Quantum Information Science II: Efficient Quantum Computing - fault tolerance and complexity
Offered By: Massachusetts Institute of Technology via edX
Course Description
Overview
This three-module sequence of courses covers advanced topics in quantum computation and quantum information, including quantum error correction code techniques; efficient quantum computation principles, including fault-tolerance; and quantum complexity theory and quantum information theory. Prior knowledge of quantum circuits and elementary quantum algorithms is assumed. These courses are the second part in a sequence of two quantum information science subjects at MIT.
The three modules comprise:
A prior course (or strong background) in quantum mechanics is required. Knowledge of linear algebra is also strongly recommended, and other helpful math topics to know include probability and finite fields.
This course has been authored by one or more members of the Faculty of the Massachusetts Institute of Technology. Its educational objectives, methods, assessments, and the selection and presentation of its content are solely the responsibility of MIT.
For more information about MIT’s Quantum Curriculum, visit quantumcurriculum.mit.edu.
The three modules comprise:
- 8.371.1x: Quantum states, noise and error correction
- 8.371.2x: Efficient quantum computing - fault tolerance and complexity
- 8.371.3x: Advanced quantum algorithms and information theory
A prior course (or strong background) in quantum mechanics is required. Knowledge of linear algebra is also strongly recommended, and other helpful math topics to know include probability and finite fields.
This course has been authored by one or more members of the Faculty of the Massachusetts Institute of Technology. Its educational objectives, methods, assessments, and the selection and presentation of its content are solely the responsibility of MIT.
For more information about MIT’s Quantum Curriculum, visit quantumcurriculum.mit.edu.
Taught by
Isaac Chuang and Aram Harrow
Tags
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