[{"data":1,"prerenderedAt":-1},["ShallowReactive",2],{"skill-c3098f3c-0c41-421d-8549-74f4efb95d0a":3,"$ffIhR3uocfx1xvcgG-BgfniJCud2p4TknfgFXm3fqQlk":43},{"id":4,"title":5,"description":6,"categoryId":7,"moduleId":8,"tags":9,"prompt":10,"icon":11,"source":12,"sourceUrl":13,"authorId":14,"authorName":15,"isPublic":16,"stars":17,"runs":18,"createdAt":19,"updatedAt":19,"module":20,"category":27,"packages":34},"c3098f3c-0c41-421d-8549-74f4efb95d0a","chief-customer-officer-advisor","首席客户官为初创公司提供咨询：保留分解（总体保留率与NRR的真实性、流失根本原因分类）、客户细分策略（不同层级间的差异化投资+潜在客户匹配评分）、客户服务团队覆盖模型（集中式与指定式客户成功经理阈值+比率计算）、客户服务团队组织演变（客户成功、支持、账户管理区分）。在设计保留策略、细分客户以进行差异化投资、确定客户服务团队规模或安排客户服务人员招聘顺序时使用。仅限战略层面——...","cat_coding_review","mod_coding","alirezarezvani,coding","---\nname: \"chief-customer-officer-advisor\"\ndescription: \"Chief Customer Officer advisory for startups: retention decomposition (gross retention vs NRR honesty, churn root-cause taxonomy), customer segmentation strategy (differential investment across tiers + ICP fit scoring), CS team coverage model (pooled vs named CSM thresholds + ratio math), and CS team org evolution (CS vs Support vs AM distinctions). Use when designing retention strategy, segmenting customers for differential investment, sizing CS team, or sequencing CS hires. Strategic only — does not duplicate engineering\u002Fbusiness-growth tactical skills.\"\nlicense: MIT\nmetadata:\n  version: 1.0.0\n  author: Alireza Rezvani\n  category: c-level\n  domain: chief-customer-officer-leadership\n  updated: 2026-05-13\n  python-tools: retention_decomposition_analyzer.py, customer_segmentation_designer.py, cs_coverage_calculator.py\n  frameworks: retention-decomposition, customer-segmentation, cs-coverage-model, cs-team-org\n---\n\n# Chief Customer Officer Advisor\n\nStrategic customer leadership for startup CCOs and founders without one. **Four decisions, no generic CS survey:**\n\n1. **What's our retention architecture — and is gross retention vs NRR honest?** — decomposition into gross retention, contraction, expansion + churn root-cause taxonomy\n2. **How do we segment customers for differential investment?** — tier design + ICP fit scoring + investment-per-segment math\n3. **What's the CS team's coverage model — and when do we go pooled vs named?** — coverage ratio calculator + transition thresholds\n4. **What CS role do we hire next?** — stage-to-role map (CS ≠ Support ≠ AM ≠ Implementation)\n\nThis skill does **not** cover tactical CS implementation. For health-score tooling, CRM workflows, NPS survey infrastructure, or onboarding automation, see `business-growth\u002Fcustomer-success-management\u002F` and adjacent tactical skills.\n\n## Keywords\n\nCCO, chief customer officer, customer success, retention strategy, gross retention, net retention, NRR, GRR, logo retention, dollar retention, churn, contraction, expansion, downsell, customer lifetime value, CLV, LTV, time-to-value, TTV, time-to-first-value, customer health score, NPS, CSAT, customer effort score, segmentation, ICP fit, tier design, low-touch, high-touch, tech-touch, pooled CSM, named CSM, customer success manager, account manager, AM, implementation manager, IM, customer success operations, CS ops, book of business, ratio, ARR-per-CSM, customer marketing, advocacy, expansion playbook, voice of customer, VoC\n\n## Quick Start\n\n```bash\n# Decision A: Decompose retention honestly\npython scripts\u002Fretention_decomposition_analyzer.py                          # embedded B2B SaaS sample\npython scripts\u002Fretention_decomposition_analyzer.py path\u002Fto\u002Fcohorts.json\n\n# Decision B: Design customer segmentation + differential investment\npython scripts\u002Fcustomer_segmentation_designer.py                            # embedded 4-tier sample\npython scripts\u002Fcustomer_segmentation_designer.py path\u002Fto\u002Fcustomers.json\n\n# Decision C: Calculate CS team coverage model\npython scripts\u002Fcs_coverage_calculator.py                                    # embedded 350-customer sample\npython scripts\u002Fcs_coverage_calculator.py path\u002Fto\u002Fbook.json\n```\n\n## Key Questions (ask these first)\n\n- **What's your GROSS retention rate?