How to use from
Docker Model Runner
docker model run hf.co/jkim96/EXAONE-4.5-33B-DASHQ-INT4-g32
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DASH-Q

EXAONE-4.5-33B-DASHQ-INT4-g32

DASH-Q — Diagonal-Aware Shrinkage for Robust PTQ. INT4 · group size 32 · 25.0665 GB (from 68.7003 GB — 2.7x smaller)

DASH-Q checkpoints load with the lightweight DASH-Q runtime — linear layers are packed PackedQuantizedLinear modules, not plain Transformers weights.

Install

pip install git+https://github.com/JaeminK/dashq.git

Load

from dashq import load_quantized

model, tokenizer = load_quantized("jkim96/EXAONE-4.5-33B-DASHQ-INT4-g32", device_map="auto")

Quantization

Field Value
Base model LGAI-EXAONE/EXAONE-4.5-33B
Precision INT4, group size 32
Scale / zero dtype float16
Calibration wikitext2, 128 samples x 2048
Size 25.0665 GB · original 68.7003 GB · 2.7x compression

Benchmarks

Full zero-shot / few-shot results for every DASH-Q checkpoint: github.com/JaeminK/dashq#benchmarks

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