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Learning from AI : new trends in database technology
Recently some researchers in the areas of database data modelling and knowledge representations in artificial intelligence have recognized that they share many common goals. In this survey paper we show the relationship between database and artificial intelligence research. We show that there has been a tendency for data models to incorporate more modelling techniques developed for knowledge representations in artificial intelligence as the desire to incorporate more application oriented semantics, user friendliness, and flexibility has increased. Increasing the semantics of the representation is the key to capturing the "reality" of the database environment, increasing user friendliness, and facilitating the support of multiple, possibly conflicting, user views of the information contained in a database
Using meta-reflection to enhance performance
Much evidence supports the use of reflective practice for personal development, yet it is not commonly used as a learning tool in students. More typically, reflective writing is assessed as a stand-alone piece of work. The objective is then simply a grade. The proposed project would actively promote the use reflections to improve performance by means of using technology to record, store and retrieve them. These individual reflections will populate a database so that ultimately, with permission, each individual's reflections can be accessed by others via the database. Thus these reflections will become a learning tool for students. Using technology facilitates classification and retrieval and reduces the problems associated with human memory
Extending the data dictionary for data/knowledge management
Current relational database technology provides the means for efficiently storing and retrieving large amounts of data. By combining techniques learned from the field of artificial intelligence with this technology, it is possible to expand the capabilities of such systems. This paper suggests using the expanded domain concept, an object-oriented organization, and the storing of knowledge rules within the relational database as a solution to the unique problems associated with CAD/CAM and engineering data
On the Verge of One Petabyte - the Story Behind the BaBar Database System
The BaBar database has pioneered the use of a commercial ODBMS within the HEP
community. The unique object-oriented architecture of Objectivity/DB has made
it possible to manage over 700 terabytes of production data generated since
May'99, making the BaBar database the world's largest known database. The
ongoing development includes new features, addressing the ever-increasing
luminosity of the detector as well as other changing physics requirements.
Significant efforts are focused on reducing space requirements and operational
costs. The paper discusses our experience with developing a large scale
database system, emphasizing universal aspects which may be applied to any
large scale system, independently of underlying technology used.Comment: Talk from the 2003 Computing in High Energy and Nuclear Physics
(CHEP03), La Jolla, Ca, USA, March 2003, 6 pages. PSN MOKT01
Private Database Queries Using Quantum States with Limited Coherence Times
We describe a method for private database queries using exchange of quantum
states with bits encoded in mutually incompatible bases. For technology with
limited coherence time, the database vendor can announce the encoding after a
suitable delay to allow the user to privately learn one of two items in the
database without the ability to also definitely infer the second item. This
quantum approach also allows the user to choose to learn other functions of the
items, such as the exclusive-or of their bits, but not to gain more information
than equivalent to learning one item, on average. This method is especially
useful for items consisting of a few bits by avoiding the substantial overhead
of conventional cryptographic approaches.Comment: extended to generalized (POVM) measurement
Requirements for Information Extraction for Knowledge Management
Knowledge Management (KM) systems inherently suffer from the knowledge acquisition bottleneck - the difficulty of modeling and formalizing knowledge relevant for specific domains. A potential solution to this problem is Information Extraction (IE) technology. However, IE was originally developed for database population and there is a mismatch between what is required to successfully perform KM and what current IE technology provides. In this paper we begin to address this issue by outlining requirements for IE based KM
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