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error-debugging

EojEdred
Updated 7 days ago
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Testingaiapi

About

This Claude Skill transforms Rust compiler errors and Substrate API change failures into precise code patches. It analyzes failing logs to explain root causes and generates minimal diffs with validation commands. Use it to quickly resolve compilation issues and API migration problems in your Rust/Substrate projects.

Documentation

error-debugging

Detailed specification and instructions for the error-debugging skill.

Quick Install

/plugin add https://github.com/EojEdred/Etrid/tree/main/error-debugging

Copy and paste this command in Claude Code to install this skill

GitHub 仓库

EojEdred/Etrid
Path: 14-aidevs/skills/error-debugging/error-debugging

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