Netflix

Machine Learning Engineer (L4) - Production Science

USA - Remote

Found: January 15, 2026

This role is remote, based in the USA.

Compensation:

$150,000 - $750,000 per year

Responsibilities:

  • Design, maintain, automate, and optimize ML training pipelines and real-time model serving infrastructure.
  • Improve ML observability, model evaluations, model monitoring, and debugging tools.
  • Collaborate with ML scientists and engineering teams to integrate models into studio applications.
  • Develop new ML solutions to extract information from studio artifacts.
  • Stay updated with ML infrastructure advancements and best practices.

About You:

  • Strong foundation in machine learning, including supervised and unsupervised learning.
  • Experience deploying scalable data-intensive applications.
  • Advanced degree (MS or PhD) in a related technical field.
  • Proficient in Python with experience in ML frameworks like PyTorch or Jax.
  • Excellent problem-solving and communication skills.

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