Quantum computing and neural networks show great promise for the future of information processing. In this paper we study a quantum reservoir computer (QRC), a framework harnessing quantum dynamics and designed for fast and efficient solving of temporal machine learning tasks such as speech recognition, time series prediction and natural language processing. Specifically, we study memory capacity and accuracy of a quantum reservoir computer based on the fully connected transverse field Ising model by investigating different forms of inter-spin interactions and computing timescales. We show that variation in inter-spin interactions leads to a better memory capacity in general, by engineering the type of interactions the capacity can be great...
Quantum neural networks form one pillar of the emergent field of quantum machine learning. Here quan...
Quantum computers have a great potential to change the future of Artificial Intelligence (AI). Altho...
Efficient quantum state measurement is important for maximizing the extracted information from a qua...
Quantum computing and neural networks show great promise for the future of information processing. I...
The dynamical behaviour of complex quantum systems can be harnessed for information processing. With...
Trabajo presentado en el IFISC Poster Party (online).-- The IFISC Poster Party is an annual activit...
In recent years, researchers are investing more and more resources in understanding to what extent q...
Trabajo presentado en la Conference on Complex Systems (CCS), celebrada en Lyon del 25 al 29 de octu...
The concurrent rise of artificial intelligence and quantum information poses an opportunity for crea...
Trabajo presentado en el 2nd International Workshop on Quantum Network Science (NetSci 2020 Satellit...
Quantum reservoir computing provides a framework for exploiting the natural dynamics of quantum syst...
Quantum machine learning is the synergy between quantum computing resources and machine learning met...
A content-addressable memory (CAM) stores key-value associations such that the key is recalled by pr...
Quantum machine learning represents a promising avenue for data processing, also for purposes of seq...
Quantum reservoir computing is a machine learning approach designed to exploit the dynamics of quant...
Quantum neural networks form one pillar of the emergent field of quantum machine learning. Here quan...
Quantum computers have a great potential to change the future of Artificial Intelligence (AI). Altho...
Efficient quantum state measurement is important for maximizing the extracted information from a qua...
Quantum computing and neural networks show great promise for the future of information processing. I...
The dynamical behaviour of complex quantum systems can be harnessed for information processing. With...
Trabajo presentado en el IFISC Poster Party (online).-- The IFISC Poster Party is an annual activit...
In recent years, researchers are investing more and more resources in understanding to what extent q...
Trabajo presentado en la Conference on Complex Systems (CCS), celebrada en Lyon del 25 al 29 de octu...
The concurrent rise of artificial intelligence and quantum information poses an opportunity for crea...
Trabajo presentado en el 2nd International Workshop on Quantum Network Science (NetSci 2020 Satellit...
Quantum reservoir computing provides a framework for exploiting the natural dynamics of quantum syst...
Quantum machine learning is the synergy between quantum computing resources and machine learning met...
A content-addressable memory (CAM) stores key-value associations such that the key is recalled by pr...
Quantum machine learning represents a promising avenue for data processing, also for purposes of seq...
Quantum reservoir computing is a machine learning approach designed to exploit the dynamics of quant...
Quantum neural networks form one pillar of the emergent field of quantum machine learning. Here quan...
Quantum computers have a great potential to change the future of Artificial Intelligence (AI). Altho...
Efficient quantum state measurement is important for maximizing the extracted information from a qua...