<?xml version="1.0" encoding="UTF-8"?>
<rdf:RDF xmlns:rdf="http://www.w3.org/1999/02/22-rdf-syntax-ns#" xmlns:taxo="http://purl.org/rss/1.0/modules/taxonomy/" xmlns:burst="http://xmlns.com/burst/0.1/" xmlns:xsd="http://www.w3.org/2001/XMLSchema#" xmlns="http://purl.org/rss/1.0/" xmlns:admin="http://webns.net/mvcb/" xmlns:rdfs="http://www.w3.org/2000/01/rdf-schema#" xmlns:content="http://purl.org/rss/1.0/modules/content/" xmlns:owl="http://www.w3.org/2002/07/owl#" xmlns:dc="http://purl.org/dc/elements/1.1/" xmlns:syn="http://purl.org/rss/1.0/modules/syndication/" xmlns:swrc="http://swrc.ontoware.org/ontology#" xmlns:cc="http://web.resource.org/cc/"><channel rdf:about="https://puma.ub.uni-stuttgart.de/tag/stream_processing%20batch_processing%20myown%20big_data"><title>PUMA publications for /tag/stream_processing%20batch_processing%20myown%20big_data</title><link>https://puma.ub.uni-stuttgart.de/tag/stream_processing%20batch_processing%20myown%20big_data</link><description>PUMA RSS feed for /tag/stream_processing%20batch_processing%20myown%20big_data</description><dc:date>2026-04-23T06:52:12+02:00</dc:date><items><rdf:Seq><rdf:li rdf:resource="https://puma.ub.uni-stuttgart.de/bibtex/2de82d963740455021ba76df683c81e3e/corinnagiebler"/></rdf:Seq></items></channel><item rdf:about="https://puma.ub.uni-stuttgart.de/bibtex/2de82d963740455021ba76df683c81e3e/corinnagiebler"><title>BRAID — A Hybrid Processing Architecture for Big Data</title><link>https://puma.ub.uni-stuttgart.de/bibtex/2de82d963740455021ba76df683c81e3e/corinnagiebler</link><dc:creator>corinnagiebler</dc:creator><dc:date>2020-09-23T15:22:17+02:00</dc:date><dc:subject>Big_Data IoT Kappa_Architecture Lambda_Architecture batch_processing myown stream_processing </dc:subject><content:encoded>&lt;span data-person-type=&#034;author&#034; class=&#034;authorEditorList &#034;&gt;&lt;span&gt;&lt;span itemtype=&#034;http://schema.org/Person&#034; itemscope=&#034;itemscope&#034; itemprop=&#034;author&#034;&gt;&lt;a title=&#034;Corinna Giebler&#034; itemprop=&#034;url&#034; href=&#034;/person/1ffd044502fcab972628a4cbc95b855f7/author/0&#034;&gt;&lt;span itemprop=&#034;name&#034;&gt;C. Giebler&lt;/span&gt;&lt;/a&gt;&lt;/span&gt;, &lt;/span&gt;&lt;span&gt;&lt;span itemtype=&#034;http://schema.org/Person&#034; itemscope=&#034;itemscope&#034; itemprop=&#034;author&#034;&gt;&lt;a title=&#034;Christoph Stach&#034; itemprop=&#034;url&#034; href=&#034;/person/1ffd044502fcab972628a4cbc95b855f7/author/1&#034;&gt;&lt;span itemprop=&#034;name&#034;&gt;C. Stach&lt;/span&gt;&lt;/a&gt;&lt;/span&gt;, &lt;/span&gt;&lt;span&gt;&lt;span itemtype=&#034;http://schema.org/Person&#034; itemscope=&#034;itemscope&#034; itemprop=&#034;author&#034;&gt;&lt;a title=&#034;Holger Schwarz&#034; itemprop=&#034;url&#034; href=&#034;/person/1ffd044502fcab972628a4cbc95b855f7/author/2&#034;&gt;&lt;span itemprop=&#034;name&#034;&gt;H. Schwarz&lt;/span&gt;&lt;/a&gt;&lt;/span&gt;, &lt;/span&gt; and &lt;span&gt;&lt;span itemtype=&#034;http://schema.org/Person&#034; itemscope=&#034;itemscope&#034; itemprop=&#034;author&#034;&gt;&lt;a title=&#034;Bernhard Mitschang&#034; itemprop=&#034;url&#034; href=&#034;/person/1ffd044502fcab972628a4cbc95b855f7/author/3&#034;&gt;&lt;span itemprop=&#034;name&#034;&gt;B. Mitschang&lt;/span&gt;&lt;/a&gt;&lt;/span&gt;&lt;/span&gt;. &lt;/span&gt;&lt;span class=&#034;additional-entrytype-information&#034;&gt;&lt;span itemtype=&#034;http://schema.org/Book&#034; itemscope=&#034;itemscope&#034; itemprop=&#034;isPartOf&#034;&gt;&lt;em&gt;&lt;span itemprop=&#034;name&#034;&gt;Proceedings of the 7ᵗʰ International Conference on Data Science, Technology and Applications&lt;/span&gt;, &lt;/em&gt;&lt;/span&gt;&lt;em&gt;volume 1 of DATA &amp;#039;18, &lt;/em&gt;&lt;em&gt;page &lt;span