Explore BU MET analytics graduate courses. Click on any course title below to expand the course description.
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Business Analytics
Data Analytics
MET CS 521 Information Structures with Python
Sprg ‘26
Fall ‘26
HUB
This course covers the concepts of the object-oriented approach to software design and development using Python. It includes a detailed discussion of programming concepts starting with the fundamentals of data types, control structures methods, classes, arrays and strings, and proceeding to advanced topics such as inheritance and polymorphism, creating user interfaces, exceptions and streams. Upon completion of this course students will be able to apply software engineering principles to design and implement Python applications that can be used in with analytics and big data. Effective Fall 2021, this course fulfills a single unit in each of the following BU Hub areas: Quantitative Reasoning II, Creativity/Innovation, Critical Thinking. Prerequisite: Programming experience in any language. Or Instructor's consent. [ 4 cr. ]
BU Hub Learn More - Creativity/Innovation
- Critical Thinking
- Quantitative Reasoning II
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Mohan |
MET 122 |
T |
6:00 pm – 8:45 pm |
| O1 |
IND |
Zhang |
|
ARR |
12:00 am – 12:00 am |
| O2 |
IND |
Trajanov |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Lu |
|
M |
6:00 pm – 8:45 pm |
| A2 |
IND |
Mohan |
|
T |
6:00 pm – 8:45 pm |
| O1 |
IND |
Pinsky |
|
ARR |
12:00 am – 12:00 am |
| O2 |
IND |
Bond |
|
ARR |
12:00 am – 12:00 am |
MET CS 526 Data Structures and Algorithms
Sprg ‘26
Fall ‘26
Prerequisites: MET CS300 and either MET CS520 or MET CS521, or consent of instructor. This course covers and relates fundamental components of programs. Students use various data structures to solve computational problems, and implement data structures using a high-level programming language. Algorithms are created, decomposed, and expressed as pseudocode. The running time of various algorithms and their computational complexity are analyzed. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| O1 |
IND |
Braude |
|
ARR |
12:00 am – 12:00 am |
| O2 |
IND |
Zhang |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Mellor |
|
M |
6:00 pm – 8:45 pm |
| O1 |
IND |
Doucette |
|
ARR |
12:00 am – 12:00 am |
| O2 |
IND |
Burstein |
|
ARR |
12:00 am – 12:00 am |
MET CS 544 Foundations of Analytics and Data Visualization
Sprg ‘26
Fall ‘26
Prerequisites: MET LB 103, MET LB 104, and (METCS 520 or METCS 521), or equivalent knowledge, or consent of instructor. The goal of this course is to provide students with the mathematical and practical background required in the field of data analytics. Probability and statistics concepts will be reviewed as well as the R tool for statistical computing and graphics. Different types of data are investigated along with data summarization techniques and plotting methods. Data populations using discrete, continuous, and multivariate distributions are explored. Sampling methods and errors during measurements and computations are analyzed in the course. String manipulations and data wrangling methods are examined in detail. The concepts covered in the course are demonstrated using R. Laboratory Course. Restrictions: This course may not be taken in conjunction with MET CS 550. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Rizinski |
MET 122 |
M |
6:00 pm – 8:45 pm |
| O1 |
IND |
Kalathur |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Kalathur |
|
M |
6:00 pm – 8:45 pm |
| A2 |
IND |
Diwania |
|
T |
6:00 pm – 8:45 pm |
| O1 |
IND |
Kalathur |
|
ARR |
12:00 am – 12:00 am |
| O2 |
IND |
Kalathur |
|
ARR |
12:00 am – 12:00 am |
MET CS 550 Computational Mathematics for Machine Learning
Sprg ‘26
Fall ‘26
Prerequisites: Basic knowledge of Python or R; or consent of instructor. - Mathematics is fundamental to data science and machine learning. In this course, you will review essential mathematical concepts and fundamental procedures illustrated by Python and/or R code and visualizations. Computational methods for data science presented through accessible, self-contained examples, intuitive explanations, and visualization will be discussed. Equal emphasis will be placed on both mathematics and computational methods that are at the heart of many algorithms for data analysis and machine learning. You will also advance your mathematical proficiency, enabling you to effectively apply your skills to data analytics and machine learning. Restrictions: This course may not be taken in conjunction with MET CS 544. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Pinsky |
