The datasets in this release support the results presented in the paper P. Jamshidi, G. Casale, "An Uncertainty-Aware Approach to Optimal Configuration of Stream Processing Systems", accepted for presentation at MASCOTS 2016. An open access to the paper is available at https://arxiv.org/abs/1606.06543 Also open source code is available at https://github.com/dice-project/DICE-Configuration-BO4CO The archive contains 10 comma separated datasets representing performance measurements (throughput and latency) for 3 different stream benchmark applications. These have been experimentally collected on 5 different cloud cluster over the course of 3 months (24/7). Each row in the datasets represents a different configuration setting for the a...
This tutorial starts with a survey of optimizations for streaming applications. The survey is organi...
Stream processing is a popular paradigm to process huge amounts of unbounded data, which has gained ...
Data stream processing systems (DSPSs) compute real-time queries over continuously changing streams ...
<p>The datasets in this release support the results presented in the paper</p> <blockquote> <p>P. J...
Various research communities have independently arrived at stream processing as a programming model ...
Various research communities have independently arrived at stream processing as a programming model ...
We present the design and development of a data stream system that captures data uncertainty from da...
Present-day computing systems have to deal with a continuous growth of data rate and volume. Process...
As more aspects of our daily lives are being computerized, ever larger amounts of data are being pro...
We present the design and development of a data stream system that captures data uncertainty from da...
We present the design and development of a data stream system that captures data uncertainty from da...
Modern distributed computing frameworks such as Apache Hadoop, Spark, or Storm distribute the worklo...
Data streams in the form of potentially unbounded sequences of tuples arise naturally in a large var...
© 2019 Tri Minh TruongStream processing is an in-memory computing paradigm that supports querying ov...
Networks of classifiers can offer improved accuracy and scalability over single classifiers by utili...
This tutorial starts with a survey of optimizations for streaming applications. The survey is organi...
Stream processing is a popular paradigm to process huge amounts of unbounded data, which has gained ...
Data stream processing systems (DSPSs) compute real-time queries over continuously changing streams ...
<p>The datasets in this release support the results presented in the paper</p> <blockquote> <p>P. J...
Various research communities have independently arrived at stream processing as a programming model ...
Various research communities have independently arrived at stream processing as a programming model ...
We present the design and development of a data stream system that captures data uncertainty from da...
Present-day computing systems have to deal with a continuous growth of data rate and volume. Process...
As more aspects of our daily lives are being computerized, ever larger amounts of data are being pro...
We present the design and development of a data stream system that captures data uncertainty from da...
We present the design and development of a data stream system that captures data uncertainty from da...
Modern distributed computing frameworks such as Apache Hadoop, Spark, or Storm distribute the worklo...
Data streams in the form of potentially unbounded sequences of tuples arise naturally in a large var...
© 2019 Tri Minh TruongStream processing is an in-memory computing paradigm that supports querying ov...
Networks of classifiers can offer improved accuracy and scalability over single classifiers by utili...
This tutorial starts with a survey of optimizations for streaming applications. The survey is organi...
Stream processing is a popular paradigm to process huge amounts of unbounded data, which has gained ...
Data stream processing systems (DSPSs) compute real-time queries over continuously changing streams ...