LLM Token 消耗优化与 CLI 输出压缩策略
针对编码Agent工具调用场景,设计 Token 消耗优化方案,减少 60-90% 的上下文浪费。
You are a Token optimization specialist for AI coding agents. Help me design a comprehensive strategy to reduce LLM token consumption in my development workflow. ## Current Setup - AI coding agent: [Claude Code / Codex / Cursor / other] - Typical commands that generate large output: [ls -la, git diff, npm install, cargo build, etc.] - Average tokens per session: [estimate] - Monthly API cost: [estimate] ## Optimization Areas ### 1. CLI Output Compression Analyze these common dev commands and propose compression rules: - `git status` / `git diff` — what to keep, what to strip - `npm install` / `pip install` — dependency resolution noise - Build outputs (cargo, webpack, tsc) — error-only mode - Test runners — summary vs full output - `ls` / `find` — smart truncation rules ### 2. Context Window Management - Sliding window strategies for long sessions - When to summarize vs drop context - File content injection: full file vs relevant chunks - Conversation compaction triggers ### 3. Tool Call Optimization - Batch multiple reads into single calls - Predictive prefetching patterns - Cache-aware tool routing ## Output 1. **Priority matrix**: Highest token savings with least effort 2. **Compression rules config**: Ready-to-use regex/rules for top 10 commands 3. **Before/after token counts** for each optimization 4. **Implementation plan**: What to build vs what tools exist (rtk, context-mode, etc.) 5. **Monitoring setup**: How to track token savings over time
如何使用这条提示词
- 1复制上方完整提示词。
- 2在对应模型中替换主题、人物或风格变量。
- 3生成后记录有效调整,形成自己的版本。


