Adaptive management and search of large scale data in distributed systems

Abstract

The tremendous increase of managed data by a variety of applications is a new trend observed more and more in our digital era. The ability to handle and analyse large amounts of data efficiently is a requirement posed strongly by scientific and business disciplines and the Web community. This trend leads to the adoption of distributed solutions for data management aiming at building scalable and fault-tolerant systems combining the power of multiple autonomous resources. Peer-to-Peer networks greatly contribute to the design of decentralized systems capable of dynamically adjusting to changes of their topology. A major class of existing Peer-to-Peer networks is the one referring to structured overlays that implement a Distributed Hash Table (DHTs). The efficient lookup functionality provided by the Distributed Hash Tables has made them popular among Internet-scale applications for content publishing and sharing. The main goal in this dissertation is the development of data m ...
show more

All items in National Archive of Phd theses are protected by copyright.

DOI
10.12681/eadd/27477
Handle URL
http://hdl.handle.net/10442/hedi/27477
ND
27477
Alternative title
Προσαρμοστική διαχείριση και αναζήτηση δεδομένων ευρείας κλίμακας σε κατανεμημένα συστήματα
Author
Asiki, Athanasia (Father's name: Charilaos)
Date
2012
Degree Grantor
National Technical University of Athens (NTUA)
Committee members
Τσανάκας Παναγιώτης
Παπαβασιλείου Συμεών
Κοζύρης Νεκτάριος
Σελλής Τιμολέων
Δεληγιαννάκης Αντώνιος
Κωτίδης Ιωάννης
Κουμπαράκης Μανόλης
Discipline
Natural Sciences
Computer and Information Sciences
Keywords
Data management; Distributed systems; Peer-to-peer networks; Multidimensional data; Grid computing; Adaptive re-indexing
Country
Greece
Language
Greek
Description
xxviii, 314 σ., tbls., fig., ch., ind.
Usage statistics
VIEWS
Concern the unique Ph.D. Thesis' views for the period 07/2018 - 07/2023.
Source: Google Analytics.
ONLINE READER
Concern the online reader's opening for the period 07/2018 - 07/2023.
Source: Google Analytics.
DOWNLOADS
Concern all downloads of this Ph.D. Thesis' digital file.
Source: National Archive of Ph.D. Theses.
USERS
Concern all registered users of National Archive of Ph.D. Theses who have interacted with this Ph.D. Thesis. Mostly, it concerns downloads.
Source: National Archive of Ph.D. Theses.
Related items (based on users' visits)