Senior Director of Software Engineering - Java, Aws, Restful, Containers

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

Senior Director of Software Engineering to lead multiple technical areas and teams within the Chief Data and Analytics Organization, focusing on Data Mesh, AI/ML, GenAI, and Data Governance platforms. The role involves driving strategic objectives, collaborating across teams, and guiding the development of key platform components. A significant focus is on scaling agentic AI-enabled engineering and SDLC/TLM automation using enterprise-authorized tools, establishing standards, guardrails, and leading multi-organization adoption of these models.

What you'd actually do

  1. Define and own the delivery strategy and roadmap for large-scale, cross-team engineering programmes from planning and resourcing through risk management, dependency tracking, and stakeholder communication serving as the primary interface between Engineering, Product, and Executive leadership on programme status, trade-offs, and escalations
  2. Partner with Principal Engineers and Architecture leads to translate technical vision into actionable delivery plans with clear milestones
  3. Lead delivery through periods of organisational or technical change, including platform migrations, team restructures, and process transitions, maintaining momentum and morale
  4. Accountable for quality and production stability, encompassing test automation strategy, performance benchmarking, release readiness, incident management, and SLA adherence
  5. Sets and scales multi-department strategy for agentic AI-enabled engineering and SDLC/TLM automation (using enterprise-authorised tools within the work environment) to drive firmwide objectives (speed, scalability, reliability, and cost-to-serve), including portfolio-level standards for AI-orchestrated delivery workflows, release governance, automated test modernisation, resilience engineering, and incident response acceleration; establishes guardrails for validation, security, resiliency, traceability, and reuse

Skills

Required

  • 15+ years of experience in end-to-end technical project/programme delivery, with 5+ years at Director level
  • Proven track record delivering complex, multi-team programmes on time and at scale
  • Comfortable navigating conversations across the full stack, including API design (REST, gRPC, GraphQL), AWS cloud infrastructure (EKS, networking, serverless, IAM), CI/CD pipelines, container orchestration (Kubernetes, Docker), event streaming (Kafka, Kinesis), CDN strategies, front-end ecosystem, observability tooling (Datadog, CloudWatch, SLOs/SLIs), databases at scale (PostgreSQL, Neo4j), security and compliance, and QA automation strategies
  • Able to read and critically assess architecture diagrams and documentation, both front-end and back-end, challenge assumptions, and ask incisive questions in design reviews with technical fluency to evaluate architectural trade-offs: consistency models, service boundaries, cost vs resilience, build vs buy, and to hold engineering teams accountable for sound decisions without needing to dictate the solution
  • Fluent in modern delivery methodologies (Agile, Scrum, Kanban) with the pragmatism to adapt frameworks to context rather than enforce rigid process
  • Exceptional communication skills: able to distil engineering complexity into clear, concise narratives for non-technical stakeholders at all levels
  • Effective at building consensus and driving outcomes across organisations with competing priorities
  • Track record of building and developing high-performing delivery teams
  • Skilled at influencing without authority, earning trust from engineers, product owners, and executives alike
  • Experience leading multi-organisation adoption of agentic AI-enabled engineering operating models (using enterprise-authorised tools within the work environment), including defining governance (human-in-the-loop decisioning, quality gates), measurement frameworks, and secure handling of sensitive inputs/outputs across teams
  • Deep understanding of responsible AI risk, controls, and resiliency/security expectations at scale, with demonstrated ability to advise senior leaders on safe adoption, portfolio governance, and reuse-first strategies

Nice to have

  • Java
  • AWS
  • RESTful
  • Containers

What the JD emphasized

  • agentic AI-enabled engineering
  • SDLC/TLM automation
  • AI-orchestrated delivery workflows
  • agentic AI-enabled engineering operating models
  • responsible AI risk, controls, and resiliency/security expectations

Other signals

  • AI/ML and GenAI
  • agentic AI-enabled engineering
  • SDLC/TLM automation
  • AI-orchestrated delivery workflows