2019 IEEE. Artificial intelligence based on deep learning has gained popularity in a broad range of applications. Software libraries and frameworks for deep learning provide developers with tools for fast deployment, hiding the algorithmic complexity for training and inference of large neural networks. These frameworks allow mitigating the computational complexity of such algorithms by interfacing parallel computing libraries for specific graphic processing units, which are not available on all platforms, especially if embedded. The framework we propose in this paper enables fast prototyping of custom hardware accelerators for deep learning. In particular we describe how to design, evaluate and deploy accelerators for PyTorch applications w...
With the rapid proliferation of computing systems and the internet, the amount of data generated has...
Deep convolutional neural networks (CNNs) obtain outstanding results in tasks that require human-lev...
Deep convolutional neural networks (CNNs) obtain outstanding results in tasks that require human-lev...
Deep Learning algorithms are gaining momentum as main components in a large number of fields, from c...
This work presents a self-contained and modifiable framework for fast and easy convolutional neural ...
Cyber-Physical System (CPS) typically consist of interacting software and hardware components that m...
Deep Neural Networks (DNNs) deployment for IoT Edge applications requires strong skills in hardware ...
Deep Neural Networks (DNNs) provide excellent performance in the field of machine learning and with ...
In the past few years, using Machine and Deep Learning techniques has become more and more viable, t...
International audienceConvolutional Neural Networks (CNNs) have emerged as an answer to next-generat...
Deep learning frameworks such as Caffe and Tensorflow has significantly eased the process of creatin...
We present PyCARL, a PyNN-based common Python programming interface for hardware-software cosimulati...
Deep Learning techniques have been successfully applied to solve many Artificial Intelligence (AI) a...
Interest is increasing in the use of neural networks and deep-learning for on-board processing tasks...
Proceedings of a meeting held 19-23 March 2018, Dresden, GermanyInternational audienceArtificial int...
With the rapid proliferation of computing systems and the internet, the amount of data generated has...
Deep convolutional neural networks (CNNs) obtain outstanding results in tasks that require human-lev...
Deep convolutional neural networks (CNNs) obtain outstanding results in tasks that require human-lev...
Deep Learning algorithms are gaining momentum as main components in a large number of fields, from c...
This work presents a self-contained and modifiable framework for fast and easy convolutional neural ...
Cyber-Physical System (CPS) typically consist of interacting software and hardware components that m...
Deep Neural Networks (DNNs) deployment for IoT Edge applications requires strong skills in hardware ...
Deep Neural Networks (DNNs) provide excellent performance in the field of machine learning and with ...
In the past few years, using Machine and Deep Learning techniques has become more and more viable, t...
International audienceConvolutional Neural Networks (CNNs) have emerged as an answer to next-generat...
Deep learning frameworks such as Caffe and Tensorflow has significantly eased the process of creatin...
We present PyCARL, a PyNN-based common Python programming interface for hardware-software cosimulati...
Deep Learning techniques have been successfully applied to solve many Artificial Intelligence (AI) a...
Interest is increasing in the use of neural networks and deep-learning for on-board processing tasks...
Proceedings of a meeting held 19-23 March 2018, Dresden, GermanyInternational audienceArtificial int...
With the rapid proliferation of computing systems and the internet, the amount of data generated has...
Deep convolutional neural networks (CNNs) obtain outstanding results in tasks that require human-lev...
Deep convolutional neural networks (CNNs) obtain outstanding results in tasks that require human-lev...