Difference between revisions of "Educational program"
From Research management course
(Created page with "==Data Science: A Roadmap for Bachelor, Master, and Doctoral Degrees== ===Mathematics=== * Discrete analysis and graphs *** * Abstract algebra and group theory ** * Mathemat...") |
|||
(One intermediate revision by one other user not shown) | |||
Line 1: | Line 1: | ||
+ | {{#seo: | ||
+ | |title=Data Science: educational program | ||
+ | |titlemode=replace | ||
+ | |keywords=Data Science | ||
+ | |description=Data Science: A Roadmap for Bachelor, Master, and Doctoral Degrees | ||
+ | }} | ||
==Data Science: A Roadmap for Bachelor, Master, and Doctoral Degrees== | ==Data Science: A Roadmap for Bachelor, Master, and Doctoral Degrees== | ||
Line 41: | Line 47: | ||
* Machine learning and data analysis | * Machine learning and data analysis | ||
* Deep learning | * Deep learning | ||
+ | * Bayesian model selection | ||
+ | * Bayesian multi-modeling | ||
* Generative models (practice BS and theory MS) | * Generative models (practice BS and theory MS) | ||
* Reinforcement and online learning | * Reinforcement and online learning | ||
− | * Geometric deep learning | + | * Geometric deep learning |
+ | * Geometric generative models | ||
===Applications=== | ===Applications=== |
Latest revision as of 22:35, 14 February 2024
Contents
Data Science: A Roadmap for Bachelor, Master, and Doctoral Degrees
Mathematics
- Discrete analysis and graphs ***
- Abstract algebra and group theory **
- Mathematical *** and functional analysis *
- ODE, PDE, and mathematical modeling *
- Linear algebra ***
- Tensor algebra and calculus *
- Theoretical physics *
- Differential geometry and Geometric algebra *
- Scientific computation and numerical methods ***
- Measure and Probability ***
- Multivariate statistics ***
- Bayesian statistics and Graphical models **
- Stochastic processes and SDE *
- Bayesian model selection **
- Diffusion probability and flows **
Computer science
- Programming ***
- Computational differentiation **
- Software architectures **
- System analysis **
- Category theory *
- Parallel and distributed computing **
Optimization and control
- Discrete optimization **
- Convex optimization **
- Mathematical programming ***
- Optimal control**
Core of Data science
- Machine learning and data analysis
- Deep learning
- Bayesian model selection
- Bayesian multi-modeling
- Generative models (practice BS and theory MS)
- Reinforcement and online learning
- Geometric deep learning
- Geometric generative models
Applications
- Signal analysis
- Computer vision
- Audio processing
- Natural language processing
- Topic modeling and Information retrieval
- Recommender systems
- Multimedia and heterogeneous data
- Bioinformatics
- Brain-computer interfaces and metaverse
*** essential, ** recommended, * advanced
Exams
- Ph.D. theoretical minimum for Computer science: AI and machine learning