Professors

  • Alfred V. Aho
  • Peter K. Allen
  • Peter Belhumeur
  • Steven M. Bellovin
  • David Blei
  • Luca Carloni
  • Michael J. Collins
  • Steven K. Feiner
  • Luis Gravano
  • Julia Hirschberg
  • Gail E. Kaiser
  • John R. Kender
  • Kathleen R. McKeown
  • Vishal Misra
  • Shree K. Nayar
  • Jason Nieh
  • Steven M. Nowick
    Christos Papadimitriou
  • Kenneth A. Ross
  • Henning G. Schulzrinne
  • Rocco A. Servedio
  • Salvatore J. Stolfo
  • Jeannette Wing
  • Mihalis Yannakakis

Associate Professors

  • Alexandr Andoni
  • Augustin Chaintreau
  • Xi Chen
  • Stephen A. Edwards
  • Yaniv Erlich
  • Roxana Geambasu
  • Eitan Grinspun
  • Daniel Hsu
  • Tony Jebara
  • Martha Allen Kim
  • Tal Malkin
  • Itsik Pe'er
  • Daniel S. Rubenstein
  • Simha Sethumadhavan
  • Junfeng Yang
  • Changxi Zheng

Assistant Professors

  • Lydia Chilton
  • Ronghui Gu
  • Suman Jana
  • Baishakhi Ray
  • Carl Vondrick
  • Omri Weinstein
  • Eugene Wu

Senior Lecturer in Discipline

  • Paul Blaer
  • Adam Cannon
  • Jae Woo Lee

Lecturer in Discipline

  • Daniel Bauer
  • Tony Dear
  • Ansaf Salleb-Aouissi
  • Nakul Verma

Associated Faculty Joint

  • Shih-Fu Chang
  • Clifford Stein

Associated Faculty

  • Matei Ciocarlie
  • Edward G. Coffman Jr. (emeritus)
  • Eleni Drinea
  • Jonathan Gross (emeritus)
  • Andreas Mueller
  • Steven H. Unger (emeritus)
  • Vladimir Vapnik
  • Yechiam Yemini (emeritus)

Senior Research Scientists

  • Moti Yung

Research Scientists

  • Smaranda Muresan*

Associated Research Scientists

  • Allison Breton Bishop
  • Giuseppe DiGuglielmo
  • Paolo Mantovani
  • Hiroshi Sasaki
  • Eran Tromer

Professor of Practice

  • Donald F. Ferguson

Guidelines for all Computer Science Majors and Minors

Courses

Students may receive credit for only one of the following two courses:

  • COMS W1004 Introduction to Computer Science and Programming in Java
  • COMS W1005 Introduction to Computer Science and Programming in MATLAB.

Students may receive credit for only one of the following three courses:

However, COMS W1005 and COMS W3136 cannot be counted towards the Computer Science major, minor, and concentration. 

Transfer Credit

As a rule, no more than 12 transfer credits are accepted toward the major.

Grading

Courses in which the student receives the grade of D may not be counted toward the major requirement or the minor option.

Guidelines for all Computer Science Majors and Concentrators

Courses

Students may receive credit for only one of the following two courses:

  • COMS W1004 Introduction to Computer Science and Programming in Java
  • COMS W1005 Introduction to Computer Science and Programming in MATLAB.

Students may receive credit for only one of the following three courses:

However, COMS W1005 and COMS W3136 cannot be counted towards the Computer Science major, minor, and concentration. 

Transfer Credit

As a rule, no more than 12 transfer credits are accepted toward the major.

Grading

A maximum of one course worth no more than 4 points passed with a grade of D may be counted toward the major or concentration.


Major in Computer Science

All majors should confer with their program adviser each term to plan their programs of study. Students considering a major in computer science are encouraged to talk to a program adviser during their first or second year. A typical program of study is as follows:

Program of Study

Computer Science Core (22-24 points)

For students who declare in Spring 2014 and beyond:
ENGI E1006Introduction to Computing for Engineers and Applied Scientists (recommended but not required)
First Year
COMS W1004Introduction to Computer Science and Programming in Java
or COMS W1007 Honors Introduction to Computer Science
Sophomore Year
COMS W3134Data Structures in Java
or COMS W3137 Honors Data Structures and Algorithms
COMS W3157Advanced Programming
COMS W3203Discrete Mathematics: Introduction to Combinatorics and Graph Theory
Junior and Senior Year
Select the remaining required core courses:
COMS W3261Computer Science Theory
CSEE W3827Fundamentals of Computer Systems
Select one of the following courses:
MATH UN2010Linear Algebra
APMA E2101Introduction to Applied Mathematics
APMA E3101Linear Algebra
STAT GU4001Introduction to Probability and Statistics
For students who declared prior to Spring 2014:
First Year
COMS W1004Introduction to Computer Science and Programming in Java
Sophomore Year
COMS W1007Honors Introduction to Computer Science
COMS W3137Honors Data Structures and Algorithms
COMS W3157Advanced Programming
COMS W3203Discrete Mathematics: Introduction to Combinatorics and Graph Theory
Junior and Senior Year
COMS W3261Computer Science Theory
CSEE W3827Fundamentals of Computer Systems

In addition to the CS Core (22-24 points), all CS majors must complete the Calculus Requirement (3 points) and a Track Requirement (15 or 18 points). The CS major therefore requires 40-45 points total.

Mathematics (3 points)

Calculus II or Calculus III.

Note that Calculus III does NOT depend on Calculus II. You can take either Calculus II or III, but we recommend Calculus III, which covers topics that are a bit more relevant for upper-¬level Computer Science courses.

If you have received equivalent credits for Calculus I & II already (through a 4 or 5 on the AP Calculus exam for example), you are not required to take any more Calculus courses.  But we recommend taking one more semester of Calculus, either Math UN1201 Calculus III or APAM E2000 Multivariate Calculus for Engineers and Scientists. APAM E2000 covers relevant topics from Calculus III and IV.

Track Requirement (15 or 18 points)

Students must select one of the following six upper-level tracks. Each track, except the combination track, requires five courses consisting of required, elective breadth, and elective track courses. The combination track requires a selection of six advanced courses: three 3000- or 4000-level computer science courses and three 3000- or 4000-level courses from another field. The elective breadth requirement in each track can be fulfilled with any 3-point computer science 3000-level or higher course that is not a computer science core course or a technical elective course in that track. In addition to the breadth elective, the track requirements are as follows:

Foundations Track (15 points)

For students interested in algorithms, computational complexity, and other areas of theoretical Computer Science.

Note: Students who declared their Computer Science major prior to Fall 2016 may also count COMS 4241, COMS 4205, COMS 4281, COMS 4444, COMS 4771, and COMS 4772 as track elective courses. 

Required Courses
CSOR W4231Analysis of Algorithms I
COMS W4236Introduction to Computational Complexity
Track Electives
Select 2 from:
MATH UN3020Number Theory and Cryptography
MATH UN3025Making, Breaking Codes
COMS W4203Graph Theory
MATH GU4032Fourier Analysis
MATH GU4041INTRO MODERN ALGEBRA I
MATH GU4042INTRO MODERN ALGEBRA II
MATH GU4061INTRO MODERN ANALYSIS I
MATH GU4155Probability Theory
COMS W4252Introduction to Computational Learning Theory
COMS W4261Introduction to Cryptography
APMA E4300Computational Math: Introduction to Numerical Methods
IEOR E4407Game Theoretic Models of Operations
CSPH G4802
COMS E6232Analysis of Algorithms, II
MATH G6238Enumerative Combinatorics
COMS E6253Advanced Topics in Computational Learning Theory
COMS E6261Advanced Cryptography
EEOR E6616Convex optimization
IEOR E6613Optimization, I
IEOR E6614Optimization, II
IEOR E6711Stochastic models, I
IEOR E6712Stochastic models, II
ELEN E6717Information theory
ELEN E6718Error Correcting Codes: Classical and Modern
Adviser Approved:
COMS W3902Undergraduate Thesis
COMS W3998Undergraduate Projects in Computer Science
COMS W4901Projects in Computer Science
COMS W4995Special topics in computer science, I
COMS E6998Topics in Computer Science
One Breadth Course
Any 3-point COMS 3000- or 4000-level course except those courses in the CS core or in the required or elective courses for this track
Software Systems Track (15 points)

For students interested in networks, programming languages, operating systems, software engineering, databases, security, and distributed systems.

Required Courses
COMS W4115Programming Languages and Translators
COMS W4118Operating Systems I
CSEE W4119Computer Networks
Track Electives
Select 1 from:
Any COMS W41xx course
COMS W4444Programming and Problem Solving
Any COMS W48xx course
Adviser Approved:
COMS W3902Undergraduate Thesis
COMS W3998Undergraduate Projects in Computer Science
COMS W4901Projects in Computer Science
COMS W4995Special topics in computer science, I
COMS W4996Special topics in computer science, II
Any COMS E68XX course
Any COMS E61XX course
One Breadth Course
Any 3-point COMS 3000- or 4000-level course except those courses in the CS core or in the required or elective courses for this track
Intelligent Systems Track (15 points)

For students interested in machine learning, robotics, and systems capable of exhibiting “human-like” intelligence.

