Agent skill
speckit-tasks
Break down implementation plans into actionable task lists. Use after planning to create a structured task breakdown. Generates tasks.md with ordered, dependency-aware tasks.
Install this agent skill to your Project
npx add-skill https://github.com/foryourhealth111-pixel/Vibe-Skills/tree/main/bundled/skills/speckit-tasks
Metadata
Additional technical details for this skill
- author
- github-spec-kit
- source
- templates/commands/tasks.md
SKILL.md
Speckit Tasks Skill
User Input
$ARGUMENTS
You MUST consider the user input before proceeding (if not empty).
Outline
-
Setup: Run
.specify/scripts/powershell/check-prerequisites.ps1 -Jsonfrom repo root and parse FEATURE_DIR and AVAILABLE_DOCS list. All paths must be absolute. For single quotes in args like "I'm Groot", use escape syntax: e.g 'I'''m Groot' (or double-quote if possible: "I'm Groot"). -
Load design documents: Read from FEATURE_DIR:
- Required: plan.md (tech stack, libraries, structure), spec.md (user stories with priorities)
- Optional: data-model.md (entities), contracts/ (interface contracts), research.md (decisions), quickstart.md (test scenarios)
- Note: Not all projects have all documents. Generate tasks based on what's available.
-
Execute task generation workflow:
- Load plan.md and extract tech stack, libraries, project structure
- Load spec.md and extract user stories with their priorities (P1, P2, P3, etc.)
- If data-model.md exists: Extract entities and map to user stories
- If contracts/ exists: Map interface contracts to user stories
- If research.md exists: Extract decisions for setup tasks
- Generate tasks organized by user story (see Task Generation Rules below)
- Generate dependency graph showing user story completion order
- Create parallel execution examples per user story
- Validate task completeness (each user story has all needed tasks, independently testable)
-
Generate tasks.md: Use
.specify/templates/tasks-template.mdas structure, fill with:- Correct feature name from plan.md
- Phase 1: Setup tasks (project initialization)
- Phase 2: Foundational tasks (blocking prerequisites for all user stories)
- Phase 3+: One phase per user story (in priority order from spec.md)
- Each phase includes: story goal, independent test criteria, tests (if requested), implementation tasks
- Final Phase: Polish & cross-cutting concerns
- All tasks must follow the strict checklist format (see Task Generation Rules below)
- Clear file paths for each task
- Dependencies section showing story completion order
- Parallel execution examples per story
- Implementation strategy section (MVP first, incremental delivery)
-
Report: Output path to generated tasks.md and summary:
- Total task count
- Task count per user story
- Parallel opportunities identified
- Independent test criteria for each story
- Suggested MVP scope (typically just User Story 1)
- Format validation: Confirm ALL tasks follow the checklist format (checkbox, ID, labels, file paths)
Context for task generation: $ARGUMENTS
The tasks.md should be immediately executable - each task must be specific enough that an LLM can complete it without additional context.
Task Generation Rules
CRITICAL: Tasks MUST be organized by user story to enable independent implementation and testing.
Tests are OPTIONAL: Only generate test tasks if explicitly requested in the feature specification or if user requests TDD approach.
Checklist Format (REQUIRED)
Every task MUST strictly follow this format:
- [ ] [TaskID] [P?] [Story?] Description with file path
Format Components:
- Checkbox: ALWAYS start with
- [ ](markdown checkbox) - Task ID: Sequential number (T001, T002, T003...) in execution order
- [P] marker: Include ONLY if task is parallelizable (different files, no dependencies on incomplete tasks)
- [Story] label: REQUIRED for user story phase tasks only
- Format: [US1], [US2], [US3], etc. (maps to user stories from spec.md)
- Setup phase: NO story label
- Foundational phase: NO story label
- User Story phases: MUST have story label
- Polish phase: NO story label
- Description: Clear action with exact file path
Examples:
- ✅ CORRECT:
- [ ] T001 Create project structure per implementation plan - ✅ CORRECT:
- [ ] T005 [P] Implement authentication middleware in src/middleware/auth.py - ✅ CORRECT:
- [ ] T012 [P] [US1] Create User model in src/models/user.py - ✅ CORRECT:
- [ ] T014 [US1] Implement UserService in src/services/user_service.py - ❌ WRONG:
- [ ] Create User model(missing ID and Story label) - ❌ WRONG:
T001 [US1] Create model(missing checkbox) - ❌ WRONG:
- [ ] [US1] Create User model(missing Task ID) - ❌ WRONG:
- [ ] T001 [US1] Create model(missing file path)
Task Organization
-
From User Stories (spec.md) - PRIMARY ORGANIZATION:
- Each user story (P1, P2, P3...) gets its own phase
- Map all related components to their story:
- Models needed for that story
- Services needed for that story
- Interfaces/UI needed for that story
- If tests requested: Tests specific to that story
- Mark story dependencies (most stories should be independent)
-
From Contracts:
- Map each interface contract → to the user story it serves
- If tests requested: Each interface contract → contract test task [P] before implementation in that story's phase
-
From Data Model:
- Map each entity to the user story(ies) that need it
- If entity serves multiple stories: Put in earliest story or Setup phase
- Relationships → service layer tasks in appropriate story phase
-
From Setup/Infrastructure:
- Shared infrastructure → Setup phase (Phase 1)
- Foundational/blocking tasks → Foundational phase (Phase 2)
- Story-specific setup → within that story's phase
Phase Structure
- Phase 1: Setup (project initialization)
- Phase 2: Foundational (blocking prerequisites - MUST complete before user stories)
- Phase 3+: User Stories in priority order (P1, P2, P3...)
- Within each story: Tests (if requested) → Models → Services → Endpoints → Integration
- Each phase should be a complete, independently testable increment
- Final Phase: Polish & Cross-Cutting Concerns
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