Chapter DFeature flags labPage 4 of 8

Feature flags lab

Prove behavior with deterministic tests

Build a FastAPI RAG endpoint whose new index can be dark-launched, exposed to 5%, or disabled without a deploy as an operable release, not a slide-deck example.

~14 minValidation

1Try it yourself

Playground

Feature flag lab

Flags control who sees what — without redeploying code.

New RAG index for 5% of traffic

Before you start

Why this matters

Before changing code, write the single production outcome this chapter must prove and the signal that would stop you. For this lab, the service boundary is FlagContext(flag_key, user_id, tenant_id, environment) returning FlagDecision(enabled, variant, reason, config_version). Record one request identifier you can follow from ingress through the final decision. If you cannot name the owner of the stop decision, the rollout is not yet controlled.

The source lesson separates release from exposure and requires every trace to carry the evaluated variant. This chapter turns that compact lesson into implementation evidence. The running scenario is a FastAPI RAG endpoint whose new index can be dark-launched, exposed to 5%, or disabled without a deploy. You will keep the same scenario across all eight chapters so setup decisions, tests, telemetry, and rollback controls accumulate into one coherent system rather than eight disconnected exercises.

2Learn the idea

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Build a layered test suite

Start with pure unit tests for deterministic decisions: schema checks, bucketing or routing, threshold comparisons, and redaction. Use fixed clocks and seeded identifiers. Then add contract tests against every fake dependency and one sandbox integration. Finally, run an end-to-end fixture through the public endpoint and assert the durable record and telemetry event, not just the HTTP response.

Turn the declared boundary into test cases. A valid request produces FlagContext(flag_key, user_id, tenant_id, environment) returning FlagDecision(enabled, variant, reason, config_version). Missing required fields return a stable client error. Unknown schema versions are quarantined or rejected. Authorization failure occurs before external calls. A repeated identifier cannot duplicate effects. A timeout returns the documented degraded response. Every branch carries the revision and request ID.

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Test the decision metrics

For AI quality, keep a versioned JSONL golden set with input, permitted facts, forbidden claims, and expected disposition. Grade citations or fact support deterministically where possible; use a model grader only with a pinned grader prompt and periodic human calibration. Report confidence intervals and case-level failures, not one blended score. The release metric is decision latency, evaluation-error rate, cohort error rate, and grounded-answer rate by variant.

Add an adversarial set specifically for non-sticky bucketing, stale SDK caches, missing defaults, mutually inconsistent flags, and a control path that has rotted. Each fixture needs a short explanation of the production incident it prevents. This stops the suite becoming a pile of examples nobody trusts. When a real incident occurs, first add the smallest reproducing fixture, then fix the implementation.

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Encode gates

CI should reject schema drift, unsafe configuration, failed deterministic tests, and quality regression beyond the declared tolerance. A flaky quality check is not permission to ignore failures. Quarantine it with an owner and deadline while preserving a stable blocking subset. Print revisions, seed, and dataset digest so any failure can be reproduced locally.

Create a rollout-gate function that accepts observed metrics and returns promote, hold, or rollback plus reasons. Test boundary values: exactly at threshold, one sample below minimum, stale metrics, and missing guardrails. Missing or stale evidence must return hold. This small function prevents a deployment script from silently interpreting policy differently from the runbook.

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Review the evidence

Have another person run the acceptance command without verbal guidance. They should be able to locate the failed fixture, identify its owning component, and explain whether it blocks shipment. Save a concise test report containing counts, failures, dataset digest, and environment. Tests become release evidence only when their inputs and meaning are reviewable.

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Run a reproducible contract probe

Store a fixture with the local test harness so the RAG index feature flag decision is reviewable rather than hidden in a mock. Pinning the revision and thresholds prevents a later environment change from silently changing what “pass” means.

feature_flags_lab_contract:
  flag_key: rag_index_v2
  user_id: user_fixture_42
  tenant_id: tenant_demo
  environment: staging
  expected_variant: treatment
  config_version: 184

Run the same fixture unchanged and with one guardrail deliberately violated. The expected transcript makes the gate repeatable by a teammate who was not present when it was authored.

$ python3 -m pytest -q -k "feature_flags_lab and contract"
2 passed in 0.41s
$ CONTRACT_REVISION=flag-config-184 python3 -m pytest -q -k "rejects_stale_evidence"
1 passed in 0.18s

Expected output is a stable pass count plus flag-config-184 in the report. If another revision appears, inspect fixture loading and environment precedence before changing thresholds. If stale evidence promotes instead of holding, stop: the gate is unsafe even if quality checks pass. Preserve the seed and failing fixture so the result can be reproduced without production traffic.

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