Real Clear Science


We Plan to Create a Quantum Computer That Acts Like the Brain
<https://www.realclearscience.com/articles/2019/01/11/we_plan_to_create_a_quantum_computer_that_acts_like_the_brain_110856.html#comments-container>
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By Michael Hartmann<https://www.realclearscience.com/authors/michael_hartmann/>
January 11, 201



The human brain has amazing capabilities making it in many ways more powerful 
than the world’s most advanced computers. So it’s not surprising that engineers 
have long been trying to copy it. Today, artificial neural 
networks<https://theconversation.com/what-powers-facebook-and-googles-ai-and-how-computers-could-mimic-brains-52232>
 inspired by the structure of the brain are used to tackle some of the most 
difficult problems in artificial intelligence (AI). But this approach typically 
involves building software so information is processed in a similar way to the 
brain, rather than creating hardware that mimics neurons.


My colleagues and I instead hope to build the first dedicated neural network 
computer, using the latest “quantum” technology rather than AI software. By 
combining these two branches of computing, we hope to produce a breakthrough 
which leads to AI that operates at unprecedented speed, automatically making 
very complex decisions in a very short time.


We need much more advanced AI if we want it to help us create things like truly 
autonomous self-driving 
cars<https://theconversation.com/silicon-valley-is-winning-the-race-to-build-the-first-driverless-cars-91949>
 and systems for accurately managing the traffic flow of an entire city in 
real-time. Many attempts to build this kind of software involve writing code 
that mimics the way neurons in the human brain work and combining many of these 
artificial neurons into a network. Each neuron mimics a decision-making process 
by taking a number of input signals and processing them to give an output 
corresponding to either “yes” or “no”.


Each input is weighted according to how important it is to the decision. For 
example, for AI that could tell you which restaurant you would most enjoy going 
to, the quality of the food may be more important than the location of the 
table that’s available, so would be given more weight in the decision-making 
process.

These weights are adjusted in test runs to improve the performance of the 
network, effectively training the system to work better. This was how Google’s 
AlphaGo 
software<https://theconversation.com/googles-new-go-playing-ai-learns-fast-and-even-thrashed-its-former-self-85979>
 learned the complex strategy game Go, playing against a copy of itself until 
it was ready to beat the human world champion by four games to one. But the 
performance of the AI software strongly depends on how much input data it can 
be trained on (in the case of AlphaGo, it was how often it played against 
itself).


Our Quromorphic 
project<https://www.hw.ac.uk/about/news/2018/heriot-watt-leads-on-next-gen-computers.htm>
 aims to radically speed up this process and boost the amount of input data 
that can be processed by building neural networks that work on the principles 
of quantum mechanics. These networks will not be coded in software, but 
directly built in hardware made of superconducting electrical circuits. We 
expect that this will make it easier to scale them up without errors.


Traditional computers store data in units known as bits, which can take one of 
two states, either 0 or 1. Quantum 
computers<https://theconversation.com/how-we-created-the-first-ever-blueprint-for-a-real-quantum-computer-72290>
 store data in “qubits”, which can take on many different states. Every extra 
qubit added to the system doubles its computing power. This means that quantum 
computers can process huge amounts of data in parallel (at the same time).


So far, only small quantum 
computers<https://www.research.ibm.com/ibm-q/technology/devices/> that 
demonstrate parts of the technology have been successfully 
built<https://www.nature.com/news/d-wave-upgrade-how-scientists-are-using-the-world-s-most-controversial-quantum-computer-1.21353>.
 Motivated by the prospect of significantly greater processing power, many 
universities<http://www.opensuperq.eu>, tech 
giants<https://ai.googleblog.com/2018/03/a-preview-of-bristlecone-googles-new.html>
 and start-up companies<https://oxfordquantumcircuits.com> are now working on 
designs. But none have yet reached a stage where they can outperform existing 
(non-quantum) computers.


This is because quantum computers need to be very well isolated from 
disturbances in their surroundings, which becomes harder and harder as the 
machines get bigger. For example, quantum processors need to be kept in a 
vacuum at a very cold temperature (close to absolute zero) otherwise they could 
be affected by air molecules striking them. But the processor also needs to be 
connected to the outside world somehow in order to communicate.

More room for error

The technical challenges in our project are very similar to those for building 
a universal quantum computer that can be used for any application. But we hope 
that AI applications can tolerate more errors than conventional computing and 
so the machine won’t need to be quite so well isolated.


For example, AI is often used to classify data, such as deciding whether a 
picture shows a car or a bicycle. It doesn’t need to fully capture every detail 
of the object to make that decision. So while AI needs high computer speeds it 
doesn’t demand such high levels of precision. For this reason, we hope that 
makes AI an ideal field for near-term quantum computing.


-- 
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