SOC B57 |
M |
6:00 pm – 8:45 pm |
| O1 |
IND |
Pinsky |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Pinsky |
|
T |
6:00 pm – 8:45 pm |
MET CS 555 Foundations of Machine Learning
Sprg ‘26
Fall ‘26
Prerequisites: MET CS 544 or MET CS 550 or consent of instructor. Learn the foundations of machine learning, regression, and classification. Topics include how to describe data, statistical inference, 1 and 2 sample tests of means and proportions, simple linear regression, multiple linear regression, multinomial regression, logistic regression, analysis of variance, and regression diagnostics. These topics are explored using the statistical package R, with a focus on understanding how to use these methods and interpret their outputs and how to visualize the results. In each topic area, the methodology, including underlying assumptions and the mechanics of how it all works along with appropriate interpretation of the results are discussed. Concepts are presented in context of real-world examples in order to help you learn when and how to deploy different methods. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Zhang |
COM 217 |
R |
12:30 pm – 3:15 pm |
| A2 |
IND |
Alizadeh-Shabdiz |
CAS 116 |
W |
6:00 pm – 8:45 pm |
| O2 |
IND |
Alizadeh-Shabdiz |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A3 |
IND |
Alizadeh-Shabdiz |
|
M |
2:30 pm – 5:15 pm |
| A4 |
IND |
Alizadeh-Shabdiz |
|
W |
6:00 pm – 8:45 pm |
| O2 |
IND |
Alizadeh-Shabdiz |
|
ARR |
12:00 am – 12:00 am |
MET CS 566 Analysis of Algorithms
Sprg ‘26
Fall ‘26
Prerequisites: MET CS 342 or MET CS 526 or consent of instructor. Learn methods for designing and analyzing algorithms while practicing hands-on programming skills. Topics include divide-and-conquer, sorting, dynamic programming, greedy algorithms, advanced data structures, graph algorithms (shortest path, spanning trees, tree traversals), matrix operations, and NP-completeness. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Zhang |
SHA 201 |
M |
6:00 pm – 8:45 pm |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Zhang |
|
M |
6:00 pm – 8:45 pm |
| A2 |
IND |
Belyaev |
|
T |
6:00 pm – 8:45 pm |
| O1 |
IND |
Zhang |
|
ARR |
12:00 am – 12:00 am |
MET CS 577 Data Science with Python
Sprg ‘26
Fall ‘26
Prerequisite: (MET CS 521) or equivalent or instructor's consent. Students will learn major Python tools and techniques for data analysis. There are weekly assignments and mini projects on topics covered in class. These assignments will help build necessary statistical, visualization and other data science skills for effective use of data science in a variety of applications including finance, text processing, time series analysis and recommendation systems. In addition, students will choose a topic for a final project and present it on the last day of class. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Pinsky |
CAS 313 |
W |
6:00 pm – 8:45 pm |
| A2 |
IND |
Pinsky |
HAR 210 |
T |
6:00 pm – 8:45 pm |
| O2 |
IND |
Mohan |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Pinsky |
|
M |
6:00 pm – 8:45 pm |
| A2 |
IND |
Mohan |
|
R |
6:00 pm – 8:45 pm |
| A4 |
IND |
Pinsky |
|
T |
9:00 am – 11:45 am |
| O2 |
IND |
Mohan |
|
ARR |
12:00 am – 12:00 am |
MET CS 664 Artificial Intelligence
Sprg ‘26
Fall ‘26
Prerequisites: MET CS 248 and MET CS 342. - Study of the ideas and techniques that enable computers to behave intelligently. Search, constraint propagations, and reasoning. Knowledge representation, natural language, learning, question answering, inference, visual perception, and/or problem solving. Laboratory course. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Kalathur |
MET 101 |
M |
6:00 pm – 8:45 pm |
| O1 |
IND |
Mansur |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Kalathur |
|
W |
6:00 pm – 8:45 pm |
| O1 |
IND |
Braude |
|
ARR |
12:00 am – 12:00 am |
MET CS 669 Database Design and Implementation for Business
Sprg ‘26
Fall ‘26
Learn the latest relational and object-relational tools and techniques for persistent data and object modeling and management. You will gain extensive hands-on experience using Oracle or Microsoft SQL Server as you learn the Structured Query Language (SQL) and design and implement databases. You will design and implement a database system as a term project. Restrictions: This course may not be taken in conjunction with MET CS 469 (undergraduate) or MET CS 579. Only one of these courses can be counted towards degree requirements. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Diwania |
