The ability to extract information from collected data has always driven science. Today.s large computers and automated sensing technologies collect terabytes of data in a few weeks. Extracting information from such large amounts of data is like trying to find a needle in a haystack. For efficient information extraction, we need disk-based indexing schemes that can efficiently handle queries restricting ranges on dozens of attributes. Unfortunately, the unique characteristics of scientific data and queries cause traditional indexing techniques to have poor performance on scientific workloads, occupy excessive space, or both. Bitmap indexes were proposed as a solution to these problems. However, in experiments with scientific data and que...
Many scientific applications generate massive volumes of data through observations or computer simu...
Many scientific applications generate massive volumes of data through observations or computer simul...
We present a practical and general-purpose approach to large and complex visual data analysis where ...
The ability to extract information from collected data has always driven science. Today.s large comp...
155 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.To address these three proble...
155 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.To address these three proble...
The data used by today’s scientific applications are often very high in dimensionality and staggerin...
In this chapter, we explore ways to answer queries on large multi-dimensional data efficiently. Giv...
Scientific data analysis applications require large scale computing power to effectively service cli...
In this paper, we describe a strategy of using compressed bitmap indices to speed up queries on bot...
We describe a new approach to scalable data analysis that enables scientists to manage the explosion...
We describe a new approach to scalable data analysis that enables scientists to manage the explosio...
Many scientific applications generate large spatio-temporal datasets. A common way of exploring the...
Many scientific applications generate large spatio-temporal datasets. A common way of exploring thes...
Many scientific applications generate large spatio-temporal datasets. A common way of exploring thes...
Many scientific applications generate massive volumes of data through observations or computer simu...
Many scientific applications generate massive volumes of data through observations or computer simul...
We present a practical and general-purpose approach to large and complex visual data analysis where ...
The ability to extract information from collected data has always driven science. Today.s large comp...
155 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.To address these three proble...
155 p.Thesis (Ph.D.)--University of Illinois at Urbana-Champaign, 2007.To address these three proble...
The data used by today’s scientific applications are often very high in dimensionality and staggerin...
In this chapter, we explore ways to answer queries on large multi-dimensional data efficiently. Giv...
Scientific data analysis applications require large scale computing power to effectively service cli...
In this paper, we describe a strategy of using compressed bitmap indices to speed up queries on bot...
We describe a new approach to scalable data analysis that enables scientists to manage the explosion...
We describe a new approach to scalable data analysis that enables scientists to manage the explosio...
Many scientific applications generate large spatio-temporal datasets. A common way of exploring the...
Many scientific applications generate large spatio-temporal datasets. A common way of exploring thes...
Many scientific applications generate large spatio-temporal datasets. A common way of exploring thes...
Many scientific applications generate massive volumes of data through observations or computer simu...
Many scientific applications generate massive volumes of data through observations or computer simul...
We present a practical and general-purpose approach to large and complex visual data analysis where ...