Agentic AI Associate - Client 360

JPMorgan Chase JPMorgan Chase · Banking · LONDON, LONDON, United Kingdom · Commercial & Investment Bank

This role focuses on building and operating agentic AI solutions for Client360 within JPMorgan Chase's Commercial & Investment Bank. The Associate will work on developing software for agentic AI operations, implementing AI workbenches, and ensuring scalability, reliability, and control. Responsibilities include end-to-end ownership of engineering deliverables, contributing to code reviews, supporting operational readiness, and collaborating with various teams to integrate AI workflows. The role requires strong software engineering fundamentals, experience with CI/CD, and familiarity with regulated environments.

What you'd actually do

  1. Build and deliver software that enables agentic AI operations for Client360 (e.g., services, workflow components, integrations, automations, internal tools), working within established platform standards.
  2. Partner with architecture and engineering leads to implement the target-state Agentic AI workbench and integrated control environment, including connectivity patterns, orchestration hooks, and evaluation/monitoring integrations.
  3. Own small-to-medium engineering deliverables end-to-end: requirements clarification, design approach, implementation, testing, release, and post-release support.
  4. Contribute to code reviews and quality gates; proactively identify broken or risky changes and either fix them or propose specific remediations.
  5. Support operational readiness by contributing to runbooks, instrumentation/telemetry, dashboards/alerts (where applicable), incident learnings, and ongoing production hygiene.

Skills

Required

  • 2–4+ years of real-world software delivery experience as an engineer (growth engineering, product engineering, full-stack development, backend, or platform), including shipping to production and supporting what you ship.
  • Demonstrated ability to operate with minimal technical hand-holding: understands technical requirements quickly and can independently implement fixes and improvements with good judgment.
  • Hands-on experience using AI coding assistants in day-to-day development (e.g., GitHub Copilot and/or Claude Code) to accelerate delivery, with an understanding of their limitations and the need for rigorous review/testing.
  • Strong engineering fundamentals: version control, code review practices, testing strategy, debugging, and operational excellence habits.
  • Familiarity with Continuous Integration and Continuous Delivery (CI/CD), including automated build/test pipelines, deployment workflows, release hygiene, and safe change practices (environment promotion, rollbacks, and deployment verification).
  • Strong communication and collaboration skills, with the ability to work effectively across product, architecture, engineering, and operations teams and to explain technical concepts to non-technical stakeholders.
  • Working knowledge (or strong willingness to learn) of delivery in regulated environments, including secure SDLC practices, data governance, logging/monitoring, and operational risk considerations.

Nice to have

  • Experience building or operating AI-enabled systems (agentic workflows, orchestration frameworks, LLM-enabled automation) and/or observability for AI/automation in production.
  • Experience working in a highly matrixed, complex organization and/or within a financial institution.
  • Degree in Computer Science, Engineering, or a related field is beneficial, but is not a substitute for hands-on engineering delivery experience.
  • Experience ensuring customers and stakeholders are engaged and positive about delivered solutions through strong rollout, enablement, and feedback loops.

What the JD emphasized

  • agentic AI solutions
  • agent-led workflows
  • AI coding assistants
  • delivery in regulated environments

Other signals

  • agentic AI solutions
  • intelligent automation
  • agent-led workflows
  • AI coding assistants