<--- Back to Details
First PageDocument Content
Parallel computing / Computing / Software engineering / Computer programming / Distributed computing architecture / MapReduce / Compiler construction / Data-intensive computing / Lexical analysis / Hash function / Data / Function
Date: 2013-06-06 15:43:58
Parallel computing
Computing
Software engineering
Computer programming
Distributed computing architecture
MapReduce
Compiler construction
Data-intensive computing
Lexical analysis
Hash function
Data
Function

Efficient Parallel Set-Similarity Joins Using MapReduce

Add to Reading List

Source URL: asterixdb.ics.uci.edu

Download Document from Source Website

File Size: 691,90 KB

Share Document on Facebook

Similar Documents

Confuga: Scalable Data Intensive Computing for POSIX Workflows Patrick Donnelly, Nicholas Hazekamp, Douglas Thain Department of Computer Science and Engineering University of Notre Dame {pdonnel3,nhazekam,dthain}@nd.edu

DocID: 1v933 - View Document

Windows Azure for Research Accelerate the speed of scientific discovery Windows Azure provides researchers with the power and scalability of cloud computing for collaboration, computation, and data-intensive processing.

DocID: 1u3KX - View Document

Hyracks: A Flexible and Extensible Foundation for Data-Intensive Computing Vinayak Borkar, Michael Carey, Raman Grover, Nicola Onose, Rares Vernica Computer Science Department, University of California, Irvine Irvine, CA

DocID: 1tMQ2 - View Document

Biomedical Case Studies in Data Intensive Computing Geoffrey Fox1,2, Xiaohong Qiu1, Scott Beason1, Jong Choi1,2, Jaliya Ekanayake1,2 Thilina Gunarathne1,2,Mina Rho2, Haixu Tang2, Neil Devadasan3, Gilbert Liu4, Pervasive

DocID: 1taKo - View Document

IMT Institute for Advanced Studies Lucca, Italy Big Data and the Web: Algorithms for Data Intensive Scalable Computing

DocID: 1sX92 - View Document