Department of Statistics and Data Science

Mission Statement

The mission of the Department of Statistics and Data Science is to offer both undergraduate and graduate educational programs that are of high quality and meet the changing needs of the global community; to provide a supportive learning environment for students; to foster the success of our students in their professional careers; and to create an academic environment that stresses excellence in teaching, intellectual contributions, and service. The Department contributes to the missions of the College and the University through research and education in the quantitative sciences. Theory and analysis are applied to a variety of interdisciplinary problems to discover new approaches for meeting the challenges of decision-making in a global arena of expanding technology and information.

Department Information

The disciplines of Statistics and Data Science are integral to modern decision-making processes. These interdisciplinary fields emphasize the use of quantitative methods and computers for analyzing, understanding, visualizing, and interpreting data. Statistical methods provide analytical tools for research in high-technology and biomedical industries, insurance, and government agencies. The Department of Statistics and Data Science offers a Bachelor of Science (B.S.) degree in Statistics and Data Science. The department also offers a minor in Statistics, which is open to all majors in the University.

Degree-Specific Requirements

All program requirements should be unchanged from previous versions of the 2024-2026 Undergraduate Catalog. To confirm your degree requirements, you can visit DegreeWorks or consult your Advisor.
 
All degree programs in the Department of Statistics and Data Science must complete all graduation requirements and adhere to department and college policies for the Carlos Alvarez College of Business within the 2024-2026 undergraduate catalog.

Bachelor of Science Degree in Statistics and Data Science

Statistics is a science that deals with principles and procedures for obtaining and processing information in order to make decisions in the face of uncertainty. In particular, it deals with collection, organization, analysis, and interpretation of numerical information to answer questions in almost every aspect of modern-day life. Statistical methods are used to address complex questions common in business, government, and science. Employers such as research divisions in pharmaceutical companies, clinical research units at medical centers, quality control or reliability departments in manufacturing companies, corporate planning and financial analysis units, and government agencies require persons with advanced quantitative skills.

The Bachelor of Science (B.S.) degree in Statistics and Data Science provides students with access to such skills preparing them for careers as statistical analysts or for further graduate academic training. The minimum number of semester credit hours required for the Bachelor of Science degree in Statistics and Data Science is 120, at least 39 of which must be at the upper-division level.

Core Curriculum Requirements (42 semester credit hours)

Students seeking the B.S. degree in Statistics and Data Science must fulfill University Core Curriculum requirements. The courses listed below satisfy both degree requirements and Core Curriculum requirements.

MAT 1213 Calculus I should be used to satisfy the core requirement in Mathematics (020). ECO 2023 Introductory Microeconomics should be used to satisfy the core requirement in Social and Behavioral Sciences (080).

This degree requires 120 hours. If students elect to take a course that satisfies both a Core and degree requirement, students may need to take an additional course to meet the 120 hours.

For a complete listing of courses that satisfy the Core Curriculum requirements, see Core Curriculum Component Area Requirements.

For a complete listing of courses that satisfy the Core Curriculum requirements, see Core Curriculum Component Area Requirements.

Core Curriculum Component Area Requirements

First Year Experience Requirement (3 semester credit hours)

All students must complete one of the following courses, for a total of 3 semester credit hours:

AIS 1203Academic Introduction and Strategies (core component area 090)3
AIS 1213AIS: Architecture, Construction, and Planning (core component area 090)3
AIS 1223AIS: Arts and Humanities (core component area 090)3
AIS 1233AIS: Business (core component area 090)3
AIS 1243AIS: Engineering, Mathematics, and Sciences (core component area 090)3
AIS 1253AIS: Interdisciplinary Education (core component area 090)3
AIS 1263AIS: Life and Health Sciences (core component area 090)3
AIS 1273AIS: Social Sciences and Public Policy (core component area 090)3

Communication (6 semester credit hours)

Students must complete the following courses, for a total of 6 semester credit hours:

WRC 1013Freshman Composition I (TCCN: ENGL 1301)3
WRC 1023Freshman Composition II (TCCN: ENGL 1302)3

Mathematics (3 semester credit hours)

Students must complete one of the following courses, for a total of 3 semester credit hours:

CS 1173Data Analysis and Visualization3
MAT 1023College Algebra with Applications (TCCN: MATH 1314)3
MAT 1043Quantitative Reasoning (TCCN: MATH 1332)3
MAT 1053Mathematics for Business (TCCN: MATH 1324)3
MAT 1073Algebra for Scientists and Engineers (TCCN: MATH 1314)3
MAT 1093Precalculus (TCCN: MATH 2312)3
MAT 1133Calculus for Business (TCCN: MATH 1325)3
MAT 1193Calculus for the Biosciences (TCCN: MATH 2313)3
MAT 1213Calculus I (TCCN: MATH 2313)3
STA 1053Basic Statistics (TCCN: MATH 1342)3

Life and Physical Sciences (6 semester credit hours)

Students must complete two of the following courses for a total of 6 semester credit hours:

ANT 2033Introduction to Biological Anthropology (TCCN: ANTH 2301)3
AST 1013Introduction to Astronomy (TCCN: ASTR 1303)3
AST 1033Exploration of the Solar System (TCCN: ASTR 1304)3
BIO 1203Biosciences I for Science Majors (TCCN: BIOL 1306)3
BIO 1223Biosciences II for Science Majors (TCCN: BIOL 1307)3
BIO 1233Contemporary Biology I (TCCN: BIOL 1308)3
BIO 1243Contemporary Biology II (TCCN: BIOL 1309)3
CHE 1083Introduction to the Molecular Structure of Matter3
CHE 1093Introduction to Molecular Transformations3
ES 1113Environmental Botany (TCCN: BIOL 1311)3
ES 1123Environmental Zoology (TCCN: BIOL 1313)3
ES 1213Environmental Geology (TCCN: GEOL 1305)3
ES 2013Introduction to Environmental Science I (TCCN: ENVR 1301)3
ES 2023Introduction to Environmental Science II (TCCN: ENVR 1302)3
GEO 1013The Third Planet (TCCN: GEOL 1301)3
GEO 1033Geology of North American National Parks (TCCN: GEOL 1302)3
GEO 1123Life Through Time (TCCN: GEOL 1304)3
GES 2613Intro to Physical Geography (TCCN: GEOG 1301)3
NDT 2043Introduction to Nutritional Sciences3
PHY 1943Physics for Scientists and Engineers I (TCCN: PHYS 2325)3
PHY 1963Physics for Scientists and Engineers II (TCCN: PHYS 2326)3

Language, Philosophy and Culture (3 semester credit hours)

Students must complete one of the following courses, for a total of 3 semester credit hours:

AAS 2013Introduction to African American Studies3
AAS 2113African American Culture, Leadership and Social Issues3
ANT 2063Language, Thought, and Culture3
ARC 1113Introduction to the Built Environment (TCCN: ARCH 1311)3
ARC 2423Global History of Architecture and Urbanism: Renaissance to 19th Century (TCCN: ARCH 1302)3
CHN 1014Elementary Chinese I (TCCN: CHIN 1411)4
CLA 2013Introduction to Ancient Greece3
CLA 2023Introduction to Ancient Rome3
CLA 2323Classical Mythology3
COM 2313Introduction to Media Studies3
CSH 1103Literary Masterpieces of Western Culture I (TCCN: ENGL 2332)3
CSH 1113Literary Masterpieces of Western Culture II (TCCN: ENGL 2333)3
CSH 1213Topics in World Cultures (TCCN: HUMA 2323)3
CSH 2113The Foreign Film3
ENG 2013Introduction to Literature (TCCN: ENGL 2341)3
ENG 2023Literature and Film3
ENG 2213Literary Criticism and Analysis3
ENG 2383Multiethnic Literatures of the United States3
ENG 2423Literature of Texas and the Southwest3
ENG 2443Persuasion and Rhetoric3
FRN 1014Elementary French I (TCCN: FREN 1411)4
FRN 2333French Literature in English Translation3
GER 1014Elementary German I (TCCN: GERM 1411)4
GER 2333German Literature in English Translation3
GES 1023World Regions and Global Change (TCCN: GEOG 1303)3
GLA 1013US in Global Context3
GRK 1114Introductory Classical Greek I4
HIS 2123Introduction to World Civilization to the Fifteenth Century (TCCN: HIST 2321)3
HIS 2133Introduction to World Civilization since the Fifteenth Century (TCCN: HIST 2322)3
HIS 2533Introduction to Latin American Civilization3
HIS 2543Introduction to Islamic Civilization3
HIS 2553Introduction to East Asian Civilization3
HIS 2573Introduction to African Civilization3
HIS 2583Introduction to South Asian Civilization3
HUM 2093World Religions (TCCN: PHIL 1304)3
ITL 1014Elementary Italian I (TCCN: ITAL 1411)4
ITL 2333Italian Literature in English Translation3
JPN 1014Elementary Japanese I (TCCN: JAPN 1411)4
LAT 1114Introductory Latin I (TCCN: LATI 1411)4
MAS 2013Introduction to Chicana/x/o Studies (TCCN: HUMA 1305)3
PHI 1043Critical Thinking (TCCN: PHIL 2303)3
PHI 2013Basic Philosophical Problems (TCCN: PHIL 1301)3
PHI 2023Introduction to Ancient Philosophy (TCCN: PHIL 2316)3
PHI 2033Introduction to Early Modern Philosophy3
PHI 2093Philosophy of The Americas3
PHI 2123Contemporary Moral Issues3
RUS 1014Elementary Russian I (TCCN: RUSS 1411)4
RUS 2333Russian Literature in English Translation3
SPN 1014Elementary Spanish I (TCCN: SPAN 1411)4
SPN 2333Hispanic Literature in English Translation3
WGSS 2013Introduction to Women's Studies3
WGSS 2023Introduction to LGBTQ Studies3

Creative Arts (3 semester credit hours)

Students must complete one of the following courses, for a total of 3 semester credit hours:

AHC 1113Art History: Prehistory-1350 (TCCN: ARTS 1303)3
AHC 1123Art History: 1350-Present (TCCN: ARTS 1304)3
ARC 1513Great Buildings and Cities of the World3
ARC 2413Global History of Architecture and Urbanism: Prehistory to Medieval (TCCN: ARCH 1301)3
ART 1103Introduction to Visual Arts (TCCN: ARTS 1301)3
ART 1113Image Culture3
BBL 2023Latino Cultural Expressions (TCCN: HUMA 1311)3
CLA 2033Introduction to Classical Literature3
DAN 2003Introduction to Dance (TCCN: DANC 2303)3
HUM 2023Introduction to the Humanities I (TCCN: HUMA 1301)3
HUM 2033Introduction to the Humanities II (TCCN: HUMA 1302)3
HUM 2053History of Film (TCCN: HUMA 1315)3
MAS 2023Latina/x/o Cultural Expressions (TCCN: HUMA 1311)3
MUS 2243World Music in Society3
MUS 2633American Roots Music (TCCN: MUSI 1310)3
MUS 2653Music in Culture3
MUS 2663History and Styles of Jazz (TCCN: MUSI 1310)3
MUS 2673History and Styles of Popular Music (TCCN: MUSI 1310)3
MUS 2683History and Styles of Western Art Music (TCCN: MUSI 1306)3
MUS 2713History of Recorded Music3
MUS 2733History of the American Musical Theater3
MUS 2743Music and Film3
PHI 2073Philosophy of Art3

American History (6 semester credit hours)

Students must complete two of the following courses, for a total of 6 semester credit hours:

HIS 1043United States History: Pre-Columbus to Civil War Era (TCCN: HIST 1301)3
HIS 1053United States History: Civil War Era to Present (TCCN: HIST 1302)3
HIS 2053Texas History (TCCN: HIST 2301)3

Government-Political Science (6 semester credit hours)

Students must complete two of the following courses, for a total of 6 semester credit hours:

POL 1013Introduction to American Politics (TCCN: GOVT 2305)3
and one of the following two courses:
POL 1133Texas Politics and Society (TCCN: GOVT 2306)3
POL 1213Civil Rights in Texas and America (TCCN: GOVT 2306)3

Social and Behavioral Sciences (3 semester credit hours)

Students must complete one of the following courses, for a total of 3 semester credit hours:

AMS 2043Approaches to American Culture3
ANT 1013Introduction to Anthropology (TCCN: ANTH 2346)3
ANT 2043Introduction to Archaeology (TCCN: ANTH 2302)3
ANT 2053Introduction to Cultural Anthropology (TCCN: ANTH 2351)3
BBL 2003Language, Culture, and Society (TCCN: ANTH 2351)3
BBL 2243Bilingual Families, Communities, and Schools: National and Transnational Experiences (TCCN: ANTH 2351)3
CRJ 1113The American Criminal Justice System (TCCN: CRIJ 1301)3
ECO 2003Economic Principles and Issues (TCCN: ECON 1301)3
ECO 2023Introductory Microeconomics (TCCN: ECON 2302)3
EGR 1343The Impact of Modern Technologies on Society3
ES 1003Survey Topics in Environmental Studies3
GES 1013Fundamentals of Geography3
GES 2623Human Geography: People, Place, Culture (TCCN: GEOG 1302)3
HTH 2413Introduction to Community and Public Health3
HTH 2513Personal Health (TCCN: PHED 1304)3
IDS 2113Society and Social Issues3
KIN 2123Exercise as Medicine (TCCN: KINE 1338)3
NDRB 1033Drugs and Society (TCCN: PHED 1346)3
PSY 1013Introduction to Psychology (TCCN: PSYC 2301)3
REGS 2003Intersectional Approaches to Social Justice3
SOC 1013Introduction to Sociology (TCCN: SOCI 1301)3
SOC 2013Social Problems (TCCN: SOCI 1306)3
SOC 2023Social Context of Drug Use (TCCN: SOCI 2340)3
SWK 1013Introduction to Social Work3

Component Area Option (CAO) (3 semester credit hours)

Students must complete either one of the following courses or any additional Core Curriculum course not previously used to satisfy a core component area requirement, for a total of 3 semester credit hours:

COM 2113Public Speaking (core component area 091, TCCN: SPCH 1315)3
EGR 1403Technical Communication (core component area 091)3
ENG 2413Technical Writing (core component area 091, TCCN: ENGL 2311)3
PAD 1113Public Administration and Policy in American Society (core component area 097)3
PHI 2043Introductory Logic (core component area 092, TCCN: PHIL 2303)3
Core Curriculum Component Area Requirements
First Year Experience Requirement 3
Communication 6
Mathematics 3
Life and Physical Sciences 6
Language, Philosophy and Culture 3
Creative Arts 3
American History 6
Government-Political Science 6
Social and Behavioral Sciences 3
Component Area Option 3
Total Credit Hours 42