Required Courses
Select two of the following courses:
COMS W4701Artificial Intelligence
COMS W4705Natural Language Processing
COMS W4706Spoken Language Processing
COMS W4731Computer Vision
COMS W4733Computational Aspects of Robotics
COMS W4771Machine Learning
Track Electives
Select 2 from:
COMS W4252Introduction to Computational Learning Theory
Any COMS W47xx course
Any COMS E67XX course
Adviser Approved:
COMS W3902Undergraduate Thesis
COMS W3998Undergraduate Projects in Computer Science
COMS W4901Projects in Computer Science
COMS W4995Special topics in computer science, I
COMS E6998Topics in Computer Science
One Breadth Course
Any 3-point COMS 3000- or 4000-level course except those courses in the CS core or in the required or elective courses for this track
Applications Track (15 points)

For students interested in the implementation of interactive multimedia applications for the internet and wireless networks.

Required Courses
COMS W4115Programming Languages and Translators
COMS W4170User Interface Design
Track Electives
Select 2 from:
Any COMS W41xx course
Any COMS W47xx course
Adviser Approved:
COMS W3902Undergraduate Thesis
COMS W3998Undergraduate Projects in Computer Science
COMS W4901Projects in Computer Science
COMS W4995Special topics in computer science, I
Any COMS E69XX course
One Breadth Course
Any 3-point COMS 3000- or 4000-level course except those courses in the CS core or in the required or elective courses for this track
Vision, Graphics, Interaction, and Robotics Track (15 points)

For students in the vision, interaction, graphics, and robotics track. It focuses on visual information with topics in vision, graphics, human-computer interaction, robotics, modeling, and learning. Students learn about fundamental ways in which visual information is captured, manipulated, and experienced.

Required Courses
Select two of the following courses:
COMS W4160Computer Graphics
COMS W4167Computer Animation
COMS W4731Computer Vision
Track Electives
Select 2 from:
COMS W4162Advanced Computer Graphics
COMS W4170User Interface Design
COMS W41723D User Interfaces and Augmented Reality
COMS W4701Artificial Intelligence
COMS W4733Computational Aspects of Robotics
COMS W4735Visual Interfaces to Computers
COMS W4771Machine Learning
Adviser Approved:
COMS W3902Undergraduate Thesis
COMS W3998Undergraduate Projects in Computer Science
COMS W4901Projects in Computer Science
COMS W4995Special topics in computer science, I
Any COMS E69XX course
One Breadth Course
Any 3-point COMS 3000- or 4000-level course except those courses in the CS core or in the required or elective courses for this track
Combination Track (18 points)

For students who wish to combine computer science with another discipline in the arts, humanities, social or natural sciences.  A coherent selection of six upper-level courses is required: three from computer science and three from another discipline.  

The courses should be planned with and approved by the student’s CS faculty advisor by the first semester of the junior year.  The six courses are typically 4000-level elective courses that would count towards the individual majors.  Moreover, the six courses should have a common theme.  The combination track is not intended for those students who pursue double majors.


Major in Computer Science—Mathematics

For a description of the joint major in computer science—mathematics, see the Mathematics section in this bulletin.

For a description of the joint major in computer science—mathematics, see the Mathematics section in this bulletin.

For a description of the joint major in mathematics—computer science, see the Mathematics section in this catalog.


Major in Information Science

Please read Guidelines for all Computer Science Majors and Concentrators above.

The major in information science requires a minimum of 33 points including a core requirement of five courses.

The elective courses must be chosen with a faculty adviser to focus on the modeling and use of information within the context of a disciplinary theme. After discussing potential selections students prepare a proposal of study that must be approved by the faculty adviser. In all cases the six courses must be at the 3000-level or above with at least three courses chosen from computer science. Following are some example programs. For more examples or templates for the program proposal, see a faculty adviser.

Note: In most cases additional courses will be necessary as prerequisites in order to take some of the elective courses. This will depend on the student's proposed program of study.

Core Requirement

COMS W1001Introduction to Information Science
or COMS W1002 Computing in Context
COMS W1004Introduction to Computer Science and Programming in Java
COMS W1007Honors Introduction to Computer Science
COMS W3134Data Structures in Java
STAT GU4001Introduction to Probability and Statistics

Following are some suggested programs of instruction:

Information Science and Contemporary Society

Students may focus on how humans use technology and how technology has changed society.

The requirements include:

COMS W4111Introduction to Databases
COMS W4170User Interface Design
COMS W4701Artificial Intelligence
COMS W3410Computers and Society
SOCI UN3010Methods for Social Research
SOCI UN3960Law, Science, and Society

Information Science and the Economy

Students may focus on understanding information modeling together with existing and emerging needs in economics and finance as well as algorithms and systems to address those needs.

The requirements include:

COMS W4111Introduction to Databases
COMS W4701Artificial Intelligence
COMS W4771Machine Learning
ECON UN3412Introduction To Econometrics
ECON UN3025Financial Economics
ECON UN3265MONEY AND BANKING

Information Science and Health Sciences

Students may focus on understanding information modeling together with existing and emerging needs in health sciences, as well as algorithms and systems to address those needs.

The requirements include:

COMS W4111Introduction to Databases
COMS W4170User Interface Design
COMS W4701Artificial Intelligence
BINF G4001
BIOL W4037Bioinformatics of Gene Expression
ECBM E3060/E4060Introduction to genomic information science and technology

Major in Data Science

Please read Guidelines for all Computer Science Majors and Concentrators above.

In response to the ever growing importance of "big data" in scientific and policy endeavors, the last few years have seen an explosive growth in theory, methods, and applications at the interface between computer science and statistics. The statistics and computer science departments have responded with a joint-major that emphasizes the interface between the disciplines.

Prerequisites (15 points)
MATH UN1101Calculus I
MATH UN1102Calculus II
MATH UN1201Calculus III
MATH UN2010Linear Algebra
This introductory Statistics course:
STAT UN1201Calculus-Based Introduction to Statistics
Statistics (12 points)
STAT GU4203PROBABILITY THEORY
STAT GU4204Statistical Inference
STAT GU4205Linear Regression Models
STAT GU4241Statistical Machine Learning
or COMS W4771 Machine Learning
Computer Science (12 points)
Select one of the following courses:
COMS W1004Introduction to Computer Science and Programming in Java
COMS W1005Introduction to Computer Science and Programming in MATLAB
COMS W1007Honors Introduction to Computer Science
ENGI E1006Introduction to Computing for Engineers and Applied Scientists
Select one of the following courses:
COMS W3134Data Structures in Java
COMS W3136Data Structures with C/C++
COMS W3137Honors Data Structures and Algorithms
Two required courses:
COMS W3203Discrete Mathematics: Introduction to Combinatorics and Graph Theory
CSOR W4231Analysis of Algorithms I
Electives (15 points)
Select two of the following courses:
STAT UN3106Applied Data Mining
STAT GU4206Statistical Computing and Introduction to Data Science
STAT GU4224BAYESIAN STATISTICS
STAT GU4243Applied Data Science
STAT Q4242Advanced Machine Learning
Select three of the following courses:
COMS W3261Computer Science Theory
COMS W4111Introduction to Databases
COMS W4130Principles and Practice of Parallel Programming
COMS W4236Introduction to Computational Complexity
COMS W4252Introduction to Computational Learning Theory
Any COMS W47xx course EXCEPT W4771

Minor in Computer Science

Please read Guidelines for all Computer Science Majors and Minors above.

For students who declare in Spring 2014 and beyond:

The minor in computer science requires a minimum of 22-24 points, as follows:

COMS W1004Introduction to Computer Science and Programming in Java
or COMS W1007 Honors Introduction to Computer Science
COMS W3203Discrete Mathematics: Introduction to Combinatorics and Graph Theory
COMS W3134Data Structures in Java
or COMS W3137 Honors Data Structures and Algorithms
COMS W3157Advanced Programming
COMS W3261Computer Science Theory
CSEE W3827Fundamentals of Computer Systems (or any 3 point 4000-level computer science course)
Select one of the following courses:
MATH UN2010Linear Algebra
APMA E2101Introduction to Applied Mathematics
APMA E3101Linear Algebra
MATH V2020Honors Linear Algebra
STAT GU4001Introduction to Probability and Statistics
SIEO W3600

For students who declared prior to Spring 2014:

The minor requires a minimum of 23 points, as follows:

COMS W1004Introduction to Computer Science and Programming in Java
COMS W1007Honors Introduction to Computer Science
COMS W3137Honors Data Structures and Algorithms
COMS W3157Advanced Programming
COMS W3261Computer Science Theory
CSEE W3827Fundamentals of Computer Systems (or any 3-point 4000-level computer science course)

Concentration in Computer Science

Please read Guidelines for all Computer Science Majors and Concentrators above.

