Lead Software Engineer - AI

JPMorgan Chase JPMorgan Chase · Banking · LONDON, United Kingdom · Corporate Sector

Lead Software Engineer for AI (VP) at JPMorgan Chase in Risk Technology, focusing on deploying and scaling generative AI and agentic AI solutions, particularly for natural language querying (NLQ) of data. The role involves designing reusable AI frameworks, developing multi-agent systems, guiding prompt engineering research, and building evaluation tools. Requires strong Python, system design, AWS, and LangGraph experience, with a focus on enterprise-scale solutions and data pipelines.

What you'd actually do

  1. Lead the deployment and scaling of advanced generative AI and agentic AI solutions for the Risk business, with a focus on natural language querying of structured and unstructured data sources.
  2. Design and execute enterprise-wide, reusable AI frameworks and core infrastructure to accelerate AI solution development, including NLQ capabilities for diverse data types.
  3. Develop multi-agent systems for orchestration, agent-to-agent communication, memory, telemetry, guardrails, and NLQ-driven data retrieval and processing.
  4. Guide research on context and prompt engineering techniques to improve prompt-based model performance and NLQ accuracy, utilizing libraries such as LangGraph.
  5. Develop and maintain tools and frameworks for prompt-based agent evaluation, monitoring, and optimization at enterprise scale, with emphasis on NLQ workflows and orchestration.

Skills

Required

  • Python
  • system design
  • application development
  • testing
  • operational stability
  • LangGraph
  • AWS
  • Terraform

Nice to have

  • agentic telemetry
  • evaluation services
  • orchestration of NLQ workflows
  • MLOps practices
  • AI pipelines
  • user interfaces for NLQ and data exploration

What the JD emphasized

  • Lead the deployment and scaling of advanced generative AI and agentic AI solutions
  • Develop multi-agent systems
  • enterprise scale
  • LangGraph for multi-agent orchestration and NLQ integration

Other signals

  • leading deployment and scaling of generative AI and agentic AI solutions
  • design and execute enterprise-wide, reusable AI frameworks and core infrastructure
  • develop multi-agent systems for orchestration, agent-to-agent communication, memory, telemetry, guardrails, and NLQ-driven data retrieval and processing
  • guide research on context and prompt engineering techniques
  • develop and maintain tools and frameworks for prompt-based agent evaluation, monitoring, and optimization at enterprise scale