CDS course discussion, Apr 2014: Difference between revisions
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=== CMS course requirements === | === CMS course requirements === | ||
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* Core requirements: 7 common courses taken by all CMS students (first year) | |||
* Depth requirement: 3 courses in a given area | |||
* Breadth requirement: 3 courses from mathematics, science, engineering, or economics | |||
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* Algorithms & complexity: Approximation algorithms, online algorithms, complexity theory, and computability. | |||
* Algorithmic economics: Auctions and mechanism design, algorithmic game theory, and privacy. | |||
* Biological circuits: Organic substrates for computation, including neuronal computing and DNA computing. | |||
* Feedback & control: Robust control, feedback, dynamical systems theory. | |||
* Inference & statistics: Statistical decision theory, information theory, and adaptive signal processing. | |||
* Information systems: Information theory, coding theory, communication, and signal processing. | |||
* Machine learning & vision: Algorithmic, mathematical, and biological perspectives on computational models for learning and vision. | |||
* Networked systems: The study of complex networks, in fields ranging from biology, social science, communications, and power. | |||
* Optimization: Convex optimization, conic and discrete optimization, and numerical methods for largescale optimization. | |||
* Quantum information theory: Quantum algorithms and complexity, convex optimization, and operator theory. | |||
* Scientific computing: Computational methods for problems arising in the physical sciences, partial differential equations. | |||
* Uncertainty quantification: Markov chains and martingales, stochastic system analysis, and convex optimization. | |||
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Revision as of 17:20, 11 April 2014
CMS course requirements
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Track | Fall | Winter | Spring |
Core |
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Feedback and control |
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Additional CMS courses
Track | Fall | Winter | Spring |
Mathematics |
CDS 201 - Linear Algebra & Applied Operator Theory
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Stochastic systems |
Introduction to Stochastic Processes and Modeling
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Markov Chains, Discrete Stochastic Processes and Applications
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Stochastic Inference
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Dynamical Systems |
CDS 140a - | ||
Robust Control |
Modern Control Theory
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Algorithmic Game Theory
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