技能 编程开发 OpenRouter API性能调优

OpenRouter API性能调优

v20260423
openrouter-performance-tuning
本技能提供了一套完整的LLM API性能优化方案,用于解决实际应用中的延迟和吞吐量瓶颈。内容涵盖模型基准测试、实现流式传输(降低首次令牌时间TTFT)以及使用异步编程进行并发请求处理,帮助开发者构建高效、高性能的实时应用。
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概览

OpenRouter Performance Tuning

Overview

OpenRouter adds minimal overhead (~50-100ms) to direct provider calls. Most latency comes from the upstream model. Key levers: model selection (smaller = faster), streaming (lower TTFT), parallel requests, prompt size reduction, and provider routing to faster infrastructure. This skill covers benchmarking, streaming optimization, concurrent processing, and connection tuning.

Benchmark Latency

import os, time, statistics
from openai import OpenAI

client = OpenAI(
    base_url="https://openrouter.ai/api/v1",
    api_key=os.environ["OPENROUTER_API_KEY"],
    default_headers={"HTTP-Referer": "https://my-app.com", "X-Title": "my-app"},
)

def benchmark_model(model: str, prompt: str = "Say hello", n: int = 5) -> dict:
    """Benchmark a model's latency over N requests."""
    latencies = []
    for _ in range(n):
        start = time.monotonic()
        response = client.chat.completions.create(
            model=model,
            messages=[{"role": "user", "content": prompt}],
            max_tokens=50,
        )
        latencies.append((time.monotonic() - start) * 1000)

    return {
        "model": model,
        "p50_ms": round(statistics.median(latencies)),
        "p95_ms": round(sorted(latencies)[int(len(latencies) * 0.95)]),
        "avg_ms": round(statistics.mean(latencies)),
        "min_ms": round(min(latencies)),
        "max_ms": round(max(latencies)),
    }

# Compare fast vs slow models
for model in ["openai/gpt-4o-mini", "anthropic/claude-3-haiku", "anthropic/claude-3.5-sonnet"]:
    result = benchmark_model(model)
    print(f"{result['model']}: p50={result['p50_ms']}ms p95={result['p95_ms']}ms")

Streaming for Lower TTFT

def stream_completion(messages, model="openai/gpt-4o-mini", **kwargs):
    """Stream response for lower time-to-first-token."""
    start = time.monotonic()
    first_token_time = None
    full_content = []

    stream = client.chat.completions.create(
        model=model, messages=messages, stream=True,
        stream_options={"include_usage": True},  # Get token counts at end
        **kwargs,
    )

    for chunk in stream:
        if chunk.choices and chunk.choices[0].delta.content:
            if first_token_time is None:
                first_token_time = (time.monotonic() - start) * 1000
            full_content.append(chunk.choices[0].delta.content)

    total_time = (time.monotonic() - start) * 1000
    return {
        "content": "".join(full_content),
        "ttft_ms": round(first_token_time or 0),
        "total_ms": round(total_time),
    }

Parallel Request Processing

import asyncio
from openai import AsyncOpenAI

async def parallel_completions(prompts: list[str], model="openai/gpt-4o-mini",
                                max_concurrent=10, **kwargs):
    """Process multiple prompts concurrently."""
    semaphore = asyncio.Semaphore(max_concurrent)
    client = AsyncOpenAI(
        base_url="https://openrouter.ai/api/v1",
        api_key=os.environ["OPENROUTER_API_KEY"],
        default_headers={"HTTP-Referer": "https://my-app.com", "X-Title": "my-app"},
    )

    async def process(prompt):
        async with semaphore:
            response = await client.chat.completions.create(
                model=model,
                messages=[{"role": "user", "content": prompt}],
                **kwargs,
            )
            return response.choices[0].message.content

    return await asyncio.gather(*[process(p) for p in prompts])

# 10 requests in parallel instead of sequential
results = asyncio.run(parallel_completions(
    ["Summarize: " + text for text in documents],
    max_concurrent=5,
    max_tokens=200,
))

Performance Optimization Checklist

Optimization Impact Effort
Use streaming TTFT drops 2-10x Low
Use smaller models for simple tasks 2-5x faster Low
Reduce prompt size Proportional to reduction Medium
Set max_tokens Caps response time Low
Parallel requests N requests in ~1 request time Medium
Use :nitro variant Faster inference (where available) Low
Provider routing to fastest 10-30% latency reduction Low
Connection keep-alive Saves TCP/TLS handshake Low

Model Speed Tiers

Speed Models Typical TTFT
Fastest openai/gpt-4o-mini, anthropic/claude-3-haiku 200-500ms
Fast openai/gpt-4o, google/gemini-2.0-flash-001 500ms-1s
Standard anthropic/claude-3.5-sonnet 1-3s
Slow openai/o1, reasoning models 5-30s

Connection Optimization

# Reuse client instance (connection pooling)
# BAD: creating new client per request
for prompt in prompts:
    c = OpenAI(base_url="https://openrouter.ai/api/v1", ...)  # New TCP connection each time
    c.chat.completions.create(...)

# GOOD: reuse single client
client = OpenAI(
    base_url="https://openrouter.ai/api/v1",
    api_key=os.environ["OPENROUTER_API_KEY"],
    timeout=30.0,           # Set appropriate timeout
    max_retries=2,          # Built-in retry with backoff
    default_headers={"HTTP-Referer": "https://my-app.com", "X-Title": "my-app"},
)
for prompt in prompts:
    client.chat.completions.create(...)  # Reuses HTTP connection

Error Handling

Error Cause Fix
High TTFT (>5s) Model cold-starting or overloaded Switch to :nitro variant or different provider
Timeout errors max_tokens too high or model too slow Reduce max_tokens; use streaming; increase timeout
Throughput bottleneck Sequential processing Use async + semaphore for concurrent requests
Inconsistent latency Provider load varies Use provider.order to pin to fastest provider

Enterprise Considerations

  • Benchmark models in your infrastructure, not just locally -- network path matters
  • Use streaming for all user-facing requests to minimize perceived latency
  • Set max_tokens on every request to bound response time and cost
  • Reuse client instances to benefit from HTTP connection pooling
  • Use asyncio.Semaphore to control concurrency and avoid overwhelming the API
  • Monitor P95 latency, not just average -- tail latencies indicate provider issues
  • Consider :nitro model variants for latency-critical paths

References

信息
Category 编程开发
Name openrouter-performance-tuning
版本 v20260423
大小 10.99KB
更新时间 2026-04-28
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