For students who declare in Spring 2014 and beyond:

The concentration in computer science requires a minimum of 22-24 points, as follows:

COMS W1004Introduction to Computer Science and Programming in Java
or COMS W1007 Honors Introduction to Computer Science
COMS W3134Data Structures in Java
or COMS W3137 Honors Data Structures and Algorithms
COMS W3157Advanced Programming
COMS W3203Discrete Mathematics: Introduction to Combinatorics and Graph Theory
COMS W3261Computer Science Theory
CSEE W3827Fundamentals of Computer Systems (or any 3 point 4000-level computer science course)
Select one of the following courses:
MATH UN2010Linear Algebra
MATH V2020Honors Linear Algebra
APMA E2101Introduction to Applied Mathematics
APMA E3101Linear Algebra
STAT GU4001Introduction to Probability and Statistics
SIEO W3600

For students who declared prior to Spring 2014:

The concentration requires a minimum of 23 points, as follows:

COMS W1004Introduction to Computer Science and Programming in Java
COMS W1007Honors Introduction to Computer Science
COMS W3137Honors Data Structures and Algorithms
COMS W3157Advanced Programming
COMS W3261Computer Science Theory
CSEE W3827Fundamentals of Computer Systems (or any 3-point 4000-level computer science course)

Computer Science

COMS W1001 Introduction to Information Science. 3 points.

Lect: 3.

Basic introduction to concepts and skills in Information Sciences: human-computer interfaces, representing information digitally, organizing and searching information on the internet, principles of algorithmic problem solving, introduction to database concepts, and introduction to programming in Python.

COMS W1002 Computing in Context. 4 points.

CC/GS: Partial Fulfillment of Science Requirement

Introduction to elementary computing concepts and Python programming with domain-specific applications. Shared CS concepts and Python programming lectures with track-specific sections. Track themes will vary but may include computing for the social sciences, computing for economics and finance, digital humanities, and more. Intended for nonmajors. Students may only receive credit for one of ENGI E1006 or COMS W1002.

Fall 2020: COMS W1002
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 1002 001/11682 T Th 2:40pm - 3:55pm
Room TBA
Adam Cannon 4 243/300

COMS W1004 Introduction to Computer Science and Programming in Java. 3 points.

Lect: 3.

A general introduction to computer science for science and engineering students interested in majoring in computer science or engineering. Covers fundamental concepts of computer science, algorithmic problem-solving capabilities, and introductory Java programming skills. Assumes no prior programming background. Columbia University students may receive credit for only one of the following two courses: 1004 or 1005.

Spring 2020: COMS W1004
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 1004 001/12611 T Th 1:10pm - 2:25pm
309 Havemeyer Hall
Adam Cannon 3 166/300
COMS 1004 002/12612 T Th 2:40pm - 3:55pm
309 Havemeyer Hall
Adam Cannon 3 179/300
Fall 2020: COMS W1004
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 1004 001/11692 T Th 4:10pm - 5:25pm
Room TBA
Adam Cannon 3 187/400

COMS W1005 Introduction to Computer Science and Programming in MATLAB. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

A general introduction to computer science concepts, algorithmic problem-solving capabilities, and programming skills in MATLAB. Assumes no prior programming background. Columbia University students may receive credit for only one of the following two courses: W1004 or W1005.

COMS W1007 Honors Introduction to Computer Science. 3 points.

Lect: 3.

Prerequisites: AP Computer Science with a grade of 4 or 5 or similar experience.

An honors-level introduction to computer science, intended primarily for students considering a major in computer science. Computer science as a science of abstraction. Creating models for reasoning about and solving problems. The basic elements of computers and computer programs. Implementing abstractions using data structures and algorithms. Taught in Java. 

COMS W1404 Emerging Scholars Program Seminar. 1 point.

Pass/Fail only.

Prerequisites: the instructor's permission. Corequisites: COMS W1002 or COMS W1004 or COMS W1007
Corequisites: COMS W1004,COMS W1007,COMS W1002

Peer-led weekly seminar intended for first and second year undergraduates considering a major in Computer Science. Pass/fail only. May not be used towards satisfying the major or SEAS credit requirements.

Spring 2020: COMS W1404
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 1404 001/35447 F 12:15pm - 1:30pm
652 Schermerhorn Hall
Adam Cannon 1 9/15
COMS 1404 002/35448 F 1:45pm - 3:00pm
652 Schermerhorn Hall
Adam Cannon 1 4/15
COMS 1404 003/35449 F 1:15pm - 2:30pm
408a Philosophy Hall
Adam Cannon 1 3/15
COMS 1404 004/35450 F 2:45pm - 4:00pm
408a Philosophy Hall
Adam Cannon 1 5/15

COMS W3101 Programming Languages. 1 point.

Lect: 1.

Prerequisites: Fluency in at least one programming language.

Introduction to a programming language. Each section is devoted to a specific language. Intended only for those who are already fluent in at least one programming language. Sections may meet for one hour per week for the whole term, for three hours per week for the first third of the term, or for two hours per week for the first six weeks. May be repeated for credit if different languages are involved.

Spring 2020: COMS W3101
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3101 001/20074 W 6:10pm - 8:00pm
644 Seeley W. Mudd Building
Lawrence Stead 1 35/40
COMS 3101 002/20135 M 6:10pm - 8:00pm
825 Seeley W. Mudd Building
Ramana Isukapalli 1 27/40

COMS W3102 Development Technologies. 1-2 points.

Lect: 2. Lab: 0-2.

Prerequisites: Fluency in at least one programming language.

Introduction to software development tools and environments. Each section devoted to a specific tool or environment. One-point sections meet for two hours each week for half a semester, and two point sections include an additional two-hour lab.

Spring 2020: COMS W3102
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3102 001/12613 F 2:10pm - 4:00pm
302 Fayerweather
Gary Zamchick 1-2 19/30
COMS 3102 002/12614 M 4:10pm - 6:00pm
337 Seeley W. Mudd Building
Bruno Scap 1-2 32/30
COMS 3102 003/19973 W 6:10pm - 8:00pm
303 Hamilton Hall
Robert Coyne 1-2 34/40

COMS W3107 Clean Object-Oriented Design. 3.00 points.

Prerequisites: Intro to Computer Science/Programming in Java (COMS W1004) or instructor’s permission. May not take for credit if already received credit for COMS W1007.

Prerequisites: see notes re: points
A course in designing, documenting, coding, and testing robust computer software, according to object-oriented design patterns and clean coding practices. Taught in Java.Object-oriented design principles include: use cases; CRC; UML; javadoc; patterns (adapter, builder, command, composite, decorator, facade, factory, iterator, lazy evaluation, observer, singleton, strategy, template, visitor); design by contract; loop invariants; interfaces and inheritance hierarchies; anonymous classes and null objects; graphical widgets; events and listeners; Java's Object class; generic types; reflection; timers, threads, and locks

Fall 2020: COMS W3107
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3107 001/15932 M W 1:10pm - 2:25pm
Room TBA
John Kender 3.00 10/70

COMS W3134 Data Structures in Java. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: (COMS W1004) or knowledge of Java.

Data types and structures: arrays, stacks, singly and doubly linked lists, queues, trees, sets, and graphs. Programming techniques for processing such structures: sorting and searching, hashing, garbage collection. Storage management. Rudiments of the analysis of algorithms. Taught in Java. Note: Due to significant overlap, students may receive credit for only one of the following three courses: COMS W3134, COMS W3136, COMS W3137.

Spring 2020: COMS W3134
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3134 001/12615 M W 5:40pm - 6:55pm
417 International Affairs Bldg
Paul Blaer 3 333/350
Fall 2020: COMS W3134
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3134 001/10066 M W 5:40pm - 6:55pm
Room TBA
Paul Blaer 3 277/350

COMS W3136 Data Structures with C/C++. 4 points.

Prerequisites: (COMS W1004) or (COMS W1005) or (COMS W1007) or (ENGI E1006)

A second programming course intended for nonmajors with at least one semester of introductory programming experience. Basic elements of programming in C and C++, arraybased data structures, heaps, linked lists, C programming in UNIX environment, object-oriented programming in C++, trees, graphs, generic programming, hash tables. Due to significant overlap, students may only receive credit for either COMS W3134, W3136, or W3137.

Fall 2020: COMS W3136
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3136 001/15273 T Th 5:40pm - 6:55pm
Room TBA
Timothy Paine 4 16/80

COMS W3137 Honors Data Structures and Algorithms. 4 points.

Prerequisites: (COMS W1004) or (COMS W1007)
Corequisites: COMS W3203

An honors introduction to data types and structures: arrays, stacks, singly and doubly linked lists, queues, trees, sets, and graphs. Programming techniques for processing such structures: sorting and searching, hashing, garbage collection. Storage management. Design and analysis of algorithms. Taught in Java. Note: Due to significant overlap, students may receive credit for only one of the following three courses: COMS W3134, W3136, or W3137.

Spring 2020: COMS W3137
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3137 001/12617 T Th 2:40pm - 3:55pm
503 Hamilton Hall
Paul Blaer 4 37/50

COMS W3157 Advanced Programming. 4 points.

Lect: 4.

Prerequisites: (COMS W3134) or (COMS W3137)

C programming language and Unix systems programming.  Also covers Git, Make, TCP/IP networking basics, C++ fundamentals.

Spring 2020: COMS W3157
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3157 001/12618 T Th 4:10pm - 5:25pm
301 Pupin Laboratories
Jae Lee 4 247/272
Fall 2020: COMS W3157
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3157 001/10067 T Th 4:10pm - 5:25pm
Room TBA
Jae Lee 4 327/330

COMS W3203 Discrete Mathematics: Introduction to Combinatorics and Graph Theory. 3 points.

