Engineering and Technology
Learn to generate personalized recommendations based on user data and run statistically valid tests that produce clean, interpretable results.
Experimental Design & Recommendations is a course on Udacity that covers the fundamentals of experiment design, statistical concerns of experimentation, A/B testing, introduction to recommendation engines, and matrix factorization for recommendations. Throughout the course, students will learn how to set up experiments, understand statistical concepts, identify sources of bias, and implement different techniques for creating recommendation engines. The course also includes a project where students will design a recommendation engine using IBM's online data science community. By the end of the course, students will have a solid understanding of experimental design and be able to build effective recommendation engines.
by Udacity
Learn to generate personalized recommendations based on user data and run statistically valid tests...
by Udacity
Learn vital skills in data description, probability theory comprehension, experimental design, stati...
by Udacity
Build effective machine learning models, run data pipelines, build recommendation systems, and deplo...
by Udacity
The A/B Testing course provides students with the foundational knowledge to design and analyze A/B t...
by Udacity
This course will cover the design and analysis of A/B tests, also known as split tests, which are on...
by Udacity
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by Udacity
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by Udacity
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