Agent skill

pre-modification-check

Use before modifying, refactoring, or deleting files in a codebase that has Repowise indexed (indicated by a .repowise/ directory). Activates when Claude is about to edit code, especially shared utilities, core modules, or files the user didn't explicitly mention. Helps assess impact and avoid breaking things.

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Install this agent skill to your Project

npx add-skill https://github.com/repowise-dev/repowise/tree/main/plugins/claude-code/skills/pre-modification

SKILL.md

Pre-Modification Check with Repowise

Before modifying files in a Repowise-indexed codebase, assess the impact.

Before editing a file

Call get_risk(targets=["path/to/file.py"]) to understand:

  • Hotspot status — is this a high-churn file? Extra care needed.
  • Dependents — what other files/modules depend on this? How wide is the blast radius?
  • Co-change partners — what files typically change together with this one? You may need to update them too.
  • Ownership — who owns this code? Relevant for PR review routing.
  • Bus factor — if only 1 person owns this, changes need extra review.

When modifying multiple files

Batch all targets into one call: get_risk(targets=["file1.py", "file2.py", "module/"]).

When to warn the user

If get_risk shows:

  • Hotspot score above 90th percentile — mention this is a frequently-changed, high-risk file
  • More than 10 dependents — list the top dependents; API changes here will break consumers
  • Bus factor of 1 — note that a single person maintains this code
  • Risk type is "bug-prone" or "high-coupling" — flag explicitly before making changes

Before refactoring or moving code

Call get_context(targets=["file.py"]) first to understand the full context: what uses this file, what decisions govern it, and why it's structured this way. This prevents accidentally violating architectural decisions.

Error handling

If get_risk returns a tool error, the MCP server may not be running. Proceed with the modification but note that risk assessment was unavailable.

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