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AI/ML Solution Architect - Agentic Automation (Managed Services) - Consulting

Location: 
Other locations:  Anywhere Globally
Salary: Competitive
Date:  Jun 11, 2026

Job description

Requisition ID:  1717211

Job Summary

EY Consulting is hiring an AI/ML Solution Architect to design, build, and industrialize agentic automation solutions for Managed Services across HR, Finance, Procurement, Supply Chain, Risk, Tax, and other enterprise functions. The role combines hands-on engineering with solution architecture, bringing together Agentic AI, GenAI, workflow orchestration, enterprise integration, cloud-native platforms, and managed-service operating models to improve productivity, quality, cycle time, compliance, and user experience.

The role is a practical technologist who can whiteboard an architecture with executives, prototype an agentic workflow with engineers, and guide teams through secure, reliable, and cost-efficient production delivery on Microsoft Azure, AWS, or Google Cloud Platform. The role requires strong experience with LLMs, RAG, agents, integration patterns, automation platforms, MLOps/LLMOps, and enterprise-grade governance.

Key Responsibilities

1) Solution Architecture for Agentic Managed Services

  • Design end-to-end agentic automation architectures for managed-service processes such as hire-to-retire, record-to-report, procure-to-pay, source-to-contract, order-to-cash, service desk, knowledge operations, and compliance operations.
  • Translate business outcomes into solution blueprints, capability maps, technical roadmaps, non-functional requirements, success measures, and implementation backlogs.
  • Define reusable reference architectures for AI agents, RAG, workflow orchestration, human-in-the-loop review, exception handling, audit trails, and enterprise knowledge management.
  • Balance build, buy, and partner options across hyperscalers, AI platforms, automation tools, enterprise SaaS, and EY assets.

2) Hands-on Engineering and Prototyping

  • Build working PoCs, MVPs, accelerators, and production components using Python, TypeScript, APIs, microservices, event-driven patterns, and cloud-native services.
  • Implement RAG pipelines, tool-calling agents, orchestration graphs, evaluation harnesses, prompt and policy controls, and observability dashboards.
  • Develop integrations with enterprise systems such as SAP, Oracle, Workday, ServiceNow, Coupa, Ariba, Microsoft 365, Dynamics, Salesforce, and document management platforms.
  • Guide engineering teams on coding standards, CI/CD, test automation, infrastructure as code, release management, and operational runbooks.

3) Cloud and Platform Architecture

  • Architect secure, scalable solutions on one or more hyperscaler stacks: Microsoft Azure, AWS, or Google Cloud Platform.
  • Use native AI, data, integration, identity, security, and observability capabilities, including Azure AI Foundry/Azure OpenAI, AWS Bedrock/SageMaker, Google Vertex AI/Gemini, cloud data platforms, serverless services, container platforms, and managed Kubernetes.
  • Design hybrid and regulated deployment patterns covering private networking, identity federation, secrets management, encryption, data residency, model risk, and compliant logging.
  • Define cost-control mechanisms including model routing, caching, batching, token governance, scaling policies, FinOps dashboards, and usage analytics.

4) Agentic Automation and Process Transformation

  • Design agentic patterns such as planning, routing, delegation, tool use, memory, reflection, approval workflows, and multi-agent collaboration for enterprise operations.
  • Apply process-mining, workflow, and task-automation concepts to redesign managed-service processes before automating them.
  • Create human-in-the-loop controls for sensitive steps such as payment approvals, employee actions, vendor changes, reconciliations, policy exceptions, and regulatory submissions.
  • Define measurable operating outcomes, including automation rate, exception rate, first-time-right quality, handling time, SLA compliance, leakage reduction, and cost-to-serve improvement.

5) Reliability, Security, Risk, and Governance

  • Establish LLMOps and MLOps practices for model/prompt versioning, evaluation, guardrails, monitoring, rollback, incident response, and quality assurance.
  • Embed AI governance controls for responsible AI, data privacy, access control, auditability, explainability, model risk, and regulatory compliance.
  • Implement production observability across logs, traces, metrics, user feedback, groundedness, hallucination risk, tool execution, cost per request, and service-level performance.
  • Lead design reviews, threat modeling, architecture assurance, performance tuning, and post-implementation optimization.

6) Client Advisory, Pursuits, and Delivery Leadership

  • Partner with client executives, managed-service leaders, function owners, CIO/CTO teams, and ecosystem partners to shape AI-led transformation opportunities.
  • Lead discovery workshops, value framing, solution estimation, PoVs/PoCs, business cases, acceptance criteria, and transition plans from prototype to managed operations.
  • Coach cross-functional teams across EY, client, and partner organizations, including architects, engineers, data scientists, process SMEs, security teams, and operations leads.
  • Create reusable assets, architecture playbooks, demo journeys, and delivery patterns for ASEAN priority industries and service lines.

