Bartowski·QwQ

Huihui Ai QwQ 32B Abliterated GGUF — Hardware Requirements & GPU Compatibility

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Specifications

Publisher
Bartowski
Family
QwQ
Parameters
32B
Release Date
2025-03-07
License
Apache 2.0

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How Much VRAM Does Huihui Ai QwQ 32B Abliterated GGUF Need?

Select a quantization to see compatible GPUs below.

QuantizationBitsVRAM
Q2_K3.4015.0 GB
Q3_K_S3.5015.4 GB
Q3_K_M3.9017.2 GB
Q4_04.0017.6 GB
Q4_K_M4.8021.1 GB
Q5_K_M5.7025.1 GB
Q6_K6.6029.0 GB
Q8_08.0035.2 GB

Which GPUs Can Run Huihui Ai QwQ 32B Abliterated GGUF?

Q4_K_M · 21.1 GB

Huihui Ai QwQ 32B Abliterated GGUF (Q4_K_M) requires 21.1 GB of VRAM to load the model weights. For comfortable inference with headroom for KV cache and system overhead, 28+ GB is recommended. 5 GPUs can run it, including NVIDIA GeForce RTX 5090, NVIDIA GeForce RTX 3090 Ti.

Which Devices Can Run Huihui Ai QwQ 32B Abliterated GGUF?

Q4_K_M · 21.1 GB

21 devices with unified memory can run Huihui Ai QwQ 32B Abliterated GGUF, including NVIDIA DGX H100, NVIDIA DGX A100 640GB, Mac Mini M4 Pro (24 GB).

Related Models

Frequently Asked Questions

How much VRAM does Huihui Ai QwQ 32B Abliterated GGUF need?

Huihui Ai QwQ 32B Abliterated GGUF requires 21.1 GB of VRAM at Q4_K_M, or 35.2 GB at Q8_0.

VRAM = Weights + KV Cache + Overhead

Weights = 32B × 4.8 bits ÷ 8 = 19.2 GB

KV Cache + Overhead 1.9 GB (at 2K context + ~0.3 GB framework)

VRAM usage by quantization

21.1 GB

Learn more about VRAM estimation →

Can NVIDIA GeForce RTX 4090 run Huihui Ai QwQ 32B Abliterated GGUF?

Yes, at Q4_K_L (21.6 GB) or lower. Higher quantizations like Q5_K_S (24.2 GB) exceed the NVIDIA GeForce RTX 4090's 24 GB.

What's the best quantization for Huihui Ai QwQ 32B Abliterated GGUF?

For Huihui Ai QwQ 32B Abliterated GGUF, Q4_K_M (21.1 GB) offers the best balance of quality and VRAM usage. Q4_K_L (21.6 GB) provides better quality if you have the VRAM. The smallest option is IQ2_XXS at 9.7 GB.

VRAM requirement by quantization

IQ2_XXS
9.7 GB
Q2_K
15.0 GB
Q3_K_L
18.0 GB
Q4_K_M
21.1 GB
Q4_K_L
21.6 GB
Q8_0
35.2 GB

★ Recommended — best balance of quality and VRAM usage.

Learn more about quantization →

Can I run Huihui Ai QwQ 32B Abliterated GGUF on a Mac?

Huihui Ai QwQ 32B Abliterated GGUF requires at least 9.7 GB at IQ2_XXS, which exceeds the unified memory of most consumer Macs. You would need a Mac Studio or Mac Pro with a high-memory configuration.

Can I run Huihui Ai QwQ 32B Abliterated GGUF locally?

Yes — Huihui Ai QwQ 32B Abliterated GGUF can run locally on consumer hardware. At Q4_K_M quantization it needs 21.1 GB of VRAM. Popular tools include Ollama, LM Studio, and llama.cpp.

How fast is Huihui Ai QwQ 32B Abliterated GGUF?

At Q4_K_M, Huihui Ai QwQ 32B Abliterated GGUF can reach ~138 tok/s on AMD Instinct MI300X. On NVIDIA GeForce RTX 4090: ~31 tok/s. Speed depends mainly on GPU memory bandwidth. Real-world results typically within ±20%.

tok/s = (bandwidth GB/s ÷ model GB) × efficiency

Example: AMD Instinct MI300X5300 ÷ 21.1 × 0.55 = ~138 tok/s

Estimated speed at Q4_K_M (21.1 GB)

~138 tok/s
~31 tok/s
~103 tok/s
~85 tok/s

Real-world results typically within ±20%. Speed depends on batch size, quantization kernel, and software stack.

Learn more about tok/s estimation →

What's the download size of Huihui Ai QwQ 32B Abliterated GGUF?

At Q4_K_M, the download is about 19.20 GB. The full-precision Q8_0 version is 32.00 GB. The smallest option (IQ2_XXS) is 8.80 GB.

Which GPUs can run Huihui Ai QwQ 32B Abliterated GGUF?

5 consumer GPUs can run Huihui Ai QwQ 32B Abliterated GGUF at Q4_K_M (21.1 GB). Top options include NVIDIA GeForce RTX 5090, AMD Radeon RX 7900 XTX, NVIDIA GeForce RTX 3090. 1 GPU have plenty of headroom for comfortable inference.

Which devices can run Huihui Ai QwQ 32B Abliterated GGUF?

21 devices with unified memory can run Huihui Ai QwQ 32B Abliterated GGUF at Q4_K_M (21.1 GB), including Mac Mini M4 (32 GB), Mac Mini M4 Pro (24 GB), Mac Mini M4 Pro (48 GB), Mac Pro M2 Ultra (192 GB). Apple Silicon Macs use unified memory shared between CPU and GPU, making them well-suited for local LLM inference.