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
![]() | Download full text in PDF format (7.91 MB)
(Available only to registered users)
|
All items in National Archive of Phd theses are protected by copyright.
|
Usage statistics
VIEWS
Concern the unique Ph.D. Thesis' views for the period 07/2018 - 07/2023.
Source: Google Analytics.
Source: Google Analytics.
ONLINE READER
Concern the online reader's opening for the period 07/2018 - 07/2023.
Source: Google Analytics.
Source: Google Analytics.
DOWNLOADS
Concern all downloads of this Ph.D. Thesis' digital file.
Source: National Archive of Ph.D. Theses.
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.
Source: National Archive of Ph.D. Theses.






