spec-kitty-specify
π Workflow Provenance
Source: This skill augments the baseline workflow located at
./workflows/spec-kitty.specify.md. It acts as an intelligent wrapper that is continuously improved with each execution.
/spec-kitty.specify - Create Feature Specification
Version: 0.11.0+
π WORKING DIRECTORY: Stay in the project root checkout
IMPORTANT: Specify works in the project root checkout. NO worktrees are created.
# Run from project root:
cd /path/to/project/root # Your project root checkout
# All planning artifacts are created in the project root and committed:
# - kitty-specs/###-feature/spec.md β Created in project root
# - Committed to target branch (from create-feature JSON: target_branch/base_branch)
# - NO worktrees created
Worktrees are created later during /spec-kitty.implement, not during planning.
In repos with multiple features, always pass --feature <slug> to every spec-kitty command.
User Input
$ARGUMENTS
You MUST consider the user input before proceeding (if not empty).
Branch Strategy Confirmation (MANDATORY)
Before discovery, resolve branch intent through the Python helper, not by probing git directly:
spec-kitty agent feature branch-context --json
If the user already told you the intended landing branch, pass it explicitly:
spec-kitty agent feature branch-context --json --target-branch <intended-branch>
Parse the JSON and, in your next reply, explicitly tell the user:
- Current branch at workflow start:
current_branch - Default planning/base branch if you create the feature right now:
planning_base_branch - Final merge target for completed changes:
merge_target_branch - Whether
branch_matches_targetis true or false - If that is not the intended landing branch, stop and ask which branch should receive this feature before you run
create-feature
Never talk generically about main or "the default branch". Name the actual branch values from the helper JSON. Do not shell out to git for this prompt.
DO NOT
- Do not mix functional, non-functional, and constraint requirements in one list.
- Do not emit requirements without stable IDs (
FR-###,NFR-###,C-###). - Do not leave requirement status fields empty.
- Do not write non-functional requirements without measurable thresholds.
- Do not proceed to planning with unresolved requirement quality checklist failures.
Constitution Context Bootstrap (required)
Before discovery questions, load constitution context for this action:
spec-kitty constitution context --action specify --json
- If JSON
modeisbootstrap, treat JSONtextas the initial governance context and consult referenced docs as needed. - If JSON
modeiscompact, proceed with concise governance context.
Discovery Gate (mandatory)
Before running any scripts or writing to disk you must conduct a structured discovery interview.
-
Scope proportionality (CRITICAL): FIRST, gauge the inherent complexity of the request:
- Trivial/Test Features (hello world, simple pages, proof-of-concept): Ask 1-2 questions maximum, then proceed. Examples: "a simple hello world page", "tic-tac-toe game", "basic contact form"
- Simple Features (small UI additions, minor enhancements): Ask 2-3 questions covering purpose and basic constraints
- Complex Features (new subsystems, integrations): Ask 3-5 questions covering goals, users, constraints, risks
- Platform/Critical Features (authentication, payments, infrastructure): Full discovery with 5+ questions
-
User signals to reduce questioning: If the user says "just testing", "quick prototype", "skip to next phase", "stop asking questions" - recognize this as a signal to minimize discovery and proceed with reasonable defaults.
-
First response rule:
- For TRIVIAL features (hello world, simple test): Ask ONE clarifying question, then if the answer confirms it's simple, proceed directly to spec generation
- For other features: Ask a single focused discovery question and end with
WAITING_FOR_DISCOVERY_INPUT
-
If the user provides no initial description (empty command), stay in Interactive Interview Mode: keep probing with one question at a time.
-
Conversational cadence: After each user reply, decide if you have ENOUGH context for this feature's complexity level. For trivial features, 1-2 questions is sufficient. Only continue asking if truly necessary for the scope.
Discovery requirements (scale to feature complexity):
- Maintain a Discovery Questions table internally covering questions appropriate to the feature's complexity (1-2 for trivial, up to 5+ for complex). Track columns
#,Question,Why it matters, andCurrent insight. Do not render this table to the user. - For trivial features, reasonable defaults are acceptable. Only probe if truly ambiguous.
- When you have sufficient context for the feature's scope, paraphrase into an Intent Summary and confirm. For trivial features, this can be very brief.
