scispace - formally typeset
Open AccessProceedings Article

Map-Reduce for Machine Learning on Multicore

TLDR
This work shows that algorithms that fit the Statistical Query model can be written in a certain "summation form," which allows them to be easily parallelized on multicore computers and shows basically linear speedup with an increasing number of processors.
Abstract
We are at the beginning of the multicore era. Computers will have increasingly many cores (processors), but there is still no good programming framework for these architectures, and thus no simple and unified way for machine learning to take advantage of the potential speed up. In this paper, we develop a broadly applicable parallel programming method, one that is easily applied to many different learning algorithms. Our work is in distinct contrast to the tradition in machine learning of designing (often ingenious) ways to speed up a single algorithm at a time. Specifically, we show that algorithms that fit the Statistical Query model [15] can be written in a certain "summation form," which allows them to be easily parallelized on multicore computers. We adapt Google's map-reduce [7] paradigm to demonstrate this parallel speed up technique on a variety of learning algorithms including locally weighted linear regression (LWLR), k-means, logistic regression (LR), naive Bayes (NB), SVM, ICA, PCA, gaussian discriminant analysis (GDA), EM, and backpropagation (NN). Our experimental results show basically linear speedup with an increasing number of processors.

read more

Content maybe subject to copyright    Report

Citations
More filters
Journal ArticleDOI

RStorm: Developing and testing streaming algorithms in R

Maurits Kaptein
- 01 Jan 2014 - 
TL;DR: This paper presents RStorm for the development and evaluation of streaming algorithms analogous to these production packages, but implemented fully in R, and provides both a canonical computer science example, the streaming word count, and examples of several statistical applications of RStorm.
Proceedings ArticleDOI

Parallel Factorization Machine Recommended Algorithm Based on MapReduce

TL;DR: This paper proposes a parallel algorithm that can be used on Factorization Machines model to improve the scalability of computation in factorization machines model and shows good speed-up and scalability on big dataset.
Journal ArticleDOI

Jargon of Hadoop MapReduce scheduling techniques: a scientific categorization

TL;DR: A scientific literature review has been conducted in this study to assess preceding research contributions to the Apache Hadoop scheduling mechanism and classify and quantify the main issues addressed in the literature based on their jargon and areas addressed.
Proceedings ArticleDOI

Survey of scaling platforms for Deep Neural Networks

TL;DR: Different approaches have been proposed to scale processing on cluster of GPU servers for deep neural networks using General Purpose GPUs.
Proceedings ArticleDOI

Hadoop Preemptive Deadline Constraint Scheduler

TL;DR: A new preemption approach which considers the remaining execution time of the job being executed in making the decision of preemption is presented which reduces the job execution time and waiting time in the queue compared to the existing scheme.
References
More filters
Journal ArticleDOI

Learning representations by back-propagating errors

TL;DR: Back-propagation repeatedly adjusts the weights of the connections in the network so as to minimize a measure of the difference between the actual output vector of the net and the desired output vector, which helps to represent important features of the task domain.
Journal ArticleDOI

MapReduce: simplified data processing on large clusters

TL;DR: This paper presents the implementation of MapReduce, a programming model and an associated implementation for processing and generating large data sets that runs on a large cluster of commodity machines and is highly scalable.
Journal ArticleDOI

An information-maximization approach to blind separation and blind deconvolution

TL;DR: It is suggested that information maximization provides a unifying framework for problems in "blind" signal processing and dependencies of information transfer on time delays are derived.
Journal ArticleDOI

Principal component analysis

TL;DR: Principal Component Analysis is a multivariate exploratory analysis method useful to separate systematic variation from noise and to define a space of reduced dimensions that preserve noise.
Book

Clustering Algorithms

Related Papers (5)