Add practitioner decision tree and getting started guide (B1b-d)#287
Add practitioner decision tree and getting started guide (B1b-d)#287
Conversation
Phase B1 foundation docs making diff-diff discoverable for data science practitioners. Business-framed estimator selection, end-to-end marketing campaign walkthrough, and README entry point. Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
|
Overall Assessment This is a docs-only PR, but the new practitioner decision tree and walkthrough make methodology-bearing estimator-selection and interpretation claims. I found two unmitigated P1 issues in that guidance, plus one broken survey example. I did not find matching Executive Summary
Methodology
Code Quality No findings in scope for a docs-only PR. Performance No findings in scope for a docs-only PR. Maintainability No findings. The Tech Debt No separate deferrable tech-debt item. The blocking issues above are not mitigated by existing Security No findings; I did not see secrets, credentials, or PII introduced by the diff. Documentation/Tests
Path to Approval
|
Summary
docs/practitioner_decision_tree.rst) mapping 5 common scenarios (simultaneous campaign, staggered rollout, varying spend, few markets, survey data) to recommended estimatorsdocs/practitioner_getting_started.rst) walking through a marketing campaign analysis with runnable code, validity checks, and stakeholder communication templatedocs/doc-deps.yamlwith dependency entries for 7 source filesMethodology references (required if estimator / math changes)
Validation
python -W all(no warnings suppressed):doc:cross-references resolve; all link targets verified to existSecurity / privacy
Generated with Claude Code