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

sh111111111111111/Qwen3.5-9B-BitClass-GGUF overview

Qwen3.5 9B — BitClass Mixed Precision GGUF Mixed precision GGUF quantizations of Qwen3.5 9B https://huggingface.co/Qwen/Qwen3.5 9B using learned per tensor qua…

ggufqwenqwen3.5deltanetquantizedmixed-precisionbitclasstext-generationbase_model:Qwen/Qwen3.5-9Bbase_model:quantized:Qwen/Qwen3.5-9Blicense:apache-2.0endpoints_compatibleregion:usimatrixconversational

Runs locally from ~3.53 GB disk (4 GB VRAM class GPUs with llama.cpp / guIDE).

Downloads
1,626
Likes
0
Pipeline
text-generation

Repository Files & Downloads

7 GGUF files detected
Direct downloads for local inference
FileTypeQuantizationSizeLink
Qwen3.5-9B-MX-3.0bpw.ggufGGUFGGUF3.53 GBDownload
Qwen3.5-9B-MX-3.2bpw.ggufGGUFGGUF3.56 GBDownload
Qwen3.5-9B-MX-3.5bpw.ggufGGUFGGUF4.08 GBDownload
Qwen3.5-9B-MX-3.8bpw.ggufGGUFGGUF4.17 GBDownload
Qwen3.5-9B-MX-4.0bpw.ggufGGUFGGUF4.27 GBDownload
Qwen3.5-9B-MX-4.5bpw.ggufGGUFGGUF4.88 GBDownload
Qwen3.5-9B-MX-5.0bpw.ggufGGUFGGUF5.09 GBDownload

Model Details

Model IDsh111111111111111/Qwen3.5-9B-BitClass-GGUF
Authorsh111111111111111
Pipelinetext-generation
Licenseapache-2.0
Base modelQwen/Qwen3.5-9B
Last modified2026-06-13T03:58:43.000Z

Model README

---

license: apache-2.0

base_model: Qwen/Qwen3.5-9B

tags:

- qwen

- qwen3.5

- deltanet

- gguf

- quantized

- mixed-precision

- bitclass

pipeline_tag: text-generation

library_name: gguf

---

Qwen3.5-9B — BitClass Mixed-Precision GGUF

Mixed-precision GGUF quantizations of Qwen3.5-9B using learned per-tensor quantization profiles. Each tensor group receives the precision level that minimizes quality loss for its importance — more bits where they matter, fewer where they don't.

Qwen3.5-9B uses a hybrid DeltaNet + Attention architecture (24 DeltaNet layers + 8 standard attention layers). Our pipeline includes full support for DeltaNet's unique tensor groups (in_proj_qkv, in_proj_z, out_proj) alongside standard attention and MLP tensors — 10 suffix groups, 250 weight tensors total.

Seven precision levels from compact (3.0 bpw) to high quality (5.0 bpw).

Models

| File | Target BPW | Size | PPL ↓ | Family |

|---|---|---|---|---|

| Qwen3.5-9B-MX-3.0bpw.gguf | 3.0 | 3.79 GB | 2.099 | IQ |

| Qwen3.5-9B-MX-3.2bpw.gguf | 3.2 | 3.82 GB | 2.072 | IQ |

| Qwen3.5-9B-MX-3.5bpw.gguf | 3.5 | 4.38 GB | 1.957 | KQ |

| Qwen3.5-9B-MX-3.8bpw.gguf | 3.8 | 4.48 GB | 1.957 | KQ |

| Qwen3.5-9B-MX-4.0bpw.gguf | 4.0 | 4.59 GB | 1.922 | KQ |

| Qwen3.5-9B-MX-4.5bpw.gguf | 4.5 | 5.24 GB | 1.879 | KQ |

| Qwen3.5-9B-MX-5.0bpw.gguf | 5.0 | 5.46 GB | ~1.87 | KQ |

> Target BPW is the planner's per-tensor bit budget (and the filename label). The actual

> whole-file BPW runs ~0.3–0.4 higher, because output/embedding tensors are kept at higher

> precision and GGUF carries metadata overhead — see the Size column for the real footprint.

