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Job Summary:
The AI Engineer is responsible for building, deploying, and operating production-grade AI and Agentic AI solutions across the enterprise. This is a hands-on engineering role focused on implementing LLM-powered applications, orchestration and multi-agent workflows, and secure API-driven integrations using Azure AI Foundry and Azure-native services (compute, storage, messaging, data, security, and observability).
The role works across the full AI lifecycle—from system design and development to production operations—ensuring solutions are secure, scalable, observable, and governed. The AI Engineer partners closely with Engineering Leads, architects, data science teams, and platform/security stakeholders to translate AI use cases into reliable, enterprise‑ready systems, not isolated proofs of concept.
A key expectation of the role is to embed evaluation, quality monitoring, and runtime security into AI systems, including the use of LLM‑as‑a‑Judge patterns and alignment to agent lifecycle governance and runtime protection controls (e.g., Agent 365–aligned environments).
Essential Functions of the Job:
Build Agentic AI Solutions using Azure AI Foundry (Core): Build and evolve AI applications and agents leveraging Azure AI Foundry-aligned capabilities used in the enterprise toolchain
Develop Orchestration & Multi‑Agent Systems (Core): Implement orchestration layers to coordinate tools/agents across multi-step tasks, including multi-agent workflows for specialized sub-tasks and coordinated execution.
Full‑Stack Engineering + API Development (Core): Build end-to-end AI experiences (UI where applicable), backend services, and integration layers. Design and implement RESTful APIs and microservices that expose AI/agent capabilities securely and reliably.
Serverless & Asynchronous Processing with Azure Functions (Core): Build services using Azure Functions, including Durable Functions (or equivalent) for long-running and stateful orchestration patterns.
Messaging / Queues for Workflow Reliability (Core): Use queue/event-driven patterns (e.g., messaging, pub/sub) to decouple services and improve reliability of multi-step AI pipelines and orchestration flows.
Data Engineering Foundations: ADLS + Retrieval (Core): Work with ADLS-style data lake patterns for ingestion, storage, and processing to support AI workloads and grounding.
Use Azure Cognitive Services / Azure AI Services Where Appropriate (Core: Leverage Azure Cognitive Services / Azure AI Services capabilities as part of end-to-end AI solutions.
Vector Databases & Knowledge Stores (Core): Implement vector retrieval using enterprise options such as Azure AI Search and/or other vector DB patterns (e.g., Cosmos DB / PostgreSQL pgvector / Redis) based on operational needs.
Continuous Evaluation using LLM-as-a-Judge (Core): Implement evaluation pipelines for LLM/agent outputs, including LLM-as-a-Judge patterns and structured scoring/assessment approaches where appropriate.
Agent Lifecycle Governance with Agent 365 (A365) Awareness (Core): Build solutions that align with enterprise lifecycle management and governance patterns such as:
Runtime Security / Runtime Protection (Core): Implement and support runtime protection expectations for agentic solutions, and participate in controls aligned to:
Analytical/Decision Making Responsibilities:
Knowledge and Skills Requirements:
Core Software Engineering (Required)
Azure & Platform Engineering
Azure Functions + Queues/Eventing (Required)
Vector Databases (Required)
LLM-as-a-Judge Evaluation (Required)
Agent 365 (A365) + Governance Alignment (Required)
Runtime Security / Runtime Protection (Required)
Nice to Have
Detailed Responsibilities:
AI & Agentic Solution Engineering
Full‑Stack & Backend Development
Data, Retrieval & Knowledge Systems
Evaluation, Monitoring & Quality
Security, Governance & Operations
Job Requirements:
Education:
Experience:
Certification Requirements:
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