are reproducible from the source HF safetensors
Description
Model synced from source: AksaraLLM/Kiel-Pro-0.5B-v3-GGUF
Readme 26 KiB