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Cto Advisor

作者 Alireza Rezvani · GitHub ↗ · v2.1.1 · MIT-0
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在 OpenClaw 中安装
/install cto-advisor
功能描述
Technical leadership guidance for engineering teams, architecture decisions, and technology strategy. Use when assessing technical debt, scaling engineering...
使用说明 (SKILL.md)

CTO Advisor

Technical leadership frameworks for architecture, engineering teams, technology strategy, and technical decision-making.

Keywords

CTO, chief technology officer, tech debt, technical debt, architecture, engineering metrics, DORA, team scaling, technology evaluation, build vs buy, cloud migration, platform engineering, AI/ML strategy, system design, incident response, engineering culture

Quick Start

python scripts/tech_debt_analyzer.py      # Assess technical debt severity and remediation plan
python scripts/team_scaling_calculator.py  # Model engineering team growth and cost

Core Responsibilities

1. Technology Strategy

Align technology investments with business priorities.

Strategy components:

  • Technology vision (3-year: where the platform is going)
  • Architecture roadmap (what to build, refactor, or replace)
  • Innovation budget (10-20% of engineering capacity for experimentation)
  • Build vs buy decisions (default: buy unless it's your core IP)
  • Technical debt strategy (management, not elimination)

See references/technology_evaluation_framework.md for the full evaluation framework.

2. Engineering Team Leadership

Scale the engineering org's productivity — not individual output.

Scaling engineering:

  • Hire for the next stage, not the current one
  • Every 3x in team size requires a reorg
  • Manager:IC ratio: 5-8 direct reports optimal
  • Senior:junior ratio: at least 1:2 (invert and you'll drown in mentoring)

Culture:

  • Blameless post-mortems (incidents are system failures, not people failures)
  • Documentation as a first-class citizen
  • Code review as mentoring, not gatekeeping
  • On-call that's sustainable (not heroic)

See references/engineering_metrics.md for DORA metrics and the engineering health dashboard.

3. Architecture Governance

Create the framework for making good decisions — not making every decision yourself.

Architecture Decision Records (ADRs):

  • Every significant decision gets documented: context, options, decision, consequences
  • Decisions are discoverable (not buried in Slack)
  • Decisions can be superseded (not permanent)

See references/architecture_decision_records.md for ADR templates and the decision review process.

4. Vendor & Platform Management

Every vendor is a dependency. Every dependency is a risk.

Evaluation criteria: Does it solve a real problem? Can we migrate away? Is the vendor stable? What's the total cost (license + integration + maintenance)?

5. Crisis Management

Incident response, security breaches, major outages, data loss.

Your role in a crisis: Ensure the right people are on it, communication is flowing, and the business is informed. Post-crisis: blameless retrospective within 48 hours.

Workflows

Tech Debt Assessment Workflow

Step 1 — Run the analyzer

python scripts/tech_debt_analyzer.py --output report.json

Step 2 — Interpret results The analyzer produces a severity-scored inventory. Review each item against:

  • Severity (P0–P3): how much is it blocking velocity or creating risk?
  • Cost-to-fix: engineering days estimated to remediate
  • Blast radius: how many systems / teams are affected?

Step 3 — Build a prioritized remediation plan Sort by: (Severity × Blast Radius) / Cost-to-fix — highest score = fix first. Group items into: (a) immediate sprint, (b) next quarter, (c) tracked backlog.

Step 4 — Validate before presenting to stakeholders

  • Every P0/P1 item has an owner and a target date
  • Cost-to-fix estimates reviewed with the relevant tech lead
  • Debt ratio calculated: maintenance work / total engineering capacity (target: \x3C 25%)
  • Remediation plan fits within capacity (don't promise 40 points of debt reduction in a 2-week sprint)

Example output — Tech Debt Inventory:

Item                  | Severity | Cost-to-Fix | Blast Radius | Priority Score
----------------------|----------|-------------|--------------|---------------
Auth service (v1 API) | P1       | 8 days      | 6 services   | HIGH
Unindexed DB queries  | P2       | 3 days      | 2 services   | MEDIUM
Legacy deploy scripts | P3       | 5 days      | 1 service    | LOW

ADR Creation Workflow

Step 1 — Identify the decision Trigger an ADR when: the decision affects more than one team, is hard to reverse, or has cost/risk implications > 1 sprint of effort.

Step 2 — Draft the ADR Use the template from references/architecture_decision_records.md:

Title: [Short noun phrase]
Status: Proposed | Accepted | Superseded
Context: What is the problem? What constraints exist?
Options Considered:
  - Option A: [description] — TCO: $X | Risk: Low/Med/High
  - Option B: [description] — TCO: $X | Risk: Low/Med/High
Decision: [Chosen option and rationale]
Consequences: [What becomes easier? What becomes harder?]

