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Overview of content related to 'rslp'

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This page provides an overview of 1 article related to 'trilt'. Note that filters may be applied to display a sub-set of articles in this category (see FAQs on filtering for usage tips). Select this link to remove all filters.

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UK terrestrial broadcast radio and television provides much material of value to further and higher education learning and teaching. Since May 1990, all UK HEIs have been recording programmes legitimately under Section 35 of the Copyright Designs and Patents Act 1988 and some academic libraries hold thousands of such recordings. There are, however, a significant number of gaps that when combined make tracing and accessing copies of broadcasts more difficult than it should be: radio has generally been ignored; relevant television programmes may have been overlooked; general programme output has not been catalogued and indexed from a learning and teaching perspective; different institutions catalogue according to different rules; and access to catalogues and recorded materials may be restricted. TRILT will address these gaps by providing in-depth data on television and radio broadcasts with the opportunity for relating this to other subject information through the DNER. TRILT will also assist in the integration of moving images and sound in learning and teaching, including providing the foundation for the online delivery of encoded sound and moving images. The specific objectives are to: Install within the DNER a fully searchable index and guide to all major English language radio and television channels receivable in the UK, including regional variations. It will also carry additional content including reviews, bibliographic information, still images and other information. It will be provided five days in advance of transmission and archived with the added data being improved both pre- and post-transmission Offer the opportunity to integrate moving image metadata sources and delivery services available to FE and HE ; Provide a framework which will create opportunities for direct connection to moving image sources to be streamed online or for delivery via physical media where connectivity/traffic issues impede online supply; Provide links to sources of film and/or video copies of programmes post-transmission, including non-theatrical distributors of video and sound recordings and the BUFVC's Off-Air Recording Back-Up Service; Provide links to commercial publishing partners; Indicate related moving image material available in analogue or encoded digital form. Project start date: 2000-08-01. Project end date: 2003-07-31. (Excerpt from this source)

Key statistics

Metadata related to 'trilt' (as derived from all content tagged with this term):

  • Number of articles referring to 'trilt': 1 (0.1% of published articles)
  • Total references to 'trilt' across all Ariadne articles: 4
  • Average number of references to 'trilt' per Ariadne article: 4.00
  • Earliest Ariadne article referring to 'trilt': 2004-01
  • Trending factor of 'trilt': 0 (see FAQs on monitoring of trends)

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Top authors

Ariadne contributors most frequently referring to 'trilt':

  1. rachel bruce (see articles on this topic by this author)
  2. balviar notay (see articles on this topic by this author)

Note: Links to all articles by authors listed above set filters to display articles by each author in the overview below. Select this link to remove all filters.

Title Article summary Date

The JISC 5/99 Programme: What's in a Number?

Rachel Bruce and Balviar Notay give an overview of the outputs and influences of the JISC 5/99 Learning and Teaching and Infrastructure Programme.

January 2004, issue38, feature article

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by Dr. Radut