cneud commited on
Commit
e1ed60c
·
1 Parent(s): 8fa7336

Update README.md

Browse files
Files changed (1) hide show
  1. README.md +2 -2
README.md CHANGED
@@ -7,6 +7,6 @@ sdk: static
7
  pinned: false
8
  ---
9
 
10
- The [Berlin State Library](https://staatsbibliothek-berlin.de/) (Staatsbibliothek zu Berlin - Preußischer Kulturbesitz, SBB) is one of the largest scientific universal libraries in Germany and a central supplier of national and international literature. More than 11 million volumes of printed material alone have accumulated since the library was founded in 1661. A constantly increasing number of databases and other electronic resources complement the collection.
11
 
12
- The SBB is digitizing its holdings and making them available free-of-charge via the 'Digital Collections' online portal: https://digital.staatsbibliothek-berlin.de/. Additionally, in a number of projects such as [OCR-D](https://ocr-d.de), [Qurator](https://ravius.sbb.berlin/) and [Mensch.Maschine.Kultur](https://blog.sbb.berlin/mensch-maschine-kultur-neues-projekt-zur-kuenstlichen-intelligenz/), the SBB is currently researching and developing AI/ML technologies for computational analysis and enrichment of the digital collections. A growing number of datasets and demos is made available via the [SBB-LAB](https://lab.sbb.berlin/?lang=en).
 
7
  pinned: false
8
  ---
9
 
10
+ The [Berlin State Library](https://staatsbibliothek-berlin.de/) (Staatsbibliothek zu Berlin - Preußischer Kulturbesitz, SBB) is one of the largest scientific universal libraries in Germany and a central supplier of national and international literature. More than 12 million volumes of printed material alone have accumulated since the library was founded in 1661. A constantly increasing number of databases and other electronic resources complement the collection.
11
 
12
+ The SBB is digitizing its holdings and making them available online free-of-charge via the 'Digital Collections' portal: https://digital.staatsbibliothek-berlin.de/. In various projects, SBB is researching and developing AI and machine learning technologies for the analysis and enrichment of the digital collections. A growing number of datasets and demos is made available via the [SBB-LAB](https://lab.sbb.berlin/?lang=en).