Big Data has been a catalyst force for the Machine Learning (ML) area, forcing us to rethink existing strategies in order to create innovative solutions that will push forward the field. This paper presents an overview of the strategies for using machine learning in Big Data with emphasis on the high-performance parallel implementations on many-core hardware. The rationale is to increase the practical applicability of ML implementations to large-scale data problems. The common underlying thread has been the recent progress in usability, cost effectiveness and diversity of parallel computing platforms, specifically, the Graphics Processing Units (GPUs), tailored for a broad set of data analysis and Machine Learning tasks. In this context, we...
As Machine Learning (ML) applications are becoming ever more pervasive, fully-trained systems are ma...
Large scale machine learning has many characteristics that can be exploited in the system designs to...
How can one build a distributed framework that allows ef-ficient deployment of a wide spectrum of mo...
The overwhelming data produced everyday and the increasing performance and cost requirements of appl...
ABSTRACTThe rise of big data has led to new demands for machine learning (ML) systems to learn compl...
We are in the computing era of super-zetta data bytes (a.k.a. Big Data). Big Data is critical to dev...
ABSTRACTThe rise of big data has led to new demands for machine learning (ML) systems to learn compl...
Two currently popular topics in computer science are machine learning and big data. Often the two ar...
The rise of big data has led to new demands for machine learning (ML) systems to learn complex model...
Abstract—What is a systematic way to efficiently apply a wide spectrum of advanced ML programs to in...
<p>Large scale machine learning has many characteristics that can be exploited in the system designs...
Training and deploying large machine learning (ML) models is time-consuming and requires significant...
The overwhelming data produced everyday and the increasing performance and cost requirements of appl...
This editorial is for the Special Issue of the journal Future Generation Computing Systems, consisti...
As Machine Learning (ML) applications are becoming ever more pervasive, fully-trained systems are ma...
As Machine Learning (ML) applications are becoming ever more pervasive, fully-trained systems are ma...
Large scale machine learning has many characteristics that can be exploited in the system designs to...
How can one build a distributed framework that allows ef-ficient deployment of a wide spectrum of mo...
The overwhelming data produced everyday and the increasing performance and cost requirements of appl...
ABSTRACTThe rise of big data has led to new demands for machine learning (ML) systems to learn compl...
We are in the computing era of super-zetta data bytes (a.k.a. Big Data). Big Data is critical to dev...
ABSTRACTThe rise of big data has led to new demands for machine learning (ML) systems to learn compl...
Two currently popular topics in computer science are machine learning and big data. Often the two ar...
The rise of big data has led to new demands for machine learning (ML) systems to learn complex model...
Abstract—What is a systematic way to efficiently apply a wide spectrum of advanced ML programs to in...
<p>Large scale machine learning has many characteristics that can be exploited in the system designs...
Training and deploying large machine learning (ML) models is time-consuming and requires significant...
The overwhelming data produced everyday and the increasing performance and cost requirements of appl...
This editorial is for the Special Issue of the journal Future Generation Computing Systems, consisti...
As Machine Learning (ML) applications are becoming ever more pervasive, fully-trained systems are ma...
As Machine Learning (ML) applications are becoming ever more pervasive, fully-trained systems are ma...
Large scale machine learning has many characteristics that can be exploited in the system designs to...
How can one build a distributed framework that allows ef-ficient deployment of a wide spectrum of mo...