GraySoft
Projects Models Compare Cloud benchmarks FAQ Download guIDE →
Model Intelligence Sheet

Thireus/gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_SPLIT overview

gemma 4 31B it 🤔 What is this HuggingFace repository https://huggingface.co/Thireus/gemma 4 31B it THIREUS BF16 SPECIAL SPLIT/ about? This repository provides…

ggufarxiv:2505.23786license:mitregion:us

Runs locally from ~0.0 MB disk (4 GB VRAM class GPUs with llama.cpp / guIDE).

Downloads
512
Likes
0
Pipeline
Author

Repository Files & Downloads

120 GGUF files detected
Direct downloads for local inference
FileTypeQuantizationSizeLink
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00001-of-00834.ggufGGUFIQ4_K_R415.1 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00002-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00003-of-00834.ggufGGUFIQ4_K_R4756.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00004-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00005-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00006-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00007-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00008-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00009-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00010-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00011-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00012-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00013-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00014-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00015-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00016-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00017-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00018-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00019-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00020-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00021-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00022-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00023-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00024-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00025-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00026-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00027-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00028-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00029-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00030-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00031-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00032-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00033-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00034-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00035-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00036-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00037-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00038-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00039-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00040-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00041-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00042-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00043-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00044-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00045-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00046-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00047-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00048-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00049-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00050-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00051-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00052-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00053-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00054-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00055-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00056-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00057-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00058-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00059-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00060-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00061-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00062-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00063-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00064-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00065-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00066-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00067-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00068-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00069-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00070-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00071-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00072-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00073-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00074-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00075-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00076-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00077-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00078-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00079-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00080-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00081-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00082-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00083-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00084-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00085-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00086-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00087-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00088-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00089-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00090-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00091-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00092-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00093-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00094-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00095-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00096-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00097-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00098-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00099-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00100-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00101-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00102-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00103-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00104-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00105-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00106-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00107-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00108-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00109-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00110-of-00834.ggufGGUFIQ4_K_R462.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00111-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00112-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00113-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00114-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00115-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00116-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00117-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00118-of-00834.ggufGGUFIQ4_K_R423.6 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00119-of-00834.ggufGGUFIQ4_K_R411.8 MBDownload
gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_TENSOR-00120-of-00834.ggufGGUFIQ4_K_R40.0 MBDownload

Model Details

Model IDThireus/gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_SPLIT
AuthorThireus
Pipeline
Licensemit
Base model
Last modified2026-05-28T04:53:53.000Z

Model README

---

license: mit

---

gemma-4-31B-it

🤔 What is this HuggingFace repository about?

This repository provides GGUF-quantized tensors for the gemma-4-31B-it model (official repo: https://huggingface.co/google/gemma-4-31B-it). These GGUF shards are designed to be used with Thireus’ GGUF Tool Suite (https://github.com/Thireus/GGUF-Tool-Suite), a collection of tools that automatically finds the perplexity-optimal mix of quantizations for any given a model size target. With this GGUF Tool Suite, you can produce your own Dynamic 3.0 Quants recipes and achieve optimum accuracy & SOTA quantization performance. Give it a try here: https://gguf.thireus.com/quant_assign.html

  • 📖 Documentation: https://github.com/Thireus/GGUF-Tool-Suite/tree/main/docs
  • 🔍 Example of GGUF recipes: https://github.com/Thireus/GGUF-Tool-Suite/tree/main/recipe_examples
  • 🍳 Cook your own recipe files: https://gguf.thireus.com/quant_assign.html
  • ☁️ Download GGUF models from recipe files: https://gguf.thireus.com/quant_downloader.html
  • 📂 Browse available models: https://huggingface.co/Thireus/collections and https://gguf.thireus.com

tl;dr: Expand the details section below

<details>

cd ~

# Make sure to install all ik_llama.cpp compilation dependencies...
apt install python3-dev python3-pip python3-venv python3-wheel python3-setuptools git acl netcat-openbsd cmake # pipx

# Obtain ik_llama's Thireus version - Windows/macOS/Linux builds available at https://github.com/Thireus/ik_llama.cpp/releases
git clone https://github.com/Thireus/ik_llama.cpp
cd ik_llama.cpp
git pull
# Build ik_llama.cpp
cmake -B build -DGGML_AVX=ON -DGGML_AVX2=ON -DLLAMA_CURL=OFF -DGGML_MAX_CONTEXTS=2048
cmake --build build --config Release -j16
cd ..

