Lead Infrastructure Engineer - Genai & Cloudformation

JPMorgan Chase JPMorgan Chase · Banking · Hyderabad, Telangana, India · Consumer & Community Banking

Lead Infrastructure Engineer focused on leveraging GenAI and agentic AI for technology infrastructure cost optimization in cloud and on-premises environments. The role involves developing, implementing, and evangelizing AI-driven solutions and agents to automate cost management, enhance reliability, scalability, and security of banking platforms.

What you'd actually do

  1. Lead the development and integration of GenAI-powered agents into all phases of the application and infrastructure lifecycle to automate cost optimization and efficiency improvements
  2. Uses enterprise-authorized AI capabilities within the work environment to accelerate infrastructure analysis and design documentation, validating outputs and handling operational data according to sensitivity and security requirements.
  3. Discover, analyze, and prioritize cloud cost optimization opportunities using GenAI models and intelligent agents; calculate potential savings and benefits leveraging data repositories, reporting, and ETL tools
  4. Collaborate with teams to design, implement, and scale GenAI agent-based cost optimization recommendations and best practices.
  5. Architect and develop automation runbooks and Policy as Code initiatives to drive cloud cost efficiencies powered by GenAI agents and strengthen Cost Governance.

Skills

Required

  • 5+ years of experience in infrastructure engineering, software deployment, or related fields.
  • Strong understanding of cloud infrastructure and multiple cloud technologies with experience using infra-as-code technologies (e.g., Terraform).
  • Infrastructure engineering technical depth such as hardware, networking, databases, storage, deployment, integration, automation, scaling, resilience, and performance assessments.
  • Proven experience leveraging GenAI and agentic AI to automate and develop enterprise software delivery and cost optimization solutions
  • Hands-on experience implementing FinOps and GenAI agents to optimize AWS cloud costs, with deep understanding of levers available to optimize cloud costs.
  • Demonstrated experience using enterprise-authorized AI capabilities within the work environment to support infrastructure engineering workflows with strong validation habits and awareness of data sensitivity.
  • Ability to review and validate AI-assisted recommendations before implementation, escalating when uncertain and ensuring outcomes align to resiliency, security, and auditability expectations.
  • Strong communication and collaboration skills and a demonstrated ability to develop technical and cross-functional knowledge outside of the product domain.
  • Proficient in coding with modern scripting languages and infrastructure as code practices.
  • Advanced understanding of AWS services for Traditional Compute, Containerization, and Serverless architectures.
  • Expert-level experience in developmental toolsets including Jira, BitBucket, and Confluence.

Nice to have

  • Degree in Computer Science, Engineering, Mathematics, or a related field and expertise in technology disciplines.
  • Certifications such as FinOps Practitioner or FinOps Professional.
  • AWS certifications such as Certified Cloud Practitioner.
  • Experience leading automation projects using GenAI and agentic AI.

What the JD emphasized

  • Proven experience leveraging GenAI and agentic AI to automate and develop enterprise software delivery and cost optimization solutions
  • Hands-on experience implementing FinOps and GenAI agents to optimize AWS cloud costs, with deep understanding of levers available to optimize cloud costs.
  • Demonstrated experience using enterprise-authorized AI capabilities within the work environment to support infrastructure engineering workflows with strong validation habits and awareness of data sensitivity.
  • Ability to review and validate AI-assisted recommendations before implementation, escalating when uncertain and ensuring outcomes align to resiliency, security, and auditability expectations.

Other signals

  • Leveraging GenAI and agentic AI to drive technology infrastructure cost optimization
  • Develop, implement, and evangelize GenAI-driven solutions and intelligent agents that continuously optimize spend
  • Architect and develop automation runbooks and Policy as Code initiatives to drive cloud cost efficiencies powered by GenAI agents