Zijie Tian e874229adc 📝 docs: add comprehensive GPU-only vs Offload benchmark results
- Add --block-size argument to bench.py for configurable KV cache block size
- Update bench_offload_results.md with complete benchmark analysis:
  - GPU-only: XAttention shows +15% to +41% speedup
  - CPU Offload: XAttention shows -14% to -59% slowdown
  - Block size 4096 recommended for best performance
  - Document why XAttention hurts Offload mode (transfer bottleneck)

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via [Happy](https://happy.engineering)

Co-Authored-By: Claude <noreply@anthropic.com>
Co-Authored-By: Happy <yesreply@happy.engineering>
2026-01-27 22:32:07 +08:00
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GeeeekExplorer%2Fnano-vllm | Trendshift

Nano-vLLM

A lightweight vLLM implementation built from scratch.

Key Features

  • 🚀 Fast offline inference - Comparable inference speeds to vLLM
  • 📖 Readable codebase - Clean implementation in ~ 1,200 lines of Python code
  • Optimization Suite - Prefix caching, Tensor Parallelism, Torch compilation, CUDA graph, etc.

Installation

pip install git+https://github.com/GeeeekExplorer/nano-vllm.git

Model Download

To download the model weights manually, use the following command:

huggingface-cli download --resume-download Qwen/Qwen3-0.6B \
  --local-dir ~/huggingface/Qwen3-0.6B/ \
  --local-dir-use-symlinks False

Quick Start

See example.py for usage. The API mirrors vLLM's interface with minor differences in the LLM.generate method:

from nanovllm import LLM, SamplingParams
llm = LLM("/YOUR/MODEL/PATH", enforce_eager=True, tensor_parallel_size=1)
sampling_params = SamplingParams(temperature=0.6, max_tokens=256)
prompts = ["Hello, Nano-vLLM."]
outputs = llm.generate(prompts, sampling_params)
outputs[0]["text"]

Benchmark

See bench.py for benchmark.

Test Configuration:

  • Hardware: RTX 4070 Laptop (8GB)
  • Model: Qwen3-0.6B
  • Total Requests: 256 sequences
  • Input Length: Randomly sampled between 1001024 tokens
  • Output Length: Randomly sampled between 1001024 tokens

Performance Results:

Inference Engine Output Tokens Time (s) Throughput (tokens/s)
vLLM 133,966 98.37 1361.84
Nano-vLLM 133,966 93.41 1434.13

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Description
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Readme MIT 3 MiB
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Python 96.2%
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C++ 1.1%
Cuda 0.3%