Last Updated on November 14, 2021
When it comes to the subjects or majors, the STEM fields are always the preferred ones. However, business & management studies and liberal arts are also not too far behind. One field that clearly stands out in terms of popularity among Indian students is MS Computer Science in USA.
In this post, we will look into the top universities for MS in Computer Science, hottest computer science specializations to study in USA, choosing between 1-Year MS & 2-Year MS, and MS application tips.
The USA has been the evergreen and most popular study abroad destination for Indian and international students. According to the data from the United Nations Educational, Scientific and Cultural Organization, 64% of Indian students (who go abroad for higher studies) go to the US for graduate studies (MS and Ph.D.); whereas, only 12% go to the US for undergraduate studies.
The reasons are very straightforward – the presence of world-class and top-ranked universities, flexible study system, exciting specializations, research, and innovation-oriented curriculum, and funding options.
While applying for MS in Computer Science in USA, you need to consider a variety of factors for making a well-informed decision. There are more than 4, 000 colleges and universities in the US. 30 to 40 US universities feature among the top 100 world universities (QS, Times Higher Education, and ARWU rankings).
So, how would you select the universities where you can have a solid education, and also manage to get admission? Well, you can obviously apply to 20 or 40 universities. But, that’s not wise at all. It would be a waste of your time, and money as well (each application will cost you USD $80 – $125). Besides, applying to too many universities will also piss off your referees – and hence, not a great idea at all.
Related Post: MS in USA vs MS in Canada
Secondly, which computer science specialization to go for? Computer science is a very broad field, and ever-evolving. Selecting and getting admitted, in the right university and specialization, will determine your success in the future.
There is no room for impulsive decisions or applying to universities merely on the basis of rankings. The first step would be to in-depth research for your field of interest. Y
ou need to look at the job trends. What are the companies looking for in graduates? Which are the “hottest” fields that companies are recruiting for more than the other fields? Let’s start with the hottest specializations.
MS Computer Science in USA
Top Specializations, Top Universities, 1-Year vs 2-Year MS, and Application Tips
Table of Contents:
- MS Computer Science in USA: Top Specializations
- Top Universities for MS in Computer Science in USA
- How to Choose the Right US University for the Right Computer Science Specialization
- Application Strategy while applying for MS in Computer Science in USA
- Choosing between 2-year and 1-year MS in Computer Science
1. Artificial Intelligence
Artificial intelligence (AI) is a complex and interdisciplinary field of computer science that incorporates the principles of human intelligence and reasoning into computing systems. You will be dealing with logic, probability, and programming language(s). AI makes rational decisions based on input from external sources. The objective of AI is to create computer systems (and software) with the ability of planning, automated reasoning & deduction. The systems should also adapt to different situations, acquire human-like senses, and respond to the environment.
While specializing in AI, you will cover knowledge representation, logical reasoning, machine learning, robotics, natural language processing (NLP), probabilistic modeling & inference, and cognition science. AI has got various applications across different industries and domains ranging from insurance, banking and the stock exchange to IT, e-commerce and healthcare.
2. Machine Learning
Machine Learning (ML) is another hot field that applies the principles of computer science and statistics to create statistical models. These models are then used for future predictions and identifying & discovering patterns in the data. Machine learning is itself a type of artificial intelligence that allows software applications to become more accurate in predicting outcomes without being explicitly programmed.
3. Data Science & Analytics
Data Science is another interdisciplinary field about scientific methods, processes, and systems to extract knowledge or insights from data in various forms, structured or unstructured, similar to data mining. Data analytics is the process of analyzing those data. Big data coupled with data analytics can help businesses to optimize operational efficiency, calculate entire risk portfolios, investigate the underlying causes of failures, and understanding consumer behavior in minutes. Know more about MS Data Science and MS Analytics in USA.
Robotics is another interdisciplinary and exciting branch of computer science that applies artificial intelligence and engineering concepts to create and program mechanical devices (robots), which can perform a variety of tedious and hazardous tasks by replacing humans. The field of robotics deals with the research, design, manufacturing, operations, software development, information processing and application of robots in various industrial and commercial processes. The ultimate objective of robotics is to build machines that can substitute humans.
