sglang
정보
SGLang은 RadixAttention 프리픽스 캐싱을 활용하여 JSON, 정규식, 에이전트 워크플로우를 위한 고속 구조화 생성에 특화된 고성능 LLM 서빙 프레임워크입니다. 특히 반복되는 프리픽스가 있는 작업에서 상당히 빠른 추론 속도를 제공하여 복잡한 구조화 출력 및 다중 턴 대화에 이상적입니다. 제약 디코딩이 필요하거나 광범위한 프리픽스 공유가 있는 애플리케이션을 구축할 때는 vLLM과 같은 대안보다 SGLang을 선택하십시오.
빠른 설치
Claude Code
추천npx skills add zechenzhangAGI/AI-research-SKILLs/plugin add https://github.com/zechenzhangAGI/AI-research-SKILLsgit clone https://github.com/zechenzhangAGI/AI-research-SKILLs.git ~/.claude/skills/sglangClaude Code에서 이 명령을 복사하여 붙여넣어 스킬을 설치하세요
문서
SGLang
High-performance serving framework for LLMs and VLMs with RadixAttention for automatic prefix caching.
When to use SGLang
Use SGLang when:
- Need structured outputs (JSON, regex, grammar)
- Building agents with repeated prefixes (system prompts, tools)
- Agentic workflows with function calling
- Multi-turn conversations with shared context
- Need faster JSON decoding (3× vs standard)
Use vLLM instead when:
- Simple text generation without structure
- Don't need prefix caching
- Want mature, widely-tested production system
Use TensorRT-LLM instead when:
- Maximum single-request latency (no batching needed)
- NVIDIA-only deployment
- Need FP8/INT4 quantization on H100
Quick start
Installation
# pip install (recommended)
pip install "sglang[all]"
# With FlashInfer (faster, CUDA 11.8/12.1)
pip install sglang[all] flashinfer -i https://flashinfer.ai/whl/cu121/torch2.4/
# From source
git clone https://github.com/sgl-project/sglang.git
cd sglang
pip install -e "python[all]"
Launch server
# Basic server (Llama 3-8B)
python -m sglang.launch_server \
--model-path meta-llama/Meta-Llama-3-8B-Instruct \
--port 30000
# With RadixAttention (automatic prefix caching)
python -m sglang.launch_server \
--model-path meta-llama/Meta-Llama-3-8B-Instruct \
--port 30000 \
--enable-radix-cache # Default: enabled
# Multi-GPU (tensor parallelism)
python -m sglang.launch_server \
--model-path meta-llama/Meta-Llama-3-70B-Instruct \
--tp 4 \
--port 30000
Basic inference
import sglang as sgl
# Set backend
sgl.set_default_backend(sgl.OpenAI("http://localhost:30000/v1"))
# Simple generation
@sgl.function
def simple_gen(s, question):
s += "Q: " + question + "\n"
s += "A:" + sgl.gen("answer", max_tokens=100)
# Run
state = simple_gen.run(question="What is the capital of France?")
print(state["answer"])
# Output: "The capital of France is Paris."
Structured JSON output
import sglang as sgl
@sgl.function
def extract_person(s, text):
s += f"Extract person information from: {text}\n"
s += "Output JSON:\n"
# Constrained JSON generation
s += sgl.gen(
"json_output",
max_tokens=200,
regex=r'\{"name": "[^"]+", "age": \d+, "occupation": "[^"]+"\}'
)
# Run
state = extract_person.run(
text="John Smith is a 35-year-old software engineer."
)
print(state["json_output"])
# Output: {"name": "John Smith", "age": 35, "occupation": "software engineer"}
RadixAttention (Key Innovation)
What it does: Automatically caches and reuses common prefixes across requests.
Performance:
- 5× faster for agentic workloads with shared system prompts
- 10× faster for few-shot prompting with repeated examples
- Zero configuration - works automatically
How it works:
- Builds radix tree of all processed tokens
- Automatically detects shared prefixes
- Reuses KV cache for matching prefixes
- Only computes new tokens
Example (Agent with system prompt):
Request 1: [SYSTEM_PROMPT] + "What's the weather?"
→ Computes full prompt (1000 tokens)
Request 2: [SAME_SYSTEM_PROMPT] + "Book a flight"
→ Reuses system prompt KV cache (998 tokens)
→ Only computes 2 new tokens
→ 5× faster!