Required Qualifications

  • 10+ years of experience across AI/ML, solution architecture, platform engineering, data engineering, enterprise automation, or cloud-native application delivery.
  • Hands-on experience delivering production AI/ML, GenAI, RAG, conversational assistant, or agentic automation solutions at enterprise scale.
  • Strong proficiency in at least one major cloud stack: Microsoft Azure, AWS, or Google Cloud Platform, including AI services, data services, identity/security, networking, and deployment patterns.
  • Practical software engineering capability in Python and one or more of TypeScript, Java, C#, or Go; strong understanding of APIs, microservices, integration design, and testing strategies.
  • Experience with LLMOps/MLOps practices such as evaluation, prompt/version management, model registry, monitoring, CI/CD, guardrails, and release governance.
  • Knowledge of enterprise workflow and automation patterns across HR, Finance, Procurement, Supply Chain, or shared-services operations.
  • Strong understanding of security, privacy, responsible AI, data residency, access control, audit logging, and model risk considerations.
  • Client-facing consulting experience, including structured problem solving, executive communication, workshop facilitation, solution shaping, and delivery leadership.

Preferred Qualifications

  • Experience with managed-services or shared-services operating models, including process transition, service catalogues, SLAs, runbooks, knowledge management, and continuous improvement.
  • Hands-on experience with agent frameworks and orchestration tools such as LangGraph, Semantic Kernel, AutoGen, CrewAI, OpenAI Assistants, or equivalent frameworks.
  • Experience with automation and workflow platforms such as Microsoft Power Platform, UiPath, Automation Anywhere, ServiceNow, Camunda, Temporal, Airflow, or cloud-native workflow services.
  • Experience integrating with ERP, HCM, procurement, and service-management platforms such as SAP, Oracle, Workday, Coupa, Ariba, ServiceNow, Dynamics, and Microsoft 365.
  • Familiarity with vector databases and search technologies such as Azure AI Search, pgvector, Pinecone, Milvus, Redis, OpenSearch, Elasticsearch, or BigQuery/Vertex AI search patterns.
  • Relevant cloud or architecture certifications such as Azure Solutions Architect, Azure AI Engineer, AWS Solutions Architect, AWS Machine Learning, Google Professional Cloud Architect, or Google Professional Machine Learning Engineer.
  • Experience in regulated industries such as financial services, public sector, health, energy, or cross-border environments with data-sovereignty requirements.

Technical Skills

GenAI, Agents, and RAG

  • LLM application design, RAG, embeddings, chunking, hybrid search, knowledge graphs, tool calling, function calling, planning, routing, memory, and multi-agent orchestration.
  • Evaluation and safety: groundedness, relevancy, hallucination risk, regression testing, red teaming, policy enforcement, PII controls, content moderation, and prompt hardening.

Cloud and Platform

  • Microsoft: Azure OpenAI, Azure AI Foundry, Azure AI Search, Azure Machine Learning, AKS, Functions, Logic Apps, Event Grid, Key Vault, Entra ID, Purview, Monitor, Fabric or Synapse.
  • AWS: Amazon Bedrock, SageMaker, Lambda, Step Functions, EKS, ECS, Glue, OpenSearch, DynamoDB, S3, IAM, KMS, CloudWatch, EventBridge, and data lake patterns.
  • Google Cloud: Vertex AI, Gemini, GKE, Cloud Run, Cloud Functions, BigQuery, Dataflow, Pub/Sub, Apigee, Cloud IAM, Secret Manager, Cloud Logging, and Cloud Monitoring.

Engineering, Integration, and Operations

  • Python, TypeScript, REST/GraphQL APIs, event-driven architecture, containers, Kubernetes, Terraform/Bicep/CloudFormation, GitHub Actions/Azure DevOps/GitLab CI, and automated testing.
  • Enterprise integration patterns for ERP, HCM, procurement, ITSM, CRM, document repositories, email/chat channels, OCR/document intelligence, and workflow engines.
  • Observability and operations: OpenTelemetry, Prometheus/Grafana, cloud-native monitoring, Langfuse/Arize/WhyLabs or equivalents, incident management, SLAs/SLOs, and runbooks.

Soft Skills

  • Strong executive presence with the ability to simplify complex AI, automation, and architecture topics for business and technology leaders.
  • Hands-on leadership style: comfortable moving from strategy and architecture into code, prototyping, troubleshooting, and delivery problem solving.
  • Outcome orientation with a strong focus on measurable value, adoption, operational resilience, and continuous improvement.
  • Ability to lead cross-border, cross-functional teams and manage ambiguity across business, technology, security, risk, and operations stakeholders.

Travel Requirements

Singapore-based with ASEAN travel as needed for client delivery, pursuits, workshops, and regional leadership engagements. Relocation support may be available for the right candidate.

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