Applied AI ML Engineer-vice President

JPMorgan Chase JPMorgan Chase · Banking · New York, NY +1 · Commercial & Investment Bank

This role focuses on designing, developing, and deploying AI and ML solutions, specifically generative AI applications, to enhance operational efficiency within the Corporate & Investment Bank. It involves working with ML models, MLOps, cloud platforms, and generative AI, with a strong emphasis on production deployment and scalability.

What you'd actually do

  1. Develop and implement machine learning models and algorithms to solve complex operational challenges.
  2. Design and deploy generative AI applications to automate and optimize business processes.
  3. Collaborate with stakeholders to understand business needs and translate them into technical solutions.
  4. Analyze large datasets to extract actionable insights and drive data-driven decision-making.
  5. Ensure the scalability and reliability of AI/ML solutions in a production environment.

Skills

Required

  • Ph.D. with 2+ years experience or Masters with 4+ years experience in Computer Science, Data Science, Machine Learning, or a related field
  • Experience in deploying AI/ML applications in a production environment
  • skills in deploying models on AWS platforms such as SageMaker or Bedrock
  • Familiarity with MLOps practices
  • Expertise in machine learning frameworks such as TensorFlow, PyTorch, Pytorch lightening, or Scikit-learn
  • Proficiency in programming languages such as Python
  • Proficiency in writing comprehensive test cases
  • using testing frameworks such as pytest
  • Experience with generative AI models, including GANs, VAEs, or transformers
  • Solid understanding of data preprocessing, feature engineering, and model evaluation techniques
  • Familiarity with cloud platforms (AWS)
  • containerization technologies (Docker, Kubernetes, Amazon EKS)
  • Excellent problem-solving skills
  • ability to work independently and collaboratively
  • Strong communication skills

Nice to have

  • Experience in the financial services industry, particularly within investment banking operations
  • Experience in developing AI solutions using agentic frameworks
  • Experience fine-tuning SLMs with approaches like LoRA, QLoRA and DoRA
  • Experience with prompt optimization frameworks such as AutoPrompt and DSPY
  • Familiarity with distributed computing systems, frameworks and techniques like data sharding and DDP training
  • Experience with Diffusion models

What the JD emphasized

  • deploying AI/ML applications in a production environment
  • skills in deploying models on AWS platforms such as SageMaker or Bedrock
  • MLOps practices
  • generative AI models

Other signals

  • deploying cutting-edge AI and machine learning solutions
  • designing and deploying generative AI applications
  • deploying AI/ML applications in a production environment
  • MLOps practices
  • generative AI models