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Remote Data Scientist Job in Los Gatos, CA Netflix
Data Scientist
Netflix
$170000 - $720000
Computer Science
Data Science
Mathematics
Natural Language Processing
Pattern Recognition
Predictive Analytics
Python
Statistics
World Machine
Los Gatos
CA
Where you come to do the best work of your life. Follow @Netflix on Twitter, Instagram, TikTok and Youtube for more
15555+ employees
Media
Open for applications
Role
Who you are
Advanced degree in Statistics, Mathematics, Computer Science, Economics, or related quantitative field
5+ years of relevant experience in building and delivering real-world machine learning models
Strong interest and experience with LLMs
Strong Quantitative Programming skills in a language such as Python
Exceptional oral and written communication skills
Passion for driving product vision and innovation strategy
Ability to work independently and drive projects
Desirables
Machine learning experience
Causal inference experience
Strong quantitative programming skills
Exceptional communication skills
Ability to work independently
Leadership qualities
What the job involves
Develop methods and models to explain why our product promotes or doesn’t, a given title to a member
Responsible for partnering with our Product and Algo Engineering teams to understand our algo systems
Generate robust methodologies that answer the 'why' behind product recommendations
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Company
Company mission
Netflix is dedicated to providing the world with exceptional entertainment experiences through a vast array of genres and languages, allowing members to enjoy content anytime, anywhere.
Company benefits
Health Plans
Mental Health support
401(k) Retirement Plan with employer match
Stock Option Program
Disability Programs
Health Savings and Flexible Spending Accounts
Family-forming benefits
Life and Serious Injury Benefits
Paid leave of absence programs
Flexible time off
Company values
Innovation
Diversity
Excellence
Global Reach
Company HQ
Los Gatos
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