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Scalable and efficient distributed algorithms for defending against malicious Internet activity

The threat of malicious Internet activities
such as Distributed Denial of Service (DDoS) attacks, spam emails
or Internet worms/viruses has been increasing in the
last several years. The impact and frequency of these malicious
activities are expected to grow unless they are properly addressed.
In this thesis, we propose to design and evaluate a set of practical and
effective protection measures against potential malicious
activities in current and future networks. Our research objective is twofold.

First, we design the methods to defend against DDoS attacks.
Our research focuses on two important issues related to DDoS attack defense mechanisms.
One issue is the method to trace the sources of attacking packets, which is known as
IP traceback. We propose a novel packet logging based (i.e., hash-based) traceback
scheme using only a one-bit marking field in IP header.
It reduces processing and storage cost by an order of magnitude than the existing
hash-based schemes, and is therefore scalable to much higher link speed (e.g., OC-768).
Next, we propose an improved traceback scheme with lower storage overhead
by using more marking space in IP header.
Another issue in DDoS defense is to investigate protocol-independent techniques for
improving the throughput of legitimate traffic during DDoS attacks.
We propose a novel technique that can effectively filter out the majority of DDoS
traffic, thus improving the overall throughput of the legitimate traffic.

Second, we investigate the problem of distributed network monitoring.
We propose a set of novel distributed data streaming algorithms
that allow scalable and efficient monitoring of aggregated traffic.
Our algorithms target the specific network monitoring problem of
finding common content in traffic traversing several
nodes/links across the Internet. These algorithms find applications in
network-wide intrusion detection, early warning for fast propagating worms,
and detection of hot objects and spam traffic.

Identiferoai:union.ndltd.org:GATECH/oai:smartech.gatech.edu:1853/14090
Date31 July 2006
CreatorsSung, Minho
PublisherGeorgia Institute of Technology
Source SetsGeorgia Tech Electronic Thesis and Dissertation Archive
Languageen_US
Detected LanguageEnglish
TypeDissertation
Format1171870 bytes, application/pdf

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