Sr. Director of Software Engineering

JPMorgan Chase JPMorgan Chase · Banking · Bengaluru, Karnataka, India · Commercial & Investment Bank

Senior Director of Software Engineering for a Commercial and Investment Bank post-trade accounting group, focusing on leading engineering outcomes, driving adoption of technical methods, and specifically setting strategy for agentic AI-enabled engineering and SDLC/TLM automation using enterprise tools. The role involves translating finance requirements into scalable architectures, leading agile pods, driving end-to-end technology execution, and ensuring production stability. A key focus is establishing guardrails for AI validation, security, resiliency, and traceability, and applying AI-assisted development capabilities. Experience in regulated financial environments is preferred.

What you'd actually do

  1. Sets and scales multi-department strategy for agentic AI-enabled engineering and SDLC/TLM automation (using enterprise-authorized 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 modernization, resilience engineering, and incident response acceleration; establishes guardrails for validation, security, resiliency, traceability, and reuse.
  2. Applies knowledge of tools within the Software Development Life Cycle toolchain, including enterprise-authorized AI-assisted development and automation capabilities, to drive cross-domain reuse and measurable capacity unlock outcomes across departments.
  3. Owns engineering outcomes for a portfolio of accounting-facing products and services by translating finance requirements into scalable architectures and well-managed backlogs.
  4. Leads multiple agile pods to ensure consistent delivery, strong quality engineering practices, and predictable throughput aligned to quarterly close cycles and critical reporting timelines.
  5. Drives end-to-end technology execution across architecture/design reviews, build and test automation, performance and reliability engineering, and operational readiness.

Skills

Required

  • leading software engineering teams
  • people management
  • technical leadership
  • cross-functional delivery
  • architecture and design trade-offs
  • building reliable, data-intensive services
  • integrating with upstream/downstream systems
  • modern SDLC practices
  • CI/CD
  • automated testing strategies
  • secure development
  • production operations
  • communication with technical and non-technical stakeholders
  • Java
  • Spring Boot
  • Python
  • event streaming
  • APIs
  • ETL/ELT patterns
  • data quality framework
  • PostgreSQL/Oracle
  • distributed query engines
  • Drools
  • caching
  • setting engineering direction
  • building high-accountability environment
  • measurable delivery outcomes
  • strong quality gates
  • transparent execution
  • simplification
  • improving reliability
  • operational efficiency
  • coaching and developing engineers and managers
  • career development plans
  • performance management
  • building diverse pipelines
  • inclusive leadership
  • partnerships with Product, Accounting, and technology stakeholders
  • firm security, privacy, and risk policies
  • secure coding practices
  • access controls
  • segregation of duties considerations
  • auditable change management
  • leading multi-organization adoption of agentic AI-enabled engineering operating models
  • defining governance
  • measurement frameworks
  • secure handling of sensitive inputs/outputs
  • deep understanding of responsible AI risk, controls, and resiliency/security expectations at scale
  • advising senior leaders on safe adoption, portfolio governance, and reuse-first strategies

Nice to have

  • building technology solutions in Accounting, Finance, Controllers, or Regulatory Reporting environments
  • exposure to close processes, reconciliations, subledger patterns, accounting event processing, and financial controls
  • familiarity with data governance concepts
  • data lineage
  • metadata management
  • control evidence generation
  • operating systems in highly regulated environments
  • audit engagement support
  • issue remediation
  • operating model maturity
  • modernizing legacy platforms
  • decomposing monoliths
  • driving cloud adoption within enterprise guardrails

What the JD emphasized

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

Other signals

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