Generative AI Executive Director

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Corporate Sector

Executive Director role focused on architecting and delivering production LLM-based systems and agentic workflows for financial tasks at JP Morgan Chase. This role emphasizes shipping AI products at enterprise scale with measurable ROI, bridging research with robust engineering.

What you'd actually do

  1. Architect and deliver production LLM based systems (text, image, speech, video) powering mission-critical LLM Suite products.
  2. Own end-to-end delivery, performance, and continuous improvement of individual LLM Suite products.
  3. Bridge advanced AI research with robust engineering to build innovative, production-ready solutions.
  4. Drive results with an entrepreneurial mindset in a fast-paced, high-impact environment.

Skills

Required

  • PhD or equivalent experience in Computer Science, Mathematics, Statistics, or a related quantitative discipline
  • Extensive hands-on experience as an individual contributor in ML engineering
  • Proven track record of shipping production AI systems
  • Deep expertise in NLP, Computer Vision, and/or Multimodal LLM algorithms
  • Strong foundation in statistics, optimization, and ML theory
  • Practical experience implementing distributed, multi-threaded, and scalable applications using frameworks such as Ray, Horovod, DeepSpeed, etc.
  • Exceptional communication skills

Nice to have

  • Advanced proficiency in designing and deploying production ML pipelines using DAG frameworks, including custom operator development and pipeline optimization
  • Expertise in architecting and implementing high-throughput, low-latency microservices with gRPC, REST, and GraphQL, including protocol buffer schema design, streaming endpoints, and load balancing
  • Hands-on experience with parameter-efficient fine-tuning (LoRA, QLoRA, IA3), model quantization (INT8, FP16, GPTQ), and quantization-aware training for LLMs at scale
  • Deep knowledge of distributed training strategies (data/model/pipe parallelism), memory optimization, and inference acceleration for large-scale multimodal models
  • Experience with advanced agentic workflow orchestration, including multi-agent coordination, stateful task management, and integration with enterprise event-driven architectures

What the JD emphasized

  • production-grade LLM systems
  • production AI systems
  • production infrastructure
  • production ML pipelines
  • production-ready solutions

Other signals

  • production-grade LLM systems
  • enterprise scale AI
  • measurable ROI