The increase in computational power of embedded devices and the latency demands of novel applications brought a paradigm shift on how and where the computation is performed. Although AI inference is slowly moving from the cloud to end-devices with limited resources, time-centric recurrent networks like Long-Short Term Memory remain too complex to be transferred on embedded devices without extreme simplifications and limiting the performance of many notable applications. To solve this issue, the Reservoir Computing paradigm proposes sparse, untrained non-linear networks, the Reservoir, that can embed temporal relations without some of the hindrances of Recurrent Neural Networks training, and with a lower memory occupation. Echo State Network...
International audienceThis paper deals with two ideas appeared during the last developing phase in A...
In the context of recurrent neural networks, gated architectures such as the GRU have contributed to...
Paaßen B, Schulz A. Reservoir memory machines. In: Verleysen M, ed. Proceedings of the 28th European...
The increase in computational power of embedded devices and the latency demands of novel application...
The increasing role of Artificial Intelligence (AI) and Machine Learning (ML) in our lives brought a...
As one of the most important paradigms of recurrent neural networks, the echo state network (ESN) ha...
Recurrent neural networks are successfully used for tasks like time series processing and system ide...
Abstract. Reservoir computing has emerged in the last decade as an alternative to gradient descent m...
In this paper, we present a novel architecture and learning algorithm for a multilayered echo state ...
Echo state networks (ESNs) are a powerful form of reservoir computing that only require training of ...
Echo State Networks are a model used for supervised learning since the 2000s. This paper presents a ...
International audienceReservoirPy is a simple user-friendly library based on Python scientific modul...
Abstract—In the last decade, a new computational paradigm was introduced in the field of Machine Lea...
Echo State Networks (ESNs) represent a successful methodology for efficient modeling of Recurrent Ne...
Echo State Networks (ESNs) were introduced to simplify the design and training of Recurrent Neural N...
International audienceThis paper deals with two ideas appeared during the last developing phase in A...
In the context of recurrent neural networks, gated architectures such as the GRU have contributed to...
Paaßen B, Schulz A. Reservoir memory machines. In: Verleysen M, ed. Proceedings of the 28th European...
The increase in computational power of embedded devices and the latency demands of novel application...
The increasing role of Artificial Intelligence (AI) and Machine Learning (ML) in our lives brought a...
As one of the most important paradigms of recurrent neural networks, the echo state network (ESN) ha...
Recurrent neural networks are successfully used for tasks like time series processing and system ide...
Abstract. Reservoir computing has emerged in the last decade as an alternative to gradient descent m...
In this paper, we present a novel architecture and learning algorithm for a multilayered echo state ...
Echo state networks (ESNs) are a powerful form of reservoir computing that only require training of ...
Echo State Networks are a model used for supervised learning since the 2000s. This paper presents a ...
International audienceReservoirPy is a simple user-friendly library based on Python scientific modul...
Abstract—In the last decade, a new computational paradigm was introduced in the field of Machine Lea...
Echo State Networks (ESNs) represent a successful methodology for efficient modeling of Recurrent Ne...
Echo State Networks (ESNs) were introduced to simplify the design and training of Recurrent Neural N...
International audienceThis paper deals with two ideas appeared during the last developing phase in A...
In the context of recurrent neural networks, gated architectures such as the GRU have contributed to...
Paaßen B, Schulz A. Reservoir memory machines. In: Verleysen M, ed. Proceedings of the 28th European...