context-engineering

context-engineering

Популярно

Master context engineering for AI agent systems. Use when designing agent architectures, debugging context failures, optimizing token usage, implementing memory systems, building multi-agent coordination, evaluating agent performance, or developing LLM-powered pipelines. Covers context fundamentals, degradation patterns, optimization techniques (compaction, masking, caching), compression strategies, memory architectures, multi-agent patterns, LLM-as-Judge evaluation, tool design, and project development.

1.4Kзвезд
287форков
Обновлено 1/23/2026
SKILL.md
readonlyread-only
name
context-engineering
description

>-

version
1.0.0

Context Engineering

Context engineering curates the smallest high-signal token set for LLM tasks. The goal: maximize reasoning quality while minimizing token usage.

When to Activate

  • Designing/debugging agent systems
  • Context limits constrain performance
  • Optimizing cost/latency
  • Building multi-agent coordination
  • Implementing memory systems
  • Evaluating agent performance
  • Developing LLM-powered pipelines

Core Principles

  1. Context quality > quantity - High-signal tokens beat exhaustive content
  2. Attention is finite - U-shaped curve favors beginning/end positions
  3. Progressive disclosure - Load information just-in-time
  4. Isolation prevents degradation - Partition work across sub-agents
  5. Measure before optimizing - Know your baseline

Quick Reference

Topic When to Use Reference
Fundamentals Understanding context anatomy, attention mechanics context-fundamentals.md
Degradation Debugging failures, lost-in-middle, poisoning context-degradation.md
Optimization Compaction, masking, caching, partitioning context-optimization.md
Compression Long sessions, summarization strategies context-compression.md
Memory Cross-session persistence, knowledge graphs memory-systems.md
Multi-Agent Coordination patterns, context isolation multi-agent-patterns.md
Evaluation Testing agents, LLM-as-Judge, metrics evaluation.md
Tool Design Tool consolidation, description engineering tool-design.md
Pipelines Project development, batch processing project-development.md

Key Metrics

  • Token utilization: Warning at 70%, trigger optimization at 80%
  • Token variance: Explains 80% of agent performance variance
  • Multi-agent cost: ~15x single agent baseline
  • Compaction target: 50-70% reduction, <5% quality loss
  • Cache hit target: 70%+ for stable workloads

Four-Bucket Strategy

  1. Write: Save context externally (scratchpads, files)
  2. Select: Pull only relevant context (retrieval, filtering)
  3. Compress: Reduce tokens while preserving info (summarization)
  4. Isolate: Split across sub-agents (partitioning)

Anti-Patterns

  • Exhaustive context over curated context
  • Critical info in middle positions
  • No compaction triggers before limits
  • Single agent for parallelizable tasks
  • Tools without clear descriptions

Guidelines

  1. Place critical info at beginning/end of context
  2. Implement compaction at 70-80% utilization
  3. Use sub-agents for context isolation, not role-play
  4. Design tools with 4-question framework (what, when, inputs, returns)
  5. Optimize for tokens-per-task, not tokens-per-request
  6. Validate with probe-based evaluation
  7. Monitor KV-cache hit rates in production
  8. Start minimal, add complexity only when proven necessary

Scripts

You Might Also Like

Related Skills

mcporter

mcporter

179Kdev-mcp

Use the mcporter CLI to list, configure, auth, and call MCP servers/tools directly (HTTP or stdio), including ad-hoc servers, config edits, and CLI/type generation.

model-usage

model-usage

88Kdev-mcp

Use CodexBar CLI local cost usage to summarize per-model usage for Codex or Claude, including the current (most recent) model or a full model breakdown. Trigger when asked for model-level usage/cost data from codexbar, or when you need a scriptable per-model summary from codexbar cost JSON.

Suggests manual context compaction at logical intervals to preserve context through task phases rather than arbitrary auto-compaction.

Guide for creating effective skills. This skill should be used when users want to create a new skill (or update an existing skill) that extends Claude's capabilities with specialized knowledge, workflows, or tool integrations.

Claude Code 高级开发指南 - 全面的中文教程,涵盖工具使用、REPL 环境、开发工作流、MCP 集成、高级模式和最佳实践。适合学习 Claude Code 的高级功能和开发技巧。

This skill should be used when the user asks to "offload context to files", "implement dynamic context discovery", "use filesystem for agent memory", "reduce context window bloat", or mentions file-based context management, tool output persistence, agent scratch pads, or just-in-time context loading.

muratcankoylan avatarmuratcankoylan
Получить