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约翰霍普金斯大学数据科学硕士专业培养下一代数据科学的领导者!

2021-11-11 12:02:11  人气:282

随着网络的普及,每时每刻都会有大量的数据被产生和存储下来,如何将这些数据变成有价值的商业信息则成为了各个公司竞争的核心之力,从而诞生了数据科学专业,为了顺应时代的需求,约翰霍普金斯大学就开设了数据科学硕士专业,下面,就随小编来看看吧,希望对大家有所帮助:

MSE in Data Science

数据科学硕士学位将提供应用数学、统计学和计算机科学的培训,作为理解和欣赏现有数据科学工具的基础。我们的项目旨在通过强调掌握将真实世界的数据驱动问题转化为数学问题所需的技能,并通过使用各种科学工具来解决这些问题,从而培养下一代数据科学的领导者。

课程设置:

数据科学导论(必修)

EN.553.636 Introduction to Data Science

核心区域

Statistics

Offered fall and spring semesters

EN.553.630 Introduction to Statistics. NOTE: EN.553.630 may not be taken after EN.553.730.

Offered fall semester

EN.553.632 Bayesian Statistics

EN.553.730 Statistical Theory I

EN.601.677 Causal Inference

EN.553.613 Applied Statistics and Data Analysis

Offered spring semester

EN.553.731 Statistical Theory II

EN.553.738 High-Dimensional Approximation, Probability, and Statistical Learning

EN.553.733 Advanced Topic in Bayesian Analysis

EN.553.739 Statistical Pattern Recognition Theory & Methods

EN.570.654 Geostatistics: Understanding Spatial Data

EN.553.639 Time Series Analysis

Machine Learning

Offered fall and spring semesters

EN.601.675 Machine Learning

Offered fall semester

EN.520.612 Machine Learning for Signal Processing

EN.520.637 Foundations of Reinforcement Learning

EN.520.647 Information Theory

EN.520.651 Random Signal Analysis

EN.525.724 Introduction to Pattern Recognition (online)

EN.553.740 Machine Learning I

EN.580.709 Sparse Representations in Computer Vision and Machine Learning

EN.601.634 Randomized and Big Data Algorithms

EN.601.677 Causal Inference

EN.601.682 Machine Learning: Deep Learning

EN.601.780 Unsupervised Learning: Big Data to Low-Dimensional Representations (alternate with EN.580.745)

EN.601.674 Machine Learning: Learning Theory

Offered spring semester

EN.520.638 Deep Learning

EN.520.648 Compressed Sensing and Sparse Recovery

EN.520.666 Information Extraction

EN.535.741 Optimal Control and Reinforcement Learning (online)

EN.553.602 Research and Design in Applied Mathematics: Data Mining

EN.553.738 High-Dimensional Approximation, Probability, and Statistical Learning

EN.553.741 Machine Learning II

EN.601.676 Machine Learning: Data to Models

EN.625.692 Probabilistic Graphical Models (online)

Optimization

Offered fall semester

EN.553.761 Nonlinear Optimization I

EN.553.665 Introduction to Convexity

EN.520.618 Modern Convex Optimization

Offered spring semester

EN.553.762 Nonlinear Optimization II

EN.553.763 Stochastic Search and Optimization

EN.601.681 Machine Learning: Optimization

EN.553.766 Combinatorial Optimization

Computing

Offered fall and spring semesters

EN.601.633 Introduction to Algorithms

Offered fall semester

EN.553.688 Computing for Applied Mathematics

EN.601.620 Parallel Programming

EN.601.647 Computational Genomics: Sequences

Offered spring semester

EN.601.646 Sketching and Indexing for Sequences

EN.520.617 Computation for Engineers

选修课

Computational Medicine

Offered fall and spring semesters

AS.410.633 Introduction to Bioinformatics (online)

AS.410.635 Bioinformatics: Tools for Genome Analysis (online)

EN.605.620 Algorithms for Bioinformatics (cannot be taken with EN.605.621)

EN.605.621 Foundations of Algorithms (cannot be taken with EN.605.620)

Offered fall semester

AS.410.671 Gene Expression Data Analysis and Visualization (online)

EN.605.653 Computational Genomics

Offered spring semester

EN.553.650 Computational Molecular Medicine (offered spring)

EN.520.659 Machine Learning for Medical Applications

Computer Vision

Offered fall and spring semesters

EN.601.661 Computer Vision

EN.520.614 Image Processing and Analysis

Offered fall semester

EN.520.646 Wavelets & Filter Banks

EN.520.665 Machine Perception

Offered spring semester

EN.601.783 Vision as Bayesian Inference

EN.520.623 Medical Image Analysis

EN.553.693 Mathematical Image Analysis

EN.520.615 Image Processing and Analysis II

EN.525.733 Deep Learning for Computer Vision (online)

Mathematical Finance

Offered fall semester

EN.553.627 Stochastic Processes and Applications to Finance I

EN.553.641 Equity Markets and Quantitative Trading

EN.553.642 Investment Science

EN.553.644 Introduction to Financial Derivatives

EN.553.646 Risk Measurement and Management in Financial Markets

EN.553.649 Advanced Equity Derivatives

Offered spring semester

EN.553.628 Stochastic Processes and Applications to Finance II

EN.553.645 Interest Rate and Credit Derivatives

EN.553.753 Commodity Markets and Trade Finance

Mathematics of Data Science

Offered fall semester

EN.553.633 Monte Carlo Methods

EN.553.792 Matrix Analysis and Linear Algebra

EN.601.634 Randomized and Big Data Algorithms

Language and Speech

Offered fall semester

EN.601.665 Natural Language Processing

Offered spring semester

EN.520.666 Information Extraction

EN.520.680 Speech and Auditory Processing by Humans and Machines

EN.601.769 Events Semantics in Theory and Practice

Additional Courses

EN.520.650 Machine Intelligence

EN.580.691 Learning, Estimation and Control

EN.601.615 Databases*

EN.601.663 Algorithms for Sensor-Based Robotics*

Data Science Capstone Experience

EN.553.806 Capstone Experience

申请条件:

学生必须完成学士学位,最好是工程、数学、计算机科学或其他科学专业。此外,候选人应至少完成微积分(通过多元微积分),线性代数,微分方程,概率,计算机编程(如c++或Python)的本科水平的课程,最好辅之以统计学课程和至少一门证明写作课程。

语言要求:

托福成绩不低于100分(网考)或600分(纸考),雅思成绩达到7分

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