Project Comet: AI as a Production Workload

Deep Blue designed a three-plane architecture that operationalized AI-assisted deal analysis to the same production standards governing every other service on Airvoyant’s TSN platform – zero deployment exceptions, zero out-of-band changes.

The risk wasn’t model quality – it was operational governance

Challenge

Airvoyant’s TSN platform operated with mature DevOps practices: structured CI/CD pipelines managed through Bitbucket, Terraform-based infrastructure as code, and a well-defined environment promotion path from development through staging/UAT to production.

When evaluating AI adoption, Airvoyant recognized that introducing AI as an exception path – outside of pipeline controls, with direct data access, or with ad-hoc configuration practices – would undermine years of engineering discipline and create compliance exposure inappropriate for a regulated aviation SaaS platform.

Multi-tenant isolation, deterministic decision-making, and procurement auditability requirements all constrained how AI could be deployed and operated.

Solution: Three-Plane Architecture

The solution established a clean separation of concerns across three service planes – ensuring AI was treated as a first-class production workload, not an exception.

MAIN PLANE

Existing Airvoyant TSN services and workflows – untouched by the AI integration.

DETERMINISTIC PLANE

Rules-based scoring, hard disqualifiers, weighted evaluation logic, and vendor ranking – the authoritative system of record for all deal analysis outcomes.

AI PLANE

AWS Bedrock Agent Core generates natural-language explanations and recommendations, constrained exclusively to the outputs of the Deterministic Plane.

Structured Delivery Model

A four-month program organized into three phases, each with explicit scope boundaries and acceptance criteria.

  • Phase 1: Architecture design, attribute finalization, environment setup, draft validation test cases
  • Phase 2: Bedrock Agent Core configuration, MCP server implementation, deal logic development, integration testing
  • Phase 3: UX integration support, scenario testing, tuning, stabilization, formal readiness review. Each deliverable carried a defined 5-day accept/reject window.

What we built

  • Three-plane architecture design
  • Bedrock Agent Core configuration
  • MCP server implementation
  • Deterministic deal scoring logic
  • Brokered data access patterns
  • Full Terraform IaC & Bitbucket CI/CD integration
  • CloudWatch observability layer

Security & Responsible AI

Security & Data Governance

Zero direct AI access to data stores – all data brokered through defined service interfaces. AWS Secrets Manager with automated rotation. Field-level data classification controls. AWS Organizations SCPs constraining AI service behavior at the account boundary.

Operational Discipline

100% of agent activity surfaced via Amazon CloudWatch. ≥70% recommendation-to-SME alignment. Zero critical functional defects at program close. Deterministic rules and weights fully documented and adjustable by Airvoyant teams. Formal evidence package for go/no-go decision.

Accelerate your sales cycle
with Deep Blue Cloud

Partner with Deep blue to accelerate value with you customers