[eng] Reservoir Computing is a paradigm of Machine Learning that harnesses the information processing potential of complex dynamical systems. Recently, quantum systems have been suggested as promising candidates for reservoir computing due to the significant growth in degrees of freedom they allow against their classical counterparts. In this thesis, a photonic platform is proposed for reservoir computing and on-line data processing, in the realm of continuous variable quantum optics. A non-linear medium provides the needed interaction between different optical modes. The output light is splitted in a re-injected and a measured component. Control of the needed memory is effectively achieved through the coherent optical feedback. The pr...
In recent years, researchers are investing more and more resources in understanding to what extent q...
This thesis is an exploration of the power of photonic resources, as viewed from several different b...
International audienceMany information processing challenges are difficult to solve with traditional...
Reservoir Computing is a paradigm of Machine Learning that harnesses the information processing pote...
Trabajo presentado en el QTech2020 (Quantum Technology International Conference), celebrada online d...
The concurrent rise of artificial intelligence and quantum information poses an opportunity for crea...
We establish the potential of continuous-variable Gaussian states of linear dynamical systems for ma...
Trabajo presentado en el 2nd International Workshop on Quantum Network Science (NetSci 2020 Satellit...
We establish the potential of continuous-variable Gaussian states in performing reservoir computing ...
State of the art and motivations We know that classical systems can compute, and we exploit this eve...
Trabajo presentado en la Conference on Complex Systems (CCS), celebrada en Lyon del 25 al 29 de octu...
The natural dynamics of complex networks can be harnessed for information processing purposes. A par...
Trabajo presentado en el IFISC Poster Party (online).-- The IFISC Poster Party is an annual activit...
Trabajo presentado en Q-TURN 2020 (Changing paradigms in quantum science), celebrado del 23 al 27 de...
We review the field of Quantum Optical Information from elementary considerations through to quantum...
In recent years, researchers are investing more and more resources in understanding to what extent q...
This thesis is an exploration of the power of photonic resources, as viewed from several different b...
International audienceMany information processing challenges are difficult to solve with traditional...
Reservoir Computing is a paradigm of Machine Learning that harnesses the information processing pote...
Trabajo presentado en el QTech2020 (Quantum Technology International Conference), celebrada online d...
The concurrent rise of artificial intelligence and quantum information poses an opportunity for crea...
We establish the potential of continuous-variable Gaussian states of linear dynamical systems for ma...
Trabajo presentado en el 2nd International Workshop on Quantum Network Science (NetSci 2020 Satellit...
We establish the potential of continuous-variable Gaussian states in performing reservoir computing ...
State of the art and motivations We know that classical systems can compute, and we exploit this eve...
Trabajo presentado en la Conference on Complex Systems (CCS), celebrada en Lyon del 25 al 29 de octu...
The natural dynamics of complex networks can be harnessed for information processing purposes. A par...
Trabajo presentado en el IFISC Poster Party (online).-- The IFISC Poster Party is an annual activit...
Trabajo presentado en Q-TURN 2020 (Changing paradigms in quantum science), celebrado del 23 al 27 de...
We review the field of Quantum Optical Information from elementary considerations through to quantum...
In recent years, researchers are investing more and more resources in understanding to what extent q...
This thesis is an exploration of the power of photonic resources, as viewed from several different b...
International audienceMany information processing challenges are difficult to solve with traditional...