Lect: 3.

Prerequisites: Any introductory course in computer programming.

Logic and formal proofs, sequences and summation, mathematical induction, binomial coefficients, elements of finite probability, recurrence relations, equivalence relations and partial orderings, and topics in graph theory (including isomorphism, traversability, planarity, and colorings).

Spring 2020: COMS W3203
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3203 001/12619 M W 10:10am - 11:25am
417 International Affairs Bldg
Ansaf Salleb-Aouissi 3 147/152
Fall 2020: COMS W3203
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3203 001/11672 T Th 10:10am - 11:25am
Room TBA
Ansaf Salleb-Aouissi 3 150/150
COMS 3203 002/11673 T Th 11:40am - 12:55pm
Room TBA
Ansaf Salleb-Aouissi 3 150/150

COMS W3210 Scientific Computation. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: two terms of calculus.

Introduction to computation on digital computers. Design and analysis of numerical algorithms. Numerical solution of equations, integration, recurrences, chaos, differential equations. Introduction to Monte Carlo methods. Properties of floating point arithmetic. Applications to weather prediction, computational finance, computational science, and computational engineering.

COMS W3251 COMPUTATIONAL LINEAR ALGEBRA. 4.00 points.

Spring 2020: COMS W3251
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3251 001/12620 T 2:40pm - 3:55pm
203 Mathematics Building
Tony Dear 4.00 82/150
COMS 3251 002/12621 T Th 4:10pm - 5:25pm
203 Mathematics Building
Tony Dear 4.00 44/150
Fall 2020: COMS W3251
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3251 001/10068 T Th 2:40pm - 3:55pm
Room TBA
Tony Dear 4.00 78/150

COMS W3261 Computer Science Theory. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: (COMS W3203)
Corequisites: COMS W3134,COMS W3136,COMS W3137

Regular languages: deterministic and non-deterministic finite automata, regular expressions. Context-free languages: context-free grammars, push-down automata. Turing machines, the Chomsky hierarchy, and the Church-Turing thesis. Introduction to Complexity Theory and NP-Completeness.

Spring 2020: COMS W3261
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3261 001/12622 T Th 10:10am - 11:25am
451 Computer Science Bldg
Mihalis Yannakakis 3 103/110
COMS 3261 002/12910 T Th 11:40am - 12:55pm
451 Computer Science Bldg
Mihalis Yannakakis 3 109/110
COMS 3261 H01/34722  
Mihalis Yannakakis 3 32/50
Fall 2020: COMS W3261
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3261 001/11666 T Th 8:40am - 9:55am
Room TBA
Tal Malkin 3 110/110
COMS 3261 002/11667 T Th 10:10am - 11:25am
Room TBA
Tal Malkin 3 112/110

COMS W3410 Computers and Society. 3 points.

Lect: 3.

Broader impact of computers. Social networks and privacy. Employment, intellectual property, and the media. Science and engineering ethics. Suitable for nonmajors.

Fall 2020: COMS W3410
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 3410 001/11022 T Th 4:10pm - 5:25pm
Room TBA
Ronald Baecker 3 50/50

COMS W3902 Undergraduate Thesis. 1-6 points.

Prerequisites: Agreement by a faculty member to serve as thesis adviser.

An independent theoretical or experimental investigation by an undergraduate major of an appropriate problem in computer science carried out under the supervision of a faculty member. A formal written report is mandatory and an oral presentation may also be required. May be taken over more than one term, in which case the grade is deferred until all 6 points have been completed. Consult the department for section assignment.

COMS W3995 Special Topics in Computer Science. 3 points.

Lect: 3.

Prerequisites: the instructor's permission.

Consult the department for section assignment. Special topics arranged as the need and availability arise. Topics are usually offered on a one-time basis. Since the content of this course changes each time it is offered, it may be repeated for credit.

COMS W3998 Undergraduate Projects in Computer Science. 1-3 points.

Prerequisites: Approval by a faculty member who agrees to supervise the work.

Independent project involving laboratory work, computer programming, analytical investigation, or engineering design. May be repeated for credit, but not for a total of more than 3 points of degree credit. Consult the department for section assignment.

COMS E3999 Fieldwork. 1 point.

Prerequisites: Obtained internship and approval from faculty advisor.

May be repeated for credit, but no more than 3 total points may be used toward the 128-credit degree requirement. Only for SEAS computer science undergraduate students who include relevant off-campus work experience as part of their approved program of study. Final report and letter of evaluation required. May not be used as a technical or non-technical elective. May not be taken for pass/fail credit or audited.

COMS W4111 Introduction to Databases. 3 points.

CC/GS: Partial Fulfillment of Science Requirement
Prerequisites: COMS W3134, COMS W3136, or COMS W3137; or the instructor's permission.

Prerequisites: (COMS W3134) or (COMS W3136) or (COMS W3137) or

The course covers what a database system is, how to design databases effectively and in a principled manner, how to query databases, and how to develop applications using databases: entity-relationship modeling, logical design of relational databases, relational algebra, SQL, database application development, database security, and an overview of query optimization and transaction processing. Additional topics generally include NoSQL, graph, object-relational, and cloud databases, as well as data preparation and cleaning of real-world data. The course offers both programming and non-programming paths for homework and projects, to accommodate students with different programming skills and backgrounds.

Spring 2020: COMS W4111
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4111 001/12624 M W 1:10pm - 2:25pm
501 Northwest Corner
Kenneth Ross 3 115/164
COMS 4111 002/13586 F 10:10am - 12:40pm
309 Havemeyer Hall
Donald Ferguson 3 317/320
COMS 4111 003/19905 F 1:10pm - 3:40pm
451 Computer Science Bldg
Alexandros Biliris 3 17/100
COMS 4111 H02/25028  
Donald Ferguson 3 42/75
COMS 4111 V02/25137  
Donald Ferguson 3 14/99
Fall 2020: COMS W4111
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4111 001/10069 T Th 1:10pm - 2:25pm
Room TBA
Luis Gravano 3 0/164
COMS 4111 002/10873 F 10:10am - 12:40pm
Room TBA
Donald Ferguson 3 0/200
COMS 4111 003/10874 Th 10:10am - 12:40pm
Room TBA
Alexandros Biliris 3 0/100

COMS W4112 Database System Implementation. 3 points.

Lect: 2.5.

Prerequisites: (COMS W4111) and fluency in Java or C++. CSEE W3827 is recommended.

The principles and practice of building large-scale database management systems. Storage methods and indexing, query processing and optimization, materialized views, transaction processing and recovery, object-relational databases, parallel and distributed databases, performance considerations. Programming projects are required.

COMS W4113 Fundamentals of Large-Scale Distributed Systems. 3 points.

Prerequisites: (COMS W3134 or COMS W3136 or COMS W3137) and (COMS W3157 or COMS W4118 or CSEE W4119)

Design and implementation of large-scale distributed and cloud systems.  Teaches abstractions, design and implementation techniques that enable the building of fast, scalable, fault-tolerant distributed systems. Topics include distributed communication models (e.g., sockets, remote procedure calls, distributed shared memory), distributed synchronization (clock synchronization, logical clocks, distributed mutex), distributed file systems, replication, consistency models, fault tolerance, distributed transactions, agreement and commitment, Paxos-based consensus, MapReduce infrastructures, scalable distributed databases. Combines concepts and algorithms with descriptions of real-world implementations at Google, Facebook, Yahoo, Microsoft, LinkedIn, etc.

Fall 2020: COMS W4113
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4113 001/11671 F 1:10pm - 3:40pm
451 Computer Science Bldg
Roxana Geambasu 3 0/110

COMS W4115 Programming Languages and Translators. 3 points.

Lect: 3.

Prerequisites: (COMS W3134 or COMS W3136 or COMS W3137) and (COMS W3261) and (CSEE W3827) or equivalent, or the instructor's permission.

Modern programming languages and compiler design. Imperative, object-oriented, declarative, functional, and scripting languages. Language syntax, control structures, data types, procedures and parameters, binding, scope, run-time organization, and exception handling. Implementation of language translation tools including compilers and interpreters. Lexical, syntactic and semantic analysis; code generation; introduction to code optimization. Teams implement a language and its compiler.

Spring 2020: COMS W4115
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4115 001/12625 M W 2:40pm - 3:55pm
451 Computer Science Bldg
Ronghui Gu 3 109/110
COMS 4115 V01/25139  
Ronghui Gu 3 2/99
Fall 2020: COMS W4115
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4115 001/10070 M W 1:10pm - 2:25pm
Room TBA
Baishakhi Ray 3 0/100

COMS W4117 Compilers and Interpreters. 3 points.

Lect: 3.Not offered during 2020-21 academic year.

Prerequisites: (COMS W4115) or instructor's permission.

Continuation of COMS W4115, with broader and deeper investigation into the design and implementation of contemporary language translators, be they compilers or interpreters. Topics include parsing, semantic analysis, code generation and optimization, run-time environments, and compiler-compilers. A programming project is required.

COMS W4118 Operating Systems I. 3 points.

Lect: 3.

