Applied AI ML Lead - Agentic AI

JPMorgan Chase JPMorgan Chase · Banking · Bengaluru, Karnataka, India · Corporate Sector

Lead a team of software engineers to architect and develop an enterprise-grade Agentic AI platform, focusing on multi-agent orchestration, tool integration, memory, RAG, guardrails, observability, and evaluation. This role requires strong technical leadership in AI agents and people management skills to drive strategic vision and hands-on work.

What you'd actually do

  1. Lead the design, development, and evolution of Enterprise AI systems, taking it from vision to implementation, enabling production-ready AI capabilities.
  2. Architect enterprise-grade Agentic AI platform including multi-agent orchestration, tool/function integration, memory + RAG/grounding, guardrails, observability, and evaluation.
  3. Lead and manage a team of software engineers responsible for developing Multi Agent Systems.
  4. Partner with stakeholders to define requirements, navigate tradeoffs, and ship multi-quarter initiatives that move core company metrics.
  5. Create frameworks and guardrails that enable fast, safe iteration on agent behavior, evaluation, and rollout.

Skills

Required

  • 5+ years of experience in software engineering
  • 2+ years in leading software engineering teams
  • architecting AI agents or autonomous workflows
  • model evaluation
  • agent orchestration
  • reasoning frameworks
  • evaluation
  • agent orchestration frameworks (e.g., LangGraph/AutoGen/CrewAI)
  • multi-agent coordination
  • state management
  • tool/function integration
  • technical depth
  • Architect mindset

Nice to have

  • architecting and implementing Multi Agent Systems in production
  • data scientist
  • AI/ML engineer
  • AI/ML researcher

What the JD emphasized

  • architect enterprise-grade Agentic AI platform
  • multi-agent orchestration
  • tool/function integration
  • memory + RAG/grounding
  • guardrails
  • observability
  • evaluation
  • proven experience in architecting AI agents or autonomous workflows
  • expertise in model evaluation
  • agent orchestration
  • reasoning frameworks
  • evaluation
  • agent orchestration frameworks
  • multi-agent coordination
  • state management
  • tool/function integration

Other signals

  • leading a team of software engineers
  • driving the vision, architecture, and engineering standard for an enterprise multi agent system
  • architect enterprise-grade Agentic AI platform
  • partner with stakeholders to define requirements, navigate tradeoffs, and ship multi-quarter initiatives
  • create frameworks and guardrails that enable fast, safe iteration on agent behavior, evaluation, and rollout
  • proven experience in architecting AI agents or autonomous workflows
  • expertise in model evaluation, agent orchestration, reasoning frameworks, evaluation
  • proficiency in agent orchestration frameworks (e.g., LangGraph/AutoGen/CrewAI) including multi-agent coordination, state management, and tool/function integration
  • strong technical depth and Architect mindset