Product Manager (vice President) - Fusion Data Platform

JPMorgan Chase JPMorgan Chase · Banking · Hyderabad, Telangana, India · Corporate Sector

This role is for an Agent Platform Engineer within JPMorgan Chase's Chief Data & Analytics Office (CDAO) - Fusion Platform Team. The primary focus is on building and deploying production-grade AI agents and multi-agent systems in a regulated enterprise environment. The role involves hands-on coding, designing agent architectures, solving integration problems, and contributing to the agent ecosystem, including SDKs and RAG pipelines. It emphasizes deep technical expertise in agent development and deployment, rather than product management.

What you'd actually do

  1. Design and build production-grade AI agents using Agent Studio, SmartSDK, RAG SDK, and MCP SDK including orchestrator/sub-agent architectures, tool-calling patterns, parallel execution loops, and write-back integrations.
  2. Partner directly with LoB (Line of Business) engineering teams in Forward Deployed Engineering engagements — embed alongside their engineers, debug live integration issues, and jointly ship production agents on Fusion.
  3. Architect multi-agent systems: define agent boundaries, orchestration patterns, context passing, tool surface exposure, and state management for regulated production workloads.
  4. Develop and maintain reference implementations and SDK playbooks that translate platform capabilities into reusable, opinionated engineering patterns for LoB (Line of Business) consumption.
  5. Contribute to the Agent Deployment Risk Framework — translate governance requirements into engineering constraints that ship as code, not documentation.

Skills

Required

  • 5+ years of software engineering experience, with at least 3 years focused on AI/ML systems, GenAI application development, or agent-based architectures in production.
  • Strong Python fluency — you write production-quality Python, not just scripts.
  • Experience with async patterns, SDK extension, and framework-level engineering is expected.
  • Hands-on experience building agents or agentic workflows — tool-calling, orchestration, multi-step reasoning loops, and agent-to-agent co

Nice to have

  • Experience modifying preconfigured solutions to meet complex problems
  • Experience with Agent Studio, SmartSDK, RAG SDK, and MCP SDK
  • Experience with RAG pipelines
  • Experience with agent observability, evaluation, and error recovery
  • Experience with architecture reviews for high-complexity LoB agent builds

What the JD emphasized

  • production agent ships
  • regulated environment
  • production workloads
  • production-grade AI agents
  • production hardening

Other signals

  • building AI systems that run in production
  • production-grade AI agents
  • multi-agent systems
  • regulated production workloads