Structured generation patterns
JSON with schema
@sgl.function
def structured_extraction(s, article):
s += f"Article: {article}\n\n"
s += "Extract key information as JSON:\n"
# JSON schema constraint
schema = {
"type": "object",
"properties": {
"title": {"type": "string"},
"author": {"type": "string"},
"summary": {"type": "string"},
"sentiment": {"type": "string", "enum": ["positive", "negative", "neutral"]}
},
"required": ["title", "author", "summary", "sentiment"]
}
s += sgl.gen("info", max_tokens=300, json_schema=schema)
state = structured_extraction.run(article="...")
print(state["info"])
# Output: Valid JSON matching schema
Regex-constrained generation
@sgl.function
def extract_email(s, text):
s += f"Extract email from: {text}\n"
s += "Email: "
# Email regex pattern
s += sgl.gen(
"email",
max_tokens=50,
regex=r'[a-zA-Z0-9._%+-]+@[a-zA-Z0-9.-]+\.[a-zA-Z]{2,}'
)
state = extract_email.run(text="Contact [email protected] for details")
print(state["email"])
# Output: "[email protected]"
Grammar-based generation
@sgl.function
def generate_code(s, description):
s += f"Generate Python code for: {description}\n"
s += "```python\n"
# EBNF grammar for Python
python_grammar = """
?start: function_def
function_def: "def" NAME "(" [parameters] "):" suite
parameters: parameter ("," parameter)*
parameter: NAME
suite: simple_stmt | NEWLINE INDENT stmt+ DEDENT
"""
s += sgl.gen("code", max_tokens=200, grammar=python_grammar)
s += "\n```"
Agent workflows with function calling
import sglang as sgl
# Define tools
tools = [
{
"name": "get_weather",
"description": "Get weather for a location",
"parameters": {
"type": "object",
"properties": {
"location": {"type": "string"}
}
}
},
{
"name": "book_flight",
"description": "Book a flight",
"parameters": {
"type": "object",
"properties": {
"from": {"type": "string"},
"to": {"type": "string"},
"date": {"type": "string"}
}
}
}
]
@sgl.function
def agent_workflow(s, user_query, tools):
# System prompt (cached with RadixAttention)
s += "You are a helpful assistant with access to tools.\n"
s += f"Available tools: {tools}\n\n"
# User query
s += f"User: {user_query}\n"
s += "Assistant: "
# Generate with function calling
s += sgl.gen(
"response",
max_tokens=200,
tools=tools, # SGLang handles tool call format
stop=["User:", "\n\n"]
)
# Multiple queries reuse system prompt
state1 = agent_workflow.run(
user_query="What's the weather in NYC?",
tools=tools
)
# First call: Computes full system prompt
state2 = agent_workflow.run(
user_query="Book a flight to LA",
tools=tools
)
# Second call: Reuses system prompt (5× faster)
Performance benchmarks
RadixAttention speedup
Few-shot prompting (10 examples in prompt):
- vLLM: 2.5 sec/request
- SGLang: 0.25 sec/request (10× faster)
- Throughput: 4× higher
Agent workflows (1000-token system prompt):
- vLLM: 1.8 sec/request
- SGLang: 0.35 sec/request (5× faster)
JSON decoding:
- Standard: 45 tok/s
- SGLang: 135 tok/s (3× faster)
Throughput (Llama 3-8B, A100)
| Workload | vLLM | SGLang | Speedup |
|---|---|---|---|
| Simple generation | 2500 tok/s | 2800 tok/s | 1.12× |
| Few-shot (10 examples) | 500 tok/s | 5000 tok/s | 10× |
| Agent (tool calls) | 800 tok/s | 4000 tok/s | 5× |
| JSON output | 600 tok/s | 2400 tok/s | 4× |
Multi-turn conversations
@sgl.function
def multi_turn_chat(s, history, new_message):
# System prompt (always cached)
s += "You are a helpful AI assistant.\n\n"
# Conversation history (cached as it grows)
for msg in history:
s += f"{msg['role']}: {msg['content']}\n"
# New user message (only new part)
s += f"User: {new_message}\n"
s += "Assistant: "
s += sgl.gen("response", max_tokens=200)
# Turn 1
history = []
state = multi_turn_chat.run(history=history, new_message="Hi there!")
history.append({"role": "User", "content": "Hi there!"})
history.append({"role": "Assistant", "content": state["response"]})
# Turn 2 (reuses Turn 1 KV cache)
state = multi_turn_chat.run(history=history, new_message="What's 2+2?")
