💼 データEngineeringデータDrivenFeature
データ分析やA/Bテストの結果に基づき、専門エージェントがデータ駆動型の特徴量を設計・実装・検証するSkill。
📺 まず動画で見る(YouTube)
▶ 【自動化】AIガチ勢の最新活用術6選がこれ1本で丸分かり!【ClaudeCode・AIエージェント・AI経営・Skills・MCP】 ↗
※ jpskill.com 編集部が参考用に選んだ動画です。動画の内容と Skill の挙動は厳密には一致しないことがあります。
📜 元の英語説明(参考)
Build features guided by data insights, A/B testing, and continuous measurement using specialized agents for analysis, implementation, and experimentation.
🇯🇵 日本人クリエイター向け解説
データ分析やA/Bテストの結果に基づき、専門エージェントがデータ駆動型の特徴量を設計・実装・検証するSkill。
※ jpskill.com 編集部が日本のビジネス現場向けに補足した解説です。Skill本体の挙動とは独立した参考情報です。
下記のコマンドをコピーしてターミナル(Mac/Linux)または PowerShell(Windows)に貼り付けてください。 ダウンロード → 解凍 → 配置まで全自動。
mkdir -p ~/.claude/skills && cd ~/.claude/skills && curl -L -o data-engineering-data-driven-feature.zip https://jpskill.com/download/2724.zip && unzip -o data-engineering-data-driven-feature.zip && rm data-engineering-data-driven-feature.zip
$d = "$env:USERPROFILE\.claude\skills"; ni -Force -ItemType Directory $d | Out-Null; iwr https://jpskill.com/download/2724.zip -OutFile "$d\data-engineering-data-driven-feature.zip"; Expand-Archive "$d\data-engineering-data-driven-feature.zip" -DestinationPath $d -Force; ri "$d\data-engineering-data-driven-feature.zip"
完了後、Claude Code を再起動 → 普通に「動画プロンプト作って」のように話しかけるだけで自動発動します。
💾 手動でダウンロードしたい(コマンドが難しい人向け)
- 1. 下の青いボタンを押して
data-engineering-data-driven-feature.zipをダウンロード - 2. ZIPファイルをダブルクリックで解凍 →
data-engineering-data-driven-featureフォルダができる - 3. そのフォルダを
C:\Users\あなたの名前\.claude\skills\(Win)または~/.claude/skills/(Mac)へ移動 - 4. Claude Code を再起動
⚠️ ダウンロード・利用は自己責任でお願いします。当サイトは内容・動作・安全性について責任を負いません。
🎯 このSkillでできること
下記の説明文を読むと、このSkillがあなたに何をしてくれるかが分かります。Claudeにこの分野の依頼をすると、自動で発動します。
📦 インストール方法 (3ステップ)
- 1. 上の「ダウンロード」ボタンを押して .skill ファイルを取得
- 2. ファイル名の拡張子を .skill から .zip に変えて展開(macは自動展開可)
- 3. 展開してできたフォルダを、ホームフォルダの
.claude/skills/に置く- · macOS / Linux:
~/.claude/skills/ - · Windows:
%USERPROFILE%\.claude\skills\
- · macOS / Linux:
Claude Code を再起動すれば完了。「このSkillを使って…」と話しかけなくても、関連する依頼で自動的に呼び出されます。
詳しい使い方ガイドを見る →- 最終更新
- 2026-05-17
- 取得日時
- 2026-05-17
- 同梱ファイル
- 1
💬 こう話しかけるだけ — サンプルプロンプト
- › Data Engineering Data Driven F で、私のビジネスを分析して改善案を3つ提案して
- › Data Engineering Data Driven F を使って、来週の会議用の資料を作って
- › Data Engineering Data Driven F で、現状の課題を整理してアクションプランに落として
これをClaude Code に貼るだけで、このSkillが自動発動します。
📖 Claude が読む原文 SKILL.md(中身を展開)
この本文は AI(Claude)が読むための原文(英語または中国語)です。日本語訳は順次追加中。
Data-Driven Feature Development
Build features guided by data insights, A/B testing, and continuous measurement using specialized agents for analysis, implementation, and experimentation.
[Extended thinking: This workflow orchestrates a comprehensive data-driven development process from initial data analysis and hypothesis formulation through feature implementation with integrated analytics, A/B testing infrastructure, and post-launch analysis. Each phase leverages specialized agents to ensure features are built based on data insights, properly instrumented for measurement, and validated through controlled experiments. The workflow emphasizes modern product analytics practices, statistical rigor in testing, and continuous learning from user behavior.]
Use this skill when
- Working on data-driven feature development tasks or workflows
- Needing guidance, best practices, or checklists for data-driven feature development
Do not use this skill when
- The task is unrelated to data-driven feature development
- You need a different domain or tool outside this scope
Instructions
- Clarify goals, constraints, and required inputs.