# Obtain Thireus' GGUF-Tool-Suite
GIT_LFS_SKIP_SMUDGE=1 git clone https://github.com/Thireus/GGUF-Tool-Suite

# Download model quant mix from recipe file - you can also try the web version: https://gguf.thireus.com/quant_downloader.html
cd GGUF-Tool-Suite
rm -f download.conf # Make sure to copy the relevant download.conf for the model before running quant_assign.py
cp -f models/gemma-4-31B-it/download.conf . # Use the download.conf of the chosen model
mkdir -p kitchen && cd kitchen
# Obtain a recipe example for the chosen model from ../recipe_examples/
../quant_downloader.sh ../recipe_examples/ik_llama.cpp_recipes/gemma-4-31B-it.ROOT-3.5993bpw-11.3565ppl.1GB-GGUF_0GB-GPU_0GB-CPU.9888e4b_831ff04.recipe

# Other recipe examples can be found at https://github.com/Thireus/GGUF-Tool-Suite/tree/main/recipe_examples

# Launch ik_llama's llama-cli:
ulimit -n 9999 # Lifts "too many open files" limitation on Linux
~/ik_llama.cpp/build/bin/llama-server \
  -m gemma-4-31B-it-THIREUS-BF16-SPECIAL_TENSOR-00001-of-00399.gguf \
  -fa auto -amb 1024 -ctk q8_0 -c 32768 -ngl 99 \
  -b 4096 -ub 4096 --warmup-batch --no-mmap --threads 1 \
  --main-gpu 0

</details>

---

❓ Why does this Tool Suite exist?

  1. Compatibility & Speedunsloth’s dynamic quants may not always work optimally with ik_llama.cpp.
  2. Custom Rig Fit – No off-the-shelf GGUF model perfectly matched my VRAM/RAM setup, so I built a way to tailor models and leverage extra VRAM/RAM to reduce perplexity.
  3. Automated PPL-Optimal Quantization – To my knowledge, there was no open source flexible, automated method to minimize perplexity for any bits-per-weight (bpw) target—so I created one with excellent results!

---

📊 How does it compare to other GGUFs?

Here’s how gemma-4-31B-it quantized with Thireus’ GGUF Tool Suite stacks up against other quantizers (lower perplexity = better at equal or lower bpw):

!PPLs Compared With Others

> _Note: The recipe_examples files illustrate good recipes. The Tool Suite computes the optimal ppl/bpw curve for you — just specify your target RAM, VRAM, and quant types, and quant_assign.py finds the best mix._

More perplexity/bpw graphs for other supported models: https://github.com/Thireus/GGUF-Tool-Suite/tree/main/ppl_graphs

---

🚀 How do I get started?

Check out the GGUF Tool Suite README — focus on these sections:

  1. ⚠️ Requirements – Which ik_llama.cpp (or llama.cpp) version to use and how to compile.

- Windows binaries (no patching needed) at: https://github.com/Thireus/ik_llama.cpp/releases

  1. 📥 Download Model Shards – Use quant_downloader.sh or quant_downloader.html to fetch GGUF shards from any recipe.

- Recipe examples: https://github.com/Thireus/GGUF-Tool-Suite/tree/main/recipe_examples

  1. 🧠 Run a Downloaded Model – Sample usage with llama-cli.
  2. 🛠️ Generate a Custom Recipe – Produce recipes tailored to your VRAM/RAM target usage for optimum perplexity.

