BigData Analytics: Solution Or Resolution? BigData Analytics: Solution Or Resolution?

BigData Analytics: Solution Or Resolution‪?‬

Descrição da editora

In 1997, NASA researchers Michael Cox and David Ellsworth publish “Application-controlled demand paging for out-of-core visualization” in the Proceedings of the IEEE 8th conference on Visualization. They start the article with “Visualization provides an interesting challenge for computer systems: data sets are generally quite large, taxing the capacities of main memory, local disk, and even remote disk. We call this the problem of big data. When data sets do not fit in main memory (in core), or when they do not fit even on local disk, the most common solution is to acquire more resources.” It is the first article in the ACM digital library to use the term “big data.” Michael Lesk publishes “How much information is there in the world?”? Lesk concludes that “There may be a few thousand petabytes of information all told; and the production of tape and disk will reach that level by the year 2000. So in only a few years, (a) we will be able [to] save everything–no information will have to be thrown out, and (b) the typical piece of information will never be looked at by a human being.”

GÊNERO
Computadores e Internet
LANÇADO
2017
26 de junho
IDIOMA
EN
Inglês
PÁGINAS
108
EDITORA
Binayaka Mishra
VENDEDOR
Draft2Digital, LLC
TAMANHO
7,5
MB
The World Of Agile:Incarnation Of DevOps The World Of Agile:Incarnation Of DevOps
2017
Open Source Software: The Beginning Of A New Era Open Source Software: The Beginning Of A New Era
2017
Digital Technology: The World Of Our Own Digital Technology: The World Of Our Own
2022
Cloud Computing: Reign Of Access Cloud Computing: Reign Of Access
2017
Master Data Management Master Data Management
2017
Open Source ETL-The Prodigy Kids Open Source ETL-The Prodigy Kids
2017
Big Data Analytics with IBM Cognos Dynamic Cubes Big Data Analytics with IBM Cognos Dynamic Cubes
2015
Managing Ever-Increasing Amounts of Data with IBM DB2 for z/OS: Using Temporal Data Management, Archive Transparency, and the DB2 Analytics Accelerator Managing Ever-Increasing Amounts of Data with IBM DB2 for z/OS: Using Temporal Data Management, Archive Transparency, and the DB2 Analytics Accelerator
2015
IBM Software Defined Infrastructure for Big Data Analytics Workloads IBM Software Defined Infrastructure for Big Data Analytics Workloads
2015
Building Big Data and Analytics Solutions in the Cloud Building Big Data and Analytics Solutions in the Cloud
2014
Complete Guide to SQL Pattern Matching - Volume 1 Complete Guide to SQL Pattern Matching - Volume 1
2017
Business Analytics Business Analytics
2012