Prerequisites: (CSEE W3827) and knowledge of C and programming tools as covered in COMS W3136, W3157, or W3101, or the instructor's permission.

Design and implementation of operating systems. Topics include process management, process synchronization and interprocess communication, memory management, virtual memory, interrupt handling, processor scheduling, device management, I/O, and file systems. Case study of the UNIX operating system. A programming project is required.

Spring 2020: COMS W4118
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4118 001/12626 W 4:10pm - 6:40pm
501 Northwest Corner
Jae Lee 3 93/135
Fall 2020: COMS W4118
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4118 001/10071 W 4:10pm - 6:40pm
Room TBA
Jae Lee 3 0/150

COMS W4121 Computer Systems for Data Science. 3 points.

Prerequisites: background in Computer System Organization and good working knowledge of C/C++
Corequisites: CSOR W4246,STAT GU4203

An introduction to computer architecture and distributed systems with an emphasis on warehouse scale computing systems. Topics will include fundamental tradeoffs in computer systems, hardware and software techniques for exploiting instruction-level parallelism, data-level parallelism and task level parallelism, scheduling, caching, prefetching, network and memory architecture, latency and throughput optimizations, specialization, and an introduction to programming data center computers.

Spring 2020: COMS W4121
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4121 001/20153 M 4:10pm - 6:40pm
501 Northwest Corner
Asaf Cidon 3 137/155
COMS 4121 V01/36409  
Asaf Cidon 3 0/99

COMS W4130 Principles and Practice of Parallel Programming. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: (COMS W3134 or COMS W3137 or COMS W3136 and experience in Java) and basic understanding of analysis of algorithms.

Principles of parallel software design. Topics include task and data decomposition, load-balancing, reasoning about correctness, determinacy, safety, and deadlock-freedom. Application of techniques through semester-long design project implementing performant, parallel application in a modern parallel programming language.

COMS W4156 Advanced Software Engineering. 3 points.

Lect: 3.

Prerequisites: (COMS W3157) or equivalent.

Software lifecycle using frameworks, libraries and services. Major emphasis on software testing. Centers on a team project.

Spring 2020: COMS W4156
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4156 001/16219 T 12:10pm - 2:00pm
411 International Affairs Bldg
Junfeng Yang 3 64/72
Fall 2020: COMS W4156
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4156 001/10072 T Th 10:10am - 11:25am
Room TBA
Gail Kaiser 3 0/120

COMS W4160 Computer Graphics. 3 points.

Lect: 3.

Prerequisites: (COMS W3134) or (COMS W3136) or (COMS W3137) COMS W4156 is recommended. Strong programming background and some mathematical familiarity including linear algebra is required.

Introduction to computer graphics. Topics include 3D viewing and projections, geometric modeling using spline curves, graphics systems such as OpenGL, lighting and shading, and global illumination. Significant implementation is required: the final project involves writing an interactive 3D video game in OpenGL.

Spring 2020: COMS W4160
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4160 001/12627 T Th 5:40pm - 6:55pm
1127 Seeley W. Mudd Building
Changxi Zheng 3 73/80
COMS 4160 V01/34916  
Changxi Zheng 3 5/99

COMS W4162 Advanced Computer Graphics. 3 points.

Lect: 3.

Prerequisites: (COMS W4160) or equivalent, or the instructor's permission.

A second course in computer graphics covering more advanced topics including image and signal processing, geometric modeling with meshes, advanced image synthesis including ray tracing and global illumination, and other topics as time permits. Emphasis will be placed both on implementation of systems and important mathematical and geometric concepts such as Fourier analysis, mesh algorithms and subdivision, and Monte Carlo sampling for rendering. Note: Course will be taught every two years.

COMS W4167 Computer Animation. 3 points.

Lect: 3.

Prerequisites: Multivariable calculus, linear algebra, C++ programming proficiency. COMS W4156 recommended.

Theory and practice of physics-based animation algorithms, including animated clothing, hair, smoke, water, collisions, impact, and kitchen sinks. Topics covered: Integration of ordinary differential equations, formulation of physical models, treatment of discontinuities including collisions/contact, animation control, constrained Lagrangian Mechanics, friction/dissipation, continuum mechanics, finite elements, rigid bodies, thin shells, discretization of Navier-Stokes equations. General education requirement: quantitative and deductive reasoning (QUA). 

Fall 2020: COMS W4167
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4167 001/11388 T Th 5:40pm - 6:55pm
Room TBA
Changxi Zheng 3 0/70

COMS W4170 User Interface Design. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: (COMS W3134 or COMS W3136 or COMS W3137)

Introduction to the theory and practice of computer user interface design, emphasizing the software design of graphical user interfaces. Topics include basic interaction devices and techniques, human factors, interaction styles, dialogue design, and software infrastructure. Design and programming projects are required.

Spring 2020: COMS W4170
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4170 001/12628 M W 4:10pm - 5:25pm
451 Computer Science Bldg
Lydia Chilton 3 108/100
COMS 4170 002/36445 F 10:10am - 12:40pm
451 Computer Science Bldg
Lydia Chilton 3 105/100
COMS 4170 V01/25144  
Lydia Chilton 3 9/5
Fall 2020: COMS W4170
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4170 001/10073 M W 2:40pm - 3:55pm
Room TBA
Brian Smith 3 0/110

COMS W4172 3D User Interfaces and Augmented Reality. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: (COMS W4160) or (COMS W4170) or the instructor's permission.

Design, development, and evaluation of 3D user interfaces. Interaction techniques and metaphors, from desktop to immersive. Selection and manipulation. Travel and navigation. Symbolic, menu, gestural, and multimodal interaction. Dialogue design. 3D software support. 3D interaction devices and displays. Virtual and augmented reality. Tangible user interfaces. Review of relevant 3D math.

Spring 2020: COMS W4172
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4172 001/12629 T Th 1:10pm - 2:25pm
520 Mathematics Building
Steven Feiner 3 32/40

COMS W4181 Security I. 3 points.

Not offered during 2020-21 academic year.

Prerequisites: COMS W3157 or equivalent.

Introduction to security. Threat models. Operating system security features. Vulnerabilities and tools. Firewalls, virtual private networks, viruses. Mobile and app security. Usable security.

Fall 2020: COMS W4181
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4181 001/10074 T Th 1:10pm - 2:25pm
Room TBA
Steven Bellovin 3 0/60

COMS W4182 Security II. 3 points.

Not offered during 2020-21 academic year.

Prerequisites: COMS W4181, COMS W4118, COMS W4119

Advanced security. Centralized, distributed, and cloud system security. Cryptographic protocol design choices. Hardware and software security techniques. Security esting and fuzzing. Blockchain. Human security issues.

Spring 2020: COMS W4182
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4182 001/12630 F 10:10am - 12:40pm
545 Seeley W. Mudd Building
Steven Bellovin 3 21/72
COMS 4182 V01/25148  
Steven Bellovin 3 2/99

COMS W4186 Malware Analysis and Reverse Engineering. 3 points.

Not offered during 2020-21 academic year.

Prerequisites: COMS W3157 or equivalent. COMS W3827

Hands-on analysis of malware. How hackers package and hide malware and viruses to evade analysis. Disassemblers, debuggers, and other tools for reverse engineering. Deep study of Windows Internals and x86 assembly.

COMS W4203 Graph Theory. 3 points.

Lect: 3.

Prerequisites: (COMS W3203)

General introduction to graph theory. Isomorphism testing, algebraic specification, symmetries, spanning trees, traversability, planarity, drawings on higher-order surfaces, colorings, extremal graphs, random graphs, graphical measurement, directed graphs, Burnside-Polya counting, voltage graph theory.

COMS W4205 Combinatorial Theory. 3 points.

Lect: 3.Not offered during 2020-21 academic year.

Prerequisites: (COMS W3203) and course in calculus.

Sequences and recursions, calculus of finite differences and sums, elementary number theory, permutation group structures, binomial coefficients, Stilling numbers, harmonic numbers, generating functions. 

COMS W4232 Advanced Algorithms. 3 points.

Prerequisite: Analysis of Algorithms (COMS W4231).

Prerequisites: see notes re: points

Introduces classic and modern algorithmic ideas that are central to many areas of Computer Science. The focus is on most powerful paradigms and techniques of how to design algorithms, and how to measure their efficiency. The intent is to be broad, covering a diversity of algorithmic techniques, rather than be deep. The covered topics have all been implemented and are widely used in industry. Topics include: hashing, sketching/streaming, nearest neighbor search, graph algorithms, spectral graph theory, linear programming, models for large-scale computation, and other related topics.

 

COMS W4236 Introduction to Computational Complexity. 3 points.

Lect: 3.

Prerequisites: (COMS W3261)

Develops a quantitative theory of the computational difficulty of problems in terms of the resources (e.g. time, space) needed to solve them. Classification of problems into complexity classes, reductions, and completeness. Power and limitations of different modes of computation such as nondeterminism, randomization, interaction, and parallelism.

Fall 2020: COMS W4236
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4236 001/11562 F 4:10pm - 6:40pm
Room TBA
Xi Chen 3 0/40

COMS W4241 Numerical Algorithms and Complexity. 3 points.

Lect: 3.

Prerequisites: Knowledge of a programming language. Some knowledge of scientific computation is desirable.

