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Tag Archives: versioning
AKSW Colloquium, 17.10.2016, Version Control for RDF Triple Stores + NEED4Tweet
In the upcoming Colloquium, October the 17th at 3 PM, two papers will be presented: Version Control for RDF Triple Stores Marvin Frommhold will discuss the paper “Version Control for RDF Triple Stores” by Steve Cassidy and James Ballantine which forms the foundation … Continue reading
Posted in Colloquium, paper presentation
Tagged NED, NEE, RDF, twitter, versioning
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AKSW Colloquium, 21.03.2016, Quit-Store a quad store versioned with git + Distributed methods for Stochastic Gradient Descent
On the 21th of March a 3 PM, Norman Radtke will present his current work at LEDS project: the Quit-Store. The Quit-Store is an in-memory quad store with git versioning. The store accepts SPARQL Select and Update queries. After an … Continue reading
Posted in Colloquium
Tagged git, history, quads, store, versioning
Comments Off on AKSW Colloquium, 21.03.2016, Quit-Store a quad store versioned with git + Distributed methods for Stochastic Gradient Descent