DSCI 105
POPApplied Data Analytics
An investigation into the fundamental techniques and practices of data analysis, this course focuses on applying tools and techniques to practical problems of analysis, visualization, and discovery.
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Information is everywhere. Our increasingly global and digitized world produces huge amounts of data, and understanding it is essential to all organizations, whether they are in the public, private, or nonprofit arenas. Data science and analytics help organizations harness their data and use it to discover knowledge, identify opportunities, and develop solutions, ultimately leading to smarter policies, more efficient and equitable practices, better services, and more inclusive societies.
Leading to a bachelor of arts degree, data science at Clark is an interdisciplinary major with courses taught by faculty from computer science, economics, geography, management, and mathematics. Students learn approaches and techniques that are widely applied to quantitative analyses in almost every discipline, with particular relevance to Clark’s academic programs in computer science, mathematics, geographic information science (GIS), economics, business analytics, environmental science and policy, international development, biology, chemistry, and physics.
Data Science
DSCI 105
POPAn investigation into the fundamental techniques and practices of data analysis, this course focuses on applying tools and techniques to practical problems of analysis, visualization, and discovery.
DSCI 122
Learn fundamental mathematical concepts, theorems, and tools used in data science and machine learning, from linear algebra to analytic geometry, matrix decompositions, and probability and statistics.
DSCI 125
POPGet to know foundational concepts and skills, then dig in to process and analyze, and extract information from, real-world datasets. Discussions will also cover data privacy, bias, fairness, and more.
DSCI 216
Uncertainty appears in virtually all areas of data science and computer science. In this course, you’ll use the problem, theory, and prototype (PTP) approach to measure, describe, evaluate, and make decisions.
DSCI 225
Through lectures, labs, programming projects, and written assignments, students learn the fundamental theory of machine learning and apply it to practical problems in data science.
As a data science major, you’ll learn how to formulate problems; design data collection strategies; process, analyze, and extract information from data; and use that information to make sound decisions. You’ll also become familiar with the social and ethical issues surrounding data science, and the code of conduct observed by data science professionals.
Fourteen courses are required to complete the major, which offers five tracks of study: computer science, economics, geography/GIS, management, and mathematics.
As a data science major, you also will complete a capstone, which draws on all you’ve learned during your time at Clark. Your capstone may be in the form of a 200-level course (counted toward your 14-unit major requirements) or another approved activity.
Skills you will learn include: