This article aims to give a comprehensive and rigorous review of the principles and recent development of coding for large-scale distributed machine learning (DML). With increasing data volumes and the pervasive deployment of sensors and computing machines, machine learning has become more distributed. Moreover, the involved computing nodes and data volumes for learning tasks have also increased significantly. For large-scale distributed learning systems, significant challenges have appeared in terms of delay, errors, efficiency, etc. To address the problems, various error-control or performance-boosting schemes have been proposed recently for different aspects, such as the duplication of computing nodes. More recently, error-control coding...
Big data, including applications with high security requirements, are often collected and stored on...
Research on distributed machine learning algorithms has focused pri-marily on one of two extremes—al...
University of Minnesota Ph.D. dissertation. December 2014. Major: Computer Science. Advisor: Arindam...
Part 8: Short PapersInternational audienceAlternating direction method of multipliers (ADMM) has rec...
Abstract In this paper, we propose a fast, privacy-aware, and communication-efficient decentralized...
Abstract When the data is distributed across multiple servers, lowering the communication cost betw...
In recent years, the rapid development of new generation information technology has resulted in an u...
Gradient descent (GD) methods are commonly employed in machine learning problems to optimize the par...
ABSTRACTThe rise of big data has led to new demands for machine learning (ML) systems to learn compl...
Training a large-scale model over a massive data set is an extremely computation and storage intensi...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
The rise of big data has led to new demands for machine learning (ML) systems to learn complex model...
The advent of algorithms capable of leveraging vast quantities of data and computational resources h...
For many data-intensive real-world applications, such as recognizing objects from images, detecting ...
Distributed Machine Learning (DML) has gained its importance more than ever in this era of Big Data....
Big data, including applications with high security requirements, are often collected and stored on...
Research on distributed machine learning algorithms has focused pri-marily on one of two extremes—al...
University of Minnesota Ph.D. dissertation. December 2014. Major: Computer Science. Advisor: Arindam...
Part 8: Short PapersInternational audienceAlternating direction method of multipliers (ADMM) has rec...
Abstract In this paper, we propose a fast, privacy-aware, and communication-efficient decentralized...
Abstract When the data is distributed across multiple servers, lowering the communication cost betw...
In recent years, the rapid development of new generation information technology has resulted in an u...
Gradient descent (GD) methods are commonly employed in machine learning problems to optimize the par...
ABSTRACTThe rise of big data has led to new demands for machine learning (ML) systems to learn compl...
Training a large-scale model over a massive data set is an extremely computation and storage intensi...
Distributed machine learning bridges the traditional fields of distributed systems and machine learn...
The rise of big data has led to new demands for machine learning (ML) systems to learn complex model...
The advent of algorithms capable of leveraging vast quantities of data and computational resources h...
For many data-intensive real-world applications, such as recognizing objects from images, detecting ...
Distributed Machine Learning (DML) has gained its importance more than ever in this era of Big Data....
Big data, including applications with high security requirements, are often collected and stored on...
Research on distributed machine learning algorithms has focused pri-marily on one of two extremes—al...
University of Minnesota Ph.D. dissertation. December 2014. Major: Computer Science. Advisor: Arindam...