Abstract—Compute cycles in high performance systems are increasing at a much faster pace than both storage and wide-area bandwidths. To continue improving the performance of large-scale data analytics applications, compression has therefore become promising approach. In this context, this paper makes the following contributions. First, we develop a new compression methodology, which exploits the similarities between spatial and/or temporal neighbors in a popular climate simulation dataset and enables high compression ratios and low decom-pression costs. Second, we develop a framework that can be used to incorporate a variety of compression and decompression algorithms. This framework also supports a simple API to allow integration with an e...
The data volumes produced by simulation and observation are large, and becoming larger. In the case ...
The last few years have seen an exponential increase, driven by many disparate fields such as big da...
Analytics is moving to the cloud and data is moving into data lakes. These reside on object storage ...
© 1989-2012 IEEE. Big sensing data is prevalent in both industry and scientific research application...
It is well known that processing big graph data can be costly on Cloud. Processing big graph data in...
Typically used to save space, non-lossy data compression can save time and energy during communicati...
Through the introduction of next-generation models the climate sciences have experienced a breakthro...
The authors present an application-driven approach to compressing large-scale time-varying volume da...
Abstract — Cloud Computing has become a crucial aspect in today's era of technology in the worl...
In this paper we focus on big data compression paradigms within reference data-intensive IoT framewo...
The different rates of increase for computational power and storage capabilities of supercomputers t...
Storage and data trafficking have grown a great deal over the past decade. Therefore, there is a nee...
An increase in processing power enabled to increase resolution and the number of ensemble members fo...
In this paper, we study the scalability of an atmospheric modeling application on a cluster with com...
For decades, the dominant geoscience and engineering array-oriented data storage format, netCDF/HDF,...
The data volumes produced by simulation and observation are large, and becoming larger. In the case ...
The last few years have seen an exponential increase, driven by many disparate fields such as big da...
Analytics is moving to the cloud and data is moving into data lakes. These reside on object storage ...
© 1989-2012 IEEE. Big sensing data is prevalent in both industry and scientific research application...
It is well known that processing big graph data can be costly on Cloud. Processing big graph data in...
Typically used to save space, non-lossy data compression can save time and energy during communicati...
Through the introduction of next-generation models the climate sciences have experienced a breakthro...
The authors present an application-driven approach to compressing large-scale time-varying volume da...
Abstract — Cloud Computing has become a crucial aspect in today's era of technology in the worl...
In this paper we focus on big data compression paradigms within reference data-intensive IoT framewo...
The different rates of increase for computational power and storage capabilities of supercomputers t...
Storage and data trafficking have grown a great deal over the past decade. Therefore, there is a nee...
An increase in processing power enabled to increase resolution and the number of ensemble members fo...
In this paper, we study the scalability of an atmospheric modeling application on a cluster with com...
For decades, the dominant geoscience and engineering array-oriented data storage format, netCDF/HDF,...
The data volumes produced by simulation and observation are large, and becoming larger. In the case ...
The last few years have seen an exponential increase, driven by many disparate fields such as big da...
Analytics is moving to the cloud and data is moving into data lakes. These reside on object storage ...