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GGUF Version

GGUF with Quants! Allowing you to run models using KoboldCPP and other AI Environments!

Quantizations:

Quant Type Benefits Cons
Q4_K_M ✅ Smallest size (fastest inference) ❌ Lowest accuracy compared to other quants
✅ Requires the least VRAM/RAM ❌ May struggle with complex reasoning
✅ Ideal for edge devices & low-resource setups ❌ Can produce slightly degraded text quality
Q5_K_M ✅ Better accuracy than Q4, while still compact ❌ Slightly larger model size than Q4
✅ Good balance between speed and precision ❌ Needs a bit more VRAM than Q4
✅ Works well on mid-range GPUs ❌ Still not as accurate as higher-bit models
Q8_0 ✅ Highest accuracy (closest to full model) ❌ Requires significantly more VRAM/RAM
✅ Best for complex reasoning & detailed outputs ❌ Slower inference compared to Q4 & Q5
✅ Suitable for high-end GPUs & serious workloads ❌ Larger file size (takes more storage)
(PLEASE VISIT THE mradermacher/ElaNore3-4B-merged-GGUF FOR THE PROPER FULL QUANTS, THIS entry only has THE F16 precission! - Visit Here)

Model Details:

Read the Model details on huggingface Model Detail Here!

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GGUF
Model size
4B params
Architecture
qwen3
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16-bit

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