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Applied mathematics and statistics is an integral part of emerging fields such as computational medicine/biology, language processing, information security, and computer science. In today’s data-intensive world, it is used to answer questions and solve problems in areas as diverse as finance, government and law, medicine, and national defense.
Beginning freshmen year at Johns Hopkins, students in applied mathematics and statistics work alongside faculty members who are world-class leaders in their fields, participating in research that typically takes place only in Ph.D. programs. Our undergraduate program is flexible enough to provide opportunities to integrate your mathematical reasoning and modeling skills with other academic and personal pursuits, including adding a second major.
Today’s employers need experts with a solid grasp of the sophisticated analytical tools to crunch big data and make solid decisions, and that’s what Johns Hopkins offers. Our AMS graduates are equipped with the analytical skills and expertise in machine learning and data-mining that prepare them to be leaders in the global economy.
Students may work toward either the master of arts (M.A.) degree or the master of science in engineering (M.S.E.) degree in applied mathematics and statistics. All master’s degrees in applied mathematics and statistics ordinarily require a minimum of two semesters of registration as a full-time resident graduate student.
To obtain departmental certification for the master’s degree in Applied Mathematics and Statistics, the student must:
- Complete satisfactorily at least eight one-semester courses of graduate work in a coherent program approved by the faculty advisor. All 600-level and 700-level courses (with the exception of seminar and research courses), and some 400-level courses in the department are satisfactory for this requirement. Certain courses in other departments are also acceptable. At most 3 courses outside the department may be counted toward the Master's degree requirements.
- Meet either of the following options:
- (a) submit an acceptable research report based on an approved project; or
- (b) complete satisfactorily two additional one-semester graduate courses, as approved by the faculty advisor.
- Satisfy the computing requirement by receiving a grade of B- or better in one of the following courses:
EN.550.400 Mathematical Modeling and Consulting 4.00 EN.550.413 Applied Statistics and Data Analysis 4.00 EN.550.415 Practical Scientific Analysis of Big Data 3.00 EN.550.433 Monte Carlo Methods 3.00 EN.550.436 Data Mining 4.00 EN.550.443 Financial Computing in C++ 4.00 EN.550.450 Computational Molecular Medicine 4.00 EN.550.487 Numerical Methods for Financial Mathematics 3.00 EN.550.493 Mathematical Image Analysis 3.00 EN.550.632 Bayesian Statistics 3.00 EN.550.643 Graphical Models 4.00 EN.550.653 Commodities and Commodity Markets 3.00 EN.550.661 Foundations of Optimization 3.00 EN.550.662 Optimization Algorithms 3.00 EN.550.680 Shape and Differential Geometry 3.00 EN.550.681 Numerical Analysis 4.00 EN.600.475 Machine Learning 3.00 - Complete an area of focus by taking three courses in one of the following areas. A list of courses that can be counted toward each area of focus will be maintained and updated every year. Some courses from other departments can be eligible to count toward area of focus. They can be used within the three-course limit specified in point 1, above. This list of courses is based on recent offerings. Not all classes are available every year and substitute classes may be accepted if approved by the advisor and the Academic Affairs Committee. Higher level classes (700 or 800) can be accepted if given a letter grade.
Probability Theory EN.550.426
Introduction to Stochastic Processes or EN.550.427
Stochastic Processes and Applications to Finance EN.550.428
Stochastic Processes and Applications to Finance II EN.550.433
Monte Carlo Methods EN.550.620
Probability Theory I EN.550.621
Probability Theory II EN.550.622
Introduction to Stochastic Calculus EN.550.663
Stochastic Search & Optimization EN.550.664
Modeling, Simulation, and Monte Carlo Statistics and Statistical Learning EN.550.413
Applied Statistics and Data Analysis EN.550.415
Practical Scientific Analysis of Big Data EN.550.434
Nonparametric Statistics EN.550.436
Data Mining EN.550.439
Time Series Analysis EN.550.450
Computational Molecular Medicine EN.550.630
Statistical Theory EN.550.631
Statistical Theory II EN.550.632
Bayesian Statistics EN.550.633
Advanced Topics in Bayesian Statistics Optimization and Operations Research EN.550.461
Optimization in Finance EN.550.453
Mathematical Game Theory EN.550.463
Network Models in Operations Research EN.550.661
Foundations of Optimization EN.550.662
Optimization Algorithms EN.550.663
Stochastic Search & Optimization EN.550.665
Convex Optimization EN.550.666
Combinatorial Optimization Computational and Applied Mathematics EN.550.443
Financial Computing in C++ EN.550.492
Mathematical Biology EN.550.493
Mathematical Image Analysis EN.550.680
Shape and Differential Geometry EN.550.681
Numerical Analysis EN.550.692
Matrix Analysis and Linear Algebra EN.550.695
Advanced Parameterization in Science and Engineering Discrete Mathematics * EN.550.471
Combinatorial Analysis EN.550.472
Graph Theory EN.550.666
Combinatorial Optimization EN.550.671
Combinatorial Analysis EN.550.672
Graph Theory EN.600.463
Algorithms I EN.600.464
Randomized and Big Data Algorithms EN.600.469
Approximation Algorithms EN.600.470
Combinatorics & Graph Theory in Computer Science EN.600.471
Theory of Computation * The Discrete Mathematics area of focus requires a minimum of one listed course taken within the Applied Mathematics and Statistics department, but the other two courses may include the listed Computer Science offerings. These courses can be used within the three-course limit specified in point 1, above.
- Complete training on the responsible and ethical conduct of research, if applicable. Please see WSE Policy on the Responsible Conduct of Research.
- Complete training on academic ethics.
An overall GPA of 3.0 must be maintained in courses used to meet the program requirements. At most two course grades of C or C+ are allowed to be used and the rest of the course grades must be B- or better.
Each candidate for the master’s degree must submit to the department for approval a written program stating how they plan to meet their degree requirements. This should be done early in the first semester of residence.
Doctoral students in other departments may concurrently undertake a master’s program in Applied Mathematics and Statistics with the permission of the AMS department and an application review. Application forms and information are available in the department office.
- Letters of Recommendation (3),
- GRE,
- TOEFL/IELTS,
- Statement of Purpose addressing your interest in graduate study in applied mathematics at JHU or another topic of your choice,
- Transcripts,
- GRE Subject (optional)
Want to improve your English level for admission?
Prepare for the program requirements with English Online by the British Council.
- Flexible study schedule
- Experienced teachers
- Certificate upon completion
📘 Recommended for students with an IELTS level of 6.0 or below.