Advanced Certificate in Data Science

Advanced Certificate in Data Science

Admission Requirement and Process

To qualify for admission, applicants must satisfy the following criteria:

  1. Hold a Bachelor's degree before the start of the intended enrollment term.
  2. Demonstrate English proficiency through one of these methods:
    • Submit official scores from recognized English language tests like TOEFL, IELTS, Duolingo, or equivalent.
    • Earn a degree from an institution where English is the primary language of instruction.

Applicants must also submit a complete application package in accordance with the college’s standard admission procedures. Learn More

Completion Requirements

The Advanced Certificate in Data Science program comprises five core courses. To successfully complete the program, students must achieve a grade of C or higher in each course.

Curriculum and Course Description

Completion Requirements

The Advanced Certificate in Data Science program comprises five core courses. To successfully complete the program, students must achieve a grade of C or higher in each course.

Total Required Credits for Graduation (15 credits)

Total Required Credits for Graduation (15 credits)

Credits: 3

Exploring key mathematical concepts, this course equips students with the essential mathematical foundations for data science, including linear algebra, basic statistics, and optimization techniques. Emphasis is placed on practical computational and visualization programming exercises to solidify understanding and relevance in real-world applications.

Credits: 3

Throughout this course, students delve into data structures, database fundamentals, and essential data management and querying tools like SQL. By solidifying Python programming skills and introducing data structure analysis and computational complexity, the course prepares students for complex computational challenges in data science.

Credits: 3

This course prepares students to understand and leverage data mining and predictive modeling in business contexts. By using Python and PyTorch, and tackling real-world datasets, students gain practical skills that culminate in comprehensive projects designed to solve actual business problems.

Credits: 3

Students will learn the art and science of converting data into graphical representations that make complex information accessible and actionable. This course covers the basics of R programming, data cleaning, transformation techniques, and the use of Tableau for creating compelling dashboards. The curriculum is designed to help students master the skills needed to present data in visual formats that reveal patterns, trends, and correlations.

Credits: 3

A cornerstone of the Data Science Master’s Program, this course introduces advanced machine learning algorithms’ theoretical foundations and practical applications. Students engage with logistic regression, decision trees, support vector machines, and deep learning, applying these techniques to real-world data tasks.

Faculty Highlights

Meet our distinguished faculty members who are leading experts in their respective fields