Tracking Network Events with Write Optimized Data Structures: The Design and Implementation of TWIAD: The Write-Optimized IP Address Database
November 30, 2015 Β· Declared Dead Β· π International Workshop on Building Analysis Datasets and Gathering Experience Returns for Security
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Authors
Nolan Donoghue, Bridger Hahn, Helen Xu, Thomas Kroeger, David Zage, Rob Johnson
arXiv ID
1511.09116
Category
cs.CR: Cryptography & Security
Cross-listed
cs.DB
Citations
1
Venue
International Workshop on Building Analysis Datasets and Gathering Experience Returns for Security
Last Checked
4 months ago
Abstract
Access to network traffic records is an integral part of recognizing and addressing network security breaches. Even with the increasing sophistication of network attacks, basic network events such as connections between two IP addresses play an important role in any network defense. Given the duration of current attacks, long-term data archival is critical but typically very little of the data is ever accessed. Previous work has provided tools and identified the need to trace connections. However, traditional databases raise performance concerns as they are optimized for querying rather than ingestion. The study of write-optimized data structures (WODS) is a new and growing field that provides a novel approach to traditional storage structures (e.g., B-trees). WODS trade minor degradations in query performance for significant gains in the ability to quickly insert more data elements, typically on the order of 10 to 100 times more inserts per second. These efficient, out-of-memory data structures can play a critical role in enabling robust, long-term tracking of network events. In this paper, we present TWIAD, the Write-optimized IP Address Database. TWIAD uses a write-optimized B-tree known as a B Ξ΅ tree to track all IP address connections in a network traffic stream. Our initial implementation focuses on utilizing lower cost hardware, demonstrating that basic long-term tracking can be done without advanced equipment. We tested TWIAD on a modest desktop system and showed a sustained ingestion rate of about 20,000 inserts per second.
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