Raspberry Pi (Pi) is a versatile general-purpose embedded computing device that can be used for both machine learning (ML) and deep learning (DL) inference applications such as face detection. This study trials the use of a Pi Spark cluster for distributed inference in TensorFlow. Specifically, it investigates the performance difference between a 2-node Pi 4B Spark cluster and other systems, including a single Pi 4B and a mid-end desktop computer. Enhancements for the Pi 4B were studied and compared against the Spark cluster to identify the more effective method in increasing the Pi 4B’s DL performance. Three experiments involving DL inference, which in turn involve image classification and face detection tasks, were carried out. Results sh...
Machine Learning (ML) frameworks are tools that facilitate the development and deployment of ML mode...
This thesis deals with the implementation of inference model, based on the methods of deep learning,...
Deep Learning frameworks, such as TensorFlow, MXNet, Chainer, provide many basic building blocks for...
peer reviewedWith renewed global interest for Artificial Intelligence (AI) methods, the past decade ...
Deep learning-based object detection technology can efficiently infer results by utilizing graphics ...
As deep learning has been adopted in various domains, the inference process is of growing importance...
Due to the latest development in the context of Internet of Things, the amount of generated and coll...
Deep learning is a very computational intensive task. Traditionally GPUs have been used to speed-up ...
Computer science and engineering have evolved rapidly over the last decade offering innovative Machi...
The popularity of Deep Learning (DL) has grown exponentially in all scientific fields, included part...
In recent years, breakthroughs in machine learning and deep learning have shown their unlimited pote...
The aim of this thesis was to review the tools needed for the development of deep learning applicati...
Deep neural networks have gained popularity in recent years, obtaining outstanding results in a wide...
26th IEEE International Conference on Systems, Signals and Image Processing (IWSSIP), Osijek, Croati...
Training deep learning (DL) models is a highly compute-intensive task since it involves operating on...
Machine Learning (ML) frameworks are tools that facilitate the development and deployment of ML mode...
This thesis deals with the implementation of inference model, based on the methods of deep learning,...
Deep Learning frameworks, such as TensorFlow, MXNet, Chainer, provide many basic building blocks for...
peer reviewedWith renewed global interest for Artificial Intelligence (AI) methods, the past decade ...
Deep learning-based object detection technology can efficiently infer results by utilizing graphics ...
As deep learning has been adopted in various domains, the inference process is of growing importance...
Due to the latest development in the context of Internet of Things, the amount of generated and coll...
Deep learning is a very computational intensive task. Traditionally GPUs have been used to speed-up ...
Computer science and engineering have evolved rapidly over the last decade offering innovative Machi...
The popularity of Deep Learning (DL) has grown exponentially in all scientific fields, included part...
In recent years, breakthroughs in machine learning and deep learning have shown their unlimited pote...
The aim of this thesis was to review the tools needed for the development of deep learning applicati...
Deep neural networks have gained popularity in recent years, obtaining outstanding results in a wide...
26th IEEE International Conference on Systems, Signals and Image Processing (IWSSIP), Osijek, Croati...
Training deep learning (DL) models is a highly compute-intensive task since it involves operating on...
Machine Learning (ML) frameworks are tools that facilitate the development and deployment of ML mode...
This thesis deals with the implementation of inference model, based on the methods of deep learning,...
Deep Learning frameworks, such as TensorFlow, MXNet, Chainer, provide many basic building blocks for...