Install
openclaw skills install @mohitagw15856/ai-assisted-performance-reviewEvaluate performance fairly when output is AI-assisted — what still measures the human, what now measures the tooling, and how to run the review conversation. Use when reviewing someone whose work is heavily AI-assisted, when output volume stopped meaning anything, when calibrating a team with uneven AI adoption, or when writing review criteria for the AI era. Produces review guidance: a what-measures-whom analysis, rewritten criteria, calibration rules for mixed-adoption teams, and conversation scripts. For the general review document use performance-review; for redesigning the role itself use role-redesign-for-ai.
openclaw skills install @mohitagw15856/ai-assisted-performance-reviewThe uncomfortable review question of the decade: when a report ships twice the output with AI, what did they do? Volume stopped measuring effort; polish stopped measuring skill. Punishing AI use is as wrong as crediting the model's work to the human. This skill separates the signals — and gives managers the conversation, not just the theory.
Ask for (if not already provided):
Criteria audit
| Current criterion | Measures | Verdict |
|---|---|---|
| human / tool / hybrid | keep / rewrite / kill |
Rewritten criteria: [the judgment/verification/outcomes/leverage set, with observable definitions each]
Evidence to collect: [the walk-backwards sample protocol + the rest]
Calibration rules: [the mixed-adoption rules, as committee guidance]
The conversations: [scripts for the three hard cases, adapted to the situation given]