CAS B20 |
R |
6:00 pm – 8:45 pm |
| O1 |
IND |
Mansur |
|
ARR |
12:00 am – 12:00 am |
| O2 |
IND |
Lee |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Diwania |
|
W |
6:00 pm – 8:45 pm |
| A2 |
IND |
Lee |
|
R |
6:00 pm – 8:45 pm |
| E1 |
IND |
Diwania |
|
W |
6:00 pm – 8:45 pm |
| O1 |
IND |
Lee |
|
ARR |
12:00 am – 12:00 am |
| O2 |
IND |
Mansur |
|
ARR |
12:00 am – 12:00 am |
MET CS 674 Database Security
Sprg ‘26
Fall ‘26
The course provides a strong foundation in database security and auditing by utilizing Oracle scenarios and step-by-step examples. The following topics are covered: security, profiles, password policies, privileges, roles, Virtual Private Databases, and auditing. The course also covers advanced topics such as SQL injection, database management, and security issues, such as securing the DBMS, enforcing access controls, and related issues. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| O2 |
IND |
Zhang |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| O1 |
IND |
Zhang |
|
ARR |
12:00 am – 12:00 am |
MET CS 688 Web Mining and Graph Analytics
Sprg ‘26
Fall ‘26
Prerequisites: MET CS 544, or MET CS 555 or equivalent knowledge, or instructor's consent. - The Web Mining and Graph Analytics course covers the areas of web mining, machine learning fundamentals, text mining, clustering, and graph analytics. This includes learning fundamentals of machine learning algorithms, how to evaluate algorithm performance, feature engineering, content extraction, sentiment analysis, distance metrics, fundamentals of clustering algorithms, how to evaluate clustering performance, and fundamentals of graph analysis algorithms, link analysis and community detection based on graphs. Laboratory Course. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Hajiyani |
FLR 123 |
M |
6:00 pm – 8:45 pm |
| O2 |
IND |
Rawassizadeh |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Hajiyani |
|
T |
6:00 pm – 8:45 pm |
| A2 |
IND |
Vasilkoski |
|
R |
6:00 pm – 8:45 pm |
| O1 |
IND |
Rawassizadeh |
|
ARR |
12:00 am – 12:00 am |
MET CS 689 Designing and Implementing a Data Warehouse
Sprg ‘26
Fall ‘26
Prerequisites: CS 579 or CS 669 or consent of the instructor - This course surveys state-of-the art technologies in DW and Big Data. It describes logical, physical and semantic foundation of modern DW infrastructure. Students will create a cube using OLAP and implement decision support benchmarks on Hadoop/Spark vs Vertica database. Upon successful completion, students will be familiar with tradeoffs in DW design and architecture. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| O2 |
IND |
Polnar |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Polnar |
|
M |
6:00 pm – 8:45 pm |
MET CS 699 Data Mining
Sprg ‘26
Fall ‘26
Prerequisites: MET CS 521, MET LB 103 and MET LB 104; and either MET CS 579 or MET CS 669; or consent of instructor. - Study basic concepts and techniques of data mining. Topics include data preparation, classification, performance evaluation, association rule mining, regression and clustering. You will learn underlying theories of data mining algorithms in the class and practice those algorithms through assignments and a semester-long class project using R. After finishing this course, you will be able to independently perform data mining tasks to solve real-world problems. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A2 |
IND |
Lee |
MCS B33 |
W |
6:00 pm – 8:45 pm |
| O1 |
IND |
Lee |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Lee |
|
W |
6:00 pm – 8:45 pm |
| O2 |
IND |
Joner |
|
ARR |
12:00 am – 12:00 am |
MET CS 766 Deep Reinforcement Learning
Sprg ‘26
Fall ‘26
Prerequisites: MET CS 577 or consent of instructor. - This course focuses on reinforcement learning, covering fundamental concepts and advanced techniques. It begins with an introduction to reinforcement learning and key concepts, such as exploitation versus exploration and Markov Decision Processes. As the course progresses, it delves into state transition diagrams, the Bellman equation, and solutions to the Multi-Armed Bandits problem. Students will explore challenges and methods related to control and prediction. Then, they learn tabular methods, including Monte Carlo, Dynamic Programming, Temporal Difference Learning, SARSA, and Q-Learning. Afterwards, the course also extends into reviewing neural network concepts, covering convolutional and recurrent neural networks, and moves on to approximation methods for both discrete and continuous spaces, including DQN and its variants. Policy gradient methods, actor-critic methods. Finally, ethical considerations in AI and safety issues are also discussed. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Mohan |
