Difference between revisions of "Quantum computation"

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*[http://www.bbc.co.uk/news/science-environment-17688257 Quantum computing: Is it possible, and should you care?]
 
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Revision as of 21:39, 2 October 2017

Computers have multiplied by millions of times in their power over the last decades, but still there are many areas in which they seem to have not gained much ability, for example they still seem light years away from being able to partake in spoken conversation or learn and apply new concepts. At first it was thought to be a lack of computational power or a lack of understanding of the neural network systems our brains employ to do such tasks. But nowadays even home computers are far more powerful than any brain and neural networks are understood well and shown to be Turing machines - they do not perform any operations that can't be performed by any other computational machine of sufficient power.

It turns out that this class of computationally insurmountable problems that brains seem to be able to perform with such ease - are all expressible as optimisation problems, which basically arrange the entire set of feasible solutions into a "landscape" where the lowest points represent optimal solutions. Using classical techniques, it's very difficult to know whether a low point in the space (a local minimum) is a comparatively good one or not without searching the entire space, which is usually computationally infeasible or impossible, so many techniques such as simulated annealing have been developed to try to find globally good minima at a practical cost. But even with far superior computational power, no classical methods have been achieved that solve the difficult problems anywhere near as effectively as the brain.

Quantum annealing.jpg

Recent advances in quantum computation have shown that quantum computers are extremely proficient when it comes to solving optimisation problems. They use a process called quantum annealing, which basically employs the quantum tunnelling effect to find successively lower minima in the solution space. Usually quantum tunnelling applies to confined particles that can escape confinement by taking advantage of the Heisenburg uncertainty principle, which allows them to have a probability of existing outside their confined area. In a quantum computer, this effect can be applied to the current point of focus in a search space rather than to a particle in physical space. The diagram to the right illustrates the basic idea.

There is very strong evidence that suggests that this is the process our brains actually use to achieve these seemingly impossible computational tasks; also many enzymes are known to use quantum tunnelling - and even the anti-oxidation action of common green tea has been shown to use the quantum tunnelling effect. In the brain, the quantum annealing process is the slow problem-solving process that helps to form the neural connectivity, whereas the real-time stimulus-response side is done by the neural network. Many people learn to employ their quantum side from an early age, realising that there's an aspect of their mind to which they can hand difficult problems and from which receive back deep insight hours or days later; it's the quantum computer in our brains that processes the tasks we put into this "too hard basket".

Quantum chips

Quantum chip.jpg

Rather than having a dedicated "quantum computer" as such, the more likely way that the technology will develop is in the form of co-processor chips that would form a part of the existing computers or chips. This is because quantum computation is not very good at normal computation, it only really specialises in solving the problems that can be expressed as a specific class of optimisation problems as described above.

The chips being developed now, such as the 28-qubit adiabatic chip developed by D-Wave Systems shown to the right, are not powerful enough to be of real use in practical applications and are solely being used for research and development of further quantum computing technology.

When the technology is mature, computers will most likely exhibit a dedicated quantum chip, or perhaps future CPU's will exhibit quantum cores in addition to their standard processing cores. Computers equipped with such technology should be vastly different in usability from our current ones, for starters, we should be able to converse with them as we would any other human, thereby requiring only minimal use of a keyboard and mouse.

This would be far more than simple voice recognition; by bringing actual understanding of the conversation by the computer into the realm of feasibility. Imagine a day when you could say high level things to your computer like, "computer, could you please invite my friends over for drinks on Friday next week? and if anyone hasn't responded by Wednesday, send a reminder".

Quantum encryption

Determining the prime factors of a number is an example of a problem frequently used to ensure cryptographic security in encryption systems; this problem is believed to require superpolynomial time in the number of digits - it is relatively easy to construct a problem that would take longer than the known age of the Universe to calculate on current computers using current algorithms.

Shor's algorithm is a quantum algorithm for integer factorization. On a quantum computer, Shor's algorithm takes time O((log N)3) to factor an integer N. This is exponentially faster than the best-known classical factoring algorithm, which works in time about [math]O(2^{{(\log N)}^{1/3}})[/math]. Peter Shor discovered the eponymous algorithm in 1994.

Shor's algorithm is important because it breaks a widely used public-key cryptography scheme known as RSA. RSA is based on the assumption that factoring large numbers is computationally infeasible. So far as is known, this assumption is valid for classical computers. No classical algorithm is known that can factor in time polynomial in log N. However, Shor's algorithm shows that factoring is efficient on a quantum computer, so a quantum computer could "break" RSA.

A way out of this dilemma would be to use some kind of quantum cryptography. There are also some digital signature schemes that are believed to be secure against quantum computers, such as Lamport signatures.

Grover's algorithm can also be used to obtain a quadratic speed-up [over a brute-force search] for the NP-complete class of problems.

Quantum non-locality

Related news

See also