.claude/skills/cto-advisor/SKILL.md
Technical leadership guidance for engineering teams, architecture decisions, and technology strategy. Includes tech debt analyzer, team scaling calculator, engineering metrics frameworks, technology evaluation tools, and ADR templates. Use when assessing technical debt, scaling engineering teams, evaluating technologies, making architecture decisions, establishing engineering metrics, or when user mentions CTO, tech debt, technical debt, team scaling, architecture decisions, technology evaluation, engineering metrics, DORA metrics, or technology strategy.
npx skillsauth add efiadm/informatik-ai-studio cto-advisorInstall this skill globally with one command. Works with Claude Code, Cursor, and Windsurf.
3 of 9 scanners reported clean
Some scanners were skipped, did not run, or reported a non-clean status. Review each row below.
Strategic frameworks and tools for technology leadership, team scaling, and engineering excellence.
CTO, chief technology officer, technical leadership, tech debt, technical debt, engineering team, team scaling, architecture decisions, technology evaluation, engineering metrics, DORA metrics, ADR, architecture decision records, technology strategy, engineering leadership, engineering organization, team structure, hiring plan, technical strategy, vendor evaluation, technology selection
python scripts/tech_debt_analyzer.py
Analyzes system architecture and provides prioritized debt reduction plan.
python scripts/team_scaling_calculator.py
Calculates optimal hiring plan and team structure for growth.
Review references/architecture_decision_records.md for ADR templates and examples.
Use framework in references/technology_evaluation_framework.md for vendor selection.
Implement KPIs from references/engineering_metrics.md for team performance tracking.
# Assess current debt
python scripts/tech_debt_analyzer.py
# Allocate capacity
- Critical debt: 40% capacity
- High debt: 25% capacity
- Medium debt: 15% capacity
- Low debt: Ongoing maintenance
# Calculate scaling needs
python scripts/team_scaling_calculator.py
# Key ratios to maintain:
- Manager:Engineer = 1:8
- Senior:Mid:Junior = 3:4:2
- Product:Engineering = 1:10
- QA:Engineering = 1.5:10
Use ADR template from references/architecture_decision_records.md:
Follow framework in references/technology_evaluation_framework.md:
From references/engineering_metrics.md:
DORA Metrics (Deploy to production targets):
Quality Metrics:
Team Health:
Immediate (0-15 min):
Short-term (15-60 min):
Resolution (1-24 hours):
Post-mortem (48-72 hours):
Monthly:
Quarterly:
1. Executive Summary (1 slide)
2. Current State Assessment (2 slides)
3. Vision & Strategy (2 slides)
4. Roadmap & Milestones (3 slides)
5. Investment Required (1 slide)
6. Risks & Mitigation (1 slide)
7. Success Metrics (1 slide)
1. Wins & Recognition (5 min)
2. Metrics Review (5 min)
3. Strategic Updates (10 min)
4. Demo/Deep Dive (15 min)
5. Q&A (10 min)
Subject: Engineering Update - [Month]
Highlights:
• [Major achievement]
• [Key metric improvement]
• [Strategic progress]
Challenges:
• [Issue and mitigation]
Next Month:
• [Priority 1]
• [Priority 2]
Detailed metrics attached.
Books:
Frameworks:
Communities:
✅ Technical Excellence
✅ Team Success
✅ Business Impact
⚠️ Increasing technical debt
⚠️ Rising attrition rate
⚠️ Slowing velocity
⚠️ Growing incidents
⚠️ Team morale declining
⚠️ Budget overruns
⚠️ Vendor dependencies
⚠️ Security vulnerabilities
development
Comprehensive frontend development skill for building modern, performant web applications using ReactJS, NextJS, TypeScript, Tailwind CSS. Includes component scaffolding, performance optimization, bundle analysis, and UI best practices. Use when developing frontend features, optimizing performance, implementing UI/UX designs, managing state, or reviewing frontend code.
tools
Comprehensive DevOps skill for CI/CD, infrastructure automation, containerization, and cloud platforms (AWS, GCP, Azure). Includes pipeline setup, infrastructure as code, deployment automation, and monitoring. Use when setting up pipelines, deploying applications, managing infrastructure, implementing monitoring, or optimizing deployment processes.
development
World-class data science skill for statistical modeling, experimentation, causal inference, and advanced analytics. Expertise in Python (NumPy, Pandas, Scikit-learn), R, SQL, statistical methods, A/B testing, time series, and business intelligence. Includes experiment design, feature engineering, model evaluation, and stakeholder communication. Use when designing experiments, building predictive models, performing causal analysis, or driving data-driven decisions.
development
World-class data engineering skill for building scalable data pipelines, ETL/ELT systems, and data infrastructure. Expertise in Python, SQL, Spark, Airflow, dbt, Kafka, and modern data stack. Includes data modeling, pipeline orchestration, data quality, and DataOps. Use when designing data architectures, building data pipelines, optimizing data workflows, or implementing data governance.