Degree Requirements

A. Major Requirements63
1. Required courses in the computational and mathematical sciences
Calculus I 1
Calculus II
Calculus III
Linear Algebra
2. Required statistics courses
Statistical Methods and Applications
Applied Multivariate Analysis
Probability and Statistics
Mathematical Statistics for Inference
Applied Regression Analysis
3. Computational and Statistical Software Courses: (Choose 2 out of 3)
Introduction to Programming and Data Management in SAS
Introduction to Programming and Data Management in R
Data Exploratory Methods with Python
4. Select ten of the following
Fundamentals of Software
Fundamentals of Systems
Statistical Sampling
Introduction to Programming and Data Management in SAS
Data Mining and Predictive Modeling
Introduction to Programming and Data Management in R
Data Exploratory Methods with Python
Introduction to Stochastic Processes
Introduction to the Design of Experiments
Time-Series Analysis
Statistical Quality Control
Applied Survival Analysis
Independent Study in Statistics and Data Science
Internship in Statistics and Data Science
Special Topics in Statistics and Data Science
Actuarial Science Examination Preparation
B. Support Work18
18 semester credit hours of electives in disciplines where statistics is actively applied and practiced, of which at least nine (9) semester credit hours must be upper division. Students can use these credit hours to complete a minor or finish a specialization. Students are encouraged to discuss their interests in specializations with the academic advisor. Some examples (but not limited to these) of such specializations are shown below.
1. Specialization in Actuarial Science:
Principles of Accounting I
Introductory Macroeconomics
Introductory Microeconomics
Principles of Business Finance
Computer Modeling of Financial Applications
Actuarial Science Examination Preparation
2. Specialization in Biology:
Genetics
Ecology
Evolution
Plants and Society
Conservation Biology
Neurobiology
Total Credit Hours81
1

This course also fulfills the university's core course requirement.

Course Sequence Guide for B.S. Degree in Statistics and Data Science

This course sequence guide is designed to assist students in completing their UTSA undergraduate business degree requirements. This is a term-by-term sample course guide. Students must satisfy other requirements in their catalog and meet with their academic advisor for an individualized degree plan. Progress within this guide depends upon such factors as course availability, individual student academic preparation, student time management, work obligations, and individual financial considerations. Students may choose to take courses during Summer terms to reduce course loads during long semesters.

Recommended Four-Year Academic Plan

Plan of Study Grid
First Year
FallCredit Hours
MAT 1213 Calculus I (core and major) 3
AIS 1233 AIS: Business (core) 3
WRC 1013 Freshman Composition I (core) 3
American History (core) 3
Life & Physical Sciences (core) 3
 Credit Hours15
Spring
MAT 1223 Calculus II (major) 3
STA 3003 Statistical Methods and Applications (major) 3
WRC 1023 Freshman Composition II (core) 3
American History (core) 3
Life & Physical Sciences (core) 3
 Credit Hours15
Second Year
Fall
MAT 2213 Calculus III (major) 3
STA 3513 Probability and Statistics (major) 3
Language, Philosophy & Culture (core) 3
Creative Arts (core) 3
Course option in computational and statistical software (major) 3
 Credit Hours15
Spring
MAT 2233 Linear Algebra (major) 3
STA 3523 Mathematical Statistics for Inference (major) 3
ECO 2023 Introductory Microeconomics (suggested core) 3
Government-Political Science (core) 3
Course option in computational and statistical software (major) 3
 Credit Hours15
Third Year
Fall
STA 3013 Applied Multivariate Analysis (major) 3
Upper-division Statistics elective (major) 3
Upper-division Statistics elective (major) 3
Course option in specialization track (elective or support work) 3
Government-Political Science (core) 3
 Credit Hours15
Spring
Upper-division Statistics elective (major) 3
Upper-division Statistics elective (major) 3
Upper-division Statistics elective (major) 3
Course option in specialization track (elective or support work) 3
Component Area Option (core) 3
 Credit Hours15
Fourth Year
Fall
STA 4713 Applied Regression Analysis (major) 3
Upper-division Statistics elective (major) 3
Upper-division Statistics elective (major) 3
Course option in specialization track (elective or support work) 3
Course option in specialization track (elective or support work) 3
 Credit Hours15
Spring
Upper-division Statistics elective (major) 3
Upper-division Statistics elective (major) 3
Upper-division Statistics elective (major) 3
Course option in specialization track (elective or support work) 3
Course option in specialization track (elective or support work) 3
 Credit Hours15
 Total Credit Hours120

Accelerated Master of Science in Statistics and Data Science

The Department of Statistics and Data Science and the College of AI, Cyber and Computing (CAICC) offer an Accelerated Statistics and Data Science Program tailored to UTSA students with exceptional motivation and qualifications. Designed to facilitate a seamless transition into a master’s program and provide an expedited admission process, this program allows participants to initiate their graduate studies as early as the senior year of their undergraduate education.

The benefit of the accelerated program is it allows students to complete some graduate courses while still earning their undergraduate degree. In addition, students have the potential to reduce their time until graduation (e.g., students can start completing their graduate-level coursework during their senior year) and save money (e.g., students are not charged an application fee and potentially could double count one course), and creates an easier transition into graduate school (i.e., a known admission into graduate school while in their undergraduate education and a constant connection with the UTSA faculty and staff).