PHO 201 |
W |
6:00 pm – 8:45 pm |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Rawassizadeh |
|
T |
6:00 pm – 8:45 pm |
MET CS 767 Advanced Machine Learning and Neural Networks
Sprg ‘26
Fall ‘26
Prerequisites: MET CS 521 and at least one of MET CS 577, MET CS 622, MET CS 673 or MET CS 682; or consent of instructor. Theories and methods for learning from data. The course covers a variety of approaches, including Supervised and Unsupervised Learning, Regression, k-means, KNN's, Neural Nets and Deep Learning, Transformers, Recurrent Neural Nets, Adversarial Learning, Bayesian Learning, and Genetic Algorithms. The underpinnings are covered: perceptron's, backpropagation, attention, and transformers. Each student creates a term project. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Mohan |
MET 101 |
R |
6:00 pm – 8:45 pm |
| O2 |
IND |
Alizadeh-Shabdiz |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Rawassizadeh |
|
R |
6:00 pm – 8:45 pm |
| A2 |
IND |
Alizadeh-Shabdiz |
|
W |
2:30 pm – 5:15 pm |
| O2 |
IND |
Braude |
|
ARR |
12:00 am – 12:00 am |
MET CS 777 Big Data Analytics
Sprg ‘26
Fall ‘26
Prerequisite: (MET CS 521 & MET CS 544 & MET CS 555) or MET CS 577 or consent of instructor. An introduction to large-scale data analytics, focusing on both the foundational concepts and practical tools used in the field. Big Data analytics involves extracting meaningful, non-trivial insights from vast and complex datasets. You will explore key software tools and programming techniques commonly used by data scientists working with distributed systems. You will also learn core technologies for storing and processing large volumes of data, with a particular emphasis on cluster computing frameworks that follow the MapReduce paradigm, including Hadoop MapReduce and Apache Spark. Through hands-on assignments and projects, you will gain practical experience by implementing data processing algorithms and running them on real-world cloud platforms such as Amazon Web Services (AWS) and Google Cloud, utilizing educational credits and accounts provided for the course. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Alizadeh-Shabdiz |
MCS B31 |
M |
6:00 pm – 8:45 pm |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Pham |
|
W |
6:00 pm – 8:45 pm |
| O1 |
IND |
Trajanov |
|
ARR |
12:00 am – 12:00 am |
MET CS 779 Advanced Database Management
Sprg ‘26
Fall ‘26
Graduate Prerequisites: (METCS579 OR METCS669) or consent of the instructor - This course covers advanced aspects of database management including normalization and denormalization, query optimization, distributed databases, data warehousing, and big data. There is extensive coverage and hands on work with SQL, and database instance tuning. Course covers various modern database architectures including relational, key value, object relational and document store models as well as various approaches to scale out, integrate and implement database systems through replication and cloud based instances. Students learn about unstructured "big data" architectures and databases, and gain hands-on experience with Spark and MongoDB. Students complete a term project exploring an advanced database technology of their choice. Prereq: MET CS 579 or MET CS 669; or instructor's consent. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Polnar |
CAS 222 |
R |
6:00 pm – 8:45 pm |
| O1 |
IND |
Polnar |
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
IND |
Polnar |
|
R |
6:00 pm – 8:45 pm |
MET CS 787 AI and Cybersecurity
Prerequisites: MET CS 577 or consent of instructor. This course provides an in-depth exploration of the critical intersection between Artificial Intelligence (AI) and cybersecurity, focusing on two interconnected themes: protecting AI systems from vulnerabilities and harnessing the power of AI to tackle cybersecurity challenges. As AI becomes a cornerstone of modern technology, ensuring the security of AI-powered systems against adversarial attacks, backdoor attacks, and model theft is essential. Simultaneously, AI offers transformative capabilities for malware detection, intrusion prevention, and malware analysis. Through a combination of theoretical foundations, hands-on exercises, and real-world case studies, students will delve into topics such as adversarial machine learning, backdoor injection and defense, IP protection, and privacy-preserving AI. They will also learn how to design and implement AI-driven tools for identifying and mitigating cyber threats in dynamic environments. The course emphasizes practical applications, encouraging students to build resilient AI systems and utilize advanced AI techniques to enhance system security and detect emerging threats. Hands-on labs based on existing tools are provided and required. [ 4 cr. ]
