DeepSeek-R1-Distill-Llama-8B GGUF size and VRAM requirements
DeepSeek-R1-Distill-Llama-8B is a 8.03-billion-parameter AI model derived from the LLaMA family, designed for efficient inference and performance optimization through distillation techniques. It is intended for tasks requiring a balance of computational efficiency and accuracy, leveraging the foundational architecture of its source model. The original version is hosted on Hugging Face, with quantized variants available for deployment in tools like LM Studio.
To run bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF locally at a 4,096-token context, its quantized versions need between 4.05 GB (IQ2_M, lowest quality) and 31.22 GB (F32, highest quality) of memory, weights plus KV cache and a system margin included.
For most users the best balance is Q6_K_L, needing about 7.68 GB. That means bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF fits entirely in the VRAM of a 6 GB GPU or larger, running fully on the GPU.
Available GGUF quantizations for bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF include IQ2_M, Q2_K, IQ3_XS, Q3_K_S, Q2_K_L, IQ3_M, Q3_K_M, Q3_K_L, IQ4_XS, Q4_0, IQ4_NL, Q4_K_S, Q3_K_XL, Q4_K_M, Q4_1, Q4_K_L, Q5_K_S, Q5_K_M, Q5_K_L, Q6_K, Q6_K_L, Q8_0, F16, F32. The model supports a native context length of up to 131,072 tokens; a longer context grows the KV cache and the memory needed.
GGUF file size and memory by quantization
Compare real GGUF weight sizes, estimated KV cache and total memory for Q4, Q5, Q8 and every quantization published in this repository.
| Quant. | Bits | Quality | Weights | KV | Total | Speed~ | Verdict |
|---|---|---|---|---|---|---|---|
| IQ2_M | 2.94 | Low | 2.75 GB | 0.5 GB | 4.05 GB | 145.7 t/s | Fits in VRAM |
| Q2_K | 3.17 | Low | 2.96 GB | 0.5 GB | 4.26 GB | 135.1 t/s | Fits in VRAM |
| IQ3_XS | 3.51 | Fair | 3.28 GB | 0.5 GB | 4.58 GB | 122.1 t/s | Fits in VRAM |
| Q3_K_S | 3.65 | Fair | 3.41 GB | 0.5 GB | 4.71 GB | 117.2 t/s | Fits in VRAM |
| Q2_K_L | 3.68 | Fair | 3.44 GB | 0.5 GB | 4.74 GB | 116.3 t/s | Fits in VRAM |
| IQ3_M | 3.77 | Fair | 3.52 GB | 0.5 GB | 4.82 GB | 113.5 t/s | Fits in VRAM |
| Q3_K_M | 4.0 | Fair | 3.74 GB | 0.5 GB | 5.04 GB | 106.9 t/s | Fits in VRAM |
| Q3_K_L | 4.31 | Good | 4.03 GB | 0.5 GB | 5.33 GB | 99.4 t/s | Fits in VRAM |
| IQ4_XS | 4.43 | Good | 4.14 GB | 0.5 GB | 5.44 GB | 96.6 t/s | Fits in VRAM |
| Q4_0 | 4.66 | Good | 4.35 GB | 0.5 GB | 5.65 GB | 91.9 t/s | Fits in VRAM |
| IQ4_NL | 4.66 | Good | 4.36 GB | 0.5 GB | 5.66 GB | 91.8 t/s | Fits in VRAM |
| Q4_K_S | 4.67 | Good | 4.37 GB | 0.5 GB | 5.67 GB | 91.5 t/s | Fits in VRAM |
| Q3_K_XL | 4.76 | Good | 4.45 GB | 0.5 GB | 5.75 GB | 89.8 t/s | Fits in VRAM |
| Q4_K_M | 4.9 | Good | 4.58 GB | 0.5 GB | 5.88 GB | 87.3 t/s | Fits in VRAM |
| Q4_1 | 5.11 | Very good | 4.78 GB | 0.5 GB | 6.08 GB | 83.7 t/s | Fits in VRAM |
| Q4_K_L | 5.29 | Very good | 4.95 GB | 0.5 GB | 6.25 GB | 80.9 t/s | Fits in VRAM |
| Q5_K_S | 5.58 | Very good | 5.21 GB | 0.5 GB | 6.51 GB | 76.7 t/s | Fits in VRAM |
| Q5_K_M | 5.71 | Very good | 5.34 GB | 0.5 GB | 6.64 GB | 74.9 t/s | Fits in VRAM |
| Q5_K_L | 6.03 | Very good | 5.64 GB | 0.5 GB | 6.94 GB | 70.9 t/s | Fits in VRAM |
| Q6_K | 6.57 | Excellent | 6.14 GB | 0.5 GB | 7.44 GB | 65.1 t/s | Fits in VRAM |
| Q6_K_L | 6.82 | Excellent | 6.38 GB | 0.5 GB | 7.68 GB | 62.7 t/s | Fits in VRAM |
| Q8_0 | 8.51 | Excellent | 7.95 GB | 0.5 GB | 9.25 GB | 6.3 t/s | Offload |
| F16 | 16.01 | Excellent | 14.97 GB | 0.5 GB | 16.27 GB | 3.3 t/s | Offload |
| F32 | 32.01 | Excellent | 29.92 GB | 0.5 GB | 31.22 GB | — | Insufficient |
KV cache computed from the model's exact architecture. Speed is a rough estimate bounded by memory bandwidth.
Frequently asked questions
What kind of model is bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF?
bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF is a reasoning-focused model with 8.03 billion parameters, based on the llama architecture. It is distributed as GGUF files for local inference.
How much VRAM do you need to run bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF?
You need about 5.88 GB of VRAM to run bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF entirely on the GPU using the Q4_K_M quantization (at a 4,096-token context). Smaller quantizations lower the requirement at the cost of quality.
Can I run bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF on an 8 GB GPU?
Yes. With 8 GB of VRAM you can run bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF fully on the GPU using Q6_K_L (about 7.68 GB).
Can I run bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF on a 16 GB GPU?
Yes. With 16 GB of VRAM you can run bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF fully on the GPU using Q8_0 (about 9.25 GB).
Can I run bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF on a 24 GB GPU?
Yes. With 24 GB of VRAM you can run bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF fully on the GPU using F16 (about 16.27 GB).
What context length does bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF support?
bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF supports a native context length of up to 131,072 tokens. A longer context grows the KV cache, so it increases the memory needed to run the model.
What is the best quantization for bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF?
For bartowski/DeepSeek-R1-Distill-Llama-8B-GGUF, a strong default is Q4_K_M, which needs about 5.88 GB and keeps most of the quality while roughly halving the memory versus 8-bit. With VRAM to spare, Q5_K_M or Q6_K add a little more quality; if you are tight on memory, a smaller quantization still runs. Pick the highest quantization that fits your VRAM.