Program Admission Requirements

Applications to the Accelerated Program in Statistics and Data Science must meet the following criteria1: 1) a current UTSA student, 2) completion of 90 semester credit hours in the semester of application, 3) a minimum grade point average of 3.0, and 4) earn a bachelor’s degree in a relevant STEM or business domains. Applicants must apply online2 for the Accelerated Statistics and Data Science Program and will be provided additional information upon submission.

This program is tailored to cater to the following individuals:

  • UTSA students who aspire to pursue a bachelor's degree with a strong mathematical (e.g., complete Calculus III and Linear Algebra) background and a Master of Science (M.S.) in Statistics and Data Science. After appropriate consultation and approval from the program advisor, these students could replace some of the required M.S. courses with graduate electives. This would remove unnecessary course repetition and allow students to customize the program to serve their professional needs better.

Degree Requirements

Bachelor's Degree Requirement

Students accepted into the Accelerated Statistics and Data Science Program must complete all the degree requirements associated with their bachelor's degree.

M.S. Degree Requirement

Students accepted into the Accelerated Program in Statistics and Data Science are required to complete the standard degree requirement of the M.S. in Statistics and Data Science as listed in the Graduate Catalog.

Bachelor's/M.S. Classification

Upon acceptance into the Accelerated Statistics and Data Science Program, students are granted permission to enroll in graduate-level courses while still classified as undergraduates. Upon completing their bachelor's degree, students will receive a Keep Running with Us (KRWU) application to transition from undergraduate to graduate student status.

1

These are the minimum criteria to be accepted into the Accelerated Program in Statistics and Data Science. After completing the online survey, a Statistics and Data Science faculty member will meet with each student to discuss their degree plan and the required expectations to be accepted into the program.

2

Completing the survey is the first of two steps of the application process for the Accelerated Program in Statistics and Data Science. It connects students who are interested in the program with Statistics and Data Science faculty members, offers details about the program and the second step of the application process, fosters mentoring connections with Statistics and Data Science faculty members, and ultimately compiles a roster of students eligible for automatic admission into the M.S. in Statistics and Data Science program through KRWU.

Accelerated Masters of Science in Data Analytics

The Accelerated Data Analytics Program is tailored to UTSA students with exceptional motivation and qualifications. Designed to facilitate a seamless transition into a master’s program and provide an expedited admission process, this program allows participants to initiate their graduate studies as early as the senior year of their undergraduate education.

The benefit of the accelerated program is it allows students to complete some graduate courses while still earning their undergraduate degree. In addition, students have the potential to reduce their time until graduation (e.g., students can start completing their graduate-level coursework during their senior year) and save money (e.g., students are not charged an application fee and potentially could double count one course), and creates an easier transition into graduate school (i.e., a known admission into graduate school while in their undergraduate education and a constant connection with the UTSA faculty and staff).

Program Admission Requirements

Applications to the Accelerated Program in Data Analytics must meet the following criteria1: 1) a current UTSA student, 2) completion of 90 semester credit hours in the semester of application, 3) a minimum grade point average of 3.0, and 4) earn a bachelor’s degree in a relevant STEM or business domains. Applicants must apply online2 for the Accelerated Program in Data Analytics and will be provided additional information upon receipt of their submission.

This program is tailored to cater to the following individuals:

  • UTSA students interested in enhancing their undergraduate education in business or STEM fields and gaining expertise in Data Analytics via a Master's degree. After appropriate consultation and approval from the program advisor, these students could replace some of the required Master of Science (M.S.) in Data Analytics courses with graduate electives. This would remove unnecessary course repetition and allow students to customize the program to better serve their professional needs

Degree Requirements

Bachelor's Degree Requirement

Students accepted into the Accelerated Program in Data Analytics are required to complete all the degree requirements associated with their bachelor's degree.

M.S. Degree Requirement

Students accepted into the Accelerated Program in Data Analytics are required to complete the standard degree requirement of the M.S. in Data Analytics as outlined in the Graduate Catalog.

Bachelor's/M.S. Classification

Upon acceptance into the Accelerated Program in Data Analytics, students are granted permission to enroll in graduate-level courses while still classified as undergraduates. Upon completing their bachelor's degree, students will receive a Keep Running with Us (KRWU) application to transition from undergraduate to graduate student status.

1

These are the minimum criteria to be accepted into the Accelerated Program in Data Analytics. After completing the online survey, a Data Analytics faculty member will meet with each student to discuss their degree plan and the required expectations to be accepted into the Accelerated Program in Data Analytics.

2

Completing the survey is the first of two steps of the application process for the Accelerated Program in Data Analytics. It connects students who are interested in the program with Data Analytics faculty members, offers details about it and the second step of the application process, fosters mentoring connections with Data Analytics faculty members, and ultimately compiles a roster of students eligible for automatic admission into the M.S. in Data Analytics program through KRWU.

