Applied ML and Generative AI Lead - Vice President

JPMorgan Chase JPMorgan Chase · Banking · Jersey City, NJ +1 · Corporate Sector

Hands-on engineering leader responsible for designing, building, and running production-grade ML and Generative AI services, setting technical direction, and establishing engineering standards. The role involves mentoring junior engineers, building MLOps capabilities, fine-tuning generative models for NLP use cases, conducting evaluations, and implementing monitoring. Experience with Python, ML frameworks, cloud platforms, and containerization is required. Familiarity with RAG and advanced prompting strategies is preferred.

What you'd actually do

  1. Provide hands-on technical leadership by designing, developing, and deploying ML/LLM/GenAI solutions from concept through production, maintaining ownership for reliability and operability once deployed
  2. Work closely with product managers, data scientists, ML engineers, and other stakeholders to understand requirements and prioritize use cases.
  3. Mentor and uplift junior engineers through design reviews, code reviews, pairing, and coaching, raising engineering quality and delivery discipline across the team. You will build and institutionalize MLOps capabilities, including automated pipelines for deployment, monitoring, and model lifecycle management, with emphasis on scalability and reliability
  4. Implement optimization strategies to fine-tune generative models for specific NLP use cases, ensuring high-quality outputs in summarization and text generation.
  5. Conduct thorough evaluations of generative models (e.g., GPT-4.1), iterate on model architectures, and implement improvements to enhance overall performance in NLP applications.

Skills

Required

  • Python
  • TensorFlow
  • PyTorch
  • Scikit-learn
  • OpenAI API
  • AWS
  • Azure
  • Google Cloud Platform
  • Docker
  • Kubernetes
  • statistics
  • machine learning
  • deep learning
  • reinforcement learning
  • generative model architectures
  • GANs
  • VAEs
  • prompt engineering

Nice to have

  • financial services industries
  • Retrieval-Augmented Generation (RAG)
  • Chain-of-Thoughts
  • Tree-of-Thoughts
  • Graph-of-Thoughts prompting strategies

What the JD emphasized

  • business critical machine learning models in production
  • hands-on engineering leadership
  • deploying ML/LLM/GenAI solutions from concept through production
  • MLOps capabilities
  • fine-tune generative models
  • evaluations of generative models

Other signals

  • production-grade ML and Generative AI services
  • setting technical direction that scales
  • hands-on engineering leadership
  • MLOps capabilities
  • fine-tune generative models
  • evaluations of generative models
  • implement monitoring mechanisms
  • deploying ML/LLM/GenAI solutions from concept through production