Machine Learning Engineer – Document Digitization (llms)-vice President

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

Machine Learning Engineer (VP) at JPMorgan Chase focused on designing, developing, and deploying AI-powered document digitization solutions using LLMs and generative AI. The role involves managing the end-to-end ML lifecycle, building scalable pipelines on AWS, and ensuring security and compliance within a financial services context.

What you'd actually do

  1. Lead the design, development, and integration of AI-powered document digitization solutions, focusing on extracting information and insights from diverse document types.
  2. Manage the end-to-end AI/ML lifecycle: model training, validation, deployment, monitoring, and continuous improvement in production environments.
  3. Employ generative AI, and large language models (LLMs) to automate and optimize document workflows.
  4. Build and maintain scalable document digitization pipelines using Python, AI frameworks, and cloud technologies.
  5. Provision and manage cloud resources using infrastructure as code tools (Terraform) and AWS services (SageMaker, Bedrock).

Skills

Required

  • Python programming
  • AI/ML model development
  • deployment
  • MLOps practices
  • production environments
  • machine learning frameworks (TensorFlow, PyTorch, Scikit-learn, PyTorch Lightning)
  • generative AI models (GANs, VAEs, transformers, diffusion models)
  • LLMs
  • AWS cloud platforms (SageMaker, Bedrock)
  • containerization (Docker, Kubernetes, Amazon EKS)
  • infrastructure as code (Terraform)
  • NoSQL databases (Mongo Atlas, ElasticSearch, OpenSearch, Neo4J)
  • agentic coding approaches
  • autonomous code agents
  • last sprinting code generation
  • SDLC
  • CI/CD
  • resiliency
  • security practices
  • accelerate development using AI technologies
  • deploying and maintaining AI/ML solutions in large-scale, production environments
  • problem-solving
  • communication
  • collaboration

Nice to have

  • Java
  • React.JS
  • AngularJS
  • financial services
  • investment banking
  • credit risk operations
  • agentic AI frameworks
  • prompt optimization
  • fine-tuning SLMs
  • distributed computing
  • data sharing
  • DDP training
  • design/code reviews
  • mentoring teams
  • AWS Generative AI Developer Professional certification

What the JD emphasized

  • secure
  • scalable
  • innovative
  • AI-powered
  • extracting information and insights
  • end-to-end AI/ML lifecycle
  • production environments
  • generative AI
  • large language models (LLMs)
  • automate and optimize document workflows
  • scalable document digitization pipelines
  • cloud technologies
  • Provision and manage cloud resources
  • infrastructure as code
  • AWS services
  • scalability, reliability, security, and compliance
  • best practices and governance standards
  • reimagine legacy document processing systems
  • generative AI and LLMs
  • monitor digitization accuracy, workflow efficiency, and business impact
  • best practices in AI/ML, software engineering, and testing
  • model validation
  • human-in-the-loop review
  • continuous improvement strategies
  • new and emerging technologies
  • AI/ML model development, deployment, and MLOps practices in production environments
  • generative AI models
  • LLMs
  • agentic coding approaches
  • autonomous code agents
  • last sprinting code generation
  • accelerate development using AI technologies
  • deploying and maintaining AI/ML solutions in large-scale, production environments

Other signals

  • LLM
  • document digitization
  • generative AI
  • production deployment
  • MLOps