Minor in Statistics

The Minor in Statistics is open to all majors in the University. All students pursuing the minor must complete 18 semester credit hours.

A. Sequence options6
Select two courses from the following:
1. Option 1
Probability and Statistics for the Biosciences
Statistical Methods and Applications
2. Option 2
Scope and Methods
Statistics for Psychology
3. Option 3
Business Statistics with Computer Applications I
Business Statistics with Computer Applications II
4. Option 4
Statistical Methods and Applications
and one of the following:
Applied Probability and Statistics for Engineers
Probability and Statistics
B. Select four of the following courses12
Business Intelligence and Analytics
Applied Multivariate Analysis
Statistical Sampling
Mathematical Statistics for Inference
Introduction to Programming and Data Management in SAS
Data Mining and Predictive Modeling
Introduction to Programming and Data Management in R
Applied Regression Analysis
Introduction to the Design of Experiments
Time-Series Analysis
Statistical Quality Control
Quality Management and Control
Applied Survival Analysis
Internship in Statistics and Data Science
Special Topics in Statistics and Data Science
Total Credit Hours18

To declare a Minor in Statistics, obtain advice, and seek approval of substitutions for course requirements, students must consult with their academic advisor or the designated statistics faculty member.

Statistics (STA) Courses

STA 1053. Basic Statistics. (3-0) 3 Credit Hours. (TCCN = MATH 1342)

Prerequisite: Satisfactory performance on placement examination. Descriptive statistics; histograms; measures of location and dispersion; elementary probability theory; random variables; discrete and continuous distributions; interval estimation and hypothesis testing; simple linear regression and correlation; one-way analysis of variance, and applications of the chi-square distribution. May be applied toward the core curriculum requirement in Mathematics. Generally offered: Fall, Spring, Summer. Course Fees: BISP $10; BTSI $15.41; DL01 $75; LRB1 $15.41; LRC1 $12.

STA 1403. Probability and Statistics for the Biosciences. (3-0) 3 Credit Hours.

Prerequisite: A grade of "C-" or better in MAT 1193 or an equivalent. Probability and statistics from a dynamical perspective, using discrete-time dynamical systems and differential equations to model fundamental stochastic processes such as Markov chains and the Poisson processes important in biomedical applications. Specific topics to be covered include probability theory, conditional probability, Markov chains, Poisson processes, random variables, descriptive statistics, covariance and correlations, the binomial distribution, parameter estimation, hypothesis testing and regression. (Formerly STA 1404. Credit cannot be earned for both STA 1403 and STA 1404.) Generally offered: Fall, Spring, Summer. Course Fees: BISP $10; BTSI $15.41; LRB1 $15.41; DL01 $75.

STA 2303. Applied Probability and Statistics for Engineers. (3-0) 3 Credit Hours.

Prerequisite: MAT 1223. Fundamental concepts of probability and statistics with practical applications to engineering problems. Emphasis on statistical distribution models used in reliability and risk analysis of engineering design; probabilistic reasoning; Bayes’ theorem; bivariate and multivariate distributions and their applications. Generally offered: Fall, Spring. Course Fee: BISP $10; BTSI $15.41; LRB1 $15.41; DL01 $75.

STA 3003. Statistical Methods and Applications. (3-0) 3 Credit Hours.

Prerequisite: Completion of MAT 1093 (or equivalent). Introduction to the Scientific Method, principles of sampling and experimentation, scales of measurement, summary statistics, introduction to basic probability, models for discrete and continuous data, simple simulations, fundamentals of hypothesis testing and confidence intervals, and introduction to analysis of variance and linear regression model. The course will emphasize data analysis and interpretation, and effective communication of results through reports or presentations. Generally offered: Fall, Spring, Summer. This course has Differential Tuition. Course Fee: DL01 $75.

STA 3013. Applied Multivariate Analysis. (3-0) 3 Credit Hours.

Prerequisite: MAT 2233, STA 3003, or equivalents. This course emphasizes application of statistics in organizations. Topics include but are not limited to multivariate normal distribution, tests on means, discriminant analysis, cluster analysis, principal components, and factor analysis. Use of software packages will be emphasized. Open to students of all disciplines. Generally offered: Spring. This course has Differential Tuition.

STA 3023. Mathematics for Statistics. (3-0) 3 Credit Hours.

Prerequisite: MAT 1223 or an equivalent. This course discusses and reviews the classic mathematical methods and techniques to comprehend the advanced statistical concepts. Concepts include sequences, series, convergence, limit, continuity, derivative, optimization, the fundamental theorem of calculus, methods of integration, Taylor expansions, function of several variables, partial derivatives, and multivariate transformations. Other topics include vector and matrix algebra, determinants, inverse matrix, solving linear equations, orthogonality (projections, least-squares, Gram-Schmidt), eigenvalues and eigenvectors (diagonalization, symmetric/positive definite matrices), and singular value decomposition. (Formerly titled Statistical Mathematics.) This course has Differential Tuition.

STA 3313. Statistical Sampling. (3-0) 3 Credit Hours.