Modern theory and practice of computation on digital computers. Introduction to concepts of computational complexity. Design and analysis of numerical algorithms. Applications to computational finance, computational science, and computational engineering.

COMS W4242 Numerical Algorithms and Their Complexity II. 3 points.

Prerequisites: COMS W4241.

A continuation of COMS W4241.

COMS W4252 Introduction to Computational Learning Theory. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: (CSOR W4231) or (COMS W4236) or COMS W3203 and the instructor's permission, or COMS W3261 and the instructor's permission.

Possibilities and limitations of performing learning by computational agents. Topics include computational models of learning, polynomial time learnability, learning from examples and learning from queries to oracles. Computational and statistical limitations of learning. Applications to Boolean functions, geometric functions, automata.

Fall 2020: COMS W4252
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4252 001/10810 T Th 8:40am - 9:55am
Room TBA
Rocco Servedio 3 0/90

COMS W4261 Introduction to Cryptography. 3 points.

Lect: 2.5.

Prerequisites: Comfort with basic discrete math and probability. Recommended: COMS W3261 or CSOR W4231.

An introduction to modern cryptography, focusing on the complexity-theoretic foundations of secure computation and communication in adversarial environments; a rigorous approach, based on precise definitions and provably secure protocols. Topics include private and public key encryption schemes, digital signatures, authentication, pseudorandom generators and functions, one-way functions, trapdoor functions, number theory and computational hardness, identification and zero knowledge protocols.

COMS W4281 Introduction to Quantum Computing. 3 points.

Lect: 3.

Prerequisites: Knowledge of linear algebra. Prior knowledge of quantum mechanics is not required although helpful.

Introduction to quantum computing. Shor's factoring algorithm, Grover's database search algorithm, the quantum summation algorithm. Relationship between classical and quantum computing. Potential power of quantum computers.

COMS W4419 Internet Technology, Economics, and Policy. 3 points.

Not offered during 2020-21 academic year.

Technology, economic and policy aspects of the Internet. Summarizes how the Internet works technically, including protocols, standards, radio spectrum, global infrastructure and interconnection. Micro-economics with a focus on media and telecommunication economic concerns, including competition and monopolies, platforms, and behavioral economics. US constitution, freedom of speech, administrative procedures act and regulatory process, universal service, role of FCC. Not a substitute for CSEE4119. Suitable for non-majors. May not be used as a track elective for the computer science major.

Fall 2020: COMS W4419
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4419 001/10075 F 1:10pm - 3:40pm
Room TBA
Henning Schulzrinne 3 13/60

COMS W4444 Programming and Problem Solving. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: (COMS W3134 or COMS W3136 or COMS W3137) and (CSEE W3827)

Hands-on introduction to solving open-ended computational problems. Emphasis on creativity, cooperation, and collaboration. Projects spanning a variety of areas within computer science, typically requiring the development of computer programs. Generalization of solutions to broader problems, and specialization of complex problems to make them manageable. Team-oriented projects, student presentations, and in-class participation required.

Fall 2020: COMS W4444
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4444 001/10315 M W 1:10pm - 2:25pm
Room TBA
Kenneth Ross 3 0/30

COMS W4460 Principles of Innovation and Entrepreneurship. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: (COMS W3134 or COMS W3136 or COMS W3137) or the instructor's permission.

Team project centered course focused on principles of planning, creating, and growing a technology venture. Topics include: identifying and analyzing opportunities created by technology paradigm shifts, designing innovative products, protecting intellectual property, engineering innovative business models.

Fall 2020: COMS W4460
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4460 001/15274 F 10:10am - 12:40pm
Room TBA
William Reinisch 3 6/40

COMS W4560 Introduction to Computer Applications in Health Care and Biomedicine. 3 points.

Lect: 3.

Prerequisites: Experience with computers and a passing familiarity with medicine and biology. Undergraduates in their senior or junior years may take this course only if they have adequate background in mathematics and receive the instructor's permission.

An overview of the field of biomedical informatics, combining perspectives from medicine, computer science and social science. Use of computers and information in health care and the biomedical sciences, covering specific applications and general methods, current issues, capabilities and limitations of biomedical informatics. Biomedical Informatics studies the organization of medical information, the effective management of information using computer technology, and the impact of such technology on medical research, education, and patient care. The field explores techniques for assessing current information practices, determining the information needs of health care providers and patients, developing interventions using computer technology, and evaluating the impact of those interventions.

COMS W4701 Artificial Intelligence. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: (COMS W3134 or COMS W3136 or COMS W3137) and any course on probability. Prior knowledge of Python is recommended.

Provides a broad understanding of the basic techniques for building intelligent computer systems. Topics include state-space problem representations, problem reduction and and-or graphs, game playing and heuristic search, predicate calculus, and resolution theorem proving, AI systems and languages for knowledge representation, machine learning and concept formation and other topics such as natural language processing may be included as time permits.

Spring 2020: COMS W4701
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4701 001/12631 T Th 10:10am - 11:25am
501 Northwest Corner
Ansaf Salleb-Aouissi 3 160/164
COMS 4701 H01/25036  
Ansaf Salleb-Aouissi 3 47/55
COMS 4701 V01/25149  
Ansaf Salleb-Aouissi 3 10/99
Fall 2020: COMS W4701
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4701 001/10076 M W 4:10pm - 5:25pm
Room TBA
Tony Dear 3 0/250

COMS W4705 Natural Language Processing. 3 points.

Lect: 3.

Prerequisites: (COMS W3134 or COMS W3136 or COMS W3137) or the instructor's permission.

Computational approaches to natural language generation and understanding. Recommended preparation: some previous or concurrent exposure to AI or Machine Learning. Topics include information extraction, summarization, machine translation, dialogue systems, and emotional speech. Particular attention is given to robust techniques that can handle understanding and generation for the large amounts of text on the Web or in other large corpora. Programming exercises in several of these areas.

Spring 2020: COMS W4705
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4705 001/12632 F 1:10pm - 3:40pm
402 Chandler
Yassine Benajiba 3 126/126
COMS 4705 002/13588 T Th 4:10pm - 5:25pm
1127 Seeley W. Mudd Building
Michael Collins 3 78/80
COMS 4705 H01/34724  
Yassine Benajiba 3 48/50
COMS 4705 V02/25154  
Michael Collins 3 8/99
Fall 2020: COMS W4705
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4705 001/14312 M W 4:10pm - 5:25pm
451 Computer Science Bldg
Kathleen McKeown 3 0/110

COMS W4706 Spoken Language Processing. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: (COMS W3134 or COMS W3136 or COMS W3137) or the instructor's permission.

Computational approaches to speech generation and understanding. Topics include speech recognition and understanding, speech analysis for computational linguistics research, and speech synthesis. Speech applications including dialogue systems, data mining, summarization, and translation. Exercises involve data analysis and building a small text-to-speech system.

COMS W4725 Knowledge representation and reasoning. 3 points.

Lect: 3.Not offered during 2020-21 academic year.

Prerequisites: (COMS W4701)

General aspects of knowledge representation (KR). The two fundamental paradigms (semantic networks and frames) and illustrative systems. Topics include hybrid systems, time, action/plans, defaults, abduction, and case-based reasoning. Throughout the course particular attention is paid to design trade-offs between language expressiveness and reasoning complexity, and issues relating to the use of KR systems in larger applications. 

COMS W4731 Computer Vision. 3 points.

Lect: 3.

Prerequisites: Fundamentals of calculus, linear algebra, and C programming. Students without any of these prerequisites are advised to contact the instructor prior to taking the course.

Introductory course in computer vision. Topics include image formation and optics, image sensing, binary images, image processing and filtering, edge extraction and boundary detection, region growing and segmentation, pattern classification methods, brightness and reflectance, shape from shading and photometric stereo, texture, binocular stereo, optical flow and motion, 2D and 3D object representation, object recognition, vision systems and applications.

Fall 2020: COMS W4731
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4731 001/11898 M W 10:10am - 11:25am
Room TBA
Shree Nayar 3 0/120

COMS W4733 Computational Aspects of Robotics. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: (COMS W3134 or COMS W3136COMS W3137)

Introduction to robotics from a computer science perspective. Topics include coordinate frames and kinematics, computer architectures for robotics, integration and use of sensors, world modeling systems, design and use of robotic programming languages, and applications of artificial intelligence for planning, assembly, and manipulation.

Fall 2020: COMS W4733
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4733 001/10077 T Th 4:10pm - 5:25pm
Room TBA
Shuran Song 3 60/60

COMS W4735 Visual Interfaces to Computers. 3 points.

Lect: 3.

Prerequisites: (COMS W3134 or COMS W3136 or COMS W3137)

Visual input as data and for control of computer systems. Survey and analysis of architecture, algorithms, and underlying assumptions of commercial and research systems that recognize and interpret human gestures, analyze imagery such as fingerprint or iris patterns, generate natural language descriptions of medical or map imagery. Explores foundations in human psychophysics, cognitive science, and artificial intelligence.

Spring 2020: COMS W4735
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4735 001/12634 T Th 2:40pm - 3:55pm
833 Seeley W. Mudd Building
John Kender 3 78/120
COMS 4735 V01/25155  
John Kender 3 1/99

COMS W4737 Biometrics. 3 points.