** (Not NRR — NRR hides churn behind expansion. Ask gross first.)\n- **What's the #1 reason customers leave?** (If you can't name it, you don't understand churn.)\n- **What's the median time-to-value (TTV) by segment?** (Long TTV in low tier = misfit; long TTV in high tier = onboarding broken.)\n- **Which customer would you fire today?** (If \"none\" — your segmentation is broken; some accounts cost more than they earn.)\n- **What's your ARR-per-CSM ratio, and what's the model — pooled or named?** (Stage and ACV determine the right answer.)\n- **Is CS in your comp plan, and how is it different from Sales comp?** (CS comp on retention; misalignment is a leading indicator of failure.)\n\n## Core Responsibilities\n\n### 1. Retention Decomposition\n\n**The trap:** \"Our NRR is 115%, retention is great.\"\n\nThe truth: NRR = Gross Retention − Contraction + Expansion. A 115% NRR with 85% gross retention is a leaky bucket masked by upsells. A 115% NRR with 98% gross retention is a healthy product.\n\n**Mandatory decomposition every quarter:**\n\n| Metric | What it measures | Health threshold (B2B SaaS) |\n|---|---|---|\n| **Gross Retention (GRR)** | $ from existing customers minus churn + contraction | ≥ 90% at growth stage; ≥ 95% at scale |\n| **Logo Retention** | % of customers who renewed | ≥ 85% at growth; ≥ 90% at scale |\n| **Net Revenue Retention (NRR)** | GRR + expansion | ≥ 110% at growth; ≥ 120% at scale |\n| **Contraction** | $ from existing customers reducing seats\u002Fusage | \u003C 5% annually |\n| **Expansion** | $ from existing customers growing | 15-25% annually at healthy |\n\n**Run** `retention_decomposition_analyzer.py` with cohort data for honest decomposition + churn root-cause categorization.\n\nSee `references\u002Fretention_decomposition.md` for the 7-category churn taxonomy + leading indicator playbook.\n\n### 2. Customer Segmentation\n\n**The trap:** \"Every customer is important.\"\n\nThe reality: customers exist on a spectrum of ICP fit × strategic value. Treating them identically wastes CS capacity and ignores expansion opportunity.\n\n**4-tier framework (B2B SaaS baseline):**\n\n| Tier | ARR range | Coverage | Investment per account\u002Fyr |\n|---|---|---|---|\n| **Strategic** | Top 5%, often $100K+ | Named CSM + executive sponsor | $20K-50K |\n| **Enterprise** | Next 15-20%, $20K-100K | Named CSM | $5K-15K |\n| **Mid-market** | Next 30-40%, $5K-20K | Pooled CSM + automation | $1K-3K |\n| **SMB \u002F Long-tail** | Bottom 40-50%, \u003C$5K | Tech-touch + self-serve | $50-500 |\n\n**Run** `customer_segmentation_designer.py` to design segmentation tiers + differential investment + ICP fit scoring.\n\nSee `references\u002Fcustomer_segmentation_strategy.md` for ICP fit framework, tier transition triggers, and the kill list (customers below the investment floor).\n\n### 3. CS Team Coverage Model\n\n**The trap:** \"Hire one CSM per X customers\" with a single ratio across all segments.\n\nThe reality: coverage model depends on segment, ACV, and complexity. Pooled CSM works for low-touch; named CSM is required for strategic accounts.