Prerequisite: One of the following: MS 1023, STA 1053, STA 2303, STA 3003, or an equivalent. Research techniques for collecting quantitative data: sample surveys, designed experiments, simulations, and observational studies; development of survey and experimental protocols; measuring and controlling sources of measurement error. Generally offered: Fall. This course has Differential Tuition. Course Fee: DL01 $75.

STA 3333. Introduction to Data Science and Analytics. (3-0) 3 Credit Hours.

Prerequisite: One of the following: MS 1023, STA 1053, STA 1403, STA 2303, or an equivalent. Data science and analytics aim to harness the power of data and statistics for new insights. This course introduces the concepts and principles of data science and analytics through software-aided applications of common statistics-based methods, tools and techniques in various practical case studies. This course also provides students an opportunity to understand the data-driven decision making process, an overview of the data science lifecycle, and the Big Data ecosystem. Topics include popular statistical techniques and algorithms under the current paradigm of analytics (descriptive/diagnostic, predictive/prognostic, and prescriptive/optimization) and machine learning (supervised and unsupervised), applied in a wide variety of fields as demonstrated through case studies. With the application-oriented focus, students will gain hands-on experiences and develop essential skills in discovering, analyzing, visualizing, interpreting data, presenting and communicating results. This course has Differential Tuition.

STA 3513. Probability and Statistics. (3-0) 3 Credit Hours.

Prerequisite: STA 3003, MAT 1223 or STA 3023, and completion of or concurrent enrollment in MAT 2213. Axiomatic probability, random variables, discrete and continuous distributions, bivariate and multivariate distributions and their applications, mixture distributions, moments and generating functions, and bivariate transformations. Generally offered: Fall, Spring, Summer. This course has Differential Tuition. Course Fee: DL01 $75.

STA 3523. Mathematical Statistics for Inference. (3-0) 3 Credit Hours.

Prerequisite: STA 3513 or an equivalent. Sampling distributions and the Central Limit Theorem; order statistics; estimation including method of moments and maximum likelihood; properties of estimators; hypothesis testing including likelihood ratio tests; introduction to ANOVA and regression. Generally offered: Fall, Spring. This course has Differential Tuition. Course fee: DL01 $75.

STA 4133. Introduction to Programming and Data Management in SAS. (3-0) 3 Credit Hours.

This course introduces essential programming concepts using the statistical software package SAS (Enterprise Guide and Base SAS) with a focus on data management and the preparation of data for statistical analyses. Topics include reading raw data, creating temporary and permanent datasets, manipulating datasets, data prompts, summarizing data, displaying data using tables, charts, and plots. Conducting basic statistical analyses using the SAS Enterprise Guide and the Base SAS procedures are also discussed with the examples selected from regression analysis, analysis of variance, and categorical analysis. This course also demonstrates how to write, generate, and modify SAS code and procedures within the SAS Enterprise Guide and the Base SAS environments. This course has Differential Tuition. Course fee: DL01 $75.

STA 4143. Data Mining and Predictive Modeling. (3-0) 3 Credit Hours.

Prerequisite: STA 4133 or equivalent. Acquisition, organization, exploration, and interpretation of large data collections. Data cleaning, representation and dimensionality, multivariate visualization, clustering, classification, and association rule development. A variety of commercial and research software packages will be used. This course has Differential Tuition. Course fee: DL01 $75.

STA 4233. Introduction to Programming and Data Management in R. (3-0) 3 Credit Hours.

This course introduces statistical computing and programming using the R language. Topics include preprocessing/manipulating datasets, summarizing/visualizing data, and conducting basic statistical analyses using R. Other topics include writing R functions, object oriented programming, statistical simulation and resampling, interfacing R with other programming language environments such as SQL, Python, C++, and Hadoop. Techniques for efficient programming will be stressed. The concept of high-performance computing (multi-core/parallel-processing) is also demonstrated. (Formerly titled Statistical Applications Using SAS Software.) Generally offered: Spring. This course has Differential Tuition. Course fee: DL01 $75.

STA 4243. Data Exploratory Methods with Python. (3-0) 3 Credit Hours.

This course provides an overview of Exploratory Data Analysis (EDA), including the cleaning, preparation, exploration, and visualization of data. Students will learn how to source, manage, transform, and explore a wide variety of data types. Students will also master the fundamental concepts for visualizing and communicating information contained in raw data. Python software is used for the course. Prior knowledge of a programming language and basic statistics is beneficial but is not required. This course has Differential Tuition.

STA 4643. Introduction to Stochastic Processes. (3-0) 3 Credit Hours.

Prerequisite: MAT 2233 and STA 3513 (or equivalents). Probability models, Poisson processes, finite Markov chains, including transition probabilities, classification of states, limit theorems, queuing theory, and birth and death processes. Generally offered: Summer. This course has Differential Tuition. Course Fees: BISP $10; BTSI $15.41; LRB1 $15.41.

STA 4713. Applied Regression Analysis. (3-0) 3 Credit Hours.