| Section |
Type |
Instructor |
Location |
Days |
Times |
| Section |
Type |
Instructor |
Location |
Days |
Times |
MET CS 788 Generative AI
Sprg ‘26
Prerequisites: MET CS 577, Python programming, mathematics required for machine learning, and familiarity with neural networks. Or consent of instructor. - The first part of the course covers statistical concepts required for generative artificial intelligence. We review regressions and optimization methods as well as traditional neural network architectures, including perceptron and multilayer perceptron. Next, we move to Convolutional Neural Networks and Recurrent Neural Networks and close this part with Attention and Transformers. The second part of the course focuses on generative neural networks. We start with traditional self-supervised learning algorithms (Self Organized Map and Restricted Boltzmann Machine), then explore Auto Encoder architectures and Generative Adversarial Networks and move toward architectures that construct generative models, including recent advances in NLP, including LLMs, and Retrieval Augmented Methods. Finally, we describe the Neural Radiance Field, 3D Gaussian Splatting, and text-2-image models. [ 4 cr. ]
| Section |
Type |
Instructor |
Location |
Days |
Times |
| Section |
Type |
Instructor |
Location |
Days |
Times |
MET CS 790 Computer Vision in AI
Sprg ‘26
Prerequisites: MET CS 566 or instructor's consent. - Students enrolled in this course will gain comprehensive insights into fundamental and advanced concepts within the dynamic realm of computer vision. The curriculum will focus on cutting-edge applications of deep neural networks in computer vision. Through hands-on experiences and practical exercises, students will learn to leverage computer vision and machine learning techniques to solve real-world challenges. This course not only equips students with theoretical knowledge but empowers them to apply these concepts effectively, fostering a deep understanding of how computer vision can be harnessed to address complex problems in diverse industries. [ 4 cr. ]
| Section |
Type |
Instructor |
Location |
Days |
Times |
| Section |
Type |
Instructor |
Location |
Days |
Times |
MET CS 810 MS Thesis 1
Sprg ‘26
Fall ‘26
This is the first course of the two-part thesis option available to Master’s degree program candidates in the Department of Computer Science. You must have completed at least four courses toward your degree and have a grade point average (GPA) of 3.7 or higher. You are responsible for finding a thesis advisor and a principal reader within the department. Please refer to the Department for further details on the application process. Both MET CS 810 Master’s Thesis 1 and MET CS 811 Master’s Thesis 2 must be completed within 12 months. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
DRS |
|
|
ARR |
12:00 am – 12:00 am |
| A2 |
DRS |
|
|
ARR |
12:00 am – 12:00 am |
| A3 |
DRS |
|
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
DRS |
Zhang |
|
ARR |
12:00 am – 12:00 am |
| A2 |
DRS |
Rawassizadeh |
|
ARR |
12:00 am – 12:00 am |
| A3 |
DRS |
Pinsky |
|
ARR |
12:00 am – 12:00 am |
| A4 |
DRS |
Zhang |
|
ARR |
12:00 am – 12:00 am |
| A5 |
DRS |
Zhang |
|
ARR |
12:00 am – 12:00 am |
MET CS 811 Master's Thesis 2
Sprg ‘26
Fall ‘26
This is the second course of the two-part thesis option available to Master’s degree program candidates in the Department of Computer Science. You must have completed at least four courses toward your degree and have a grade point average (GPA) of 3.7 or higher. You are responsible for finding a thesis advisor and a principal reader within the department. Please refer to the Department for further details on the application process. Both METCS 810 Master’s Thesis 1 and METCS 811 Master’s Thesis 2 must be completed within 12 months. [ 4 cr. ]
Spring 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
DRS |
|
|
ARR |
12:00 am – 12:00 am |
| A2 |
DRS |
|
|
ARR |
12:00 am – 12:00 am |
| A3 |
DRS |
|
|
ARR |
12:00 am – 12:00 am |
Fall 2026
| Section |
Type |
Instructor |
Location |
Days |
Times |
| A1 |
DRS |
Zhang |
|
ARR |
12:00 am – 12:00 am |
| A2 |
DRS |
Zhang |
|
ARR |
12:00 am – 12:00 am |