AWS & DevOps services

Generative AI on AWS

Qualify and build generative AI applications on AWS with retrieval, agents, evaluation, human review, data controls, and observable failure handling.

What this service can cover

The exact implementation follows the environment and the signed scope. These are the technical workstreams most often composed for Generative AI on AWS.

01

Use-case qualification

Separate useful model work from deterministic automation and define users, source data, outputs, failure cost, and review.

02

Retrieval and agent design

Design chunking, indexing, retrieval, citations, tool permissions, workflow state, and escalation for the selected pattern.

03

Evaluation and safety

Build representative test sets, quality rubrics, adversarial cases, guardrails, human review, and release thresholds.

04

Production engineering

Implement APIs, events, storage, IAM, encryption, observability, cost limits, deployments, and rollback.

What the client receives

  • Use-case and data-boundary definition
  • Application and retrieval architecture
  • Evaluation harness and release criteria
  • Implemented workload, runbooks, and handoff
Delivery approach

From current state to client-owned handoff

01

Qualify

Define the user, decision, source data, expected output, failure cost, and whether AI or deterministic automation fits.

02

Bound

Set data, identity, model, tool, review, security, cost, and observability boundaries before implementation.

03

Build and evaluate

Implement the workflow with representative tests, explicit quality criteria, failure paths, and controlled deployment.

04

Operate and hand off

Transfer code, prompts, evaluation assets, runbooks, budgets, monitoring, rollback, and accountable ownership.

Scoping Generative AI on AWS

Does AI work begin with model selection?

Not by default. It begins with the user, data, decision, failure cost, evaluation method, and whether probabilistic output is appropriate.

How is quality evaluated?

The scope defines representative test inputs, quality criteria, failure cases, human review, release thresholds, and production observations.

Who controls data and model access?

The client retains its accounts, data decisions, credentials, and provider agreements; the implementation documents permissions and operating ownership.

Bring the environment and the decision you are facing.

Use the free hour to work through the current state and identify a useful next step before you commit to a project.

Book Your Free AWS Assessment Review engagement pricing