---

✅ Supported Models

Supported models are listed under models/ in the Tool Suite Github repo. Presence of ppl_results.csv indicates official support and compatibility with quant_assign.py.

---

🤷‍♂️ Will I release baked dynamic quant GGUFs?

No, because I believe in tailored quantization for each user’s hardware. If you prefer ready-made shards, you are welcome to merge them via llama-gguf-split --merge, or request someone to publish them, or rely on generic GGUF dynamic quants such as unsloth's.

Instead, I prefer to share examples of recipes so users can see exactly how they were produced (command included inside these recipe files) and tweak them for their own rigs. The quant_downloader.sh script or quant_downloader.html (web port of this script) handles automatic fetching and verification of each shard. Note that recipes provided by Ubergarm on his model cards are also compatible with quant_downloader.sh and quant_downloader.html, providing a "SPECIAL_SPLIT" version of these models exists (see https://gguf.thireus.com/).

Users who don’t trust the GGUF shards on HuggingFace can also quantize their own by passing recipe lines to llama-quantize --custom-q (see example). Run llama-quantize --help to list compatible quants for quant_assign.py. This approach is especially useful if you prefer llama.cpp over ik_llama.cpp.

---

📦 What’s in this repository?

  • 00001 GGUF header shard – Contains metadata (tokens, chat template, tensor count, etc.). This metadata can be explored directly from the HuggingFace web interface after clicking on that shard.
  • Tensor shards – Each shard holds one tensor; see tensors.map for names, quant types, sizes, SHA-256 hash, shard IDs, etc.
  • GPG-signed filestensors.map and header shard are signed with the key in trusted-keys.asc for tamper detection.
  • Security note – Some papers about various ways to attack GGUFs and LLMs are available online, such as https://arxiv.org/abs/2505.23786, and there are also more classic security exploits like CVE-2024-23496 and CVE-2024-25664 through CVE-2024-25668. Only use GGUFs from reputable, trusted authors—or alternatively self-quantize—to avoid potential exploits.

---

💡 Pro Tips

You can easily download the BF16 model version to quantize your own shards:

mkdir kitchen  
echo '.*=bf16' > kitchen/bf16.recipe  
cd kitchen
../quant_downloader.sh bf16.recipe --qtype BF16 

You can also quantize individual BF16 tensors without the need to download every BF16 .gguf shard:

BF16 model shards can also be individually quantized using a special version of ik_llama.cpp's llama-quantize utility which comes with the --individual-tensors option.

  • Source code: https://github.com/Thireus/ik_llama.cpp/tree/th/quantize_individual_tensors
  • Builds (macOS, Windows and Linux): https://github.com/Thireus/ik_llama.cpp/releases/tag/th-quantize_individual_tensors-b4210-7a44805

Usage example:

./llama-quantize --keep-split --imatrix imatrix_ubergarm.dat --individual-tensors 2,3,1094 Kimi-K2-Thinking-THIREUS-BF16-SPECIAL_TENSOR-00001-of-01097.gguf my_new_shards.gguf iq3_s 12

For more information about how to use it: https://github.com/Thireus/GGUF-Tool-Suite/issues/45

You can produce your own quantized shards from Thireus' special BF16 model using quantize_model.sh found on https://github.com/Thireus/GGUF-Tool-Suite, for example:

./quantize_model.sh --model "gemma-4-31B-it" --qtype iq2_xxs

You can disable reasoning (thinking) when using jinja templates for supported models:

llama-server ... --jinja --chat-template-kwargs '{"enable_thinking": false}'

Enjoy optimized quantization! 🎉

Run Thireus/gemma-4-31B-it-THIREUS-IQ4_K_R4-SPECIAL_SPLIT with guIDE

Download guIDE — the AI-native code editor with local LLM inference and 69 built-in tools.

Download guIDE → · Browse 524k+ models · Compare models

Source: Hugging Face · Compare models