- Apply relevant best practices and validate outcomes.
- Provide actionable steps and verification.
- If detailed examples are required, open
resources/implementation-playbook.md.
Phase 1: Data Analysis and Hypothesis Formation
1. Exploratory Data Analysis
- Use Task tool with subagent_type="machine-learning-ops::data-scientist"
- Prompt: "Perform exploratory data analysis for feature: $ARGUMENTS. Analyze existing user behavior data, identify patterns and opportunities, segment users by behavior, and calculate baseline metrics. Use modern analytics tools (Amplitude, Mixpanel, Segment) to understand current user journeys, conversion funnels, and engagement patterns."
- Output: EDA report with visualizations, user segments, behavioral patterns, baseline metrics
2. Business Hypothesis Development
- Use Task tool with subagent_type="business-analytics::business-analyst"
- Context: Data scientist's EDA findings and behavioral patterns
- Prompt: "Formulate business hypotheses for feature: $ARGUMENTS based on data analysis. Define clear success metrics, expected impact on key business KPIs, target user segments, and minimum detectable effects. Create measurable hypotheses using frameworks like ICE scoring or RICE prioritization."
- Output: Hypothesis document, success metrics definition, expected ROI calculations
3. Statistical Experiment Design
- Use Task tool with subagent_type="machine-learning-ops::data-scientist"
- Context: Business hypotheses and success metrics
- Prompt: "Design statistical experiment for feature: $ARGUMENTS. Calculate required sample size for statistical power, define control and treatment groups, specify randomization strategy, and plan for multiple testing corrections. Consider Bayesian A/B testing approaches for faster decision making. Design for both primary and guardrail metrics."
- Output: Experiment design document, power analysis, statistical test plan
Phase 2: Feature Architecture and Analytics Design
4. Feature Architecture Planning
- Use Task tool with subagent_type="data-engineering::backend-architect"
- Context: Business requirements and experiment design
- Prompt: "Design feature architecture for: $ARGUMENTS with A/B testing capability. Include feature flag integration (LaunchDarkly, Split.io, or Optimizely), gradual rollout strategy, circuit breakers for safety, and clean separation between control and treatment logic. Ensure architecture supports real-time configuration updates."
- Output: Architecture diagrams, feature flag schema, rollout strategy
5. Analytics Instrumentation Design
- Use Task tool with subagent_type="data-engineering::data-engineer"
- Context: Feature architecture and success metrics
- Prompt: "Design comprehensive analytics instrumentation for: $ARGUMENTS. Define event schemas for user interactions, specify properties for segmentation and analysis, design funnel tracking and conversion events, plan cohort analysis capabilities. Implement using modern SDKs (Segment, Amplitude, Mixpanel) with proper event taxonomy."
- Output: Event tracking plan, analytics schema, instrumentation guide
6. Data Pipeline Architecture
- Use Task tool with subagent_type="data-engineering::data-engineer"
- Context: Analytics requirements and existing data infrastructure
- Prompt: "Design data pipelines for feature: $ARGUMENTS. Include real-time streaming for live metrics (Kafka, Kinesis), batch processing for detailed analysis, data warehouse integration (Snowflake, BigQuery), and feature store for ML if applicable. Ensure proper data governance and GDPR compliance."
- Output: Pipeline architecture, ETL/ELT specifications, data flow diagrams
Phase 3: Implementation with Instrumentation
7. Backend Implementation
- Use Task tool with subagent_type="backend-development::backend-architect"
- Context: Architecture design and feature requirements
- Prompt: "Implement backend for feature: $ARGUMENTS with full instrumentation. Include feature flag checks at decision points, comprehensive event tracking for all user actions, performance metrics collection, error tracking and monitoring. Implement proper logging for experiment analysis."
- Output: Backend code with analytics, feature flag integration, monitoring setup
8. Frontend Implementation
- Use Task tool with subagent_type="frontend-mobile-development::frontend-developer"
- Context: Backend APIs and analytics requirements
- Prompt: "Build frontend for feature: $ARGUMENTS with analytics tracking. Implement event tracking for all user interactions, session recording integration if applicable, performance metrics (Core Web Vitals), and proper error boundaries. Ensure consistent experience between control and treatment groups."
- Output: Frontend code with analytics, A/B test variants, performance monitoring
9. ML Model Integration (if applicable)
- Use Task tool with subagent_type="machine-learning-ops::ml-engineer"
- Context: Feature requirements and data pipelines
- Prompt: "Integrate ML models for feature: $ARGUMENTS if needed. Implement online inference with low latency, A/B testing between model versions, model performance tracking, and automatic fallback mechanisms. Set up model monitoring for drift detection."
