Linear algebra operations appear in nearly every application in advanced analytics, machine learning, and of various science domains. Until today, many data analysts and scientists tend to use statistics software packages or hand-crafted solutions for their analysis. In the era of data deluge, however, the external statistics packages and custom analysis programs that often run on single-workstations are incapable to keep up with the vast increase in data volume and size. In particular, there is an increasing demand of scientists for large scale data manipulation, orchestration, and advanced data management capabilities. These are among the key features of a mature relational database management system (DBMS). With the rise of main memory d...
We develop a prototype library for in-place (dense) matrix storage for-mat conversion between the ca...
We describe the design of ScaLAPACK++, an object oriented C++ library for implementing linear algebr...
Aggregations help computing summaries of a data set, which are ubiquitous in various big data analyt...
Linear algebra operations appear in nearly every application in advanced analytics, machine learning...
Scientific computations and analytical business applications are often based on linear algebra opera...
Abstract. Large numeric matrices and multidimensional data arrays appear in many science domains, as...
While computational modelling gets more complex and more accurate, its calculation costs have been i...
Computational models of the real world often involve analyzing discrete points of data logically rep...
In this thesis, I consider the problem of making linear algebra simple to use and efficient to run i...
Since data sizes of analytical applications are continuously growing, many data scientists are switc...
AbstractThe increasing availability of advanced-architecture computers has a significant effect on a...
Data analysis is among the main strategies of our time for enterprises to take advantage of the vast...
<p>Scientific Computation provides a critical role in the scientific process because it allows us as...
This dissertation advances the state of the art for scalable high-performance graph analytics and da...
In the big data era, the use of large-scale machine learning methods is becoming ubiquitous in data ...
We develop a prototype library for in-place (dense) matrix storage for-mat conversion between the ca...
We describe the design of ScaLAPACK++, an object oriented C++ library for implementing linear algebr...
Aggregations help computing summaries of a data set, which are ubiquitous in various big data analyt...
Linear algebra operations appear in nearly every application in advanced analytics, machine learning...
Scientific computations and analytical business applications are often based on linear algebra opera...
Abstract. Large numeric matrices and multidimensional data arrays appear in many science domains, as...
While computational modelling gets more complex and more accurate, its calculation costs have been i...
Computational models of the real world often involve analyzing discrete points of data logically rep...
In this thesis, I consider the problem of making linear algebra simple to use and efficient to run i...
Since data sizes of analytical applications are continuously growing, many data scientists are switc...
AbstractThe increasing availability of advanced-architecture computers has a significant effect on a...
Data analysis is among the main strategies of our time for enterprises to take advantage of the vast...
<p>Scientific Computation provides a critical role in the scientific process because it allows us as...
This dissertation advances the state of the art for scalable high-performance graph analytics and da...
In the big data era, the use of large-scale machine learning methods is becoming ubiquitous in data ...
We develop a prototype library for in-place (dense) matrix storage for-mat conversion between the ca...
We describe the design of ScaLAPACK++, an object oriented C++ library for implementing linear algebr...
Aggregations help computing summaries of a data set, which are ubiquitous in various big data analyt...