Claude-night-market feature-review

Review and prioritize features using RICE, WSJF, or Kano scoring frameworks, then create GitHub issues for suggestions.

install
source · Clone the upstream repo
git clone https://github.com/athola/claude-night-market
Claude Code · Install into ~/.claude/skills/
T=$(mktemp -d) && git clone --depth=1 https://github.com/athola/claude-night-market "$T" && mkdir -p ~/.claude/skills && cp -r "$T/plugins/imbue/skills/feature-review" ~/.claude/skills/athola-claude-night-market-feature-review && rm -rf "$T"
manifest: plugins/imbue/skills/feature-review/SKILL.md
source content

Table of Contents

Verification

Run

make test-feature-review
to verify scoring logic after changes.

Feature Review

Review implemented features and suggest new ones using evidence-based prioritization. Create GitHub issues for accepted suggestions.

Philosophy

Feature decisions rely on data. Every feature involves tradeoffs that require evaluation. This skill uses hybrid RICE+WSJF scoring with Kano classification to prioritize work and generates actionable GitHub issues for accepted suggestions.

When To Use

  • Roadmap reviews (sprint planning, quarterly reviews).
  • Retrospective evaluations.
  • Planning new development cycles.

When NOT To Use

  • Emergency bug fixes.
  • Simple documentation updates.
  • Active implementation (use
    scope-guard
    ).

Quick Start

1. Inventory Current Features

Discover and categorize existing features:

/feature-review --inventory

2. Score and Classify

Evaluate features against the prioritization framework:

/feature-review

3. Generate Suggestions

Review gaps and suggest new features:

/feature-review --suggest

4. Research-Enriched Scoring

Use tome plugin to adjust scores with external evidence:

/feature-review --research

5. Upload to GitHub

Create issues for accepted suggestions:

/feature-review --suggest --create-issues

Workflow

Phase 1: Feature Discovery (
feature-review:inventory-complete
)

Identify features by analyzing:

  1. Code artifacts: Entry points, public APIs, and configuration surfaces.
  2. Documentation: README lists, CHANGELOG entries, and user docs.
  3. Git history: Recent feature commits and branches.

Output: Feature inventory table.

Phase 2: Classification (
feature-review:classified
)

Classify each feature along two axes:

Axis 1: Proactive vs Reactive

TypeDefinitionExamples
ProactiveAnticipates user needs.Suggestions, prefetching.
ReactiveResponds to explicit input.Form handling, click actions.

Axis 2: Static vs Dynamic

TypeUpdate PatternStorage Model
StaticIncremental, versioned.File-based, cached.
DynamicContinuous, streaming.Database, real-time.

See classification-system.md for details.

Phase 3: Scoring (
feature-review:scored
)

Apply hybrid RICE+WSJF scoring:

Feature Score = Value Score / Cost Score

Value Score = (Reach + Impact + Business Value + Time Criticality) / 4
Cost Score = (Effort + Risk + Complexity) / 3

Adjusted Score = Feature Score * Confidence

Scoring Scale: Fibonacci (1, 2, 3, 5, 8, 13).

Thresholds:

  • > 2.5: High priority.
  • 1.5 - 2.5: Medium priority.
  • < 1.5: Low priority.

See scoring-framework.md for the framework.

Phase 4: Tradeoff Analysis (
feature-review:tradeoffs-analyzed
)

Evaluate each feature across quality dimensions:

DimensionQuestionScale
QualityDoes it deliver correct results?1-5
LatencyDoes it meet timing requirements?1-5
Token UsageIs it context-efficient?1-5
Resource UsageIs CPU/memory reasonable?1-5
RedundancyDoes it handle failures gracefully?1-5
ReadabilityCan others understand it?1-5
ScalabilityWill it handle 10x load?1-5
IntegrationDoes it play well with others?1-5
API SurfaceIs it backward compatible?1-5

See tradeoff-dimensions.md for criteria.

Phase 4.5: Research Enrichment (
feature-review:research-enriched
)

Triggered by:

--research
flag. Requires tome plugin.

Use tome's multi-source research to adjust scoring factors with external evidence. This phase runs between tradeoff analysis and gap analysis.

  1. Dispatch research: For each feature, construct research topics and dispatch tome channels (code-search, discourse, papers, triz) in parallel.
  2. Synthesize findings: Merge results across channels using
    tome:synthesize
    .
  3. Calculate deltas: Map findings to scoring factor adjustments using channel-to-factor mapping.
  4. Apply deltas: Adjust initial scores by research deltas, clamp to Fibonacci scale, respect max_delta.
  5. Present evidence: Show adjustment table with evidence sources and rationale.