- If user explicitly asks to skip questions or says "just testing", acknowledge and proceed with minimal discovery.
Mission Selection
After completing discovery and confirming the Intent Summary, determine the appropriate mission for this feature.
Available Missions
-
software-dev: For building software features, APIs, CLI tools, applications
- Phases: research β design β implement β test β review
- Best for: code changes, new features, bug fixes, refactoring
-
research: For investigations, literature reviews, technical analysis
- Phases: question β methodology β gather β analyze β synthesize β publish
- Best for: feasibility studies, market research, technology evaluation
Mission Inference
-
Analyze the feature description to identify the primary goal:
- Building, coding, implementing, creating software β software-dev
- Researching, investigating, analyzing, evaluating β research
-
Check for explicit mission requests in the user's description:
- If user mentions "research project", "investigation", "analysis" β use research
- If user mentions "build", "implement", "create feature" β use software-dev
-
Confirm with user (unless explicit):
"Based on your description, this sounds like a [software-dev/research] project. I'll use the [mission name] mission. Does that work for you?"
-
Handle user response:
- If confirmed: proceed with selected mission
- If user wants different mission: use their choice
-
Handle --mission flag: If the user provides
--mission <key>in their command, skip inference and use the specified mission directly.
Store the final mission selection in your notes and include it in the spec output. Do not pass a --mission flag to feature creation.
Workflow (0.11.0+)
Planning happens in the project root checkout - NO worktree created!
- Creates
kitty-specs/###-feature/spec.mddirectly in project root - Automatically commits to target branch
- No worktree created during specify
Worktrees created later: Use spec-kitty implement WP## to create a workspace for each work package. Worktrees are created later during implement (e.g., .worktrees/###-feature-WP##).
Location
- Work in: Project root checkout (not a worktree)
- Creates:
kitty-specs/###-feature/spec.md - Commits to: target branch (from
create-feature --jsonβtarget_branch)
Outline
0. Generate a Friendly Feature Title
- Summarize the agreed intent into a short, descriptive title (aim for β€7 words; avoid filler like "feature" or "thing").
- Read that title back during the Intent Summary and revise it if the user requests changes.
- Use the confirmed title to derive the kebab-case feature slug for the create-feature command.
The text the user typed after /spec-kitty.specify in the triggering message is the initial feature description. Capture it verbatim, but treat it only as a starting point for discoveryβnot the final truth. Your job is to interrogate the request, surface gaps, and co-create a complete specification with the user.
Given that feature description, do this:
- Generation Mode (arguments provided): Use the provided text as a starting point, validate it through discovery, and fill gaps with explicit questions or clearly documented assumptions (limit
[NEEDS CLARIFICATION: β¦]to at most three critical decisions the user has postponed). - Interactive Interview Mode (no arguments): Use the discovery interview to elicit all necessary context, synthesize the working feature description, and confirm it with the user before you generate any specification artifacts.
-
Check discovery status:
- If this is your first message or discovery questions remain unanswered, stay in the one-question loop, capture the user's response, update your internal table, and end with
WAITING_FOR_DISCOVERY_INPUT. Do not surface the table; keep it internal. Do not call the creation command yet. - Only proceed once every discovery question has an explicit answer and the user has acknowledged the Intent Summary.
- Empty invocation rule: stay in interview mode until you can restate the agreed-upon feature description. Do not call the creation command while the description is missing or provisional.
- If this is your first message or discovery questions remain unanswered, stay in the one-question loop, capture the user's response, update your internal table, and end with
-
When discovery is complete and the intent summary, title, and mission are confirmed, run the feature creation command from repo root:
spec-kitty agent feature create-feature "<slug>" --jsonWhere
<slug>is a kebab-case version of the friendly title (e.g., "Checkout Upsell Flow" β "checkout-upsell-flow").The command returns JSON with:
result: "success" or error messagefeature: Feature number and slug (e.g., "014-checkout-upsell-flow")feature_dir: Absolute path to the feature directory inside the main repocurrent_branch: the branch you started fromtarget_branch/base_branch: deterministic branch contract for downstream commandsplanning_base_branch/merge_target_branch: explicit landing-branch aliasesbranch_strategy_summary: human-readable summary of the branch contract
Parse these values for use in subsequent steps. All file paths are absolute.