# Only computes new message (much faster!)
# Turn 3 (reuses Turn 1 + Turn 2 KV cache)
state = multi_turn_chat.run(history=history, new_message="Tell me a joke")
# Progressively faster as history grows
Advanced features
Speculative decoding
# Launch with draft model (2-3× faster)
python -m sglang.launch_server \
--model-path meta-llama/Meta-Llama-3-70B-Instruct \
--speculative-model meta-llama/Meta-Llama-3-8B-Instruct \
--speculative-num-steps 5
Multi-modal (vision models)
@sgl.function
def describe_image(s, image_path):
s += sgl.image(image_path)
s += "Describe this image in detail: "
s += sgl.gen("description", max_tokens=200)
state = describe_image.run(image_path="photo.jpg")
print(state["description"])
Batching and parallel requests
# Automatic batching (continuous batching)
states = sgl.run_batch(
[
simple_gen.bind(question="What is AI?"),
simple_gen.bind(question="What is ML?"),
simple_gen.bind(question="What is DL?"),
]
)
# All 3 processed in single batch (efficient)
OpenAI-compatible API
# Start server with OpenAI API
python -m sglang.launch_server \
--model-path meta-llama/Meta-Llama-3-8B-Instruct \
--port 30000
# Use with OpenAI client
curl http://localhost:30000/v1/chat/completions \
-H "Content-Type: application/json" \
-d '{
"model": "default",
"messages": [
{"role": "system", "content": "You are helpful"},
{"role": "user", "content": "Hello"}
],
"temperature": 0.7,
"max_tokens": 100
}'
# Works with OpenAI Python SDK
from openai import OpenAI
client = OpenAI(base_url="http://localhost:30000/v1", api_key="EMPTY")
response = client.chat.completions.create(
model="default",
messages=[{"role": "user", "content": "Hello"}]
)
Supported models
Text models:
- Llama 2, Llama 3, Llama 3.1, Llama 3.2
- Mistral, Mixtral
- Qwen, Qwen2, QwQ
- DeepSeek-V2, DeepSeek-V3
- Gemma, Phi-3
Vision models:
- LLaVA, LLaVA-OneVision
- Phi-3-Vision
- Qwen2-VL
100+ models from HuggingFace
Hardware support
NVIDIA: A100, H100, L4, T4 (CUDA 11.8+) AMD: MI300, MI250 (ROCm 6.0+) Intel: Xeon with GPU (coming soon) Apple: M1/M2/M3 via MPS (experimental)
References
- Structured Generation Guide - JSON schemas, regex, grammars, validation
- RadixAttention Deep Dive - How it works, optimization, benchmarks
- Production Deployment - Multi-GPU, monitoring, autoscaling
Resources
- GitHub: https://github.com/sgl-project/sglang
- Docs: https://sgl-project.github.io/
- Paper: RadixAttention (arXiv:2312.07104)
- Discord: https://discord.gg/sglang
GitHub 저장소
연관 스킬
content-collections
메타This skill provides a production-tested setup for Content Collections, a TypeScript-first tool that transforms Markdown/MDX files into type-safe data collections with Zod validation. Use it when building blogs, documentation sites, or content-heavy Vite + React applications to ensure type safety and automatic content validation. It covers everything from Vite plugin configuration and MDX compilation to deployment optimization and schema validation.
himalaya-email-manager
커뮤니케이션This Claude Skill enables email management through the Himalaya CLI tool using IMAP. It allows developers to search, summarize, and delete emails from an IMAP account with natural language queries. Use it for automated email workflows like getting daily summaries or performing batch operations directly from Claude.
evaluating-llms-harness
테스팅This Claude Skill runs the lm-evaluation-harness to benchmark LLMs across 60+ standardized academic tasks like MMLU and GSM8K. It's designed for developers to compare model quality, track training progress, or report academic results. The tool supports various backends including HuggingFace and vLLM models.
cloudflare-turnstile
메타This skill provides comprehensive guidance for implementing Cloudflare Turnstile as a CAPTCHA-alternative bot protection system. It covers integration for forms, login pages, API endpoints, and frameworks like React/Next.js/Hono, while handling invisible challenges that maintain user experience. Use it when migrating from reCAPTCHA, debugging error codes, or implementing token validation and E2E tests.