See research-enrichment.md for the full enrichment protocol, delta calculation, and graceful degradation behavior.

Graceful degradation: If tome is not installed, prints a warning and proceeds with initial scores unchanged.

Phase 5: Gap Analysis & Suggestions (
feature-review:suggestions-generated
)

  1. Identify gaps: Missing Kano basics.
  2. Surface opportunities: High-value, low-effort features.
  3. Flag technical debt: Features with declining scores.
  4. Recommend actions: Build, improve, deprecate, or maintain.

Phase 6: GitHub Integration (
feature-review:issues-created
)

  1. Generate issue title and body from suggestions.
  2. Apply labels (feature, enhancement, priority/*).
  3. Link to related issues.
  4. Confirm with user before creation.

Deferred capture for high-scoring suggestions: After the user confirms which suggestions to act on, any high-scoring suggestion (score > 2.5) that is not acted on should be preserved as a deferred item. Run once per skipped high-scoring suggestion:

python3 scripts/deferred_capture.py \
  --title "<suggestion title>" \
  --source feature-review \
  --context "RICE score: <score>. <description>"

This runs automatically without prompting the user. Suggestions with scores of 2.5 or below do not need to be captured.

Configuration

Feature-review uses opinionated defaults but allows customization.

Configuration File

Create

.feature-review.yaml
in project root:

# .feature-review.yaml
version: 1.8.4

# Scoring weights (must sum to 1.0)
weights:
  value:
    reach: 0.25
    impact: 0.30
    business_value: 0.25
    time_criticality: 0.20
  cost:
    effort: 0.40
    risk: 0.30
    complexity: 0.30

# Score thresholds
thresholds:
  high_priority: 2.5
  medium_priority: 1.5

# Tradeoff dimension weights (0.0 to disable)
tradeoffs:
  quality: 1.0
  latency: 1.0
  token_usage: 1.0
  resource_usage: 0.8
  redundancy: 0.5
  readability: 1.0
  scalability: 0.8
  integration: 1.0
  api_surface: 1.0

See configuration.md for options.

Guardrails

These rules apply to all configurations:

  1. Minimum dimensions: Evaluate at least 5 tradeoff dimensions.
  2. Confidence requirement: Review scores below 50% confidence.
  3. Breaking change warning: Require acknowledgment for API surface changes.
  4. Backlog limit: Limit suggestion queue to 25 items.

Required TodoWrite Items

  1. feature-review:inventory-complete
  2. feature-review:classified
  3. feature-review:scored
  4. feature-review:tradeoffs-analyzed
  5. feature-review:research-enriched
    (if
    --research
    )
  6. feature-review:suggestions-generated
  7. feature-review:issues-created
    (if requested)

Integration Points

  • imbue:scope-guard
    : Provides Worthiness Scores for suggestions.
  • sanctum:do-issue
    : Prioritizes issues with high scores.
  • superpowers:brainstorming
    : Evaluates new ideas against existing features.
  • tome:research
    : Multi-source research for score enrichment (optional,
    --research
    ).

Output Format

Feature Inventory Table

| Feature | Type | Data | Score | Priority | Status |
|---------|------|------|-------|----------|--------|
| Auth middleware | Reactive | Dynamic | 2.8 | High | Stable |
| Skill loader | Reactive | Static | 2.3 | Medium | Needs improvement |

Research-Enriched Table (with
--research
)

| Feature | Type | Score | Adj. | Priority | Evidence |
|---------|------|-------|------|----------|----------|
| Auth    | R/D  | 2.8   | 3.1  | High     | 3 sources |
| Loader  | R/S  | 2.3   | 2.3  | Medium   | none      |

## Research Evidence

### Code Search (GitHub)
- 12 implementations, avg 340 stars
- **Reach**: +1 (broad adoption)

### Discourse (HN/Reddit)
- 47 mentions, 78% positive
- **Impact**: +1 (strong demand)

Suggestion Report

## Feature Suggestions

### High Priority (Score > 2.5)

1. **[Feature Name]** (Score: 2.7)
   - Classification: Proactive/Dynamic
   - Value: High reach
   - Cost: Moderate effort
   - Recommendation: Build in next sprint

Related Skills

  • imbue:scope-guard
    : Prevent overengineering.
  • imbue:review-core
    : Structured review methodology.
  • sanctum:pr-review
    : Code-level feature review.

Reference