Talk at Survive or Thrive Conference
2010-04-26
Prof. Sophia Ananiadou has been invited to give a talk at the Survive or Thrive Conference, to be held in Manchester on 8th and 9th June, 2010. She will give a talk entitled "Advanced Text Mining Tools and Resources for Knowledge Discovery"
The conference aims to address the issues caused by the growth of digital content, and use of content on the Web, which has been rapidly changing over the past decade. The conference will bring together a community of experts to provide a focus on questions such as the following:
- How do we exploit the value of distributed resources?
- In terms of scale what are the issues and barriers?
- What are the issues and opportunities for opening up content?
- How do we effectively and efficiently meet the needs of users and taking the best advantage of the available technologies?
- How do sectors work together? Education, the cultural heritage sector, engaging business and community and the public and private sectors?
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