Architecture & Risk Blueprint
Senior AI engineering discovery for architecture, risk boundaries, data readiness, and implementation scope.- For Cognitive Decision Intelligence, the AI engineer will map target workflows, data owners, integration points, and known failure modes before design starts
- Define reasoning workflow, decision policy, feature pipeline, uncertainty handling, evaluator, and review queue with clear service boundaries, control points, and engineering assumptions
- Prepare the dataset, model, runtime, access, and logging requirements needed for Cognitive Decision Intelligence
- Build the evaluation plan for calibration, false-positive cost, decision latency, explainability coverage, and out-of-distribution behavior so acceptance is measurable, not impression-based
- Document risks around unsafe action, data leakage, dependency failure, integration drift, unclear accountability, and evidence gaps and turn them into mitigation tasks with named owners
- Deliver architecture diagrams, runbooks, test records, release notes, acceptance criteria, and engineering backlog for procurement, technical review, and implementation approval