
at J.P. Morgan
Bulge Bracket Investment BanksPosted 4 days ago
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**SR Director of Software Engineering - AI Engineering** Lead AI-powered software engineering transformation at JPMorgan Chase. Deliver AI-infused SDLC and PDLC models, drive agentic development patterns, and ensure responsible AI in production. Oversee multiple departments, influence cross-functional stakeholders, and deliver firm-wide engineering objectives. Requires 10+ years in software engineering, AI/LLMs expertise, and executive-level stakeholder management. Impact JPMorgan Chase's global payments tech evolution.
- Compensation
- Not specified
- City
- Jersey City
- Country
- United States
Currency: Not specified
Full Job Description
Location: Jersey City, NJ, United States
Take on a role where you can have a direct and meaningful impact on the future of one of the world's largest and most influential companies.
- Lead the execution of an AI-native SDLC and PDLC model across architecture, coding, security, testing, release, and observability phases.
- Operationalize agentic patterns and toolchains, including LLM orchestration, skills, context engineering, and MCP-based integrations.
- Ensure responsible AI practices in production: guardrails, evaluation, monitoring, and auditable workflows.
- Partner with App Dev leaders and platform owners to identify high-impact use cases, validate value, and scale production adoption.
- Translate engineering workflows into AI-enabled production capabilities (assistive to autonomous) that materially reduce developer toil.
- Drive alignment with GT/LOB stakeholders on control design, security approvals, platform standards, and rollout approach.
- Leads multiple technology and process implementations across departments to achieve firmwide technology objectives
- Directly manage multiple areas with strategic transactional focus
- Interface with senior leaders, stakeholders, and executives, driving consensus across competing objectives
- 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.
- 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.
Required qualifications, skills, and capabilities
- Formal training or certification on software engineering concepts and 10+ years applied experience, including 5+ years leading technologists to manage, anticipate, and solve complex technical items within your domain of expertise
- Deep expertise in AI/LLMs and their application to software engineering workflows (coding, design, security, testing, release).
- Hands-on experience with agentic systems, tool/skill orchestration, and integration patterns (e.g., MCP, A2A, function/tool calling).
- Proven ability to lead cross-functional engineering delivery amid ambiguity, roadmap definition, backlog, dependency management, and stakeholder alignment.
- Strong communicator with executive-level stakeholder management, able to translate between engineering depth and business outcomes.
- Experience leading multi-organization adoption of agentic AI-enabled engineering operating models (using enterprise-authorized 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.
- Demonstrated prior experience influencing across highly matrixed, complex organizations and delivering value at scale
- Experience leading complex projects supporting system design, testing, and operational stability
- Experience with hiring, developing, and recognizing talent
- 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.
- Expertise in Computer Science, Computer Engineering, Mathematics, or a related technical field
Preferred qualifications, skills, and capabilities
- Experience working at code level
- Experience with on-prem , cloud-native ecosystems and AWS services (e.g., EKS, Glue, S3, etc.,)
- Familiarity with modern data architectures and sharing patterns , data contracts/entitlements, and cost optimization.
- Experience with secure SDLC practices and developer security tooling and vulnerability management metrics.
- API-first production design and integration patterns; strong analytics and experimentation discipline.




