Applied AI ML Lead - ML Ops, Ctc

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

ML Ops Engineer role focused on deploying, monitoring, and managing machine learning models in production environments within JPMorgan Chase's Cybersecurity team. Responsibilities include building CI/CD pipelines, optimizing infrastructure, and ensuring reliable and efficient AI system performance.

What you'd actually do

  1. Deploy machine learning models into production, ensuring they are scalable, reliable, and efficient.
  2. Build and maintain CI/CD pipelines to automate testing, deployment, and updates for machine learning models.
  3. Manage and optimize infrastructure for running models, including cloud services, Docker, and Kubernetes.
  4. Set up monitoring and logging to track model performance, detect anomalies, and ensure smooth operation.
  5. Apply security best practices and ensure models meet regulatory standards.

Skills

Required

  • Experience deploying and managing machine learning models in production environments
  • Skilled in building and maintaining CI/CD pipelines for machine learning workflows
  • Proficient with cloud platforms (AWS, Google Cloud, Azure) and containerization tools (Docker, Kubernetes)
  • Familiar with monitoring and logging tools (Prometheus, Grafana, ELK Stack)
  • Advanced Python programming skills
  • Strong problem-solving skills
  • Effective communicator

Nice to have

  • Experience deploying and managing large-scale machine learning models in production
  • Ability to monitor models in production and address performance and data quality issues
  • Working knowledge of security best practices and compliance standards for ML systems
  • Experience optimizing infrastructure for performance and efficiency
  • Developed REST APIs using frameworks like Flask or FastAPI
  • Familiarity with synthetic datasets for model training and evaluation

What the JD emphasized

  • deploying machine learning models in production environments
  • building and maintaining CI/CD pipelines for machine learning workflows
  • monitoring and logging to track model performance
  • regulatory standards

Other signals

  • deploying machine learning models in production
  • CI/CD pipelines for machine learning workflows
  • monitoring and logging for model performance