Lead Software Engineer - Agentic AI/Machine Learning

J.P. Morgan
Glasgow
2 months ago
Applications closed

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We have an opportunity to impact your career and provide an adventure where you can push the limits of what's possible.

As a Lead Machine Learning Engineer, Agentic AI within Risk Technology at JPMorgan Chase, you will lead a specialized technical area, driving impact across teams, technologies, and projects. In this role, you will leverage your deep knowledge of software engineering, multi-agent system design and leadership to spearhead the delivery of complex and groundbreaking initiatives that will transform Asset and Wealth Management Risk.

You will be responsible for hands-on development, and leading and mentoring of a team of Machine Learning and Software Engineers, focusing on best practices in ML engineering, with the goal of elevating team performance to produce high-quality, scalable systems. You will also engage and partner with data science, product and business teams to deliver end-to-end solutions that will drive value for the Risk business.

Responsibilities
  • Lead the deployment and scaling of advanced generative AI, Agentic AI and classical ML solutions for the Risk Business.
  • Lead design and execution of enterprise-wide reusable AI/ML frameworks and core infrastructure capabilities that will accelerate development of AI solutions.
  • Develop multi-agent systems that provide capabilities for orchestration, agent-to-agent communication, memory, telemetry, guardrails, etc.
  • Conduct and guide research on context and prompt engineering techniques to improve the performance of prompt-based models, exploring and utilizing Agentic AI libraries like JPMC’s SmartSDK and LangGraph.
  • Develop and maintain tools and frameworks for prompt-based agent evaluation, monitoring and optimization to ensure high reliability at enterprise scale.
  • Build and maintain data pipelines and data processing workflows for scalable and efficient consumption of data.
  • Develop secure, high-quality production code, and provide code reviews.
  • Foster productive partnership with Data Science, Product and Business teams to identify requirements and develop solutions to meet business needs.
  • Communicate effectively with both technical and non-technical stakeholders, including senior leadership.
  • Provide technical leadership, mentorship and guidance to junior engineers, promoting a culture of excellence, continuous learning, and professional growth.
Required qualifications
  • Bachelor’s degree or Master’s in Computer Science, Engineering, Data Science, or related field
  • Applied experience in Machine Learning Engineering.
  • Strong proficiency in Python and experience deploying end-to-end pipelines on AWS.
  • Hands-on practical experience delivering system design, application development, testing, and operational stability
  • Hands-on experience using LangGraph or JPMC’s SmartSDK for multi-agent orchestration.
  • Experience with AWS and Infrastructure-as-code tools like Terraform.
Preferred qualifications
  • Strategic thinker with the ability to drive technical vision for business impact.
  • Demonstrated leadership working effectively with engineers, data scientists, and ML practitioners.
  • Familiarity with MLOps practices, including CI/CD for ML, model monitoring, automated deployment, and ML pipelines.
  • Experience with Agentic telemetry and evaluation services.
  • Demonstrated hands-on experience building and maintaining user interfaces


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