Analysis of massive data streams using R and AMIDST

Anders Læsø Madsen, Antonio Salmerón

Publikation: Konferencebidrag uden forlag/tidsskriftPosterForskning

Resumé

Today, omnipresent sensors are continuously providing streaming
data on the environments in which they operate. Sources of streaming data
with even a modest updating frequency can produce extremely large volumes of
data, thereby making efficient and accurate data analysis and prediction difficult.
Probabilistic graphical models (PGMs) provide a well-founded and principled approach for performing inference and belief updating in complex domains endowed with uncertainty. The on-going EU-FP7 research project AMIDST (Analysis of MassIve Data STreams, http://www.amidst.eu) is aimed at producing scalable methods able to handle massive data streams based on Bayesian networks technology. All of the developed methods are available through the AMIDST toolbox, implemented in Java 8. We show how the functionality of the AMIDST toolbox can be accessed from R. Available AMIDST objects include variables, distributions and Bayesian networks, as well as those devoted to inference and learning. The interaction between both platforms relies on the rJava package.
OriginalsprogEngelsk
Publikationsdato2015
Antal sider1
StatusUdgivet - 2015
BegivenheduseR! 2015 - Aalborg, Danmark
Varighed: 27 jun. 201530 jun. 2015

Konference

KonferenceuseR! 2015
LandDanmark
ByAalborg
Periode27/06/201530/06/2015

Fingerprint

Bayesian networks
Electric power distribution
Sensors
Uncertainty

Citer dette

Madsen, A. L., & Salmerón, A. (2015). Analysis of massive data streams using R and AMIDST. Poster session præsenteret på useR! 2015, Aalborg, Danmark.
Madsen, Anders Læsø ; Salmerón, Antonio. / Analysis of massive data streams using R and AMIDST. Poster session præsenteret på useR! 2015, Aalborg, Danmark.1 s.
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Madsen, AL & Salmerón, A 2015, 'Analysis of massive data streams using R and AMIDST' useR! 2015, Aalborg, Danmark, 27/06/2015 - 30/06/2015, .

Analysis of massive data streams using R and AMIDST. / Madsen, Anders Læsø; Salmerón, Antonio.

2015. Poster session præsenteret på useR! 2015, Aalborg, Danmark.

Publikation: Konferencebidrag uden forlag/tidsskriftPosterForskning

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Madsen AL, Salmerón A. Analysis of massive data streams using R and AMIDST. 2015. Poster session præsenteret på useR! 2015, Aalborg, Danmark.