Thesis (Ph.D.)--University of Washington, 2016-08Applications in data science rely on two computing paradigms: tuned high performance parallel programs and data analytics. While historically their differences were good reason to separate the paradigms into different systems, recent changes in hardware and, as a result, fast data processing techniques, call this separation into question. The goal of this dissertation is to present systems and experiments that combine high performance parallel programs and data analytics for performance while preserving programmability. First, I present Grappa, a distributed parallel programming language implementation designed for building high performance data-intensive systems with less effort. Grappa prov...
Scientific experiments and large-scale simulations produce massive amounts of data. Many of these sc...
Extensive data analysis has become the enabler for diagnostics and decision making in many modern sy...
Abstract Complex objects to support non-standard database applications require the use of substantia...
Thesis (Ph.D.)--University of Washington, 2016-08Applications in data science rely on two computing ...
In the era of big data, organizations are faced with the daunting task of efficiently processing vas...
This research project will be focused on parallel processing as it is used with database management ...
Timely and cost-effective analytics over "big data" has emerged as a key ingredient for success in m...
Thesis (Ph.D.)--University of Washington, 2015The need to analyze and understand big data has change...
Over the past few decades, scientific research has grown to rely increasingly on simulation and othe...
Abstract—Effective high-level data management is becoming an important issue with more and more scie...
Fundamental data analytics tasks are often simple -- many useful and actionable insights can be garn...
This electronic version was submitted by the student author. The certified thesis is available in th...
textThe unprecedented and exponential growth of data along with the advent of multi-core processors...
Modern supercomputers have complex features: many hardware threads, deep memory hierarchies, and man...
The Data Science domain has expanded monumentally in both research and industry communities during t...
Scientific experiments and large-scale simulations produce massive amounts of data. Many of these sc...
Extensive data analysis has become the enabler for diagnostics and decision making in many modern sy...
Abstract Complex objects to support non-standard database applications require the use of substantia...
Thesis (Ph.D.)--University of Washington, 2016-08Applications in data science rely on two computing ...
In the era of big data, organizations are faced with the daunting task of efficiently processing vas...
This research project will be focused on parallel processing as it is used with database management ...
Timely and cost-effective analytics over "big data" has emerged as a key ingredient for success in m...
Thesis (Ph.D.)--University of Washington, 2015The need to analyze and understand big data has change...
Over the past few decades, scientific research has grown to rely increasingly on simulation and othe...
Abstract—Effective high-level data management is becoming an important issue with more and more scie...
Fundamental data analytics tasks are often simple -- many useful and actionable insights can be garn...
This electronic version was submitted by the student author. The certified thesis is available in th...
textThe unprecedented and exponential growth of data along with the advent of multi-core processors...
Modern supercomputers have complex features: many hardware threads, deep memory hierarchies, and man...
The Data Science domain has expanded monumentally in both research and industry communities during t...
Scientific experiments and large-scale simulations produce massive amounts of data. Many of these sc...
Extensive data analysis has become the enabler for diagnostics and decision making in many modern sy...
Abstract Complex objects to support non-standard database applications require the use of substantia...