Participation in Workshop on Text and Data Mining for Data Driven Innovation - Highlights available
2013-10-07
John McNaught, deputy director of NaCTeM, participated in a panel session entitled Where do we go from here? (What are the conditions we need in place to realise the potential of text and data mining in Europe), as part of The Perfect Swell: Workshop on Text and Data Mining for Data Driven Innovation. The event was organised by LIBER (Association of European Research Libraries), C4C (Copyright for Creativity) and United for Start-ups, and took place at the British Library Conference Centre on Friday 27th September 2013.
Highlights and discussion snippets from the workshop are now available at: http://www.youtube.com/watch?v=dpuUin15ovE
More information...
http://www.libereurope.eu/news/the-perfect-swell-a-workshop-on-text-and-data-mining-for-data-driven-innovation
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