This is an archived copy of the 2020-2021 catalog. To access the most recent version of the catalog, please visit http://catalog.ufl.edu.
About this Program
- College: Liberal Arts and Sciences
- Degrees: Bachelor of Science
- Credits for Degree: 120
- Contact: Email
- More Info
To graduate with this major, students must complete all university, college, and major requirements.
Department Information
The mission of the Department of Statistics is to provide its students with a fundamental understanding of statistical reasoning and methodology, to train them to apply this knowledge to the collection and analysis of data, and to prepare them for careers in a highly technological society in which science and decision-making are increasingly driven by a rapid expansion in the quantity and availability of data.
Website
CONTACT
Email | 352.392.1941 (tel) | 352.392.5175 (fax)
P.O. Box 118545
102 GRIFFIN-FLOYD HALL
GAINESVILLE FL 32611-8545
Map
Curriculum
Data Science majors draw inference from large data generated from a variety of disciplines. Core courses cover mathematical foundations of data science, programming, algorithms, and databases as well as statistical methods for data science. Majors will also learn about data science in practice within subject matter areas.
Students who wish to major in data science must consult a department advisor early in their programs.
Coursework for the Major
To enter the program, students must receive a minimum grade in the perquisites: STA 2023, B OR STA 3032, B- OR AP Statistics, 4 (out of 5). Students also must receive minimum grades of C within two attempts (including withdrawals) in every required core course and in every course counted toward the 9 credit elective requirement, with the exception of MAC 2312 and MAC 2313 where students must receive a minimum grade of B-. Students cannot retake core or statistics elective courses after earning a minimum grade of C, with the exception of MAC 2312 and MAC 2313, in which students must receive a minimum grade of B-. A minimum GPA of 2.0 must be achieved on all attempts of core and major elective courses and 2.67 on MAC 2312 and MAC 2313. The grades from all attempts to satisfy core requirements will be used to compute the minimum GPA. A minimum of 18 credits of major coursework must be taken at UF, including a minimum of 12 credits of core coursework.
Required Coursework
The B.S. in data science requires a minimum of 62 credits in data science and related coursework. It is important that the prerequisites of each class are met before the class is attempted.
Code | Title | Credits |
---|---|---|
Mathematics | 20 | |
Analytic Geometry and Calculus 2 | ||
Analytic Geometry and Calculus 3 | ||
Intro to Computational Math | ||
Computational Linear Algebra | ||
MAS 4115 | Linear Algebra for Data Science | |
Statistics | 21 | |
Programming With Data in R | ||
Introduction to Probability | ||
Introduction to Statistics Theory | ||
Regression Analysis | ||
STA 4XXX | Statistical Learning in R | |
STA 4XXX | Computational Statistics in R | |
Computer Science | 12-15 | |
Programming Fundamentals 1 (MAC 2311 coreq) | ||
Programming Fundamentals 2 | ||
Discrete Mathematics | ||
or COT 3100 | Applications of Discrete Structures | |
Data Structures and Algorithm | ||
Information and Database Systems 1 | ||
Ethics | 3 | |
PHI 3XXX | Ethics, Data, and Technology | |
Subject Area Electives | 9 | |
Select 3 from Humanities or Social Sciences | ||
Humanities | ||
Environmental Ethics | ||
Global Ethics | ||
Religion and Science | ||
Classical Archaeology | ||
Gender, Race and Science | ||
Discrimination and Health | ||
History of American Medicine: Race, Class, Gender, and Science | ||
Social Sciences | ||
Special Topics in Anthropology | ||
Special Topics in Linguistics | ||
Econometrics 2 | ||
Laboratory in Sensory Processes | ||
Population | ||
U.S. Population Issues | ||
Foundations of Geographic Information Systems | ||
Laboratory in Cognitive Neuroscience |
Relevant Minors and/or Certificates
Data Science majors may want to consider a minor in actuarial science, which prepares students for careers as actuaries. Required courses cover the material for the beginning examinations and VEE credits leading to an associateship in the major national actuarial societies.
Critical Tracking records each student’s progress in courses that are required for progress toward each major. Please note the critical-tracking requirements below on a per-semester basis.
For degree requirements outside of the major, refer to CLAS Degree Requirements: Structure of a CLAS Degree.
Equivalent critical-tracking courses as determined by the State of Florida Common Course Prerequisites may be used for transfer students.
Semester 1
Semester 2
Semester 3
Semester 4
Semester 5
Semester 6
Semesters 7-8
Students are expected to complete the writing requirement while in the process of taking the courses below. Students are also expected to complete the general education international (GE-N) and diversity (GE-D) requirements concurrently with another general education requirement (typically, GE-C, H, or S).
The Subject Area electives and Data Ethics course count towards 3000 level or above electives outside of this multidisciplinary major.
To remain on track, students must complete the appropriate critical-tracking courses, which appear in bold. These courses must be completed by the terms as listed above in the Critical Tracking criteria.
This semester plan represents an example progression through the major. Actual courses and course order may be different depending on the student's academic record and scheduling availability of courses. Prerequisites still apply.
