Applied AI ML Lead

JPMorgan Chase JPMorgan Chase · Banking · Bengaluru, Karnataka, India · Asset & Wealth Management

Lead engineer to build an AI-Native SDLC Agent Fabric using multi-agent systems, LLM Orchestration, and AI toolchains on AWS. Responsibilities include designing and implementing LLM-driven agent services, developing orchestration layers, integrating AI agents with toolchains, and providing technical leadership.

What you'd actually do

  1. Designs and Implement LLM-driven agent services for design, code generation, documentation, test creation and observability on AWS
  2. Develops orchestration and communication layers between agents using frameworks like A2A SDK, LangGraph, or Auto Gen
  3. Integrates AI agents with toolchains such as Jira, Bitbucket, Github, Terraform and monitoring platforms
  4. Provides technical leadership, mentorship, and guidance to junior engineers and team members.

Skills

Required

  • Python
  • Pydantic
  • FastAPI
  • LangGraph
  • Vector Databases
  • RAG
  • multi-agent orchestration
  • AWS (EKS, Lambda, S3, Terraform)
  • LLM integration
  • prompt engineering
  • context engineering
  • AI Agent frameworks (Langchain, LangGraph, Autogen, MCPs, A2A)
  • CI/CD
  • Kubernetes
  • Docker
  • APIs
  • observability
  • monitoring platforms

Nice to have

  • Azure
  • Google Cloud Platform (GCP)
  • MLOps practices
  • CI/CD for ML
  • model monitoring
  • automated deployment
  • ML pipelines

What the JD emphasized

  • 5+ years applied experience
  • Strong hands-on skills in Python, Pydantic, FastAPI, LangGraph, and Vector Databases for building RAG based AI agent solutions integrating with multi-agent orchestration frameworks and deploying end-to-end pipelines on AWS (EKS, Lambda, S3, Terraform)
  • Experience with LLMs integration, prompt/context engineering, AI Agent frameworks like Langchain/LangGraph, Autogen, MCPs, A2A.

Other signals

  • AI-Native SDLC Agent Fabric
  • multi-agent systems
  • LLM Orchestration
  • autonomous, collaborative agents