Senior Applied AI Solutions Architect — Amazon Connect

Amazon Amazon · Big Tech · Seattle, WA · Solutions Architect

Senior Applied AI Solutions Architect for Amazon Connect, focused on accelerating customer adoption of AI capabilities. The role involves guiding customers in model selection, prompt configuration, and tool integration for AI agents, with a strong emphasis on customer data readiness and enabling multi-agent orchestration. This is a hands-on role requiring coding, integration building, and pair-programming with customer teams to move from proof-of-concept to production.

What you'd actually do

  1. Lead technical discovery sessions with customer teams to understand business requirements, existing contact center architecture, and AI readiness. Translate findings into actionable implementation plans.
  2. Conduct data readiness assessments to evaluate the quality, accessibility, structure, and governance of customer data assets (CRMs, knowledge bases, ticketing systems, order management, etc.). Identify data gaps, recommend remediation strategies, and help customers build the data foundation required for effective AI agent tool use and RAG-powered responses.
  3. Design and configure agentic AI solutions within Amazon Connect, including AI agent creation, AI prompt engineering, model selection, guardrail configuration, and tool/action integration.
  4. Design and deploy Model Context Protocol (MCP) servers that expose customer tools, data sources, and APIs in a standardized format — enabling AI agents to dynamically discover and invoke capabilities across the customer's technology stack.
  5. Architect Agent-to-Agent communication patterns that allow Amazon Connect AI agents to collaborate with specialized agents across the enterprise (e.g., billing agents, order management agents, IT support agents), enabling multi-agent workflows that span organizational boundaries.

Skills

Required

  • Customer engagement
  • AI agent design and configuration
  • Prompt engineering
  • Model selection
  • Guardrail configuration
  • Tool integration (APIs, Lambda functions, data connectors)
  • Data readiness assessment and preparation
  • RAG implementation
  • MCP server configuration
  • A2A (Agent-to-Agent) integration
  • Serverless development (AWS Lambda, API Gateway, Step Functions)
  • Scripting (Python, Node.js)
  • Cloud data access patterns (DynamoDB, RDS, S3, OpenSearch, Kendra)
  • Testing and validation of AI agent performance

Nice to have

  • Experience with Amazon Connect
  • Experience with Amazon Bedrock
  • Contact center operations knowledge

What the JD emphasized

  • customer data readiness
  • agentic AI
  • tool integration
  • multi-agent orchestration

Other signals

  • customer adoption
  • production-ready outcomes
  • agentic AI