Need personalized guidance? Opt for 1:1 Counselling Session!
The applications of robotics can be found in nuclear science, ocean-exploration, space-exploration, mining, medicine (low-invasive surgeries, high-throughput research & diagnostics), agriculture, manufacturing industry, military warfare, hazardous situations like defusing bombs, finding survivors in unstable ruins or shipwrecks, etc., and even in the household.
5. Software Engineering
Software engineering involves the study of the design and assembly of software systems. The field applies the basics of computer science, computer technology, management, and engineering economics. Software engineering is one of the most traditional and yet ever-evolving fields of computer science that revolves around writing codes and programming.
Related Post: Best IT & Software Engineering Management Programs in Europe
6. Human-Computer Interaction
Human-computer interaction (HCI) is a highly specialized domain of computer science and user interface design (UI) and experience (UX). The field involves advanced computing, information visualizing and user-centric & device-compatible design thinking and methods. The objective of HCI is to understand consumer (user) needs, rendering and visualizing information, and optimizing interface design and user interaction.
7. Information Science & Management Information Systems (MIS)
This interdisciplinary field integrates the computer applications of data processing and problem-solving, with the aim of improving organizational efficiency through the development of systems for data storage, data retrieval, data processing, and analysis for the design of decision-support systems. This field spans across telecommunications, computer science, linguistics, philosophy, mathematics, psychology, and sociology. The specialization covers developing applications for database & information systems, system design, architecture, and database management by applying algorithms and advanced techniques like data mining and machine learning to perform analytics over huge data sets.
8. Cyber Security
Cyber-security is simply the technique of protecting the computer, networks programs and data from damage and unauthorized access. It’s a great field for the folks who want to get into ethical hacking and/or networking systems.
9. Cloud Computing
Cloud computing is the practice of delivering computing services such as servers, storage, databases, networking, software, analytics, and other services over the internet (through remote servers – cloud). Cloud computing makes it possible to use online services like sending emails, edit documents, watching videos, sharing files, hosting websites and blogs, delivering software, analyzing data etc.
Cloud computing has become a multi-billion dollar industry and covers both infrastructure (IaaS – Infrastructure as a Service) and development (SaaS – Software as a Service). Cloud computing specializations typically include cloud architecture, cloud security, cloud infrastructure management, cloud application development & services, data storage & management, data visualization, programming for data analytics, and research & business strategies in computing.
10. Theoretical Computer Science
Theoretical computer science deals with reactive systems, programming language theory, and algorithms. This field is somewhat similar to software engineering but slightly more abstract. It’s a great specialization for the students who are interested in the mathematical aspects of computer science and the computational aspects of mathematics. The field informs about the limits of computing, the practicality of algorithms and other areas.
Caution for Choosing Computer Science Specializations
Although I have listed the most trending and hottest computer science specializations, it would be silly to go blindly after them just because of their hotness. Your career will span about 40 years or so. Technology changes rapidly; the hot trends might not remain hot after 5 years from now. Hence, it is only wise to pick up a specialization that interests you genuinely and try to excel in it. Not only it will help you to secure admission at the right university, but it will also ensure that you end up in a field that you are really good at, and this will help you in the long-term career.
- UC Berkeley
- Carnegie Mellon
- University of Southern California (USC)
- UT Austin
- University of Illinois Urbana-Champaign
- University of Maryland College Park
- UC San Diego
- University of Michigan Ann Arbor
- University of Washington
- Georgia Tech
- UC Los Angeles
- University Pennsylvania
- New York University
- University of Chicago
- Duke University
- Johns Hopkins University
- University of Wisconsin-Madison
- Ohio State University
- UMass Amherst
- Boston University
- University of Minnesota – Twin Cities
All the above universities feature within the top 100 universities in the world for computer science as per US News, QS, Times and ARWU rankings.
