About: Auto-ID Labs   Sponge Permalink

An Entity of Type : owl:Thing, within Data Space : 134.155.108.49:8890 associated with source dataset(s)

The Auto-ID Labs are the leading global research network of academic laboratories in the field of Internet of Things. The labs comprise seven of the world's most renowned research universities located on four different continents — Massachusetts Institute of Technology (U.S); University of Cambridge (U.K.); University of Adelade (Australia); Keio University (Japan); KAIST Lab (South Korea); Fudan University (China); and ETH Zurich/HSG Lab (Switzerland).

AttributesValues
rdfs:label
  • Auto-ID Labs
rdfs:comment
  • The Auto-ID Labs are the leading global research network of academic laboratories in the field of Internet of Things. The labs comprise seven of the world's most renowned research universities located on four different continents — Massachusetts Institute of Technology (U.S); University of Cambridge (U.K.); University of Adelade (Australia); Keio University (Japan); KAIST Lab (South Korea); Fudan University (China); and ETH Zurich/HSG Lab (Switzerland).
sameAs
dcterms:subject
abstract
  • The Auto-ID Labs are the leading global research network of academic laboratories in the field of Internet of Things. The labs comprise seven of the world's most renowned research universities located on four different continents — Massachusetts Institute of Technology (U.S); University of Cambridge (U.K.); University of Adelade (Australia); Keio University (Japan); KAIST Lab (South Korea); Fudan University (China); and ETH Zurich/HSG Lab (Switzerland). The labs believe that the next generation of the Internet of Things can revolutionize global commerce and provide previously unrealizable consumer benefits. The primary research partner is GS1 — a not-for-profit organization that is renowned for establishing standards for global commerce, such as introducing barcodes to the retail industry almost 40 years ago. The labs aim to add the consumer to the currently B2B-oriented business model of GS1 and explore opportunities for new hardware, software, business processes and applications.
Alternative Linked Data Views: ODE     Raw Data in: CXML | CSV | RDF ( N-Triples N3/Turtle JSON XML ) | OData ( Atom JSON ) | Microdata ( JSON HTML) | JSON-LD    About   
This material is Open Knowledge   W3C Semantic Web Technology [RDF Data] Valid XHTML + RDFa
OpenLink Virtuoso version 07.20.3217, on Linux (x86_64-pc-linux-gnu), Standard Edition
Data on this page belongs to its respective rights holders.
Virtuoso Faceted Browser Copyright © 2009-2012 OpenLink Software