Kimi-K2.5-NVFP4 Windows 11

The shortest path to running this model is by activating Hyper-V features.

Simply follow the directions outlined below.

The loader auto-caches the model archive (several GBs included).

During setup, the script automatically determines and applies the best settings.

📊 File Hash: e44fde96f3c06278305e51c6778cc45e — Last update: 2026-06-27
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  • Processor: 6-core 3.5 GHz minimum required
  • RAM: fast 5600MHz+ required to avoid memory bottlenecks
  • Disk Space: 80 GB NVMe SSD required for fast model weights loading
  • GPU: RTX 4080 / RTX 4090 recommended for 26B-A4B fast inference

The Kimi-K2.5-NVFP4 model introduces a breakthrough in efficient inference for large language tasks. Built on a sparse-attention architecture, it reduces computational load while preserving high contextual understanding. The model achieves state‑of‑the‑art performance on benchmarks such as MMLU and TriviaQA, often outperforming larger parameter counterparts. Its parameter count and memory footprint are optimized for deployment on consumer‑grade hardware, as illustrated in the comparison table below.

Training Data Size 1.5 TB
Parameter Count 7B
Inference Latency (ms) 12
GPU Memory (GB) 16

The following table provides key metrics including training data size, inference latency, and GPU memory usage, enabling developers to assess suitability for their applications.

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