IMPORTANT: You must only ever run this command once. The JSON is provided in the terminal output - always refer to it to get the actual paths you're looking for. Immediately restate the branch contract to the user after parsing the JSON:
- Current branch at start
- Intended planning/base branch
- Final merge target for later changes
- Whether that matches the user's intended landing branch
-
Stay in the main repository: No worktree is created during specify.
-
Read the files created by
create-feature:<feature_dir>/spec.md(already created, may be empty/template-filled)<feature_dir>/meta.json(already created with feature identity metadata)
Do NOT try to read a template file. The spec structure is defined in this prompt (see sections below). The
create-featurecommand scaffolds an initialspec.mdβ read it, then update it following the structure in this prompt. -
Update
<feature_dir>/meta.jsononly when needed:- Keep identity fields from
create-featureunchanged (feature_number,slug,feature_slug,created_at,target_branch). - Keep
target_branchaligned to the value fromcreate-feature --jsonoutput. Never hardcodemain. - Ensure
friendly_namematches the confirmed title. - Ensure
missionis correct. - Optionally add/update
source_description. - Ensure
vcsexists ("git"default).
Example
meta.jsonschema (identity fields that must be present explicitly):{ "feature_number": "042", "slug": "my-feature", "feature_slug": "042-my-feature", "friendly_name": "My Feature", "mission": "software-dev", "target_branch": "main", "vcs": "git", "created_at": "2026-01-01T00:00:00+00:00" }Do not regenerate timestamps or directory paths via shell commands.
- Keep identity fields from
-
Generate the specification content by following this flow:
- Use the discovery answers as your authoritative source of truth (do not rely on raw
$ARGUMENTS) - For empty invocations, treat the synthesized interview summary as the canonical feature description
- Identify: actors, actions, data, constraints, motivations, success metrics
- For any remaining ambiguity:
- Ask the user a focused follow-up question immediately and halt work until they answer
- Only use
[NEEDS CLARIFICATION: β¦]when the user explicitly defers the decision - Record any interim assumption in the Assumptions section
- Prioritize clarifications by impact: scope > outcomes > risks/security > user experience > technical details
- Fill User Scenarios & Testing section (ERROR if no clear user flow can be determined)
- Generate separated requirement tables: Functional (
FR-###), Non-Functional (NFR-###), and Constraints (C-###) - Ensure each requirement entry has a status value and testable wording
- Define Success Criteria (measurable, technology-agnostic outcomes)
- Identify Key Entities (if data involved)
- Use the discovery answers as your authoritative source of truth (do not rely on raw
-
Update the existing
<feature_dir>/spec.mdusing the template structure, replacing placeholders with concrete details derived from the feature description while preserving section order and headings. -
Specification Quality Validation: After writing the initial spec, validate it against quality criteria:
a. Create Spec Quality Checklist: Generate a checklist file at
feature_dir/checklists/requirements.mdusing the checklist template structure with these validation items:# Specification Quality Checklist: [FEATURE NAME] **Purpose**: Validate specification completeness and quality before proceeding to planning **Created**: [DATE] **Feature**: [Link to spec.md] ## Content Quality - [ ] No implementation details (languages, frameworks, APIs) - [ ] Focused on user value and business needs - [ ] Written for non-technical stakeholders - [ ] All mandatory sections completed ## Requirement Completeness - [ ] No [NEEDS CLARIFICATION] markers remain - [ ] Requirements are testable and unambiguous - [ ] Requirement types are separated (Functional / Non-Functional / Constraints) - [ ] IDs are unique across FR-###, NFR-###, and C-### entries - [ ] All requirement rows include a non-empty Status value - [ ] Non-functional requirements include measurable thresholds - [ ] Success criteria are measurable - [ ] Success criteria are technology-agnostic (no implementation details) - [ ] All acceptance scenarios are defined - [ ] Edge cases are identified - [ ] Scope is clearly bounded - [ ] Dependencies and assumptions identified ## Feature Readiness - [ ] All functional requirements have clear acceptance criteria - [ ] User scenarios cover primary flows - [ ] Feature meets measurable outcomes defined in Success Criteria - [ ] No implementation details leak into specification ## Notes - Items marked incomplete require spec updates before `/spec-kitty.plan`b. Run Validation Check: Review the spec against each checklist item:
- For each item, determine if it passes or fails
- Document specific issues found (quote relevant spec sections)
c. Handle Validation Results:
-
If all items pass: Mark checklist complete and proceed to step 6
-
If items fail (excluding [NEEDS CLARIFICATION]):
- List the failing items and specific issues
- Update the spec to address each issue
- Re-run validation until all items pass (max 3 iterations)
- If still failing after 3 iterations, document remaining issues in checklist notes and warn user
-
If [NEEDS CLARIFICATION] markers remain:
-
Extract all [NEEDS CLARIFICATION: ...] markers from the spec
-
Re-confirm with the user whether each outstanding decision truly needs to stay unresolved. Do not assume away critical gaps.
