The problem of efficient and high-quality clustering of extreme scale datasets with complex clustering structures continues to be one of the most challenging data analysis problems. An innovate use of data cloud would provide unique opportunity to address this challenge. In this paper, we propose the CloudVista framework to address (1) the problems caused by using sampling in the existing approaches and (2) the problems with the latency caused by cloud-side processing on interactive cluster visualization. The CloudVista framework aims to explore the entire large data stored in the cloud with the help of the data structure visual frame and the previously developed VISTA visualization model. The latency of processing large data is addressed by...
Scientists working with large datasets without a desktop with advanced capacity may not be able to v...
Accessing large set of data is more complex in today’s world because the data may be structured or u...
Interactive visual cluster analysis is the most intuitive way for finding clustering patterns, valid...
The problem of efficient and high-quality clustering of extreme scale datasets with complex clusterin...
With the development and deployment of ubiquitous information sensing, mobile devices,wireless senso...
Analysis of big data has become an important problem for many business and scientific applications, ...
This paper discusses visualization and analysis issues as datasets grow towards very large sizes, an...
Information Visualization is commonly recognized as a useful method for understanding sophisticatio...
With continued advances in communication network technology and sensing technology, there is astound...
With the advent of cloud computing, resizable scalable infrastructures for data processing is now av...
Abstract Scalability is a key feature for big data analysis and machine learning frameworks and for ...
Progress in sensor technology allows us to collect environmental data in more detail and with better...
We review the time and storage costs of search and clustering algorithms. We exemplify these, based ...
Scientists working with large datasets without a desktop with advanced capacity may not be able to v...
Accessing large set of data is more complex in today’s world because the data may be structured or u...
Interactive visual cluster analysis is the most intuitive way for finding clustering patterns, valid...
The problem of efficient and high-quality clustering of extreme scale datasets with complex clusterin...
With the development and deployment of ubiquitous information sensing, mobile devices,wireless senso...
Analysis of big data has become an important problem for many business and scientific applications, ...
This paper discusses visualization and analysis issues as datasets grow towards very large sizes, an...
Information Visualization is commonly recognized as a useful method for understanding sophisticatio...
With continued advances in communication network technology and sensing technology, there is astound...
With the advent of cloud computing, resizable scalable infrastructures for data processing is now av...
Abstract Scalability is a key feature for big data analysis and machine learning frameworks and for ...
Progress in sensor technology allows us to collect environmental data in more detail and with better...
We review the time and storage costs of search and clustering algorithms. We exemplify these, based ...
Scientists working with large datasets without a desktop with advanced capacity may not be able to v...
Accessing large set of data is more complex in today’s world because the data may be structured or u...
Interactive visual cluster analysis is the most intuitive way for finding clustering patterns, valid...