Okay, now we know the hottest computer science specializations and top universities for MS in computer science in the US. So, how should we go ahead with applying to the right universities for your profile and the right computer science specialization? Below are some of the top-ranking universities for specific specializations.
- General: MIT, CMU, UT Austin, Minnesota
- Software: MIT, UC Berkeley, CMU, UT Austin
- AI: CMU, Stanford. MIT, UC Berkeley, Yale, Harvard
- Theoretical Computer Science: MIT & Cornell are better than Caltech or Yale
- MIS: MIT, Carnegie Mellon University, University of Minnesota – Twin Cities, University of Arizona
- HCI: CMU & Georgia Tech
- Cloud Computing: Harvard, UC Berkeley, Stanford, Princeton, Columbia, NYU, University of Chicago
- Robotics: Top Universities for Robotics
- Data Science & Machine Learning: Top US Universities for MS in Data Science & Machine Learning
Creating a Balanced & Strategic College List
There is no point in applying to MIT and other top 5 universities with 3.0 GPA and 310 – 320 in GRE. The following college list could be a reasonable one for you.
- One University among Stanford, UC Berkeley, CMU, and MIT (these are for the top-performing applicants)
- One University between UCLA and UT Austin (competitive ones)
- Two reputed universities where you can have solid chances: Georgia Tech and Ohio State or Wisconsin.
- Two safe universities, say Boston and UMass Amherst
Leveraging Average GPA and/or Average GRE score (less than 320) through the following:
- Work experience (say two years)
- Solid and well-crafted SoP
- Strong recommendations
- Online courses (from Coursera, Skillwise or Udemy) for including on your CV and SoP
- Professional services for MS admission consulting
Recommended Article: 18 Best Online Courses on Machine Learning, Deep Learning, AI & Data Analytics
Finding the right-fit college is a critical part of the admission process. The application (and admission) process could be complex and overwhelming at times; hence, don’t be shy about reaching out to the experts and seeking professional services for admission consulting.
Sometimes, it’s a bit of luck as well. Different schools are looking for students with different profiles and interests.
There are instances where a student got accepted by Carnegie Mellon but was rejected by (comparatively) lower-ranked schools like UC San Diego and Pennsylvania. The college admission process is similar to marriage – you don’t need everyone to accept you, you need the right one. Need assistance with MS Applications & Admission in USA? Contact us!
The 2-year MS in CS from the US is a research-oriented degree. This is recommended for the students who want to do a Ph.D. after MS. It is a highly specialized degree with academic goals.
If you are applying for MS in your final year of Bachelor or with limited work experience, then also, I would recommend going for a 2-year MS. The main reason is that you will get more time to look for internships.
The 1-year MS in Computer Science, on the other hand, is a terminal degree, opted by those who want to enter the professional sector and are not looking forward to research studies in the future. So, under this, the student is required to do a project instead of on the thesis. It is recommended for the applicants who have got at least a couple of years of work experience and/or for the folks who don’t want to go for thesis-based MS.
A few top universities that offer 1-year MS in Computer Science include:
- Harvard University
- Carnegie Mellon University
- Stanford University
- Cornell University
- Rice University
- University of George Washington
- University of Texas at Austin
Feedback from the candidates who opted for MS Admission Counselling Services from Stoodnt
Below is the testimonial of Ishank Sharma who got admitted for MS in Computer Science with an average GRE score and non-CS background:
GRE- 315 (151 V / 164 Q / 3.0 AWA)
TOEFL- 104 (R: 29, L: 28, S: 19, W: 28)
Ishank graduated from USICT, GGS Indraprastha University in June 2016 with Electronics and Communication major. He was interested in doing research work in neural networks in association with speech processing/computer vision.
“Professor Sajed’s experience of academia and Ajay’s genuine insights on admission process enabled me to secure several admits. Personal guidance sessions with my advisors and their prompt response to my queries benefited me in universities selection, admission essays evaluation, and post-admission preparations. Thank you, Stoodnt team, in guiding me through various stages of my graduate school applications!” – Ishank Sharma
Here are a few more posts on feedback and testimonials:
Featured Image Credit: Edelevate