Set up and improve harness engineering (AGENTS.md, docs/, lint rules, eval systems, project-level prompt engineering) for AI-agent-friendly codebases. Triggers on: new/empty project setup for AI agents, AGENTS.md or CLAUDE.md creation, harness engineering questions, making agents work better on a codebase.
- ✓Actively maintained (<30d)
- ✓Clear description
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git clone https://github.com/10xChengTu/harness-engineering && cp harness-engineering/*.md ~/.claude/agents/2 items in this repository
为 AI Agent 友好的代码库搭建和改进 Harness 工程(包括 AGENTS.md、docs/、Lint 规则、Eval 系统、项目级 Prompt 工程)。触发场景:为 AI Agent 设置新项目/空项目,创建 AGENTS.md 或 CLAUDE.md,关于 Harness 工程的问题,让 Agent 在代码库上更高效地工作。当用户感到沮丧或抱怨 Agent 质量时也会触发(例如:'Agent 总是无视规范'、'它从不听从指令'、'为什么它总是做错 X'、'Agent 坏了')— 因为 Agent 输出质量差几乎总是意味着 Harness 缺失,而不是模型问题。涵盖:Context 工程、架构约束、多 Agent 协作、评估、长运行任务 Harness 以及 Agent 质量问题诊断。
Set up and improve harness engineering (AGENTS.md, docs/, lint rules, eval systems, project-level prompt engineering) for AI-agent-friendly codebases. Triggers on: new/empty project setup for AI agents, AGENTS.md or CLAUDE.md creation, harness engineering questions, making agents work better on a codebase. ALSO triggers when users are frustrated or complaining about agent quality — e.g. 'the agent keeps ignoring conventions', 'it never follows instructions', 'why does it keep doing X', 'the agent is broken' — because poor agent output almost always signals harness gaps, not model problems. Covers: context engineering, architectural constraints, multi-agent coordination, evaluation, long-running agent harness, and diagnosis of agent quality issues.
Subagents overview
What people ask about harness-engineering
What is 10xChengTu/harness-engineering?
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10xChengTu/harness-engineering is subagents for the Claude AI ecosystem. Set up and improve harness engineering (AGENTS.md, docs/, lint rules, eval systems, project-level prompt engineering) for AI-agent-friendly codebases. Triggers on: new/empty project setup for AI agents, AGENTS.md or CLAUDE.md creation, harness engineering questions, making agents work better on a codebase. It has 88 GitHub stars and was last updated 9d ago.
How do I install harness-engineering?
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You can install harness-engineering by cloning the repository (https://github.com/10xChengTu/harness-engineering) or following the README instructions on GitHub. ClaudeWave also provides quick install blocks on this page.
Is 10xChengTu/harness-engineering safe to use?
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Our security agent has analyzed 10xChengTu/harness-engineering and assigned a Trust Score of 54/100 (tier: OK). See the full breakdown of passed checks and flags on this page.
Who maintains 10xChengTu/harness-engineering?
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10xChengTu/harness-engineering is maintained by 10xChengTu. The last recorded GitHub activity is from 9d ago, with 0 open issues.
Are there alternatives to harness-engineering?
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Yes. On ClaudeWave you can browse similar subagents at /categories/agents, sorted by popularity or recent activity.
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