Are you passionate about AI for recommendation systems Do you want to influence the content that customers see at Our recommendation services team designs and implements scalable machine learning solutions to personalize and optimize customer experience across Amazon retail pages. We are looking for an applied scientist to join us in this exciting journey.
As an Applied Scientist you will: Push the boundaries of realworld ranking recommendation and optimization systems Support science engineering and product development on a scale only seen at Amazon.
Champion and define best practices to maximize learnings while mentoring more junior scientists and engineers.
Obsess over customer needs and satisfaction.
Create intellectual property influence others while demonstrating significant creativity and being vocally selfcritical.
Shape product definitions and objective and surface signals on how these objectives meet long term customer needs.
Translate metrics & signals into actionable plans to calibrate individual components.
Operate handson and as an implementor of algorithms and models delivered to production systems.
Help define customer focused research initiatives. Please visit for more information.
3 years of building models for business application experience PhD or Masters degree and 4 years of CS CE ML or related field experience Experience programming in Java C Python or related language Experience in any of the following areas: algorithms and data structures parsing numerical optimization data mining parallel and distributed computing highperformance computing
Experience using Unix/Linux Experience in professional software development
Amazon is an equal opportunity employer and does not discriminate on the basis of protected veteran status disability or other legally protected status.
Disclaimer: Drjobpro.com is only a platform that connects job seekers and employers. Applicants are advised to conduct their own independent research into the credentials of the prospective employer.We always make certain that our clients do not endorse any request for money payments, thus we advise against sharing any personal or bank-related information with any third party. If you suspect fraud or malpractice, please contact us via contact us page.