Overview
Northwestern University's M.Sc. in Data Science (Hons) programme stands out as a premier choice for professionals aiming to excel in the data-driven landscape. Ranked among the top universities globally, Northwestern University offers a comprehensive curriculum that integrates theoretical knowledge with practical applications. The programme is designed to provide students with the necessary skills to navigate the complexities of data science, ensuring they are well-prepared for the demands of the industry.
Why Data Science at Northwestern University?Northwestern University is consistently recognised for its academic excellence, being ranked #9 globally according to the U.S. News and World Report 2022. The School of Professional Studies, which administers the M.Sc. in Data Science, is dedicated to delivering a world-class education tailored for working professionals. The faculty comprises seasoned experts with extensive industry experience, ensuring that students receive relevant and applicable knowledge. Additionally, the programme includes physical residencies in Chennai and Gurgaon, providing opportunities for networking and collaboration in a traditional campus environment.
Tuition Fee BreakdownThe tuition fee for the M.Sc. in Data Science is USD 13,000, which can be paid in six quarterly instalments of USD 2,167 each. This fee structure is designed to ease the financial burden on students while allowing them to manage their educational expenses effectively. Visit the Fees and Funding section for a breakdown in your local currency.
SyllabusThe curriculum is structured into six terms, each lasting three months, covering a wide array of topics essential for mastering data science:
- Mathematics for Data Scientists
- Applied Statistics with R
- Database Systems
- Business Process Analytics
- Foundations of Data Engineering
- Decision Analytics
- Data Governance, Ethics, and Law
- Practical Machine Learning
- Natural Language Processing
- Artificial Intelligence and Deep Learning
- Computer Vision
- Capstone Project
Students will engage in hands-on learning, culminating in a capstone project that integrates all skills acquired during the programme.
Guaranteed Work ExperienceWhile the programme does not guarantee work experience, it offers extensive career support, including mentorship and access to job boards, helping students transition effectively into data science roles.
Careers with Data ScienceGraduates of the M.Sc. in Data Science programme have successfully transitioned into various roles within the tech industry. Alumni have secured positions as Data Engineers, AI Developers, and Analytics Specialists, working with renowned companies. The skills acquired through this programme enable graduates to thrive in sectors such as technology, finance, and healthcare, where data-driven decision-making is paramount.
Programme Structure
Courses include:
- Math for Modelers
- Applied Statistics with R
- Database Systems
- Business Process Analytics
- Data Engineering
Key information
Duration
- Part-time
- 18 months
Start dates & application deadlines
- We have multiple cohorts starting every year, please connect with your admissions counsellor to know more.
Language
Prepare for Your English Test
AI-powered IELTS feedback. Clear, actionable, and tailored to boost your writing & speaking score. No credit card or upfront payment required.
- Trusted by 300k learners
- 98 accuracy using real exam data
- 4.9/5 student rating
Credits
Delivered
Campus Location
- Evanston, United States
Disciplines
Data Science & Big Data View 194 other Masters in Data Science & Big Data in United StatesWhat students do after studying
Academic requirements
We are not aware of any specific GRE, GMAT or GPA grading score requirements for this programme.
English requirements
Prepare for Your English Test
AI-powered IELTS feedback. Clear, actionable, and tailored to boost your writing & speaking score. No credit card or upfront payment required.
- Trusted by 300k learners
- 98 accuracy using real exam data
- 4.9/5 student rating
Other requirements
General requirements
- Students should have completed a 4 year U.S. bachelor’s degree or equivalent.
- If the medium of instruction for the student’s bachelor degree was English (as certified in the transcript evaluation report) then no. If your transcript is being evaluated by a NACES member agency , please ask them to clearly indicate this in their report.
- If the medium of instruction was not English then the student would need to give an English language proficiency test like IELTS or TOEFL.
Tuition Fees
-
International Applies to you
Applies to youNon-residents8666 USD / year≈ 8666 USD / year - Out-of-State8666 USD / year≈ 8666 USD / year
-
Domestic
Applies to youIn-State8666 USD / year≈ 8666 USD / year
Funding
At Great Learning, we also have financial assistance available from Axis bank and a few other financial partners. Kindly reach out to us in case you would like to know more about the same.
In order for us to give you accurate scholarship information, we ask that you please confirm a few details and create an account with us.
Scholarships Information
Below you will find Master's scholarship opportunities for Data Science.
Available Scholarships
You are eligible to apply for these scholarships but a selection process will still be applied by the provider.
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility
Read more about eligibility