There has been a lot of buzz about quantum computers
and for good reason. The futuristic computers are designed to mimic what
happens in nature at microscopic scales, which means they have the power to
better understand the quantum realm and speed up the discovery of new
materials, including pharmaceuticals, environmentally friendly chemicals, and
more. However, experts say viable quantum computers are still a decade away or
more. What are researchers to do in the meantime?
A new Caltech-led study in the journal Science
describes how machine learning tools, run on classical computers, can be used
to make predictions about quantum systems and thus help researchers solve some
of the trickiest physics and chemistry problems. While this notion has been
shown experimentally before, the new report is the first to mathematically
prove that the method works.
"Quantum computers are ideal for many types of
physics and materials science problems," says lead author Hsin-Yuan
(Robert) Huang, a graduate student working with John Preskill, the Richard P.
Feynman Professor of Theoretical Physics and the Allen V. C. Davis and
Lenabelle Davis Leadership Chair of the Institute for Quantum Science and
Technology (IQIM). "But we aren't quite there yet and have been surprised
to learn that classical machine learning methods can be used in the meantime.
Ultimately, this paper is about showing what humans can learn about the
physical world."
At microscopic levels, the physical world becomes an
incredibly complex place ruled by the laws of quantum physics. In this realm,
particles can exist in a superposition of states, or in two states at once. And
a superposition of states can lead to entanglement, a phenomenon in which
particles are linked, or correlated, without even being in contact with each
other. These strange states and connections, which are widespread within
natural and human-made materials, are very hard to describe mathematically.
"Predicting the low-energy state of a material
is very hard," says Huang. "There are huge numbers of atoms, and they
are superimposed and entangled. You can't write down an equation to describe it
all."
The new study is the first mathematical
demonstration that classical machine learning can be used to bridge the gap
between us and the quantum world. Machine learning is a type of computer
application that mimics the human brain to learn from data.’
"We are classical beings living in a quantum
world," says Preskill. "Our brains and our computers are classical,
and this limits our ability to interact with and understand the quantum
reality."
While previous studies have shown that machine
learning applications have the ability to solve some quantum problems, these
methods typically operate in ways that make it difficult for researchers to
learn how the machines arrived at their solutions.
"Normally, when it comes to machine learning,
you don't know how the machine solved the problem. It's a black box," says
Huang. "But now we've essentially figured out what's happening in the box
through our numerical simulations." Huang and his colleagues did extensive
numerical simulations in collaboration with the AWS Center for Quantum
Computing at Caltech, which corroborated their theoretical results.
The new study will help scientists better understand
and classify complex and exotic phases of quantum matter.
"The worry was that people creating new quantum
states in the lab might not be able to understand them," Preskill
explains. "But now we can obtain reasonable classical data to explain
what's going on. The classical machines don't just give us an answer like an
oracle but guide us toward a deeper understanding."
Co-author Victor V. Albert, a NIST (National
Institute of Standards and Technology) physicist and former DuBridge Prize
Postdoctoral Scholar at Caltech, agrees. "The part that excites me most
about this work is that we are now closer to a tool that helps you understand
the underlying phase of a quantum state without requiring you to know very much
about that state in advance."
Ultimately, of course, future quantum-based machine
learning tools will outperform classical methods, the scientists say. In a
related study appearing June 10, 2022, in Science, Huang, Preskill, and their
collaborators report using Google's Sycamore processor, a rudimentary quantum
computer, to demonstrate that quantum machine learning is superior to classical
approaches.
"We are still at the very beginning of this
field," says Huang. "But we do know that quantum machine learning
will eventually be the most efficient."
The Science study is titled "Provably efficient
machine learning for quantum many-body problems."
Reference: Science
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