Quantum Computing - Lecture Notes
The following lecture notes are based on the book Quantum Computation and Quantum In-formation by Michael A. Nielsen and Isaac L. Chuang. They are for a math-based quantum ... not a property of quantum mechanics but rather of probability theory. 2.2 Postulate 2: Evolution of quantum systems
Lecture, Computing, Theory, Probability, Quantum, Probability theory, Quantum computing
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