fix: sync all skill updates and new skills into plugin bundles

- Synced 97 existing skill SKILL.md files from skills/ to their plugin bundle copies
- Added 7 new skills to plugin bundles:
  - seo-content-brief, media-pitch -> pm-gtm
  - tax-planning-checklist -> pm-finance
  - change-management-plan -> pm-hr
  - sales-forecasting-model -> pm-sales
  - workshop-facilitation-guide -> pm-operations
  - teaching-lesson-plan -> pm-cross

Co-Authored-By: Claude Sonnet 4.6 <noreply@anthropic.com>
This commit is contained in:
mohitagw15856
2026-04-20 21:00:00 +01:00
parent d7f6c2cd05
commit 513e1d3ce7
67 changed files with 1851 additions and 507 deletions
@@ -1,6 +1,6 @@
---
name: ai-product-canvas
description: Structures AI and ML product decisions including model selection, data requirements, evaluation frameworks, and responsible AI considerations. Use when building AI-powered features, evaluating LLM integrations, designing AI products, or assessing AI readiness. Triggers on "AI product", "LLM feature", "AI canvas", "build with AI", "AI integration", "AI-powered", "machine learning feature".
description: "Structure AI and ML product decisions with the rigour of any product decision. Use when building AI-powered features, evaluating LLM integrations, designing AI products, or assessing AI readiness. Produces a complete AI product canvas covering problem definition, model approach, data requirements, evaluation framework, UX design, responsible AI checklist, and launch monitoring plan."
---
# AI Product Canvas Skill
@@ -143,3 +143,19 @@ Before building, flag if any of these apply:
- Responsible AI checklist must be completed before launch, not after
- Include latency in success metrics — a 5-second AI response is often worse than no AI at all
- Recommend starting with a human-in-the-loop design and automating only when accuracy is proven
## Required Inputs
Ask the user for these if not provided:
- **Feature or product description** (what the AI is intended to do)
- **User problem** (what problem the AI is solving for users)
- **Available data** (what training/inference data exists)
- **ML/AI lead** (who owns the technical implementation)
## Quality Checks
- [ ] "Why AI?" is answered clearly (not "because we can")
- [ ] Minimum acceptable accuracy threshold is defined before build begins
- [ ] Fallback UX is specified for model failures or low-confidence outputs
- [ ] Responsible AI checklist is completed (not deferred to post-launch)
- [ ] Monitoring plan includes both model performance and user engagement metrics