As deep learning techniques become more and more popular, there is the need to move these applications from the data scientist’s Jupyter notebook to efficient and reliable enterprise solutions. Moreover, distributed training of deep learning models will happen more and more outside the well-known borders of cloud and HPC infrastructure and will move to edge and mobile platforms. Current techniques for distributed deep learning have drawbacks in both these scenarios, limiting their long-term applicability. After a critical review of the established techniques for Data Parallel training from both a distributed computing and deep learning perspective, a novel approach based on nearest-neighbour communications is presented in order to overco...
This thesis is done as part of a service development task of distributed deep learning on the CSC pr...
Decentralized training of deep learning models enables on-device learning over networks, as well as ...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...
The success of deep learning may be attributed in large part to remarkable growth in the size and co...
Distributed deep learning becomes very common to reduce the overall training time by exploiting mult...
Deep learning (DL) using large scale, high-quality IoT datasets can be computationally expensive. Ut...
Deep learning (DL) using large scale, high-quality IoT datasets can be computationally expensive. Ut...
Deep neural networks are trained by solving huge optimization problems with large datasets and milli...
One of the reasons behind the tremendous success of deep learning theory and applications in the rec...
The distributed training of deep learning models faces two issues: efficiency and privacy. First of ...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
Deep learning has shown outstanding performance in var-ious machine learning tasks. However, the dee...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
This thesis is done as part of a service development task of distributed deep learning on the CSC pr...
Decentralized training of deep learning models enables on-device learning over networks, as well as ...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...
The success of deep learning may be attributed in large part to remarkable growth in the size and co...
Distributed deep learning becomes very common to reduce the overall training time by exploiting mult...
Deep learning (DL) using large scale, high-quality IoT datasets can be computationally expensive. Ut...
Deep learning (DL) using large scale, high-quality IoT datasets can be computationally expensive. Ut...
Deep neural networks are trained by solving huge optimization problems with large datasets and milli...
One of the reasons behind the tremendous success of deep learning theory and applications in the rec...
The distributed training of deep learning models faces two issues: efficiency and privacy. First of ...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
Deep learning has shown outstanding performance in var-ious machine learning tasks. However, the dee...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
The demand for artificial intelligence has grown significantly over the past decade, and this growth...
This thesis is done as part of a service development task of distributed deep learning on the CSC pr...
Decentralized training of deep learning models enables on-device learning over networks, as well as ...
The rapid growth of data and ever increasing model complexity of deep neural networks (DNNs) have en...