Articles

Affichage des articles du mars, 2020

Ebook - IA Quantique [FR]

Ebook - Quantum AI [EN]

Quantum AI - Part 4 - The key role of DataOps

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This article is the fourth of our quantum AI column. Previously, we have seen that:  Chapter 1: quantum computing will significantly accelerate the execution of some machine learning algorithms and cryptographic processing; Chapter 2: quantum phenomena (superposition and entanglement) responsible for parallel computing can only be exploited for a very short time under strict isolation conditions (decoherence problem); Chapter 3: Despite all its promises, quantum AI will probably not be able to give birth to an artificial consciousness or a so-called strong AI; In this new chapter, I want to share my point of view on the theoretical implementation of a quantum production device in a company. This can for example be a decision-making (BI) or machine learning process based on an infrastructure mixing both conventional and quantum machines. The interest being, of course, to take advantage of quantum processors to solve problems that are insoluble today, regardless of the servers us

Quantum AI - Part 3 - The rise of the AIs

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Previously, in the Quantum AI column, we have seen that quantum computing would theoretically be able to significantly increase the execution speed of some Machine Learning algorithms. This is due to the phenomena at the core of such computers (like states superposition, qubits entanglement, superposed states decoherence, immediate wave function collapse) that enable parallel calculations by storing several (superposed) information within a single particle. By considerably speeding up algorithmic processing, quantum will make AI solve new problems. Some people go even further and say it could enable the design of an artificial brain as efficient as that of humans, especially able to integrate abstract concepts such as consciousness and feelings. The question that then arises is whether quantum AI would be more likely to become “strong AI” (artificial general intelligence)… First of all, what is human intelligence? Before looking at the complementarities between quantum and strong

Quantum AI - Part 2 - The dice have been cast!

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Previously, in the Quantum AI column, we have seen that quantum computing would theoretically enable some complex machine learning algorithms to be executed in a “reasonable” time (less than several years…). But what is so different about quantum computers compared to today’s computers? The purpose of this article is not to go into theoretical details but to simply illustrate – as faithfully as possible – the fundamental differences between classical and quantum computers, especially with a quantum algorithm example. Understanding the bit concept with the coin analogy To understand why calculations are potentially much faster in a quantum computer, let’s recall the general functioning of conventional computers. They use bits to code information and are made of electronic circuits so that, when the current flows through the circuit, the bit is worth 1, otherwise the bit is worth 0. You can also consider the electrical voltage rather than the current, the approach will remain th