Results 231 to 240 of about 343,427 (288)
Some of the next articles are maybe not open access.
Spatial data streaming or streaming spatial data
Proceedings of the 1st International Conference and Exhibition on Computing for Geospatial Research & Application, 2010Have you ever counted the number of times the word "streaming" has occurred in a geospatial oriented conference proceedings over the past few years? Have you ever monitored the growth of the geospatial research and industrial community? Have you ever noticed that geospatial researchers are living the luxury of an era where real-time data is streamed at
Balan Sethu Raman, Mohamed Ali
openaire +1 more source
WIREs Computational Statistics, 2010
AbstractAs the ability to collect data continues to outstrip the ability to process and analyze it, the age‐old paradigm of store‐and‐process is becoming untenable. Finding one or two interesting items in the midst of many possible signals depends on context which often changes over time.
openaire +1 more source
AbstractAs the ability to collect data continues to outstrip the ability to process and analyze it, the age‐old paradigm of store‐and‐process is becoming untenable. Finding one or two interesting items in the midst of many possible signals depends on context which often changes over time.
openaire +1 more source
21st International Conference on Data Engineering (ICDE'05), 2003
This tutorial provides a comprehensive and cohesive overview of the key research results in the area of data stream query processing, both for SQL-like and XML query languages.
N. Koudas, D. Srivastava
openaire +1 more source
This tutorial provides a comprehensive and cohesive overview of the key research results in the area of data stream query processing, both for SQL-like and XML query languages.
N. Koudas, D. Srivastava
openaire +1 more source
2009
Nowadays, data bases are required to store massive amounts of data that are continuously inserted, and queried. Organizations use decision support systems to identify potential useful patterns in data. Data analysis is complex, interactive, and exploratory over very large volumes of historic data, eventually stored in distributed environments.
João Gama, Pedro Pereira Rodrigues
openaire +1 more source
Nowadays, data bases are required to store massive amounts of data that are continuously inserted, and queried. Organizations use decision support systems to identify potential useful patterns in data. Data analysis is complex, interactive, and exploratory over very large volumes of historic data, eventually stored in distributed environments.
João Gama, Pedro Pereira Rodrigues
openaire +1 more source
From Streaming Data to Streaming Insights
Proceedings of the 2014 Workshop on Human Centered Big Data Research, 2014The rise of Big Data has influenced the design and technical implementation of visual analytic tools required to handle the increased volumes, velocities, and varieties of data. This has required a set of data management and computational advancements to allow us to store and compute on such datasets.
Alex Endert +2 more
openaire +1 more source
Streaming Queries over Streaming Data
2002Recent work on querying data streams has focused on systems where newly arriving data is processed and continuously streamed to the user in real-time. In many emerging applications, however, ad hoc queries and/or intermittent connectivity also require the processing of data that arrives prior to query submission or during a period of disconnection. For
Sirish Chandrasekaran +1 more
openaire +1 more source
Proceedings 41st Annual Symposium on Foundations of Computer Science, 2002
We study clustering under the data stream model of computation where: given a sequence of points, the objective is to maintain a consistently good clustering of the sequence observed so far, using a small amount of memory and time. The data stream model is relevant to new classes of applications involving massive data sets, such as Web click stream ...
S. Guha +3 more
openaire +1 more source
We study clustering under the data stream model of computation where: given a sequence of points, the objective is to maintain a consistently good clustering of the sequence observed so far, using a small amount of memory and time. The data stream model is relevant to new classes of applications involving massive data sets, such as Web click stream ...
S. Guha +3 more
openaire +1 more source
2016 International Conference on Recent Trends in Information Technology (ICRTIT), 2016
In the evolving technology of big data, high velocity data streams play a vital role since pattern of data is being changed over time. The temporal pattern change in data stream leads to a concept evolution called concept drift where statistical properties of data differs from time to time and the drift is taken into account in order to update old and ...
P. V Srilakshmi Annapoorna +1 more
openaire +1 more source
In the evolving technology of big data, high velocity data streams play a vital role since pattern of data is being changed over time. The temporal pattern change in data stream leads to a concept evolution called concept drift where statistical properties of data differs from time to time and the drift is taken into account in order to update old and ...
P. V Srilakshmi Annapoorna +1 more
openaire +1 more source
Clustering Multiple Data Streams
2011In recent years, data streams analysis has gained a lot of attention due to the growth of applicative fields generating huge amount of temporal data. In this paper we will focus on the clustering of multiple streams. We propose a new strategy which aims at grouping similar streams and, together, at computing summaries of the incoming data.
BALZANELLA, Antonio +2 more
openaire +1 more source

