The Holy Grail of Quantum Artificial Intelligence: Major Challenges in
Accelerating the Machine Learning Pipeline
- URL: http://arxiv.org/abs/2004.14035v1
- Date: Wed, 29 Apr 2020 09:07:05 GMT
- Title: The Holy Grail of Quantum Artificial Intelligence: Major Challenges in
Accelerating the Machine Learning Pipeline
- Authors: Thomas Gabor (1), Leo S\"unkel (1), Fabian Ritz (1), Thomy Phan (1),
Lenz Belzner (2), Christoph Roch (1), Sebastian Feld (1), Claudia
Linnhoff-Popien (1) ((1) LMU Munich, (2) MaibornWolff)
- Abstract summary: We discuss the synergetic connection between quantum computing and artificial intelligence.
After surveying current approaches to quantum artificial intelligence, we deduce four major challenges for the future of quantum artificial intelligence.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We discuss the synergetic connection between quantum computing and artificial
intelligence. After surveying current approaches to quantum artificial
intelligence and relating them to a formal model for machine learning
processes, we deduce four major challenges for the future of quantum artificial
intelligence: (i) Replace iterative training with faster quantum algorithms,
(ii) distill the experience of larger amounts of data into the training
process, (iii) allow quantum and classical components to be easily combined and
exchanged, and (iv) build tools to thoroughly analyze whether observed benefits
really stem from quantum properties of the algorithm.
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