CC/GS: Partial Fulfillment of Science Requirement

Prerequisites: a background at the sophomore level in computer science, engineering, or like discipline.

In this course. we will explore the latest advances in biometrics as well as the machine learning techniques behind them. Students will learn how these technologies work and how they are sometimes defeated. Grading will be based on homework assignments and a final project. There will be no midterm or final exam. This course shares lectures with COMS E6737. Students taking COMS E6737 are required to complete additional homework problems and undertake a more rigorous final project. Students will only be allowed to earn credit for COMS W4737 or COMS E6737 and not both.

COMS W4762 Machine Learning for Functional Genomics. 3 points.

Prerequisites: Proficiency in a high-level programming language (Python/R/Julia). An introductory machine learning class (such as COMS 4771 Machine Learning) will be helpful but is not required.

Prerequisites: see notes re: points

This course will introduce modern probabilistic machine learning methods using applications in data analysis tasks from functional genomics, where massively-parallel sequencing is used to measure the state of cells: e.g. what genes are being expressed, what regions of DNA (“chromatin”) are active (“open”) or bound by specific proteins.

COMS W4771 Machine Learning. 3 points.

Lect: 3.

Prerequisites: Any introductory course in linear algebra and any introductory course in statistics are both required. Highly recommended: COMS W4701 or knowledge of Artificial Intelligence.

Topics from generative and discriminative machine learning including least squares methods, support vector machines, kernel methods, neural networks, Gaussian distributions, linear classification, linear regression, maximum likelihood, exponential family distributions, Bayesian networks, Bayesian inference, mixture models, the EM algorithm, graphical models and hidden Markov models. Algorithms implemented in MATLAB.

Spring 2020: COMS W4771
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4771 001/12636 T Th 2:40pm - 3:55pm
501 Northwest Corner
Nakul Verma 3 174/164
COMS 4771 H01/25038  
Nakul Verma 3 33/50
COMS 4771 V01/25156  
Nakul Verma 3 5/99
Fall 2020: COMS W4771
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4771 001/10078 T Th 1:10pm - 2:25pm
Room TBA
Nakul Verma 3 0/110
COMS 4771 002/10079 T Th 2:40pm - 3:55pm
Room TBA
Nakul Verma 3 0/110

COMS W4772 Advanced Machine Learning. 3 points.

Lect: 3.

Prerequisites: (COMS W4771) or instructor's permission; knowledge of linear algebra & introductory probability or statistics is required.

An exploration of advanced machine learning tools for perception and behavior learning. How can machines perceive, learn from, and classify human activity computationally? Topics include appearance-based models, principal and independent components analysis, dimensionality reduction, kernel methods, manifold learning, latent models, regression, classification, Bayesian methods, maximum entropy methods, real-time tracking, extended Kalman filters, time series prediction, hidden Markov models, factorial HMMS, input-output HMMs, Markov random fields, variational methods, dynamic Bayesian networks, and Gaussian/Dirichlet processes. Links to cognitive science.

Spring 2020: COMS W4772
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4772 001/12637 T Th 1:10pm - 2:25pm
451 Computer Science Bldg
Nakul Verma 3 35/110
Fall 2020: COMS W4772
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4772 001/10080 M W 8:40am - 9:55am
Room TBA
Daniel Hsu 3 0/50

COMS W4773 Machine Learning Theory. 3 points.

Prerequisites: Machine Learning (COMS W4771). Background in probability and statistics, linear algebra, and multivariate calculus. Ability to program in a high-level language, and familiarity with basic algorithm design and coding principles.

Prerequisites: see notes re: points

Core topics from unsupervised learning such as clustering, dimensionality reduction and density estimation will be studied in detail. Topics in clustering: k-means clustering, hierarchical clustering, spectral clustering, clustering with various forms of feedback, good initialization techniques and convergence analysis of various clustering procedures. Topics in dimensionality reduction: linear techniques such as PCA, ICA, Factor Analysis, Random Projections, non-linear techniques such as LLE, IsoMap, Laplacian Eigenmaps, tSNE, and study of embeddings of general metric spaces, what sorts of theoretical guarantees can one provide about such techniques. Miscellaneous topics: design and analysis of data structures for fast Nearest Neighbor search such as Cover Trees and LSH. Algorithms will be implemented in either Matlab or Python.

COMS W4774 Unsupervised Learning. 3 points.

Prerequisites: Solid background in multivariate calculus, linear algebra, basic probability, and algorithms.

Prerequisites: see notes re: points

Theoretical study of algorithms for machine learning and high-dimensional data analysis. Topics include high-dimensional probability, theory of generalization and statistical learning, online learning and optimization, spectral analysis.

 

COMS W4775 Causal Inference. 3 points.

Prerequisites: Discrete Math, Calculus, Statistics (basic probability, modeling, experimental design), some programming experience.

Prerequisites: see notes re: points

Causal Inference theory and applications. The theoretical topics include the 3-layer causal hierarchy, causal Bayesian networks, structural learning, the identification problem and the do-calculus, linear identifiability, bounding, and counterfactual analysis.


The applied part includes intersection with statistics, the empirical-data sciences (social and health), and AI and ML.

 

COMS E4775 Causal Inference. 3 points.

Prerequisites: (COMS4711W) and Discrete Math, Calculus, Statistics (basic probability, modeling, experimental design), Some programming experience

Causal Inference theory and applications. The theoretical topics include the 3-layer causal hierarchy,  causal bayesian networks, structural learning, the identification problem and the do-calculus, linear identifiability, bounding, and counterfactual analysis. The applied part includes intersection with statistics, the empirical-data sciences (social and health), and AI and ML.

COMS W4776 Machine Learning for Data Science. 3 points.

Lect.: 3

Prerequisites: (STAT GU4001 or IEOR E4150) and linear algebra.

Introduction to machine learning, emphasis on data science. Topics include least square methods, Gaussian distributions, linear classification, linear regression, maximum likelihood, exponential family distributions, Bayesian networks, Bayesian inference, mixture models, the EM algorithm, graphical models, hidden Markov models, support vector machines kernel methods. Emphasizes methods and problems relevant to big data. Students may not receive credit for both COMS W4771 and W4776.

COMS W4901 Projects in Computer Science. 1-3 points.

Prerequisites: Approval by a faculty member who agrees to supervise the work.

A second-level independent project involving laboratory work, computer programming, analytical investigation, or engineering design. May be repeated for credit, but not for a total of more than 3 points of degree credit. Consult the department for section assignment.

COMS W4910 Curricular Practical Training. 1 point.

Prerequisites: obtained internship and approval from faculty advisor.

Only for M.S. students in the Computer Science department who need relevant work experience as part of their program of study. Final report required. This course may not be taken for pass/fail credit or audited.

COMS W4995 Special topics in computer science, I. 3 points.

Lect: 3.

Prerequisites: Instructor's permission.

Special topics arranged as the need and availability arises. Topics are usually offered on a one-time basis. Since the content of this course changes each time it is offered, it may be repeated for credit. Consult the department for section assignment. 

Spring 2020: COMS W4995
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4995 001/12639 M W 8:40am - 9:55am
417 Mathematics Building
Daniel Hsu 3 34/64
COMS 4995 002/12640 T Th 2:40pm - 3:55pm
1024 Seeley W. Mudd Building
Alexandr Andoni 3 47/70
COMS 4995 003/12641 F 10:10am - 12:00pm
327 Seeley W. Mudd Building
Bjarne Stroustrup 3 34/36
COMS 4995 004/12642 Th 6:10pm - 8:00pm
313 Fayerweather
Tristan Boutros 3 50/50
COMS 4995 005/12643 M W 4:10pm - 5:25pm
1127 Seeley W. Mudd Building
Iddo Drori 3 67/80
COMS 4995 006/12644 W 1:10pm - 3:40pm
411 International Affairs Bldg
Timothy Roughgarden 3 43/67
COMS 4995 007/13659 F 1:10pm - 3:40pm
834 Seeley W. Mudd Building
Isabelle Zaugg, Smaranda Muresan 3 20/30
COMS 4995 008/14158 M W 4:10pm - 5:25pm
633 Seeley W. Mudd Building
Elias Bareinboim 3 38/60
COMS 4995 009/16374 M W 8:40am - 9:55am
627 Seeley W. Mudd Building
Augustin Chaintreau 3 17/52
COMS 4995 010/16806 T 6:10pm - 8:00pm
301m Fayerweather
Agnes Chang 3 35/39
COMS 4995 011/20022 M W 1:10pm - 2:25pm
417 International Affairs Bldg
Andreas Mueller 3 208/225
COMS 4995 012/20023 Th 7:00pm - 9:30pm
402 Chandler
Joshua Gordon 3 134/130
COMS 4995 013/20029 W 7:00pm - 9:30pm
834 Seeley W. Mudd Building
Adam Kelleher 3 33/42
COMS 4995 V02/25160  
Alexandr Andoni 3 3/99
COMS 4995 V05/25157  
Iddo Drori 3 11/99
COMS 4995 V12/25158  
Joshua Gordon 3 6/99
Fall 2020: COMS W4995
Course Number Section/Call Number Times/Location Instructor Points Enrollment
COMS 4995 001/10081 T 4:10pm - 6:40pm
Room TBA
Paul Blaer 3 0/30
COMS 4995 002/10849 T Th 4:10pm - 5:25pm
Room TBA
Daniel Bauer 3 0/48
COMS 4995 003/10082 M W 5:40pm - 6:55pm
Room TBA
Stephen Edwards 3 0/60
COMS 4995 004/10850 T Th 2:40pm - 3:55pm
Room TBA
Peter Belhumeur 3 0/60
COMS 4995 005/10851 M W 4:10pm - 5:25pm
Room TBA
David Knowles 3 0/50
COMS 4995 006/14067 Th 6:10pm - 8:00pm
Room TBA
Tristan Boutros 3 10/40
COMS 4995 007/14068 Th 8:10pm - 10:00pm
Room TBA
Tristan Boutros 3 8/50

COMS W4996 Special topics in computer science, II. 3 points.

