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CLI for managing LLM inference on GPU workstations

Project description

vserve

A CLI for managing LLM inference on GPU workstations.

Download models. Auto-tune limits. Serve with one command. Multiple backends.

Python 3.12+ vLLM 0.19+ llama.cpp Tests License


Install

uv tool install vserve

Or with pip:

pip install vserve

For llama.cpp GGUF tuning support:

pip install 'vserve[llamacpp]'

Quick Start

vserve init                        # scan GPU, backends, CUDA, systemd — write config
vserve add                         # search HuggingFace, pick variant, download
vserve run <model>                 # auto-tune + interactive config + serve
vserve run <model> --tools         # enable tool calling (auto-detected)
vserve run <model> --backend llamacpp  # force a specific backend

Backends

vserve auto-detects the right backend from the model format:

Format Backend Engine
safetensors, GPTQ, AWQ, FP8 vLLM PagedAttention, continuous batching
GGUF llama.cpp CPU/GPU offload, quantized inference

No configuration needed — download a model and vserve run picks the right engine.

vLLM

The default for transformer models in safetensors format. Optimized for high-throughput serving with PagedAttention, KV cache management, and automatic batching.

  • Auto-tunes --max-model-len, --max-num-seqs, --kv-cache-dtype based on your GPU
  • Tool calling with parser auto-detection (Qwen, Llama, Mistral, DeepSeek, Gemma, GPT-OSS)
  • Systemd service management via vllm.service

llama.cpp

For GGUF quantized models. Serves via llama-server with an OpenAI-compatible API.

  • Auto-calculates --n-gpu-layers, --ctx-size, --parallel based on VRAM
  • Partial GPU offload — serve models that don't fully fit in VRAM
  • Tool calling via --jinja (no parser configuration needed)
  • Systemd service management via llama-cpp.service

What It Does

vserve manages the full lifecycle of serving LLMs on a GPU workstation:

  • Download — search HuggingFace, see available weight variants (FP8, NVFP4, BF16, GGUF) with sizes, download only what you need
  • Auto-tune — calculate exactly what context lengths and concurrency your GPU can handle, based on model architecture and available VRAM
  • Tool calling — auto-detects the correct parser from the model's chat template (vLLM) or uses --jinja (llama.cpp)
  • Run/Stop — interactive config wizard, systemd service management, health check with timeout
  • Fan control — temperature-based curve daemon with quiet hours, or hold a fixed speed
  • Multi-user — session-based GPU ownership prevents other users from disrupting your running model
  • Doctor — diagnose GPU, CUDA, backend, systemd issues with actionable fix suggestions

Commands

Command Description
vserve Dashboard — GPU, models, status
vserve init Auto-discover backends and write config
vserve list [name] List models with backend, tools, and limits
vserve add [model] Search and download from HuggingFace with variant picker
vserve rm <name> Remove a downloaded model
vserve tune [model] Calculate context/concurrency limits
vserve run [model] Configure and start serving (auto-tunes if needed)
vserve run <model> --tools Start with tool calling enabled
vserve run <model> --backend llamacpp Force a specific backend
vserve stop Stop the running server
vserve status Show current serving config
vserve fan [auto|off|30-100] GPU fan control with temp-based curve
vserve doctor Check system readiness
vserve cache clean [--all] Clean stale sockets and JIT caches
vserve version Show current version and check for updates
vserve update Update vserve to the latest version

All commands support fuzzy matchingvserve run qwen fp8 finds the right model.


Tool Calling

vLLM

Auto-detects the correct vLLM parser by reading the model's chat template:

Model Family Tool Parser Reasoning Parser
Qwen 2.5 hermes
Qwen 3 hermes qwen3
Qwen 3.5 qwen3_coder qwen3
Llama 3.1 / 3.2 / 3.3 llama3_json
Llama 4 llama4_pythonic
Mistral / Mixtral mistral mistral
DeepSeek V3 / R1 deepseek_v3 deepseek_r1
Gemma 4 gemma4 gemma4
GPT-OSS openai openai_gptoss

Detection is template-based (not model-name regex), so it works for fine-tunes and community uploads.

llama.cpp

Uses --jinja to read the model's chat template directly. No parser selection needed — one flag covers all model families.


Prerequisites

Requirement Check Install
NVIDIA GPU + drivers nvidia-smi nvidia.com/drivers
CUDA toolkit nvcc --version sudo apt install nvidia-cuda-toolkit
systemd (most Linux servers) See troubleshooting
sudo access for systemctl, fan control

For vLLM backend:

Requirement Check Install
vLLM 0.19+ vllm --version docs.vllm.ai

For llama.cpp backend:

Requirement Check Install
llama-server llama-server --version github.com/ggml-org/llama.cpp

Configuration

Auto-discovered on first run. Override at ~/.config/vserve/config.yaml:

# Shared
port: 8888

# vLLM
vllm_root: /opt/vllm
cuda_home: /usr/local/cuda
service_name: vllm
service_user: vllm

# llama.cpp (optional)
llamacpp_root: /opt/llama-cpp
llamacpp_service_name: llama-cpp
llamacpp_service_user: llama-cpp

Directory Layout

/opt/vllm/                     # vLLM backend
├── venv/bin/vllm              # Python venv
├── models/                    # safetensors models
├── configs/                   # limits + profiles
└── logs/

/opt/llama-cpp/                # llama.cpp backend
├── bin/llama-server           # compiled binary
├── models/                    # GGUF models
├── configs/                   # JSON configs
└── logs/

Fan Control

vserve fan              # show status, interactive menu
vserve fan auto         # temp-based curve with quiet hours
vserve fan 80           # hold at 80% (persistent daemon)
vserve fan off          # stop daemon, restore NVIDIA auto

The auto curve ramps with temperature and caps fan speed during quiet hours (configurable). Emergency override at 88C ignores quiet hours.


Architecture

vserve uses a Backend Protocol pattern. Each inference engine implements the same interface:

Backend Protocol
├── VllmBackend        — safetensors, AWQ, FP8, GPTQ
├── LlamaCppBackend    — GGUF
└── (future: SGLang, etc.)

The registry auto-detects the right backend from the model format. All CLI commands work through the protocol — no backend-specific code in the command layer.


Development

git clone https://github.com/Gavin-Qiao/vserve.git
cd vserve
uv sync --dev
uv run pytest tests/              # 318 tests
uv run ruff check src/ tests/     # lint
uv run mypy src/vserve/           # type check

License

MIT

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