Chapter DModel deploymentPage 3 of 8

Model deployment

Build the first working versioned prediction HTTP service

Page 3 advances one concrete versioned prediction HTTP service: explain the decision, run the code, inspect failure, measure evidence, and keep only what is ready to ship.

~15 minImplementation

Before you start

Why this matters

Without running code, predict the output of this page's example and name the intermediate value that would prove your prediction. Then write one sentence answering: “What could look successful while actually being wrong?” For this stage, focus on bad model-service release. Keep the prediction nearby; comparing it with the real output is the first debugging exercise, not a quiz about syntax.

1Learn the idea

Read

Build focus

Now implement the shortest complete path for the artifact. The working mechanism is: validate the request before inference, call a versioned model function, return a traceable response, and expose health separately from prediction. Keep every intermediate value available for inspection; hiding it behind a framework would make this lesson harder to reason about. The output should be deterministic for this fixture. Only after this path works should you generalize the data source or user interface.

The artifact's user-facing goal is specific: put a tested threshold model behind a stable JSON boundary with health, prediction, metrics, and rollback behavior. Its accepted input is JSON containing a finite numeric features array of length two. Those statements are intentionally narrower than “build an AI system.” Narrow scope lets us inspect every input and expected result, and it prevents a toy result from being presented as a production claim. This is the chapter's first end-to-end implementation. Run it twice and verify identical output.

Read

Run the example

Save this as lesson.py and run python3 lesson.py. It uses only the language standard library, so the example is reproducible offline.

MODEL_VERSION='v1'
def predict(p):
 x=p['features']; return {'prediction':int(sum(x)>=1),'model_version':MODEL_VERSION}
print(predict({'features':[.8,.3]}))

Expected output: prediction 1 with model_version v1. Exact floating-point formatting may vary slightly, but the asserted behavior must not. Read the output as evidence about this stage, not merely proof that the interpreter started.

Read

Debug the stage

Reproduce a bad request with curl, then inspect validation outcome, status code, model version, and duration. Do not send malformed data into predict and do not turn validation failures into HTTP 500. Compare candidate and stable predictions on the same canary payloads. A health endpoint proves the process is responsive; it does not prove prediction quality or model loading unless those checks are explicit.

At the implementation stage, save the smallest failing fixture beside the expected result. Change one cause at a time and rerun the exact command printed above; that makes the repair reviewable and keeps this chapter's progressive artifact reproducible.

Read

Evaluate before continuing

Run contract, malformed-input, health, and smoke tests against the packaged service. Record p95 latency, validation-error rate, server-error rate, model version, and canary disagreement. Trigger a rehearsal rollback when disagreement exceeds the documented threshold. Verify the previous artifact actually starts; a rollback name in a checklist is not recovery evidence.

For this implementation page, preserve the fixture and result as evidence for the next page. Label observations separately from conclusions: a passing assertion establishes the behavior it names, while broader usefulness requires the chapter's full evaluation set and stated operating limits.

Checking tutor…

Continue learning · glossary & guides
  • [ ] Can I narrate every intermediate value?
  • [ ] Is the fixture deterministic and independently inspectable?
  • [ ] Did I avoid framework behavior I cannot yet explain?
  • [ ] Can I identify the serving version and execute the rollback target?

How-to: ship with canary · Glossary: canary deployment

Previous · Next