Software Engineer 2 - Machine Learning at Microsoft

Software Engineer 2 - Machine Learning Details

Jan. 14, 2019, 6:59 p.m.
Engineering
Individual Contributor
Full-Time
Redmond, WA
Identity Security and
Do you want to work on features that will impact hundreds of millions of users? Would you like to be part of a team of motivated and customer-obsessed engineers ? Then the Identity Security and Protection team is the right place for you! We are on the frontier of cybersecurity. Our team focuses on protecting Azure Active Directory and Microsoft Account from account compromise and fraud, and on creating enhanced security and protection features for consumers and enterprise users. Our team is looking for a talented individual who is focused and passionate about customer security and who can help us deliver innovative features in our protection systems. We build using a variety of technologies such as machine learning, AI and cutting-edge service technologies. We collaborate with partner teams across Microsoft including Office 365, Azure, Xbox and Windows . In addition to doing real and tangible good for the users we protect, we are building key differentiated value for Azure Active Directory

Develop prevention and detection systems to combat identity compromise and abuse. Research to learn about mechanisms being employed by fraudsters, as well as to determine probabilities correlated with both good and bad actors. Collaborate with partners across the company and industry to ensure maximum protection in ecosystem and increase net efficiency. Leverage machine learning and big data to facilitate meeting the goals listed above.
BS/MS in Computer Science or related technical field 3 years of industry experience working on commercial software applications or services Proficiency in C# and/or C++ Knowledge in one or more of these technologies a plus: Azure, ML, AI, big data Knowledge of client and device security platform technologies is a plus
Learn more about this job

Similar jobs at Amazon




Similar jobs at Microsoft





Website managed by Tommy Unger