Prerequisite: Completion of or concurrent enrollment in STA 3523, or consent from instructor. An introduction to regression analysis, with emphasis on practical aspects, fitting a straight line, examination of residuals, matrix treatment of regression analysis, fitting and evaluation of general linear models, and nonlinear regression. Generally offered: Fall. This course has Differential Tuition.

STA 4723. Introduction to the Design of Experiments. (3-0) 3 Credit Hours.

Prerequisite: STA 3513, or equivalents. General concepts in the design and analysis of experiments. Emphasis will be placed on both the experimental designs and analysis, and tests of the validity of assumptions. Topics covered include completely randomized designs, randomized block designs, complete factorials, fractional factorials, and covariance analysis. The use of computer software packages will be stressed. This course has Differential Tuition. Course Fee: DL01 $75.

STA 4753. Time-Series Analysis. (3-0) 3 Credit Hours.

Prerequisite: STA 3003 and STA 3513, or equivalents. Development of descriptive and predictive models for time-series phenomena. A variety of modeling approaches will be discussed: decomposition, moving averages, time-series regression, ARIMA, and forecasting errors and confidence intervals. Generally offered: Spring. This course has Differential Tuition.

STA 4803. Statistical Quality Control. (3-0) 3 Credit Hours.

Prerequisite: STA 3003, STA 3513, (or equivalents). Statistical methods are introduced in terms of problems that arise in manufacturing and their applications to the control of manufacturing processes. Topics include control charts and acceptance sampling plans. (Same as MS 4363 and MAT 4803. Credit cannot be earned for more than one of the following: STA 4803, MS 4363, or MAT 4803.) This course has Differential Tuition.

STA 4903. Applied Survival Analysis. (3-0) 3 Credit Hours.

Prerequisite: STA 3513 or an equivalent. Measures of survival, hazard function, mean residual life function, common failure distributions, procedures for selecting an appropriate model, the proportional hazards model. Emphasis on application and data analysis using SAS. This course has Differential Tuition.

STA 4911. Independent Study. (0-0) 1 Credit Hour.

Prerequisite: A 3.0 Carlos Alvarez College of Business grade point average, permission in writing (form available) from the instructor, the student’s advisor, the Department Chair, and the Dean of the College in which the course is offered. Independent reading, research, discussion, and/or writing under the direction of a faculty member. May be repeated for credit, but not more than 6 semester credit hours, regardless of discipline, will apply to a bachelor’s degree. This course has Differential Tuition. Course Fee: BISP $10; BTSI $15.41.

STA 4913. Independent Study in Statistics and Data Science. (0-0) 3 Credit Hours.

Prerequisites: A 3.0 Carlos Alvarez College of Business grade point average, permission in writing (form available) from the instructor, the student’s advisor, the Department Chair, and the Dean of the College in which the course is offered. Independent reading, research, discussion, and/or writing under the direction of a faculty member. May be repeated for credit, but not more than 6 semester credit hours, regardless of discipline, will apply to a bachelor’s degree. This course has Differential Tuition.

STA 4933. Internship in Statistics and Data Science. (0-0) 3 Credit Hours.

Prerequisites: A 2.5 grade UTSA point average, and approval in writing from the instructor, the Department Chair, and the Associate/Assistant Dean of Undergraduate Studies in the Carlos Alvarez College of Business (see academic advisor for required forms and additional requirements). Supervised full- or part-time work experience in statistics. Offers opportunities for applying statistics in private businesses or public agencies. A written report is required. May be repeated for credit, but not more than 6 semester credit hours will apply to a bachelor's degree. This course has Differential Tuition.

STA 4953. Special Topics in Statistics and Data Science. (3-0) 3 Credit Hours.

Prerequisite: Consent from the instructor, Department Chair, and Dean of the College. An organized course offering the opportunity for specialized study not normally or not often available as part of the regular course offerings. Special Topics may be repeated for credit when the topics vary, but not more than 6 semester credit hours, regardless of discipline, will apply to a bachelor’s degree. This course has Differential Tuition.

STA 4961. Actuarial Science Examination Preparation. (1-0) 1 Credit Hour.

An organized course offering specialized study for Actuarial Science Examinations. Topics covered include General Probability, Random Variables and Probability Distributions, Multivariate Distributions, and Risk Management and Insurance. May be repeated twice for credit. Generally offered: Fall, Spring. This course has Differential Tuition. Course Fee: BISP $10; BTSI $15.41; LRB1 $15.41.

STA 4963. Actuarial Science Examination Preparation. (3-0) 3 Credit Hours.

Prerequisite: STA 3513. An organized course offering specialized study for Actuarial Science Examination. Topics covered include General Probability, Random Variables and Probability Distributions, Multivariate Distributions, and Stochastic Processes. This course has Differential Tuition. Course Fee: DL01 $75.

STA 4993. Honors Thesis. (0-0) 3 Credit Hours.

Prerequisites: STA 3523 and consent from instructor, Department Chair and Dean of the College; enrollment limited to students applying for Honors in Management Science and Statistics. Supervised research and preparation of an honors thesis. May be repeated once for credit with advisor’s approval. Generally offered: Spring. This course has Differential Tuition.