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Silq is the first intuitive programming language for Quantum Computers

Posted on June 17, 2020

Several technical advances have been achieved recently in the pursuit of powerful quantum computers. Now, Computer scientists from ETH Zurich have made an important breakthrough in the field of programming languages: their quantum language is the first of its kind that is as elegant, simple and safe as classical computer languages.

Their quantum programming language Silq allows programmers to utilize the potential of quantum computers better than with existing languages, because the code is more compact, faster, more intuitive and easier to understand for programmers.

Quantum computing has been seeing increased attention over the last decade, since these computers, which function according to the principles of quantum physics, have enormous potential. Today, most researchers believe that these computers will one day be able to solve certain problems faster than classical computers, since to perform their calculations they use entangled quantum states in which various bits of information overlap at a certain point in time. This means that in the future, quantum computers will be able to efficiently solve problems which classical computers cannot solve within a reasonable timeframe.

This quantum supremacy has still to be proven conclusively. However, some significant technical advances have been achieved recently. In late summer 2019, a quantum computer succeeded in solving a problem – albeit a very specific one – more quickly than the fastest classical computer.

For certain “quantum algorithms”, i.e. computational strategies, it is also known that they are faster than classical algorithms, which do not exploit the potential of quantum computers. To date, however, these algorithms still cannot be calculated on existing quantum hardware because quantum computers are currently still too error-​prone.

Utilizing the potential of quantum computation not only requires the latest technology, but also a quantum programming language to describe quantum algorithms. In principle, an algorithm is a “recipe” for solving a problem; a programming language describes the algorithm so that a computer can perform the necessary calculations.

Today, quantum programming languages are tied closely to specific hardware; in other words, they describe precisely the behaviour of the underlying circuits. For programmers, these “hardware description languages” are cumbersome and error-​prone, since the individual programming instructions must be extremely detailed and thus explicitly describe the minutiae needed to implement quantum algorithms.

This is where the research group come in with their development of Silq. Silq is the first quantum programming language that is not designed primarily around the construction and functionality of the hardware, but on the mindset of the programmers when they want to solve a problem – without requiring them to understand every detail of the computer architecture and implementation.

Computer scientists refer to computer languages that abstract from the technical details of the specific type of computer as high-​level programming languages. Silq is the very first high-​level programming language for quantum computers. High-​level programming languages are more expressive, meaning that they can describe even complex tasks and algorithms with less code. This makes them more comprehensible and easier to use for programmers. They can also be used with different computer architectures.

The greatest innovation and simplification that Silq brings to quantum programming languages concerns a source of errors that has plagued quantum programming until now. A computer calculates a task in several intermediate steps, which creates intermediate results or temporary values.

In order to relieve the memory, classical computers automatically erase these values. Computer scientists refer to this as “garbage collection”, since the unneeded temporary values are disposed of.

In the case of quantum computers, this disposal is trickier due to quantum entanglement: the previously calculated values can interact with the current ones, interfering with the correct calculation. Accordingly, cleaning up such temporary values on quantum computers requires a more advanced technique of so-​called uncomputation.

Silq is the first programming language that automatically identifies and erases values that are no longer needed.

The computer scientists achieved this by applying their knowledge of classical programming languages: their automatic uncomputation method uses only programming commands that are free of any special quantum operations – they are “qfree”.

News Source: ETH Zurich

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