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Gist od2-feb-2011
1.
Semantic Web Overview
Open Data Group – 23 rd Feb 2011 @ianibbo This work is licensed under a Creative Commons Attribution 3.0 Unported License.
2.
3.
4.
5.
6.
Updating Tabular Data
more of an issue
7.
Frequent/atomic/isolated Updates (anecdotally)
8.
Transactional Capabilities
9.
Modern Search Capabilities
– Spatial, Text, other.
10.
11.
Coordination is
still needed – This is not a free-for-all – Honest!
12.
Provenance of data
sets (Resource provenance good)
13.
14.
<Ian> <MemberOf> <GistFoundation>
15.
<GistOpenDataMeetup2> <Date> '23-Feb-2011#date'
16.
<Ian> <FavoriteDrink> <Moonshine>
17.
<GISTLab> <MaxCapacity> '70#int'
18.
<GISTLab> <Hosted >
<GistOpenDataMeetup1>
19.
<GISTLab> <Hosted >
<GistOpenDataMeetup2>
20.
<GISTLab> <Hosted> <GistOpenDataMeetup3>
21.
22.
ISBN's, ISSNs -
urn:issn:1535-3613
23.
24.
25.
<URI> <URI> <URI|Literal>
26.
27.
28.
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