Editing UW Statistics Courses

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IMT 574 Data Science II. is the second course in the sequence offers theoretical and practical introduction to techniques for the analysis of large-scale data. The course does have prerequisites but depending on where you are in the program it can be a good choice.  
IMT 574 Data Science II. is the second course in the sequence offers theoretical and practical introduction to techniques for the analysis of large-scale data. The course does have prerequisites but depending on where you are in the program it can be a good choice.  


Data 512 is Human-Centered Data Science. It introduces the fundamental principles of data science and its human implications. Data ethics, privacy, algorithmic bias, legal frameworks, intellectual property and more.  
Data 512 is Human-Centered Data Science. It introduces the fundamental principles of data science and its human implications. Data ethics, privacy, algorithmic bias, legal frameworks, intellectual property and more.  


CSSS 594 is a 1 credit special topics course. Have a peek to see if whatever is being offered in the current quarter is something your interested in.
CSSS 594 is a 1 credit special topics course. Have a peek to see if whatever is being offered in the current quarter is something your interested in.


CSE 160 is a 3 credit introduction to data manipulation in Python. It is an undergraduate course but if youre coming in unfamiliar with how to manipulate your dataset this course can be helpful. *it is intended for students without prior programming experience*
CSE 160 is a 3 credit introduction to data manipulation in Python. It is an undergraduate course but if youre coming in unfamiliar with how to manipulate your dataset this course can be helpful. *it is intended for students without prior programming experience*
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