\n\n**Coverage models:**\n\n| Model | Best for | Ratio (ARR-per-CSM) | Trade-offs |\n|---|---|---|---|\n| **Tech-touch (no human)** | SMB, low ACV | $5M-15M+ | Automation cost; cannot save high-stakes deals |\n| **Pooled CSM** | Mid-market | $2M-5M | Lower cost; less account intimacy |\n| **Named CSM** | Enterprise | $500K-2M | Higher cost; deeper relationships |\n| **Named CSM + exec sponsor** | Strategic | $300K-1M | Highest cost; reserved for top accounts |\n\n**Run** `cs_coverage_calculator.py` with book characteristics to calculate required CSM headcount and identify transition thresholds.\n\nSee `references\u002Fcs_coverage_model.md` for ratios, ramp curves, and the \"when to add a manager\" trigger.\n\n### 4. CS Team Org Evolution\n\n**The wrong question:** \"Should we hire a CSM or a Support engineer?\"\n**The right question:** \"What's the next customer outcome we're failing to deliver, and what role unblocks that?\"\n\n**Critical distinctions (founders confuse these):**\n\n| Role | Owns | Does NOT own |\n|---|---|---|\n| Customer Support | Reactive issue resolution (ticket queue) | Renewal, expansion, success outcomes |\n| Customer Success Manager | Proactive value realization + renewal + expansion lead | Day-to-day tickets, implementation |\n| Account Manager | Commercial relationship + expansion close | Day-to-day success, technical depth |\n| Implementation Manager | Onboarding + go-live | Ongoing success after launch |\n| CS Operations | Tooling, data, analytics, playbooks | Direct customer relationships |\n| Customer Marketing | Advocacy, case studies, references | 1:1 customer relationships |\n\nSee `references\u002Fcs_team_org_evolution.md` for stage-to-role map (seed → late-stage) + the AM-vs-CSM split decision.\n\n## Workflows\n\n### Workflow 1: Quarterly Retention Review (4 hours)\n**Goal:** Decompose retention honestly + identify top-3 churn drivers.\n\n```bash\n# 1. Pull cohort data: closed\u002Fwon by quarter for last 8 quarters\npython scripts\u002Fretention_decomposition_analyzer.py cohorts.json\n# 2. Review GRR \u002F NRR \u002F contraction \u002F expansion separately\n# 3. For each cohort showing GRR \u003C 90%: identify churn root cause (7-category taxonomy)\n# 4. Cross-check with cs-cro-advisor: does the expansion math add up?\n# 5. Cross-check with cs-cpo-advisor: are product gaps driving churn?\n# 6. Output: top-3 leakage points + 90-day mitigation plan\n```\n\n### Workflow 2: Customer Segmentation Audit (1 day)\n**Goal:** Re-segment customer base + reset differential investment.\n\n```bash\n# 1. Build customers.json with ARR, tenure, ICP fit signals\npython scripts\u002Fcustomer_segmentation_designer.py customers.json\n# 2. Identify segment migration (mid-market → enterprise upgrades, downsells)\n# 3. Identify kill list (customers below investment floor)\n# 4. Output: new tier assignment + investment-per-tier + kill list for sales review\n```\n\n### Workflow 3: CS Team Sizing (1 week)\n**Goal:** Size the CS team aligned to book composition + coverage model.\n\n```bash\n# 1. Build book.json with current customer base + planned acquisition\npython scripts\u002Fcs_coverage_calculator.py book.json\n# 2. Calculate required CSM headcount by segment\n# 3. Compare to current team; identify gaps\n# 4. Cross-check with cs-chro-advisor on comp + leveling\n# 5. Cross-check with cs-cfo-advisor on the cost\n# 6. Output: 12-month hiring plan + role sequence\n```\n\n### Workflow 4: CS Team Roadmap (1 week)\n**Goal:** Sequence next 18 months of CS hires aligned to customer outcomes.\n\n1. List top 5 customer outcomes the company is failing to deliver\n2. Map each outcome to the role that unblocks it (CSM \u002F AM \u002F IM \u002F Support \u002F CS Ops)\n3. Sequence hires; respect prerequisite order\n4. Cross-check with cs-chro-advisor\n\n## Output Standards\n\n```\n**Bottom Line:** [one sentence — decision and rationale]\n**The Decision:** [one of: retention | segmentation | coverage | next hire]\n**The Evidence:** [numbers from the tool, not adjectives]\n**How to Act:** [3 concrete next steps]\n**Your Decision:** [the call only the founder can make]\n```\n\n## Adjacent Skills\n\n- `..