Certificate in Data Analytics
Faculty
Dr. Hani Aladmaai, Director of Information Technology
Kaitlin Wellens, Clare Boothe Luce Assistant Professor of Biology
Steven Gable, Associate Professor of Philosophy
Description
Trinity offers a certificate in Data Analytics for graduates and students in the School of Professional Studies and School of Nursing and Health Professions who want to pursue careers in digital technology. The demand for digital competence is on the rise and the Data Analytics program offers the digital fluency demanded by an increasingly data-driven and decision-making digital tech workforce.
Data Analytics is the process of effectively examining and interpreting datasets to draw a conclusion. The certificate curriculum will sharpen critical thinking and problem-solving skills, strengthen scientific literacy, and build proficiency in statistical programming. The program also promotes social awareness and communication. With a certificate in Data Analytics, students will master key concepts of data analysis and increase their marketability in the digital technology industry.
Certificate Requirements
Required Courses (18 credits)
ITEC 100 Introduction to Data AnalyticsUnderstanding data is the key to understanding the world. Whether as a consumer or working for top companies, being able to collect, analyze, and present data provides us with invaluable insights and skills. Data analytics is the process by which useful information is extracted from large amounts of data. This course is designed to explain the importance of data, differentiate between common data typologies, and introduce the data analytics process. The course provides students with the necessary knowledge to better understand how data can be used to reduce uncertainty related to decision making. Additionally, it introduces students to a set of widely used data mining tools, techniques, and applications using R software. Case studies and practical examples will be extensively presented throughout the course.
3 credits
Pre: MATH 110
CMSC 111 Introduction to ProgrammingServes as an entry-level programming course recommended for all students. Objects, arrays, program flow (if-then-else, while, do-while, for, switch), simple graphical user interfaces and applets, problem solving techniques, and elementary algorithms are covered. Effective design, implementation, debugging, and documentation of object-oriented programs are emphasized. Formerly MAT 141 Introduction to Programming.
MATH 215 Prob & Stats with ApplicationsPresents basic principles of probability and statistics, with applications to diverse fields of study. Topics include review of data and data measurement, probability, hypotheses testing and inference, regression modeling, and more. Imparts practical skills through real world case studies, applied exercises, and analyses using spreadsheet software such as Excel. For non-math majors or minors in the data analytics and bioinformatics pathways.
3 Credits
Prerequisites: MATH 102 or MATH 108 or MATH 109
ITEC 210 Data Visualization and CommunicationData visualization allows us to tell a story and effectively communicate results from large datasets. Data visualization and communication techniques are important for any job dealing with data, including but not limited to business analytics, data analytics, statistics, and STEM jobs. In this course, students will learn about the role of data visualization in a variety of academic fields and distinguish between the types of visualization techniques available. We will use Excel and R primarily to create static and interactive data visualizations including tables, graphs, maps, and trees. Students will also gain a deeper understanding of data analysis as they critically approach a problem to evaluate the best fit visualization to reach various audiences using real life scenarios and data structures. Data Analytics is a prerequisite for this course.
3 Credits
Prerequisite:
ITEC 304 Data ManipulationA key component of data analytics is understanding how to create, clean, and manipulate large amounts of information stored in databases. By mastering data management skills and techniques, data scientists in a variety of fields can design and evaluate large datasets. In this course, students will become familiar with data manipulation and cleaning techniques as well as understand the importance and challenges of working with large data. Case studies using data and real-life scenarios from Business, STEM, and Criminal Justice fields will add context and hands on experiences for students. By the end of the course, students will be able to use Excel, SQL, and R to create, edit, and manage large amounts of information and data. Data Analytics is a prerequisite for this course.
3 Credits
Prerequisites (CAS ONLY): ITEC 100
PHIL 281 The Ethics of Data AnalyticsThis course explores the ethical issues related to the collection, aggregation, analysis, and commercial/political implementation of internet data. Students will investigate the possible threats to personal privacy and to the exercise of autonomy posed by the corporate/governmental collection, aggregation, and analysis of data. The course probes the ethical questions posed by the utilization of internet data research to shape future consumer and political behaviors. Students will also study the potential social biases reinforced or created by data analytics models. These issues will be framed and analyzed within the context of utilitarian and deontological ethical theory. The course will also examine the responsibility of corporate and governmental institutions to safeguard data and restrict its use to legitimate purposes. Finally, the course surveys the relationship between the legal and ethical limitations on the utilization of internet data research.
3 Credits
Prerequisites: PHIL/COM 150
Generalist Credential
Students who receive a certificate in Data Analytics could benefit from the partnership with Capital CoLAB’s Digital Tech Credential program (Collaborative of Leaders in Academia and Business). Students could earn The Generalist Credential that prepares any major for job roles that require an understanding of data analysis. A Generalist credential opens opportunities for job shadowing, engagement with senior executives, mentoring/coaching, resume review, and priority interviews for internships. Upon completion of the program requirements, students will receive a digital badge to display on their LinkedIn profile or resume.
Program Policies
Transfer Credit Policy: Transfer credits may be accepted for a certificate program if they meet the student’s planned degree program just as they are for undergraduate degree programs. Students may transfer up to six total credits in alignment with the certificate curriculum. All other Trinity transfer credit policies apply.
Academic Standing: Students must earn a C or better in all college level courses in order for the courses to count toward the post-secondary certificate. Courses in the certificate programs are repeatable. Satisfactory academic progress is a criterion for the award of financial aid. Students not making academic progress will be referred to their academic advisor for academic counseling. All other Trinity academic policies and procedures apply to certificate courses.