Semester One | Credits | |
---|---|---|
COP 3502 | Programming Fundamentals 1 (Critical Tracking) | 3 |
MAC 2311 | Analytic Geometry and Calculus 1 (Critical Tracking; State Core Gen Ed Mathematics) | 4 |
STA 2023 | Introduction to Statistics 1 (Gen Ed Mathematics; Critical Tracking) | 3 |
Quest 1 (Gen Ed Humanities) | 3 | |
State Core Gen Ed Biological or Physical Sciences | 3 | |
Credits | 16 | |
Semester Two | ||
COP 3503 | Programming Fundamentals 2 (Critical Tracking) | 3 |
MAC 2312 | Analytic Geometry and Calculus 2 (Critical Tracking; Gen Ed Mathematics) | 4 |
State Core Gen Ed Composition | 3 | |
State Core Gen Ed Social and Behavioral Sciences | 3 | |
Gen Ed Biological or Physical Sciences (area not taken in semester one) | 3 | |
Credits | 16 | |
Semester Three | ||
MAC 2313 | Analytic Geometry and Calculus 3 (Critical Tracking; Gen Ed Mathematics) | 4 |
MAD 2502 | Intro to Computational Math (Critical Tracking) | 3 |
Gen Ed Composition | 3 | |
Gen Ed Physical Science | 3 | |
Gen Ed Social Science | 3 | |
Credits | 16 | |
Semester Four | ||
MAD 3107 or COT 3100 |
Discrete Mathematics (Critical Tracking) or Applications of Discrete Structures |
3 |
MAS 3114 | Computational Linear Algebra (Critical Tracking) | 3 |
STA 3100 | Programming With Data in R (Critical Tracking) | 3 |
Gen Ed Social Science | 3 | |
Elective (3000-level or above, not in major) | 3 | |
Credits | 15 | |
Semester Five | ||
COP 3530 | Data Structures and Algorithm (Critical Tracking) | 4 |
PHI 3681 | Ethics, Data, and Technology (Critical Tracking) | 3 |
STA 4210 | Regression Analysis (Critical Tracking; Gen Ed Mathematics) | 3 |
STA 4321 | Introduction to Probability (Critical Tracking; Gen Ed Mathematics) | 3 |
Foreign language | 5 | |
Credits | 18 | |
Semester Six | ||
CIS 4301 | Information and Database Systems 1 (Critical Tracking) | 3 |
MAS 4115 | Linear Alg Data Science (Critical Tracking) | 3 |
STA 4322 | Introduction to Statistics Theory (Critical Tracking; Gen Ed Mathematics) | 3 |
Foreign language | 5 | |
Credits | 14 | |
Semester Seven | ||
STA 4273 | Computational Stats (Critical Tracking) | 3 |
Subject Area Elective (Critical Tracking; 3000-level or higher) | 3 | |
State Core Gen Ed Humanities | 3 | |
Gen Ed Biological Sciences | 3 | |
Science Laboratory (Gen Ed Biological or Physical Sciences) | 1 | |
Credits | 13 | |
Semester Eight | ||
STA 4241 | Statistical Learning in R | 3 |
Subject Area Electives (Critical Tracking; 3000-level or higher) | 6 | |
Elective (3000-level or above, not in major) | 3 | |
Credits | 12 | |
Total Credits | 120 |
The Data Science major enables students to achieve proficiency in the fundamentals of programming, databases, and statistical reasoning. Through coursework and projects, students will gain knowledge in problem solving, data science applications and ethics, and statistical inference. Emphasis is on developing the ability to approach real world problems and through the use of computing and statistical methods to draw valid scientific inferences.
Before Graduating Students Must
- Complete an exam on the fundamentals of data science, which will be 5% of their grade in STA 4241.
- Complete a data analysis project, which will be 10% of their grade in STA 4241.
-
Complete requirements for the baccalaureate degree, as determined by faculty.
Students in the Major Will Learn to
Student Learning Outcomes (SLOs)
Content
-
Identify, define, and describe concepts and issues in data science, including those involved in computing and programming, databases, ethics, mathematical foundations, and statistical methods.
Critical Thinking
-
Identify sources of variability and bias in a given set of data and formulate and carefully program an appropriate statistical analysis.
Communication
-
Clearly and effectively present ideas in speech and in writing concerning issues in the proper analysis of data.
Curriculum Map
I = Introduced; R = Reinforced; A = Assessed
Courses | SLO 1 | SLO 2 | SLO 3 |
---|---|---|---|
MAS 3114 | I | ||
MAS 4115 | R | ||
STA 3100 | I | I | I |
STA 4321 | I | ||
STA 4322 | I | ||
STA 4210 | R | R | R |
STA 4241 | A | A | A |
STA 4273 | R | R | R |
COP 3502 | I | ||
COP 3503 | R | ||
COP 3530 | I | ||
CIS 4301 | R | ||
PHI 3681 | I | R | R |
Assessment Types
- Exams
- Projects
- Written and oral presentations