- Output: ML pipeline, model serving infrastructure, monitoring setup
Phase 4: Pre-Launch Validation
10. Analytics Validation
- Use Task tool with subagent_type="data-engineering::data-engineer"
- Context: Implemented tracking and event schemas
- Prompt: "Validate analytics implementation for: $ARGUMENTS. Test all event tracking in staging, verify data quality and completeness, validate funnel definitions, ensure proper user identification and session tracking. Run end-to-end tests for data pipeline."
- Output: Validation report, data quality metrics, tracking coverage analysis
11. Experiment Setup
- Use Task tool with subagent_type="cloud-infrastructure::deployment-engineer"
- Context: Feature flags and experiment design
- Prompt: "Configure experiment infrastructure for: $ARGUMENTS. Set up feature flags with proper targeting rules, configure traffic allocation (start with 5-10%), implement kill switches, set up monitoring alerts for key metrics. Test randomization and assignment logic."
- Output: Experiment configuration, monitoring dashboards, rollout plan
Phase 5: Launch and Experimentation
12. Gradual Rollout
- Use Task tool with subagent_type="cloud-infrastructure::deployment-engineer"
- Context: Experiment configuration and monitoring setup
- Prompt: "Execute gradual rollout for feature: $ARGUMENTS. Start with internal dogfooding, then beta users (1-5%), gradually increase to target traffic. Monitor error rates, performance metrics, and early indicators. Implement automated rollback on anomalies."
- Output: Rollout execution, monitoring alerts, health metrics
13. Real-time Monitoring
- Use Task tool with subagent_type="observability-monitoring::observability-engineer"
- Context: Deployed feature and success metrics
- Prompt: "Set up comprehensive monitoring for: $ARGUMENTS. Create real-time dashboards for experiment metrics, configure alerts for statistical significance, monitor guardrail metrics for negative impacts, track system performance and error rates. Use tools like Datadog, New Relic, or custom dashboards."
- Output: Monitoring dashboards, alert configurations, SLO definitions
Phase 6: Analysis and Decision Making
14. Statistical Analysis
- Use Task tool with subagent_type="machine-learning-ops::data-scientist"
- Context: Experiment data and original hypotheses
- Prompt: "Analyze A/B test results for: $ARGUMENTS. Calculate statistical significance with confidence intervals, check for segment-level effects, analyze secondary metrics impact, investigate any unexpected patterns. Use both frequentist and Bayesian approaches. Account for multiple testing if applicable."
- Output: Statistical analysis report, significance tests, segment analysis
15. Business Impact Assessment
- Use Task tool with subagent_type="business-analytics::business-analyst"
- Context: Statistical analysis and business metrics
- Prompt: "Assess business impact of feature: $ARGUMENTS. Calculate actual vs expected ROI, analyze impact on key business metrics, evaluate cost-benefit including operational overhead, project long-term value. Make recommendation on full rollout, iteration, or rollback."
- Output: Business impact report, ROI analysis, recommendation document
16. Post-Launch Optimization
- Use Task tool with subagent_type="machine-learning-ops::data-scientist"
- Context: Launch results and user feedback
- Prompt: "Identify optimization opportunities for: $ARGUMENTS based on data. Analyze user behavior patterns in treatment group, identify friction points in user journey, suggest improvements based on data, plan follow-up experiments. Use cohort analysis for long-term impact."
- Output: Optimization recommendations, follow-up experiment plans
Configuration Options
experiment_config:
min_sample_size: 10000
confidence_level: 0.95
runtime_days: 14
traffic_allocation: "gradual" # gradual, fixed, or adaptive
analytics_platforms:
- amplitude
- segment
- mixpanel
feature_flags:
provider: "launchdarkly" # launchdarkly, split, optimizely, unleash
statistical_methods:
- frequentist
- bayesian
monitoring:
- real_time_metrics: true
- anomaly_detection: true
- automatic_rollback: true
Success Criteria
- Data Coverage: 100% of user interactions tracked with proper event schema
- Experiment Validity: Proper randomization, sufficient statistical power, no sample ratio mismatch
- Statistical Rigor: Clear significance testing, proper confidence intervals, multiple testing corrections
- Business Impact: Measurable improvement in target metrics without degrading guardrail metrics
- Technical Performance: No degradation in p95 latency, error rates below 0.1%
- Decision Speed: Clear go/no-go decision within planned experiment runtime
- Learning Outcomes: Documented insights for future feature development
Coordination Notes
- Data scientists and business analysts collaborate on hypothesis formation
- Engineers implement with analytics as first-class requirement, not afterthought
- Feature flags enable safe experimentation without full deployments
- Real-time monitoring allows for quick iteration and rollback if needed
- Statistical rigor balanced with business practicality and speed to market
- Continuous learning loop feeds back into next feature development cycle
Feature to develop with data-driven approach: $ARGUMENTS
Limitations
- Use this skill only when the task clearly matches the scope described above.
- Do not treat the output as a substitute for environment-specific validation, testing, or expert review.
- Stop and ask for clarification if required inputs, permissions, safety boundaries, or success criteria are missing.