Many companies, organizations and/or universities have accumulated a large number of computing resources grouped in clusters. Cluster Federated Environments arise as a new architecture to take advantage of such resources by joining them and increasing the computing capacity. With this, a new problem appears, a high number of machines and computing resources implies a huge amount of energy consumption. The scheduling process, responsible for allocating the applications to the system resources, offers the possibility of improve the resource management increasing the system performance and energy efficiency. A considerably amount of research has been done in this field, but given the scheduling problem is classified as an NP problem it...
Improving the efficiency of big cloud providers has become a very difficult task. The great quantity...
Deep learning, machine learning algorithm based on artificial neural network, shows great success in...
Energy consumption in large-scale distributed systems, such as computational grids and clouds gains ...
In recent years, energy consumption has become a limiting factor in the evolution of highperformance...
The growth in size and computational requirements in training Neural Networks (NN) over the past few...
The aim of this work is to describe a possible approach for the optimization of the job scheduling i...
Deep neural networks (DNNs) have recently yielded strong results on a range of applications. Trainin...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...
Stemming from the growth and increased complexity of computer vision, natural language processing, a...
Neural networks are becoming more and more popular in scientific field and in the industry. It is mo...
Since the task scheduling problem belongs to the strong NP-hard combinatorial optimization problem, ...
Artificial Intelligence (AI) and Deep Learning (DL) algorithms are currently applied to a wide range...
During the last years, the amount of data which can be represented and processed as graph structured...
The standard scheduler of Hadoop does not consider the characteristics of jobs such as computational...
Deep learning powers many transformative core technologies including Autonomous Driving, Natural Lan...
Improving the efficiency of big cloud providers has become a very difficult task. The great quantity...
Deep learning, machine learning algorithm based on artificial neural network, shows great success in...
Energy consumption in large-scale distributed systems, such as computational grids and clouds gains ...
In recent years, energy consumption has become a limiting factor in the evolution of highperformance...
The growth in size and computational requirements in training Neural Networks (NN) over the past few...
The aim of this work is to describe a possible approach for the optimization of the job scheduling i...
Deep neural networks (DNNs) have recently yielded strong results on a range of applications. Trainin...
In recent years, machine learning (ML) and, more noticeably, deep learning (DL), have be- come incre...
Stemming from the growth and increased complexity of computer vision, natural language processing, a...
Neural networks are becoming more and more popular in scientific field and in the industry. It is mo...
Since the task scheduling problem belongs to the strong NP-hard combinatorial optimization problem, ...
Artificial Intelligence (AI) and Deep Learning (DL) algorithms are currently applied to a wide range...
During the last years, the amount of data which can be represented and processed as graph structured...
The standard scheduler of Hadoop does not consider the characteristics of jobs such as computational...
Deep learning powers many transformative core technologies including Autonomous Driving, Natural Lan...
Improving the efficiency of big cloud providers has become a very difficult task. The great quantity...
Deep learning, machine learning algorithm based on artificial neural network, shows great success in...
Energy consumption in large-scale distributed systems, such as computational grids and clouds gains ...