Recommended: MX-3.5bpw for the best quality-to-size ratio. MX-3.0bpw for maximum compression. MX-4.5bpw for the highest quality in this ladder.

How It Compares

| Model | BPW | Size | PPL ↓ | Source |

|---|---|---|---|---|

| ByteShape IQ3_S 2.81 | 2.81 | 3.15 GB | 2.218 | byteshape |

| ByteShape IQ3_S 3.00 | 3.00 | 3.37 GB | 2.069 | byteshape |

| ★ Ours MX-3.0 | 3.0 | 3.79 GB | 2.099 | This repo |

| ByteShape IQ3_S 3.15 | 3.15 | 3.53 GB | 2.033 | byteshape |

| ★ Ours MX-3.2 | 3.2 | 3.82 GB | 2.072 | This repo |

| ★ Ours MX-3.5 | 3.5 | 4.38 GB | 1.957 | This repo |

| ByteShape IQ4_XS 3.60 | 3.60 | 4.04 GB | 1.947 | byteshape |

| ★ Ours MX-4.0 | 4.0 | 4.59 GB | 1.922 | This repo |

| ByteShape IQ4_XS 4.20 | 4.20 | 4.71 GB | 1.866 | byteshape |

| Bartowski Q3_K_S | 4.40 | 4.93 GB | 1.898 | bartowski |

| ★ Ours MX-4.5 | 4.5 | 5.24 GB | 1.879 | This repo |

| ★ Ours MX-5.0 | 5.0 | 5.46 GB | ~1.87 | This repo |

| Bartowski Q4_K_M | 5.50 | 6.17 GB | 1.856 | bartowski |

All models benchmarked in the same session on identical hardware (NVIDIA GB10 ATOM, GPU) for fair comparison.

Key Results

  • Near-parity with ByteShape at low BPW: MX-3.0 (PPL 2.099) vs ByteShape 3.00 (PPL 2.069) — 1.4% behind, at a larger file (3.79 vs 3.37 GB)
  • Competitive at mid-range: MX-3.5 (PPL 1.957) vs ByteShape 3.60 (PPL 1.947) — 0.5% behind, at 4.38 vs 4.04 GB
  • Beats Bartowski Q3_K_S: MX-4.5 (PPL 1.879) vs Bartowski Q3_K_S (PPL 1.898) — 1.0% better, at a larger file (5.24 vs 4.93 GB)

DeltaNet Architecture

Qwen3.5-9B is not a standard transformer. It uses a hybrid architecture:

  • 24 DeltaNet layers with linear attention (in_proj_qkv, in_proj_z, out_proj tensors)
  • 8 standard attention layers (q_proj, k_proj, v_proj, o_proj)
  • 32 MLP layers (gate_proj, up_proj, down_proj)

Our pipeline handles all 10 tensor suffix groups with appropriate quantization profiles for each.

Running with llama.cpp

# Chat
llama-cli -m Qwen3.5-9B-MX-3.5bpw.gguf -cnv

# Server (OpenAI-compatible API)
llama-server -m Qwen3.5-9B-MX-3.5bpw.gguf --port 8080

# Benchmark
llama-perplexity -m Qwen3.5-9B-MX-3.5bpw.gguf -f your_eval_data.txt

Benchmarking Details

All benchmarks run with llama.cpp (commit 406f4e3) on NVIDIA GB10 ATOM GPU with full offload (-ngl 999). Perplexity measured via llama-perplexity on a held-out evaluation set (20 chunks, 512 context). Throughput via llama-bench (512 prompt / 128 generation tokens). All models benchmarked in the same session.

Disclaimer

Independent project. Not affiliated with or endorsed by Qwen, Unsloth, ByteShape, Bartowski, or llama.cpp. Competitor figures are from our own benchmark harness and may differ from those projects' self-reported numbers; competitor file sizes reflect the revision we tested and may since have changed.

License

Apache 2.0, inherited from Qwen3.5-9B.

Acknowledgments

Run sh111111111111111/Qwen3.5-9B-BitClass-GGUF 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