\u002Fcro-advisor\u002F` — Revenue math, NRR, expansion comp (CCO owns customer experience; CRO owns revenue math; clean split)\n- `..\u002Fcpo-advisor\u002F` — Product strategy, JTBD (CCO surfaces product gaps; CPO decides roadmap)\n- `..\u002Fcmo-advisor\u002F` — Customer marketing, advocacy, references\n- `..\u002Fcfo-advisor\u002F` — CS team cost, retention-impact-on-revenue math\n- `..\u002Fchro-advisor\u002F` — CS team hiring + leveling\n- `..\u002F..\u002F..\u002Fbusiness-growth\u002F` — Tactical CS execution: health scores, CRM workflows, onboarding tooling\n\n## References\n\n- [retention_decomposition.md](references\u002Fretention_decomposition.md) — GRR vs NRR honest math + 7-category churn taxonomy + leading indicator playbook\n- [customer_segmentation_strategy.md](references\u002Fcustomer_segmentation_strategy.md) — 4-tier framework + ICP fit scoring + tier transition triggers + kill list criteria\n- [cs_coverage_model.md](references\u002Fcs_coverage_model.md) — Coverage model decision (tech-touch \u002F pooled \u002F named \u002F named+exec) + ratio benchmarks + manager-trigger\n- [cs_team_org_evolution.md](references\u002Fcs_team_org_evolution.md) — Stage-to-role map + 6-role definition table (CSM ≠ Support ≠ AM ≠ IM ≠ CS Ops ≠ Customer Marketing) + AM-vs-CSM split decision + anti-patterns\n\n---\n\n**Version:** 1.0.0\n**Status:** Production Ready\n**Disclaimer:** Retention benchmarks vary significantly by ACV, segment, and industry. This skill provides B2B SaaS-baseline guidance; consumer SaaS, marketplaces, and hardware all have materially different retention math.\n","","imported","https:\u002F\u002Fgithub.com\u002Falirezarezvani\u002Fclaude-skills","user_system_seed","SkillOPIC",true,178,246,"2026-05-16 13:49:59",{"id":8,"name":21,"slug":22,"icon":23,"description":24,"sort":25,"createdAt":26},"编程开发","coding","mdi-code-braces","代码生成、调试、审查，提升开发效率",2,"2026-05-16 12:53:40",{"id":7,"name":28,"slug":29,"icon":30,"description":31,"moduleId":8,"sort":32,"skillCount":33,"createdAt":26},"代码审查","review","mdi-magnify-scan","代码质量分析、安全审查",4,145,[35],{"id":36,"skillId":4,"version":37,"fileName":38,"fileSize":39,"filePath":40,"fileHash":41,"manifest":42,"createdAt":19},"2674c632-21f0-462b-afd7-0e548033f3a0","1.0.0","chief-customer-officer-advisor.zip",30562,"uploads\u002Fskills\u002Fc3098f3c-0c41-421d-8549-74f4efb95d0a\u002Fchief-customer-officer-advisor.zip","3457dfde94561d425990fc916f06484411b7e0b7d93742c408afd9ac9508ef5e","[{\"path\":\"SKILL.md\",\"isDirectory\":false,\"size\":11902},{\"path\":\"references\u002Fcs_coverage_model.md\",\"isDirectory\":false,\"size\":7246},{\"path\":\"references\u002Fcs_team_org_evolution.md\",\"isDirectory\":false,\"size\":10515},{\"path\":\"references\u002Fcustomer_segmentation_strategy.md\",\"isDirectory\":false,\"size\":7579},{\"path\":\"references\u002Fretention_decomposition.md\",\"isDirectory\":false,\"size\":7100},{\"path\":\"scripts\u002Fcs_coverage_calculator.py\",\"isDirectory\":false,\"size\":11084},{\"path\":\"scripts\u002Fcustomer_segmentation_designer.py\",\"isDirectory\":false,\"size\":12335},{\"path\":\"scripts\u002Fretention_decomposition_analyzer.py\",\"isDirectory\":false,\"size\":11581}]",{"code":44,"message":45,"data":46},200,"success",{"items":47,"stats":48,"page":51},[],{"averageRating":49,"totalRatings":49,"ratingCounts":50},0,[49,49,49,49,49],{"limit":52,"offset":49,"hasMore":53,"nextOffset":52,"ratedOnly":16},15,false]