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prd-taskmaster

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Ver no GitHub ↗Autor: anombyte93Licença: MIT

PRD Generator for TaskMaster v3.0

Smart PRD generation with deterministic operations handled by script.py. AI handles judgment (questions, content, decisions); script handles mechanics.

Script location: ~/.claude/skills/prd-taskmaster/script.py All script commands output JSON.

When to Use

Activate when user says: PRD, product requirements, taskmaster, task-driven development. Do NOT activate for: API docs, test specs, project timelines, PDF creation.

Core Principles

  • Quality Over Speed: Planning is 95% of the work
  • Taskmaster Required: Blocks if not detected
  • Engineer-Focused: Technical depth, code examples, architecture
  • Validation-Driven: 13 automated checks via script
  • User Testing Checkpoints: Every 5 tasks

Workflow (12 Steps)

Step 1: Preflight & Resume Detection

python3 ~/.claude/skills/prd-taskmaster/script.py preflight

Returns JSON: has_taskmaster, prd_path, task_count, tasks_completed, tasks_pending, taskmaster_method, has_claude_md, has_crash_state, crash_state.

If has_crash_state is true: Present resume options to user:

  1. Continue from last subtask
  2. Restart current task
  3. Resume from last checkpoint
  4. Start fresh

Then proceed to Step 2.


Step 2: Detect Existing PRD

Use preflight JSON: if prd_path is not null and task_count > 0, an existing PRD is found.

If existing PRD found, use AskUserQuestion:

  • Execute tasks from existing PRD (skip to Step 11)
  • Update/refine existing PRD (edit and re-parse)
  • Create new PRD (replace - backup first via script.py backup-prd --input <path>)
  • Review existing PRD (display summary, then exit)

If no PRD found: Proceed to Step 3.


Step 3: Detect Taskmaster

Use preflight JSON field taskmaster_method: mcp, cli, or none.

If none: Block and show installation instructions:

  • Option 1 (recommended): Install MCP Task-Master-AI
  • Option 2: npm install -g task-master-ai
  • Wait for user to install and confirm, then re-run: script.py detect-taskmaster

No proceeding without taskmaster detected.


Step 4: Discovery Questions

Ask detailed questions to build comprehensive PRD. Use AskUserQuestion for structured input.

Essential (5):

  1. What problem does this solve? (user pain point, business impact)
  2. Who is the target user/audience?
  3. What is the proposed solution or feature?
  4. What are the key success metrics?
  5. What constraints exist? (technical, timeline, resources)

Technical (4): 6. Existing codebase or greenfield? 7. Tech stack? 8. Integration requirements? 9. Performance/scale requirements?

TaskMaster-specific (3): 10. Used taskmaster before? 11. Estimated complexity? (simple/typical/complex) 12. Timeline expectations?

Open-ended (1): 13. Anything else? (edge cases, constraints, context)

Smart defaults: If user provides minimal answers, use best guesses and document assumptions.


Step 5: Initialize Taskmaster

Only if .taskmaster/ doesn't exist (check preflight has_taskmaster).

python3 ~/.claude/skills/prd-taskmaster/script.py init-taskmaster --method <cli|mcp>

For MCP: use the returned params to call mcp__task-master-ai__initialize_project. For CLI: script runs taskmaster init directly.


Step 6: Generate PRD

Load template:

python3 ~/.claude/skills/prd-taskmaster/script.py load-template --type <comprehensive|minimal>

Returns JSON with content field containing the template.

AI judgment: Fill template with user's answers from Step 4:

  • Replace placeholders with actual content
  • Expand examples with project-specific details
  • Add technical depth based on discovery answers

Write completed PRD to .taskmaster/docs/prd.md.


Step 7: Validate PRD Quality

python3 ~/.claude/skills/prd-taskmaster/script.py validate-prd --input .taskmaster/docs/prd.md

Returns JSON: score, max_score, grade, checks (13 items), warnings.

Grading: EXCELLENT (91%+), GOOD (83-90%), ACCEPTABLE (75-82%), NEEDS_WORK (<75%).