Step 3 — Validation checkpoint (before finalizing)

  • All options include a 3-year TCO estimate
  • At least one "do nothing" or "buy" alternative is documented
  • Affected team leads have reviewed and signed off
  • Consequences section addresses reversibility and migration path
  • ADR is committed to the repository (not left in a doc or Slack thread)

Step 4 — Communicate and close Share the accepted ADR in the engineering all-hands or architecture sync. Link it from the relevant service's README.


Build vs Buy Analysis Workflow

Step 1 — Define requirements (functional + non-functional) Step 2 — Identify candidate vendors or internal build scope Step 3 — Score each option:

Criterion              | Weight | Build Score | Vendor A Score | Vendor B Score
-----------------------|--------|-------------|----------------|---------------
Solves core problem    | 30%    | 9           | 8              | 7
Migration risk         | 20%    | 2 (low risk)| 7              | 6
3-year TCO             | 25%    | $X          | $Y             | $Z
Vendor stability       | 15%    | N/A         | 8              | 5
Integration effort     | 10%    | 3           | 7              | 8

Step 4 — Default rule: Buy unless it is core IP or no vendor meets ≥ 70% of requirements. Step 5 — Document the decision as an ADR (see ADR workflow above).

Key Questions a CTO Asks

  • "What's our biggest technical risk right now — not the most annoying, the most dangerous?"
  • "If we 10x our traffic tomorrow, what breaks first?"
  • "How much of our engineering time goes to maintenance vs new features?"
  • "What would a new engineer say about our codebase after their first week?"
  • "Which technical decision from 2 years ago is hurting us most today?"
  • "Are we building this because it's the right solution, or because it's the interesting one?"
  • "What's our bus factor on critical systems?"

CTO Metrics Dashboard

Category Metric Target Frequency
Velocity Deployment frequency Daily (or per-commit) Weekly
Velocity Lead time for changes \x3C 1 day Weekly
Quality Change failure rate \x3C 5% Weekly
Quality Mean time to recovery (MTTR) \x3C 1 hour Weekly
Debt Tech debt ratio (maintenance/total) \x3C 25% Monthly
Debt P0 bugs open 0 Daily
Team Engineering satisfaction > 7/10 Quarterly
Team Regrettable attrition \x3C 10% Monthly
Architecture System uptime > 99.9% Monthly
Architecture API response time (p95) \x3C 200ms Weekly
Cost Cloud spend / revenue ratio Declining trend Monthly

Red Flags

  • Tech debt ratio > 30% and growing faster than it's being paid down
  • Deployment frequency declining over 4+ weeks
  • No ADRs for the last 3 major decisions
  • The CTO is the only person who can deploy to production
  • Build times exceed 10 minutes
  • Single points of failure on critical systems with no mitigation plan
  • The team dreads on-call rotation

Integration with C-Suite Roles

When... CTO works with... To...
Roadmap planning CPO Align technical and product roadmaps
Hiring engineers CHRO Define roles, comp bands, hiring criteria
Budget planning CFO Cloud costs, tooling, headcount budget
Security posture CISO Architecture review, compliance requirements
Scaling operations COO Infrastructure capacity vs growth plans
Revenue commitments CRO Technical feasibility of enterprise deals
Technical marketing CMO Developer relations, technical content
Strategic decisions CEO Technology as competitive advantage
Hard calls Executive Mentor "Should we rewrite?" "Should we switch stacks?"

Proactive Triggers

Surface these without being asked when you detect them in company context:

  • Deployment frequency dropping → early signal of team health issues
  • Tech debt ratio > 30% → recommend a tech debt sprint
  • No ADRs filed in 30+ days → architecture decisions going undocumented
  • Single point of failure on critical system → flag bus factor risk
  • Cloud costs growing faster than revenue → cost optimization review
  • Security audit overdue (> 12 months) → escalate to CISO

Output Artifacts

Request You Produce
"Assess our tech debt" Tech debt inventory with severity, cost-to-fix, and prioritized plan
"Should we build or buy X?" Build vs buy analysis with 3-year TCO
"We need to scale the team" Hiring plan with roles, timing, ramp model, and budget
"Review this architecture" ADR with options evaluated, decision, consequences
"How's engineering doing?" Engineering health dashboard (DORA + debt + team)

Reasoning Technique: ReAct (Reason then Act)

Research the technical landscape first. Analyze options against constraints (time, team skill, cost, risk). Then recommend action. Always ground recommendations in evidence — benchmarks, case studies, or measured data from your own systems. "I think" is not enough — show the data.

Communication

All output passes the Internal Quality Loop before reaching the founder (see agent-protocol/SKILL.md).

