Netflix is one of the world's leading entertainment services, with over 300 million paid memberships in over 190 countries enjoying TV series, films and games across a wide variety of genres and languages. Members can play, pause and resume watching as much as they want, anytime, anywhere, and can change their plans at any time. Machine Learning drives innovation across all product functions and decision-support needs, and building highly scalable and differentiated ML infrastructure is critical to accelerating this innovation. Our Machine Learning Platform (MLP) maximizes the impact of ML by building differentiated, scalable infrastructure that accelerates research and product iteration across recommendations, growth, studio, content understanding, and emerging generative AI use cases. The Model Development & Management (MDM) team builds and evolves the unified developer experience-SDKs, frameworks, and libraries-that powers end-to-end model creation at Netflix. We focus on maximizing practitioner velocity while making infrastructure complexity invisible, integrating tightly with data/feature, training, serving, and evaluation pillars. Our portfolio-with-paved-paths strategy (Metaflow and other libraries exposed through one opinionated SDK) supports teams from a single data scientist to 100+ MLEs and model scales from ~10M to 100B+ parameters-spanning classic personalization, content understanding, and multimodal GenAI. We are looking for an experienced ML/AI infrastructure engineering leader to manage MDM and drive the next generation of Netflix's model development platform! You will lead the team to architect, build, test, and launch a cohesive SDK and set of opinionated templates that let practitioners scaffold projects, configure and execute runs (from laptop to tightly coupled multi-node GPU training), track experiments and lineage, package models with evaluation hooks, and promote them confidently. Your work will enable partners across content, studio, consumer, ads, and games to develop and iterate on large-scale models-including LLMs, recommenders, computer vision, and foundation models-throughout the full lifecycle from early research and experimentation to productization and ongoing optimization. Success will be measured by concrete developer-experience KPIs such as time-to-first successful remote run, run success rate (ex-user code), mean time to actionable diagnosis, adoption of paved paths, and template reuse.
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Industry
Computing Infrastructure Providers, Data Processing, Web Hosting, and Related Services
Number of Employees
5,001-10,000 employees