Apply now »

AI Engineer-Agentic AI-Orchestration And Azure AI Foundry-Full‑Stack-Azure‑Native

Location:  Kochi
Other locations:  Anywhere in Country
Salary: Competitive
Date:  2 Jul 2026

Job description

Requisition ID:  1720029

At EY, you’ll have the chance to build a career as unique as you are, with the global scale, support, inclusive culture and technology to become the best version of you. And we’re counting on your unique voice and perspective to help EY become even better, too. Join us and build an exceptional experience for yourself, and a better working world for all. 

 

 

 

 

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:

    • Agent registry / inventory expectations
    • Access controls and telemetry/observability requirements
    • Monitoring and operational controls at “agent scale

Runtime Security / Runtime Protection (Core): Implement and support runtime protection expectations for agentic solutions, and participate in controls aligned to:

    • Runtime protection
    • Access controls (e.g., Entra ID patterns)
    • Threat detection and monitoring expectations

 

Analytical/Decision Making Responsibilities:

  • This role is critical to ensuring the enterprise’s AI ambition translates into real, reliable, and scalable systems—not just innovation theater. You will define how AI is built, shipped, and operated across the organization.

 

Knowledge and Skills Requirements:

Core Software Engineering (Required)

  • Strong hands-on development in Python / C# / TypeScript/JavaScript (or similar).
  • Experience building API-driven services and integrating distributed systems. [Build agen...65 Copilot | SharePoint], [Agents in...65 Copilot | SharePoint]
  • Strong understanding of non-functional requirements: reliability, availability, scalability, performance, and cost.

Azure & Platform Engineering

  • Hands‑on experience with Azure AI Foundry for delivering enterprise GenAI solutions in an enterprise context.
  • Experience building serverless and asynchronous workloads using Azure Functions (including Durable Functions or equivalent).
  • Experience using queues and event‑driven messaging for decoupled, reliable workflows.
  • Experience working with ADLS for data ingestion, storage, and processing.
  • Experience using Azure Cognitive Services / Azure AI Services as part of AI solutions.

Azure Functions + Queues/Eventing (Required)

  • Experience with Azure Functions (including Durable Functions or equivalent orchestration patterns).
  • Experience implementing asynchronous patterns with queues/eventing for scale and reliability.

 Vector Databases (Required)

  • Hands-on experience with vector databases / vector search, including enterprise deployment patterns

LLM-as-a-Judge Evaluation (Required)

  • Experience implementing evaluation approaches that include LLM-as-a-Judge (or equivalent automated evaluation patterns) for quality monitoring and continuous improvement.

Agent 365 (A365) + Governance Alignment (Required)

  • Familiarity/experience working in environments using Agent 365 (A365)-style lifecycle management concepts (e.g., agent registry, governance, monitoring/observability, and access controls)

Runtime Security / Runtime Protection (Required)

  • Experience delivering solutions with runtime protection expectations (runtime security controls, access controls, and monitoring alignment as defined by enterprise governance).

Nice to Have

  • Experience integrating AI services into enterprise automation platforms (e.g., Power Platform, ServiceNow).
  • Familiarity with Azure AI services and data platforms.

 

Detailed Responsibilities:

 

AI & Agentic Solution Engineering

  • Build and evolve AI applications and agents using Azure AI Foundry and Azure‑native services.
  • Design and implement multi‑agent workflows and orchestration logic for complex use cases.
  • Integrate AI capabilities into enterprise systems through secure APIs.

Full‑Stack & Backend Development

  • Develop backend services, APIs, and supporting components for AI solutions.
  • Build full‑stack solutions where required, including UI integration for AI experiences.
  • Implement serverless components using Azure Functions for scalable, event‑driven execution.

Data, Retrieval & Knowledge Systems

  • Design and implement data ingestion and storage pipelines using ADLS.
  • Build and operate vector‑based retrieval systems for AI grounding and search.
  • Maintain data freshness, indexing strategies, and retrieval performance.

Evaluation, Monitoring & Quality

  • Implement evaluation pipelines for AI outputs, including LLM‑as‑a‑Judge–based scoring and analysis.
  • Instrument AI systems with logging, metrics, and telemetry to support observability and diagnostics.
  • Use evaluation insights to improve accuracy, consistency, and system behavior over time.

Security, Governance & Operations

  • Build AI systems aligned to runtime security and governance expectations, including access controls and monitoring.
  • Operate and support AI solutions in production, including incident response and root‑cause analysis.
  • Continuously improve system reliability, performance, and cost efficiency.

 

Job Requirements: 

Education:

  • A degree in Computer Science / Engineering or a related discipline; or equivalent work experience

 

Experience:

  • 10+ years in a Global IT environment working with multiple disciplines to deliver projects in line with customer needs
  • 3+ Years Global delivery or transformation preferably in large scale infrastructure programs
  • 3+ Years in a global operations environment

 

Certification Requirements:

  • Python Certification
  • Azure AI Services
  • Azure Data Services

 

 

 

 

 

EY | Building a better working world 

 

EY exists to build a better working world, helping to create long-term value for clients, people and society and build trust in the capital markets.

 

Enabled by data and technology, diverse EY teams in over 150 countries provide trust through assurance and help clients grow, transform and operate.

 

Working across assurance, consulting, law, strategy, tax and transactions, EY teams ask better questions to find new answers for the complex issues facing our world today.  

Apply now »