<?xml version="1.0" encoding="utf-8" standalone="yes"?><rss version="2.0" xmlns:atom="http://www.w3.org/2005/Atom" xmlns:content="http://purl.org/rss/1.0/modules/content/"><channel><title>性能 on 硅基 AGI · 智能体学习与测评</title><link>https://guijiagi.com/tags/%E6%80%A7%E8%83%BD/</link><description>Recent content in 性能 on 硅基 AGI · 智能体学习与测评</description><generator>Hugo</generator><language>zh-cn</language><copyright>本站内容采用 CC BY-NC-SA 4.0 国际许可协议授权</copyright><lastBuildDate>Sun, 12 Jul 2026 19:20:00 +0800</lastBuildDate><atom:link href="https://guijiagi.com/tags/%E6%80%A7%E8%83%BD/index.xml" rel="self" type="application/rss+xml"/><item><title>大模型推理成本优化：从理论到实践</title><link>https://guijiagi.com/posts/article-15/</link><pubDate>Sun, 12 Jul 2026 19:20:00 +0800</pubDate><guid>https://guijiagi.com/posts/article-15/</guid><description>系统性地介绍大模型推理成本优化的各种技术手段，从量化压缩到请求调度的全栈优化方案</description></item><item><title>大模型推理成本优化：从理论到实践</title><link>https://guijiagi.com/posts/b2-5902a9c6/</link><pubDate>Sun, 12 Jul 2026 19:20:00 +0800</pubDate><guid>https://guijiagi.com/posts/b2-5902a9c6/</guid><description>系统性地介绍大模型推理成本优化的各种技术手段，从量化压缩到请求调度的全栈优化方案</description></item><item><title>大模型推理服务压测指南</title><link>https://guijiagi.com/posts/llm-inference-stress-testing/</link><pubDate>Sat, 27 Jun 2026 15:00:00 +0800</pubDate><guid>https://guijiagi.com/posts/llm-inference-stress-testing/</guid><description>大模型推理服务压测指南</description></item><item><title>智能体性能基准测试方法</title><link>https://guijiagi.com/posts/agent-performance-benchmark/</link><pubDate>Sat, 27 Jun 2026 15:00:00 +0800</pubDate><guid>https://guijiagi.com/posts/agent-performance-benchmark/</guid><description>智能体性能基准测试方法</description></item><item><title>智能体负载均衡与并发控制</title><link>https://guijiagi.com/posts/agent-load-balancing/</link><pubDate>Fri, 26 Jun 2026 14:00:00 +0800</pubDate><guid>https://guijiagi.com/posts/agent-load-balancing/</guid><description>深入探讨 AI 智能体系统中的负载均衡策略与并发控制机制，涵盖流量调度、限流降级和弹性伸缩</description></item><item><title>LLM 缓存策略：语义缓存与多级缓存架构</title><link>https://guijiagi.com/posts/llm-caching-strategy/</link><pubDate>Thu, 25 Jun 2026 12:00:00 +0800</pubDate><guid>https://guijiagi.com/posts/llm-caching-strategy/</guid><description>系统解析 LLM 应用的缓存策略，涵盖语义缓存、多级缓存架构与性能优化实践</description></item><item><title>LLM 推理性能 Benchmark：TTFT/TPS/延迟全景对比</title><link>https://guijiagi.com/posts/llm-latency-benchmark/</link><pubDate>Thu, 25 Jun 2026 10:00:00 +0800</pubDate><guid>https://guijiagi.com/posts/llm-latency-benchmark/</guid><description>LLM 推理性能关键指标、测试方法论与主流模型全景对比</description></item><item><title>RAG 流水线优化全攻略：从检索到生成的极致调优</title><link>https://guijiagi.com/posts/rag-pipeline-optimization/</link><pubDate>Wed, 24 Jun 2026 14:00:00 +0800</pubDate><guid>https://guijiagi.com/posts/rag-pipeline-optimization/</guid><description>系统性讲解 RAG 流水线每个环节的优化策略：分块、召回、重排、查询改写、上下文压缩、缓存</description></item></channel></rss>