sprint-plan
The sprint-plan command automates sprint planning by calculating team capacity at approximately 80% of historical velocity, then generating a realistic sprint goal, capacity-adjusted backlog with acceptance criteria, carryover accounting, risk assessment, and a planning agenda. Use this command at sprint kickoff to establish sustainable team commitments and identify stories requiring decomposition.
mkdir -p ~/.claude/commands && curl -fsSL https://raw.githubusercontent.com/mohitagw15856/pm-claude-skills/HEAD/commands/sprint-plan.md -o ~/.claude/commands/sprint-plan.mdsprint-plan.md
Apply the **sprint-planning** skill using: $ARGUMENTS Run `skills/sprint-planning/scripts/capacity_calculator.py` with the team's numbers to compute the recommended commitment (cap at ~80% of velocity). Produce an outcome-focused sprint goal, a capacity-fit backlog with acceptance criteria, carry-over accounting, risks, and a planning agenda. Flag any 8+ point story for splitting.
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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.
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