Senior Aws Engineer - ML

JPMorgan Chase JPMorgan Chase · Banking · Houston, TX +1 · Commercial & Investment Bank

Senior Lead Data Engineer at JPMorganChase within the Commercial and Investment Banking, focusing on building and operating AWS/public cloud-based applications. The role involves developing secure production code, driving product design decisions, and acting as a subject matter expert in cloud and AI/ML software practices. Requires extensive experience in AWS, strong Python skills, and familiarity with MLOps and CI/CD. Emphasis on driving adoption of AI engineering tools for productivity gains.

What you'd actually do

  1. Regularly provides technical guidance and direction to support the business and its technical teams, contractors, and vendors
  2. Develops secure and high-quality production code, and reviews and debugs code written by others
  3. Drives decisions that influence the product design, application functionality, and technical operations and processes
  4. Serves as a function-wide subject matter expert in one or more areas of focus
  5. Actively contributes to the engineering community as an advocate of firmwide frameworks, tools, and practices of the Software Development Life Cycle

Skills

Required

  • AWS/public cloud-based applications
  • Python programming
  • system design
  • application development
  • testing
  • operational stability
  • automation
  • CI/CD
  • SDLC
  • pipelines and DAGs for data processing and/or machine learning
  • cloud and AI/ML software practices
  • problem-solving
  • communication
  • stakeholder collaboration
  • MLOps practices and tooling
  • AI engineering tools

Nice to have

  • leading a small team as tech lead and/or manager
  • AWS SageMaker
  • AWS Bedrock
  • AWS Glue
  • AWS Redshift Serverless
  • AWS DynamoDB
  • AWS EventBridge
  • AWS Step Functions
  • AWS Lambda
  • AWS ECS
  • AWS EKS
  • AWS Kinesis
  • AWS CloudWatch
  • Terraform
  • GitHub Copilot
  • Airflow
  • Kubernetes
  • Docker
  • MLflow
  • Datadog
  • Dynatrace
  • MCP
  • Jules/JET
  • GKP (Gaia Kubernetes)
  • Fusion MLOps

What the JD emphasized

  • Formal training in software engineering concepts and 10+ years of applied experience
  • Extensive experience building and operating AWS/public cloud–based applications
  • Proven hands‑on delivery across system design, application development, testing, and operational stability
  • Demonstrated proficiency in cloud and AI/ML software practices
  • Familiarity with MLOps practices and tooling
  • Experience driving adoption of AI engineering tools (e.g., GitHub Copilot) for JIRA, documentation, coding, and releases, with measurable productivity and quality gains

Other signals

  • MLOps practices and tooling
  • AI engineering tools
  • pipelines and DAGs for data processing and/or machine learning