Summer 2025 - University of Houston
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Summer 2025

(Disclaimer: Be advised that some information on this page may not be current due to course scheduling changes.
Please view either the UH Class Schedule page or your Class schedule in myUH for the most current/updated information.)

 

 Session #Regular: ( ) , Session #2: (06/02—07/03) , Session #3: (06/02—07/24) , Session #4: (07/07—08/06)

 


 

Graduate Courses -  SUMMER 2025

(Updated 03/06/25)

SENIOR UNDERGRADUATE COURSES
This schedule is subject to changes. Please contact the Course Instructor for confirmation
Course/Section Class #  Course Title & Session      Course Day & Time      Rm # Instructor 
Math 4322  13568 Intro. to Data Science & Machine Learning
(Session #3)
 Online (Asynchronous/On Campus Exams)   N/A  C. Poliak
Math 4377 / Math 6308  10089 Advanced Linear Algebra I
(Session #2)
 MTWThF, 10AM—Noon   S 116   M. Perepelitsa 
Math 4378 / Math 6309  10464 Advanced Linear Algebra II
(Session #4)
 MTWThF, 2—4PM  SEC 205   M. Papadakis
Math 4389  14595

Survey of Undergraduate Math
(Session #4)

 MTWThF, Noon—2PM  AH 301  D. Blecher

 

GRADUATE ONLINE COURSES

Course/Section Class # Course Title Course Day & Time  Instructor 
Math 5341-01  11764 Mathematical Modeling
(Session #2)
(online) Asynchronous - On Campus Exams  J. He
Math 5383-02  14812 Number Theory
(Session #2)
(online) Asynchronous - On Campus Exams  M. Ru
Math 5389-01  10933 Survey of Mathematics
(Session #2)
(online) Asynchronous - On Campus Exams   G. Etgen

 

GRADUATE COURSES 

Course/Section  Class # Course Title Course Day & Time Rm # Instructor
Math 6308-01
12131 Advanced Linear Algebra I
(Session #2)
 MTWThF, 10AM—Noon  S 116   M. Perepelitsa
Math 6309-01
12132 Advanced Linear Algebra II
(Session #4)
 MTWThF, 2—4PM  SEC 205   M. Papadakis


MSDS GRADUATE COURSES 

(MSDS Students Only - Contact Ms. Tierra Kirts for specific class numbers) 

Course/Section  Class # Course Title Course Day & Time Rm # Instructor
Math 6386
 not shown to students  Big Data Analytics
(Session #3)
 F, 3—5PM TBA D. Shastri


- Course Details -

Senior Undergraduate Courses

 
Math 4322 - Introduction to Data Science and Machine Learning
Prerequisites: MATH 3339 or MATH 3349
Text(s):
While lecture notes will serve as the main source of material for the course, the following book constitutes a great reference:
  • ”An Introduction to Statistical Learning (with applications in R)” by James, Witten et al. ISBN: 978-1461471370
  • ”Neural Networks with R” by G. Ciaburro. ISBN: 978-1788397872
Description: Catalog Description:Theory and applications for such statistical learning techniques as linear and logistic regression, classification and regression trees, random forests, neutral networks. Other topics might include: fit quality assessment, model validation, resampling methods. R Statistical programming will be used throughout the course
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Math 4377 - Advanced Linear Algebra I
Prerequisites: MATH 2331 and MATH 3325, and three additional hours of 3000-4000 level Mathematics.
Text(s): Linear Algebra, 5th Edition by  Stephen H. Friedberg, Arnold J. Insel, Lawrence E. Spence. ISBN: 9780134860244
Description: Syllabus:  Chapter 1, Chapter 2, Chapter 3, Chapter 4 (4.1-4.4), Chapter 5 (5.1-5.2) (probably not covered)

Course Description: The general theory of Vector Spaces and Linear Transformations will be developed in an axiomatic fashion. Determinants will be covered  to study eigenvalues, eigenvectors and diagonalization.
Grading:  There will be  three  Tests and the Final. I will take the two highest test scores (60%) and the mandatory final (40%). Tests and the Final are based on homework problems and material covered in class.
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Math 4378 - Advanced Linear Algebra II
Prerequisites: Math 4377 or Math 6308
Text(s): Linear Algebra, 5th edition, by Friedberg, Insel, and Spence, ISBN: 9780134860244
Description: The instructor will cover Sections 5-7 of the textbook. Topics include: Eigenvalues/Eigenvectors, Cayley-Hamilton Theorem, Inner Products and Norms, Adjoints of Linear Operators, Normal and Self-Adjoint Operators, Orthogonal and Unitary Operators, Jordan Canonical Form, Minimal Polynomials.
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Math 4389 - Survey of Undergraduate Math
Prerequisites: MATH 3330MATH 3331MATH 3333, and three hours of 4000-level Mathematics.
Text(s): Instructors notes
Description: A review of some of the most important topics in the undergraduate mathematics curriculum.