Lect: 3.Not offered during 2020-21 academic year.

Prerequisites: Instructor's permission.

A continuation of COMS W4995 when the special topic extends over two terms.

Computer Science - English

Computer Science - Electrical Engineering

CSEE W3827 Fundamentals of Computer Systems. 3 points.

Lect: 3.

Prerequisites: an introductory programming course.

Fundamentals of computer organization and digital logic. Boolean algebra, Karnaugh maps, basic gates and components, flipflops and latches, counters and state machines, basics of combinational and sequential digital design. Assembly language, instruction sets, ALU’s, single-cycle and multi-cycle processor design, introduction to pipelined processors, caches, and virtual memory.

Spring 2020: CSEE W3827
Course Number Section/Call Number Times/Location Instructor Points Enrollment
CSEE 3827 001/14445 M W 2:40pm - 3:55pm
309 Havemeyer Hall
Simha Sethumadhavan 3 273/360
CSEE 3827 H01/34723  
Simha Sethumadhavan 3 3/50
Fall 2020: CSEE W3827
Course Number Section/Call Number Times/Location Instructor Points Enrollment
CSEE 3827 001/10806 T Th 10:10am - 11:25am
451 Computer Science Bldg
Martha Kim 3 110/110
CSEE 3827 002/10807 T Th 11:40am - 12:55pm
451 Computer Science Bldg
Martha Kim 3 110/110

CSEE W4119 Computer Networks. 3 points.

Lect: 3.

Prerequisites: Prerequisites: Comfort with basic probability. Programming fluency in Python, C++, Java, or Ruby (please see section course page for specific language requirements).
Corequisites: IEOR E3658

Introduction to computer networks and the technical foundations of the Internet, including applications, protocols, local area networks, algorithms for routing and congestion control, security, elementary performance evaluation. Several written and programming assignments required.

Spring 2020: CSEE W4119
Course Number Section/Call Number Times/Location Instructor Points Enrollment
CSEE 4119 001/16515 M W 1:10pm - 2:25pm
309 Havemeyer Hall
Javad Ghaderi Dehkordi 3 124/150
Fall 2020: CSEE W4119
Course Number Section/Call Number Times/Location Instructor Points Enrollment
CSEE 4119 001/13939 T Th 2:40pm - 3:55pm
Room TBA
Ethan Katz-Bassett 3 46/160

CSEE W4121 COMPUTER SYSTEMS FOR DATA SCIENCE. 3 points.

Prerequisites: Background in Computer System Organization and good working knowledge of C/C++. Corequisites: CSOR W4246 Algorithms for Data Science, STAT W4203 Probability Theory, or equivalent as approved by faculty advisor.

An introduction to computer architecture and distributed systems with an emphasis on warehouse scale computing systems. Topics will include fundamental tradeoffs in computer systems, hardware and software techniques for exploiting instruction-level parallelism, data-level parallelism and task level parallelism, scheduling, caching, prefetching, network and memory architecture, latency and throughput optimizations, specialization, and an introduction to programming data center computers.

Spring 2020: CSEE W4121
Course Number Section/Call Number Times/Location Instructor Points Enrollment
CSEE 4121 001/37174 M 4:10pm - 6:40pm
Room TBA
Asaf Cidon 3 0/155

CSEE W4140 Networking Laboratory. 3 points.

Lect: 3.

Prerequisites: (CSEE W4119) or equivalent.

In this course, students will learn how to put "principles into practice," in a hands-on-networking lab course. The course will cover the technologies and protocols of the Internet using equipment currently available to large internet service providers such as CISCO routers and end systems. A set of laboratory experiments will provide hands-on experience with engineering wide-area networks and will familiarize students with the Internet Protocol (IP), Address Resolution Protocol (ARP), Internet Control Message Protocol (ICMP), User Datagram Protocol (UDP) and Transmission Control Protocol (TCP), the Domain Name System (DNS), routing protocols (RIP, OSPF, BGP), network management protocols (SNMP, and application-level protocols (FTP, TELNET, SMTP).

Spring 2020: CSEE W4140
Course Number Section/Call Number Times/Location Instructor Points Enrollment
CSEE 4140 001/16519 M W 10:10am - 11:25am
233 Seeley W. Mudd Building
Gil Zussman 3 7/42
Fall 2020: CSEE W4140
Course Number Section/Call Number Times/Location Instructor Points Enrollment
CSEE 4140 001/10602 M W 10:10am - 11:25am
Room TBA
Gil Zussman 3 8/40

CSEE W4823 Advanced Logic Design. 3 points.

Lect: 3.

Prerequisites: (CSEE W3827) or a half semester introduction to digital logic, or the equivalent.

An introduction to modern digital system design. Advanced topics in digital logic: controller synthesis (Mealy and Moore machines); adders and multipliers; structured logic blocks (PLDs, PALs, ROMs); iterative circuits. Modern design methodology: register transfer level modelling (RTL); algorithmic state machines (ASMs); introduction to hardware description languages (VHDL or Verilog); system-level modelling and simulation; design examples.

Fall 2020: CSEE W4823
Course Number Section/Call Number Times/Location Instructor Points Enrollment
CSEE 4823 001/10727 T Th 2:40pm - 3:55pm
Room TBA
Mingoo Seok 3 19/80

CSEE W4824 Computer Architecture. 3 points.

Lect: 3.

Prerequisites: (CSEE W3827) or equivalent.

Focuses on advanced topics in computer architecture, illustrated by case studies from classic and modern processors. Fundamentals of quantitative analysis. Pipelining. Memory hierarchy design. Instruction-level and thread-level parallelism. Data-level parallelism and graphics processing units. Multiprocessors. Cache coherence. Interconnection networks. Multi-core processors and systems-on-chip. Platform architectures for embedded, mobile, and cloud computing.

Fall 2020: CSEE W4824
Course Number Section/Call Number Times/Location Instructor Points Enrollment
CSEE 4824 001/10811 M W 2:40pm - 3:55pm
Room TBA
Simha Sethumadhavan 3 0/55

CSEE W4840 Embedded Systems. 3 points.

Lect: 3.

Prerequisites: (CSEE W4823)

Embedded system design and implementation combining hardware and software. I/O, interfacing, and peripherals. Weekly laboratory sessions and term project on design of a microprocessor-based embedded system including at least one custom peripheral. Knowledge of C programming and digital logic required.

Spring 2020: CSEE W4840
Course Number Section/Call Number Times/Location Instructor Points Enrollment
CSEE 4840 001/12638 F 10:10am - 12:40pm
633 Seeley W. Mudd Building
Stephen Edwards 3 22/70

CSEE W4868 System-on-chip platforms. 3 points.

Prerequisites: (COMS W3157) and (CSEE W3827)

Design and programming of System-on-Chip (SoC) platforms. Topics include: overview of technology and economic trends, methodologies and supporting CAD tools for system-level design, models of computation, the SystemC language, transaction-level modeling, software simulation and virtual platforms, hardware-software partitioning, high-level synthesis, system programming and device drivers, on-chip communication, memory organization, power management and optimization, integration of programmable processor cores and specialized accelerators. Case studies of modern SoC platforms for various classes of applications.

Fall 2020: CSEE W4868
Course Number Section/Call Number Times/Location Instructor Points Enrollment
CSEE 4868 001/11670 T Th 11:40am - 12:55pm
Room TBA
Luca Carloni 3 22/60

Computer Science - Biomedical Engineering

CBMF W4761 Computational Genomics. 3 points.

Lect: 3.

Prerequisites: Working knowledge of at least one programming language, and some background in probability and statistics.

Computational techniques for analyzing genomic data including DNA, RNA, protein and gene expression data. Basic concepts in molecular biology relevant to these analyses. Emphasis on techniques from artificial intelligence and machine learning. String-matching algorithms, dynamic programming, hidden Markov models, expectation-maximization, neural networks, clustering algorithms, support vector machines. Students with life sciences backgrounds who satisfy the prerequisites are encouraged to enroll. 

Spring 2020: CBMF W4761
Course Number Section/Call Number Times/Location Instructor Points Enrollment
CBMF 4761 001/12635 M W 4:10pm - 5:25pm
545 Seeley W. Mudd Building
Itshack Pe'er 3 35/72
CBMF 4761 V01/25126  
Itshack Pe'er 3 3/99