-
For each clarification the user has explicitly deferred, present options using plain textβno tables:
Question [N]: [Topic] Context: [Quote relevant spec section] Need: [Specific question from NEEDS CLARIFICATION marker] Options: (A) [First answer β implications] Β· (B) [Second answer β implications] Β· (C) [Third answer β implications] Β· (D) Custom (describe your own answer) Reply with a letter or a custom answer. -
Number questions sequentially (Q1, Q2, Q3 - max 3 total)
-
Present all questions together before waiting for responses
-
Wait for user to respond with their choices for all questions (e.g., "Q1: A, Q2: Custom - [details], Q3: B")
-
Update the spec by replacing each [NEEDS CLARIFICATION] marker with the user's selected or provided answer
-
Re-run validation after all clarifications are resolved
-
d. Update Checklist: After each validation iteration, update the checklist file with current pass/fail status
-
Report completion with feature directory, spec file path, checklist results, and readiness for the next phase (
/spec-kitty.plan).
NOTE: The script creates and checks out the new branch and initializes the spec file before writing.
General Guidelines
Quick Guidelines
- Focus on WHAT users need and WHY.
- Avoid HOW to implement (no tech stack, APIs, code structure).
- Written for business stakeholders, not developers.
- DO NOT create any checklists that are embedded in the spec. That will be a separate command.
Section Requirements
- Mandatory sections: Must be completed for every feature
- Optional sections: Include only when relevant to the feature
- When a section doesn't apply, remove it entirely (don't leave as "N/A")
For AI Generation
When creating this spec from a user prompt:
- Make informed guesses: Use context, industry standards, and common patterns to fill gaps
- Document assumptions: Record reasonable defaults in the Assumptions section
- Limit clarifications: Maximum 3 [NEEDS CLARIFICATION] markers - use only for critical decisions that:
- Significantly impact feature scope or user experience
- Have multiple reasonable interpretations with different implications
- Lack any reasonable default
- Prioritize clarifications: scope > security/privacy > user experience > technical details
- Think like a tester: Every vague requirement should fail the "testable and unambiguous" checklist item
- Common areas needing clarification (only if no reasonable default exists):
- Feature scope and boundaries (include/exclude specific use cases)
- User types and permissions (if multiple conflicting interpretations possible)
- Security/compliance requirements (when legally/financially significant)
Examples of reasonable defaults (don't ask about these):
- Data retention: Industry-standard practices for the domain
- Performance targets: Standard web/mobile app expectations unless specified
- Error handling: User-friendly messages with appropriate fallbacks
- Authentication method: Standard session-based or OAuth2 for web apps
- Integration patterns: RESTful APIs unless specified otherwise
Success Criteria Guidelines
Success criteria must be:
- Measurable: Include specific metrics (time, percentage, count, rate)
- Technology-agnostic: No mention of frameworks, languages, databases, or tools
- User-focused: Describe outcomes from user/business perspective, not system internals
- Verifiable: Can be tested/validated without knowing implementation details
Good examples:
- "Users can complete checkout in under 3 minutes"
- "System supports 10,000 concurrent users"
- "95% of searches return results in under 1 second"
- "Task completion rate improves by 40%"
Bad examples (implementation-focused):
- "API response time is under 200ms" (too technical, use "Users see results instantly")
- "Database can handle 1000 TPS" (implementation detail, use user-facing metric)
- "React components render efficiently" (framework-specific)
- "Redis cache hit rate above 80%" (technology-specific)
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