 

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ONLINE GRADUATE COURSES

 
MATH 5341 - Mathematical Modeling  
Prerequisites: Graduate standing. Calculus III and Linear Algebra
Text(s):

Textbook (free download): Introduction to Applied Linear Algebra, Boyd and Vandenberghe, Cambridge University Press, 2018 

Description:

Course Platforms: MS Teams and Blackboard.

Course Technology Requirements: Computer, internet, microphone and webcam.

Course Overview:vThe course introduces vectors, matrices, and least squares methods, related topics on applied linear algebra that are behind modern data science and other applications, including document classification, prediction model from data, enhanced images, control, state estimation, and portfolio optimization. We will review vectors and matrices in the first two weeks, and then focus on least squares and more advanced examples and applications in the following two and half weeks. 

Detailed Syllabus (PDF)

 

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MATH 5383 - Number Theory
 Prerequisites:  Graduate standing.
 Text(s):  Instructor's notes
 Description (Catalog):  Divisibility and factorization, linear Diophantine equations, congruences and applications, solving linear congruences, primes of special forms, the Chinese remainder theorem, multiplicative orders, the Euler function, primitive roots, quadratic congruences, representation problems and continued fractions.
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MATH 5389 - Survey of Mathematics
Prerequisites: Graduate standing
Text(s): Instructor's notes
Description: A review and consolidation of undergraduate courses in linear algebra, differential equations, analysis, probability, and astract algebra. Students may not receive credit for both MATH 4389 and MATH 5389.
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MATH 5397 - Selected Topics in Mathematics
Prerequisites: Graduate standing
Text(s): Instructor's notes
Description: TBD

 

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GRADUATE COURSES

  

MATH 6308 - Advanced Linear Algebra I
Prerequisites: Graduate standing. MATH 2331 and MATH 3325, and three additional hours of 3000-4000 level Mathematics.
Text(s): Linear Algebra, 5th Edition by  Stephen H. Friedberg, Arnold J. Insel, Lawrence E. Spence. ISBN: 9780134860244
Description:

Syllabus:  Chapter 1, Chapter 2, Chapter 3, Chapter 4 (4.1-4.4), Chapter 5 (5.1-5.2) (probably not covered)

Course Description: The general theory of Vector Spaces and Linear Transformations will be developed in an axiomatic fashion. Determinants will be covered  to study eigenvalues, eigenvectors and diagonalization.
Grading:  There will be  three  Tests and the Final. I will take the two highest test scores (60%) and the mandatory final (40%). Tests and the Final are based on homework problems and material covered in class.

{back to Graduate Courses}
MATH 6309 - Advanced Linear Algebra II
Prerequisites: Graduate standing. Math 4377 or Math 6308
Text(s): Linear Algebra, 5th edition, by Friedberg, Insel, and Spence, ISBN: 9780134860244
Description:

The instructor will cover Sections 5-7 of the textbook. Topics include: Eigenvalues/Eigenvectors, Cayley-Hamilton Theorem, Inner Products and Norms, Adjoints of Linear Operators, Normal and Self-Adjoint Operators, Orthogonal and Unitary Operators, Jordan Canonical Form, Minimal Polynomials.

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MATH 6386 - Big Data Analytics
Prerequisites: Graduate standing. Students must be in the Statistics and Data Science, MS program. Linear algebra, probability, statistics, or consent of instructor. 
Text(s):
  • "Learning Spark: Lightning-Fast Data Analytics", by Jules S. Damji, Brooke Wenig, Tathagata Das, and Denny Lee, 2020, 2nd Edition, O'Reilly Media. (LS) ISBN 13: 978149205004 [Available for free on UH Library à Safari Books Online]
  • "Big Data Analytics with R: Leverage R Programming to uncover hidden patterns in your Big Data", by Simon Walkowiak, 2016, 1st Edition, Packt Publishing. ISBN 13: 9781786466457 [Available for free on UH Library à Safari Books Online]
  • Mining of Massive Datasets 3rd Edition by Jure Leskovec, Anand Rajaraman, Jeffrey David Ullman 2020, 3rd Edition, Cambridge University Press. ISBN 13: 978-1108476348 [Available for free at http://www.mmds.org/]
Description:

DescriptionConcepts and techniques in managing and analyzing large data sets for data discovery and modeling: big data storage systems, parallel processing platforms, and scalable machine learning algorithms.

Class notes: Computer and internet access required for course. For the current list of minimum technology requirements and resources, copy/paste/navigate to the URL http://www.uh.edu/online/tech/requirements. For additional information, contact the office of Online & Special Programs at UHOnline@uh.edu or 713-743-3327. Course instruction for this section takes place both in a classroom face-to-face environment during the scheduled time and additionally by electronic means. 

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