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slashing-verifier

EojEdred
Updated 5 days ago
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Testingaitesting

About

The slashing-verifier skill enables developers to simulate validator misbehavior scenarios in Ëtrid. It is used to test the resulting slashing penalties, assess fairness, and evaluate network resilience. This tool is essential for validating protocol integrity under adversarial conditions.

Documentation

slashing-verifier

Detailed specification and instructions for the slashing-verifier skill.

Quick Install

/plugin add https://github.com/EojEdred/Etrid/tree/main/slashing-verifier

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

GitHub 仓库

EojEdred/Etrid
Path: 14-aidevs/skills/slashing-verifier/slashing-verifier

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