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/cs:cdo-review — CDO Forcing Questions

C-Level Advisory cdo-review Source

Install: claude /plugin install c-level-skills

Command: /cs:cdo-review <plan>

The decision-driven CDO pressure-tests any plan that touches data strategy. Six questions before any commitment to a data architecture, AI training run, data productization, or data team hire.

When to Run

  • Before approving any new ML model training run that uses customer data
  • Before signing a multi-year data-infrastructure SaaS contract (Snowflake, Databricks, Fivetran)
  • Before productizing any customer data (benchmark report, embedding endpoint, license)
  • Before a major data team hire (head of data, CDO, data PM, ML engineer)
  • Before M&A diligence — yours or theirs
  • When the founder uses the word "monetize" near "data"

The Six CDO Questions

1. What decision does this data drive?

If no decision is unblocked, why are we collecting / training on / productizing it? - "We might need it later" is not a decision. - "It feels like a moat" is not a decision. - A real answer names a specific business call that requires this data.

For each data source: origin, consent flow, data class, intended use. - 1st-party-TOS-only is weaker than 1st-party-explicit-opt-in. - Bundled TOS doesn't cover material new purposes (training on PII for foundation models). - Run ai_training_data_audit.py if there's any AI use case in scope.

3. Who consumes this internally — and how many distinct functional domains?

Drives the centralize-vs-embed and warehouse-vs-mesh decisions. - <5 consumers: warehouse-only. - 5-25 consumers: lakehouse. - 25+ consumers + federated culture: mesh. - Premature architecture choice is the #1 cause of data-team burnout.

4. What's the M&A diligence impact?

If an acquirer asks about this data corpus tomorrow, are we ready? - Is there a documented anonymization process? - What % of customers have MSA carve-outs? - Are training-data provenance logs current? - Run data_asset_valuator.py quarterly.

5. Can the model / decision / report be retrained / re-run / re-published without this source?

Tests how much you depend on a specific data source. - If yes → low blast radius; you can change consent posture later. - If no → high blast radius; you've structurally committed to the source. Vet harder.

6. What role unblocks this — and is it the right next hire?

Wrong hire (data scientist) when right answer (analytics engineer) is a 12-month productivity loss. - Map the decision being unblocked to the specific role. - Confirm prerequisite roles are in place (data engineer before ML engineer, analyst before data scientist).

Workflow

# 1. AI training audit (if any ML / AI use case)
python ../../../skills/chief-data-officer-advisor/scripts/ai_training_data_audit.py sources.json

# 2. Architecture decision (if changing the stack)
python ../../../skills/chief-data-officer-advisor/scripts/data_product_strategy_picker.py profile.json

# 3. Data asset valuation (if productizing or pre-M&A)
python ../../../skills/chief-data-officer-advisor/scripts/data_asset_valuator.py corpus.json

Output Format

# CDO Review: <plan>
**Date:** YYYY-MM-DD

## The Decision Being Made
[one sentence — which of the four CDO decisions: training | architecture | asset | hire]

## Training Audit (if applicable)
- NO-GO sources: N
- MITIGATE sources: N
- GO sources: N
- Top remediation: <one line>

## Architecture (if applicable)
- Recommended: WAREHOUSE / LAKEHOUSE / MESH
- Build-vs-buy summary: <one line>
- Kill criteria: <when to revisit>

## Asset Value (if applicable)
- Strategic value: X/10 | Moat: STRONG / MEDIUM / WEAK
- M&A multiplier: X.Xx – X.Xx ARR
- Recommended productization path: <name>

## Org (if applicable)
- Next hire: <role>
- Why this, not that: <one line>
- Prerequisite hires in place: yes/no

## Verdict
🟢 SHIP | 🟡 SHARPEN | 🔴 BLOCK

## Next Steps
[3 concrete actions]

Routing

  • /cs:gc-review — for any productization or licensing path
  • /cs:ciso-review — for any architecture change touching customer data
  • /cs:cfo-review — for build-vs-buy TCO and M&A valuation math
  • /cs:chro-review — for data team hires (comp, ladder, leveling)
  • /cs:decide — log the verdict
  • /cs:freeze 90 — on multi-year infrastructure contracts

Version: 1.0.0