On Quantum Linear Algebra for Machine Learning | Quantum Colloquium

On Quantum Linear Algebra for Machine Learning | Quantum Colloquium

Published on ● Video Link: https://www.youtube.com/watch?v=OE5a0Mgcgwc



Duration: 1:02:50
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Ewin Tang (University of Washington)
Quantum Colloquium, Mar. 30th, 2021
https://simons.berkeley.edu/events/quantum-colloquium

We will discuss quantum singular value transformation (QSVT), a simple unifying framework for quantum linear algebra algorithms developed by Gilyén et al. QSVT is often applied to try to achieve quantum speedups for machine learning problems. We will see the typical structure of such an application, the barriers to achieving super-polynomial quantum speedup, and the state of the literature that's attempting to bypass these barriers. Along the way, we'll also see an interesting connection between quantum linear algebra and classical sampling and sketching algorithms (explored in the form of "quantum-inspired" classical algorithms).







Tags:
Simons Institute
theoretical computer science
UC Berkeley
Computer Science
Theory of Computation
Theory of Computing
Quantum Colloquium
Ewin Tang