AI judgment: If warnings exist, offer user three options:

  1. Proceed with current PRD
  2. Auto-fix warnings
  3. Review and fix manually

If grade is NEEDS_WORK, strongly recommend fixing before proceeding.


Step 8: Parse & Expand Tasks

Calculate task count:

python3 ~/.claude/skills/prd-taskmaster/script.py calc-tasks --requirements <count>

Returns recommended task count.

For MCP:

mcp__task-master-ai__parse_prd: input=".taskmaster/docs/prd.md", numTasks=<recommended>, research=true
mcp__task-master-ai__expand_all: research=true

For CLI:

taskmaster parse-prd --input .taskmaster/docs/prd.md --research --num-tasks <recommended>
taskmaster expand-all --research

Step 9: Insert User Test Tasks

python3 ~/.claude/skills/prd-taskmaster/script.py gen-test-tasks --total <task_count>

Returns array of USER-TEST task definitions with title, description, dependencies, template.

For each task in the array:

  • MCP: mcp__task-master-ai__add_task with title, description, details=template, dependencies, priority=high
  • CLI: taskmaster add-task --title="..." --description="..." --dependencies="..." --priority=high

Step 10: Setup Tracking Scripts

python3 ~/.claude/skills/prd-taskmaster/script.py gen-scripts --output-dir .taskmaster/scripts

Creates 5 scripts: track-time.py, rollback.sh, learn-accuracy.py, security-audit.py, execution-state.py.


Step 10.5: Generate CLAUDE.md

Pre-check: Use Glob to check if ./CLAUDE.md exists. If it exists, skip.

If generating:

  1. Load template: script.py load-template won't work here -- use Read tool on ~/.claude/skills/prd-taskmaster/templates/CLAUDE.md.template
  2. AI judgment: Replace placeholders with project-specific values from discovery:
    • {{PROJECT_NAME}}, {{TECH_STACK}}, {{ARCHITECTURE_OVERVIEW}}
    • {{KEY_DEPENDENCIES}}, {{TESTING_FRAMEWORK}}, {{DEV_ENVIRONMENT}}, {{TEST_COMMAND}}
  3. Write to ./CLAUDE.md
  4. Ask if user uses Codex -- if yes and no codex.md, write identical copy

Step 11: Choose Next Action

Use AskUserQuestion:

Question: "PRD and tasks ready. How to proceed?"

  • Show TaskMaster Commands (default): Display command reference, then exit skill
  • Autonomous Execution: Ask follow-up for execution mode

If Autonomous Execution selected, ask execution mode:

  • Sequential to Checkpoint (recommended): Tasks one-by-one until next USER-TEST
  • Parallel to Checkpoint: Independent tasks in parallel until USER-TEST
  • Full Autonomous: All tasks parallel, skip user validation
  • Manual Control: User decides each task

AI judgment: Recommend mode based on context:

  • First-time/critical: Sequential
  • Experienced/non-critical: Parallel
  • Trusted/time-critical: Full Autonomous
  • Complex/learning: Manual

Step 12: Summary & Start

If Handoff: Display PRD location, task counts, key requirements, validation score, task phases, user test checkpoints, and TaskMaster commands. Then exit skill.

If Autonomous: Display same summary plus execution mode, then begin execution using the selected mode's rules.


Execution Mode Rules

All Modes Include

  • DateTime tracking: python3 .taskmaster/scripts/track-time.py start|complete <task_id> [subtask_id]
  • Progress logging: python3 ~/.claude/skills/prd-taskmaster/script.py log-progress --task-id <id> --title "..." --duration "..." --subtasks "..." --tests "..." --issues "..."
  • Git policy: Branch per task (task-{id}-{slug}), sub-branch per subtask, merge to main with checkpoint tag
  • Rollback: If user says "rollback to task X", run bash .taskmaster/scripts/rollback.sh X
  • State tracking: python3 .taskmaster/scripts/execution-state.py start|complete|checkpoint <task_id>

Sequential to Checkpoint

Como adicionar

/plugin marketplace add anombyte93/prd-taskmaster

O comando exato pode variar conforme o repositório. Confira o README no GitHub.

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