itemprop=&#034;pagination&#034;&gt;294–301&lt;/span&gt;. &lt;/em&gt;&lt;em&gt;Porto, &lt;/em&gt;&lt;em&gt;&lt;span itemprop=&#034;publisher&#034;&gt;SciTePress&lt;/span&gt;, &lt;/em&gt;(&lt;em&gt;&lt;span&gt;June 2018&lt;meta content=&#034;June 2018&#034; itemprop=&#034;datePublished&#034;/&gt;&lt;/span&gt;&lt;/em&gt;)&lt;/span&gt;</content:encoded><taxo:topics><rdf:Bag><rdf:li rdf:resource="https://puma.ub.uni-stuttgart.de/tag/Big_Data"/><rdf:li rdf:resource="https://puma.ub.uni-stuttgart.de/tag/IoT"/><rdf:li rdf:resource="https://puma.ub.uni-stuttgart.de/tag/Kappa_Architecture"/><rdf:li rdf:resource="https://puma.ub.uni-stuttgart.de/tag/Lambda_Architecture"/><rdf:li rdf:resource="https://puma.ub.uni-stuttgart.de/tag/batch_processing"/><rdf:li rdf:resource="https://puma.ub.uni-stuttgart.de/tag/myown"/><rdf:li rdf:resource="https://puma.ub.uni-stuttgart.de/tag/stream_processing"/></rdf:Bag></taxo:topics><burst:publication><rdf:Description rdf:about="https://puma.ub.uni-stuttgart.de/bibtex/2de82d963740455021ba76df683c81e3e/corinnagiebler"><owl:sameAs rdf:resource="/uri/bibtex/2de82d963740455021ba76df683c81e3e/corinnagiebler"/><rdf:type rdf:resource="http://swrc.ontoware.org/ontology#InProceedings"/><swrc:date>Wed Sep 23 15:22:17 CEST 2020</swrc:date><swrc:address>Porto</swrc:address><swrc:booktitle>Proceedings of the 7ᵗʰ International Conference on Data Science, Technology and Applications</swrc:booktitle><swrc:month>jun</swrc:month><swrc:pages>294–301</swrc:pages><swrc:publisher><swrc:Organization swrc:name="SciTePress"/></swrc:publisher><swrc:series>DATA &#039;18</swrc:series><swrc:title>BRAID — A Hybrid Processing Architecture for Big Data</swrc:title><swrc:volume>1</swrc:volume><swrc:year>2018</swrc:year><swrc:keywords>Big_Data IoT Kappa_Architecture Lambda_Architecture batch_processing myown stream_processing </swrc:keywords><swrc:abstract>The Internet of Things is applied in many domains and collects vast amounts of data. This data provides access to a lot of knowledge when analyzed comprehensively. However, advanced analysis techniques such as predictive or prescriptive analytics require access to both, history data, i.e., long-term persisted data, and real-time data as well as a joint view on both types of data. State-of-the-art hybrid processing architectures for big data—namely, the Lambda and the Kappa Architecture—support the processing of history data and real-time data. However, they lack of a tight coupling of the two processing modes. That is, the user has to do a lot of work manually in order to enable a comprehensive analysis of the data. For instance, the user has to combine the results of both processing modes or apply knowledge from one processing mode to the other. Therefore, we introduce a novel hybrid processing architecture for big data, called BRAID. BRAID intertwines the processing of history data and real-time data by adding communication channels between the batch engine and the stream engine. This enables to carry out comprehensive analyses automatically at a reasonable overhead.</swrc:abstract><swrc:hasExtraField><swrc:Field swrc:value="978-989-758-318-6" swrc:key="isbn"/></swrc:hasExtraField><swrc:hasExtraField><swrc:Field swrc:value="10.5220/0006861802940301" swrc:key="doi"/></swrc:hasExtraField><swrc:author><rdf:Seq><rdf:_1><swrc:Person swrc:name="Corinna Giebler"/></rdf:_1><rdf:_2><swrc:Person swrc:name="Christoph Stach"/></rdf:_2><rdf:_3><swrc:Person swrc:name="Holger Schwarz"/></rdf:_3><rdf:_4><swrc:Person swrc:name="Bernhard Mitschang"/></rdf:_4></rdf:Seq></swrc:author><swrc:editor><rdf:Seq><rdf:_1><swrc:Person swrc:name="Jorge Bernardino"/></rdf:_1><rdf:_2><swrc:Person swrc:name="Christoph Quix"/></rdf:_2></rdf:Seq></swrc:editor></rdf:Description></burst:publication></item></rdf:RDF>