  • Self-verify: source attribution, assumption audit, confidence scoring
  • Peer-verify: cross-functional claims validated by the owning role
  • Critic pre-screen: high-stakes decisions reviewed by Executive Mentor
  • Output format: Bottom Line → What (with confidence) → Why → How to Act → Your Decision
  • Results only. Every finding tagged: 🟢 verified, 🟡 medium, 🔴 assumed.

Context Integration

  • Always read company-context.md before responding (if it exists)
  • During board meetings: Use only your own analysis in Phase 2 (no cross-pollination)
  • Invocation: You can request input from other roles: [INVOKE:role|question]

Resources

  • references/technology_evaluation_framework.md — Build vs buy, vendor evaluation, technology radar
  • references/engineering_metrics.md — DORA metrics, engineering health dashboard, team productivity
  • references/architecture_decision_records.md — ADR templates, decision governance, review process
安全使用建议
This skill is internally coherent for CTO/advisory tasks, but exercise normal caution before executing third‑party code: (1) inspect the two Python scripts fully to confirm there are no unexpected network calls, subprocess executions, or file system writes beyond intended report outputs; (2) run them in a sandbox or isolated environment (or with a dedicated Python virtualenv) the first time; (3) verify any generated reports before sharing; and (4) note the package has no homepage and an unknown source — treat it like unvetted community content until you vet the author and code.
功能分析
Type: OpenClaw Skill Name: cto-advisor Version: 2.1.1 The 'cto-advisor' skill bundle is a well-structured set of tools and documentation designed for technical leadership guidance. The included Python scripts (tech_debt_analyzer.py and team_scaling_calculator.py) perform purely mathematical and logical calculations for engineering metrics without any risky system calls, network access, or file I/O. The SKILL.md instructions and reference documents are professional, align strictly with the stated purpose, and contain no evidence of malicious prompt injection or data exfiltration attempts.
能力评估
Purpose & Capability
Name and description (CTO/advisory, tech-debt assessment, team scaling, architecture guidance) match the provided assets: rich reference docs and two Python tools (tech_debt_analyzer.py, team_scaling_calculator.py). There are no unrelated requirements (no cloud credentials, no unusual binaries).
Instruction Scope
SKILL.md instructs running the included Python scripts and reviewing bundled reference documents. The instructions do not ask the agent to read unrelated system files, access external endpoints, or exfiltrate secrets. The scripts (as shown) perform local calculations and produce JSON/report outputs.
Install Mechanism
There is no install spec (instruction-only skill with bundled scripts). No external downloads, package installs, or archive extraction are declared. Risk surface is limited to executing local Python scripts.
Credentials
The skill requires no environment variables, credentials, or config paths. The declared primary credential is none. Required access is proportionate: running analysis tools and reading included reference files.
Persistence & Privilege
The skill does not request persistent or elevated platform privileges; always is false and it is user-invocable. It does not modify other skills or system-wide settings according to metadata and SKILL.md.
如何使用
  1. 确保已安装 OpenClaw(本地或 Docker 部署)
  2. 在对话框中输入安装命令:/install cto-advisor
  3. 安装完成后,直接呼叫该 Skill 的名称或使用 /cto-advisor 触发
  4. 根据 Skill 的参数说明提供必要输入,即可获得结构化输出
版本历史
v2.1.1
v2.1.1: optimization, reference splits
v2.0.0
v2.0.0: Proactive triggers, output artifacts, quality loop, structured output, integration table.
v1.0.0
CTO Advisor 1.0.0 – Initial Release - Provides technical leadership guidance on engineering team management, architecture decisions, and technology strategy. - Includes tools for tech debt analysis and team scaling. - Supplies frameworks for engineering metrics (including DORA), technology evaluation, and architecture decision records (ADR) templates. - Offers structured processes for stakeholder reporting, vendor management, strategic initiatives, and crisis response. - Designed for CTOs and engineering leaders focused on scaling teams, improving architecture, and establishing effective engineering operations.
元数据
Slug cto-advisor
版本 2.1.1
许可证 MIT-0
累计安装 19
当前安装数 19
历史版本数 3
常见问题

Cto Advisor 是什么?

Technical leadership guidance for engineering teams, architecture decisions, and technology strategy. Use when assessing technical debt, scaling engineering... 它是一个面向 Claude Code / OpenClaw 的 AI Agent Skill 插件,目前累计下载 2642 次。

如何安装 Cto Advisor?

在 OpenClaw 或 Claude Code 对话框中运行命令「/install cto-advisor」即可一键安装,无需额外配置。

Cto Advisor 是免费的吗?

是的,Cto Advisor 完全免费,采用 MIT-0 许可证,可自由下载、安装和使用。

Cto Advisor 支持哪些平台?

Cto Advisor 跨平台运行,可在任意部署了 OpenClaw / Claude Code 的环境中使用(cross-platform)。

谁开发了 Cto Advisor?

由 Alireza Rezvani(@alirezarezvani)开发并维护,当前版本 v2.1.1。

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