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Described as the world's top internet television network, Netflix is a publicly-traded entertainment company offering video-on-demand and streaming media. As an
Machine Learning Engineer, Production Science
Location
United States
Posted
166 days ago
Salary
$150K - $750K / year
Seniority
Senior
Job Description
Machine Learning Engineer, Production Science
Netflix
• Design, maintain, automate, and optimize ML training pipelines and realtime model serving infrastructure • Improve ML observability, model evaluations, model monitoring, and debugging tools • Collaborate closely with ML scientists and engineering teams • Develop new ML solutions to extract information from studio artifacts • Stay updated with ML infrastructure advancements and new technologies
Job Requirements
- Strong foundation in machine learning, supervised and unsupervised learning, and model evaluation
- Track record of deploying performant and scalable data-intensive applications
- Strong understanding of feature engineering, data pipelines, and model lifecycle management
- Advanced degree (MS or PhD) in Computer Science, Electrical Engineering, or a related technical field
- Proficient in Python and experience with ML frameworks such as PyTorch or Jax
- Excellent problem-solving skills and communication abilities
- Highly collaborative and adaptable in dynamic environments
Benefits
- Inclusion as a Netflix value
- Accommodation/adjustment for a disability during the hiring process
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