Lead Software Engineer, Cloud Platforms

JPMorgan Chase JPMorgan Chase · Banking · Jersey City, NJ +1 · Corporate Sector

Lead Software Engineer focused on building cloud platforms that integrate AI agents and LLM-powered tools to enhance developer productivity and automate platform operations. The role involves designing and developing secure, scalable cloud infrastructure, driving DevEx, and implementing AI/ML integrations.

What you'd actually do

  1. Provide technical leadership and guidance to the cloud engineering team.
  2. Lead the design and development of secure, scalable, and reliable cloud infrastructure and platform tools.
  3. Drive adoption of modern DevEx (Developer Experience) practices and evolve CI/CD and developer tooling to improve delivery speed, quality, and consistency.
  4. Implement real-time telemetry pipelines and workflows for large-scale platform observability and analytics.
  5. Contribute to the design and development of AI agents and Model Context Protocol (MCP) integrations using frameworks built on top of Google ADK, Anthropic SDKs, etc. and related tooling to enable intelligent, scalable platform automation.

Skills

Required

  • 5+ years applied software engineering experience
  • Hands-on experience with at least one major cloud provider (AWS, Azure, or GCP)
  • Advanced knowledge of containerization and orchestration platforms (Docker, Kubernetes, ECS, etc.)
  • Demonstrated expertise in DevEx (Developer Experience) and CI/CD tools (Jenkins, Spinnaker, Bitbucket, GitHub, etc.)
  • Strong knowledge of cloud security best practices, shift-left methodologies, and DevSecOps processes
  • Strong programming skills in Golang or Python
  • Proficiency with cloud infrastructure provisioning tools (Terraform, KRO, Crossplane, etc.)
  • Experience with logging and monitoring tools (Splunk, Grafana, Datadog, Prometheus, etc.)
  • Deep understanding of cloud infrastructure design, architecture, and migration strategies
  • Demonstrated proficiency with AI-assisted coding workflows, including experience with LLM-powered development tools, spec-driven development methodologies, and prompt engineering for software engineering use cases

Nice to have

  • Master's degree in a related field
  • Certifications in Cloud, Kubernetes, or infrastructure-as-code technologies
  • Experience implementing multi-cloud architectures and leading end-to-end platform development efforts
  • Background in designing and developing scalable AI/ML or Data platforms
  • Experience with automation and workflow orchestration for operational efficiency
  • Published contributions to open-source or industry-recognized projects
  • Hands-on experience building AI agents and MCP servers/integrations at scale using frameworks such as Google ADK, Anthropic SDKs, and standard agent orchestration tooling
  • Experience with enhancing AI-powered coding ecosystems with enterprise specific tooling to improve developer productivity and platform engineering workflows

What the JD emphasized

  • AI agents
  • Model Context Protocol (MCP) integrations
  • Google ADK
  • Anthropic SDKs
  • AI-assisted coding workflows
  • LLM-powered development tools

Other signals

  • AI agents
  • LLM-powered development tools
  • platform automation
  • developer productivity