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Sebastian Elbaum

Researcher at University of Virginia

Publications -  209
Citations -  9610

Sebastian Elbaum is an academic researcher from University of Virginia. The author has contributed to research in topics: Test suite & Regression testing. The author has an hindex of 44, co-authored 199 publications receiving 8704 citations. Previous affiliations of Sebastian Elbaum include Lincoln University (Pennsylvania) & University of Idaho.

Papers
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Proceedings ArticleDOI

Scalably Testing Congestion Control Algorithms of Real-World TCP Implementations

TL;DR: This paper proposes a scalable testing method, called SCCT, which tackles the scalability problem using two techniques, and shows that S CCT is scalable and quickly detects multiple Linux bugs that have been reported before.
Proceedings ArticleDOI

Trace Normalization

TL;DR: The approach decomposes traces into segments on which irrelevant variations caused by event ordering or repetition can be identified, and then used to normalize the traces in the pool, revealing that the clients can deliver more precise results with the normalized traces.
Proceedings ArticleDOI

Multi-layer faults in the architectures of mobile, context-aware adaptive applications: a position paper

TL;DR: In this article, the authors provide scenarios illustrating such faults and explore how they manifest in context-aware adaptive applications, where the architecture of such applications is typically layered and incorporates a context-awareness middleware to support processing of context values.
Proceedings ArticleDOI

Feasible and stressful trajectory generation for mobile robots

TL;DR: This work proposes a framework that integrates kinematic and dynamic physical models of the robot into the automated trajectory generation in order to generate valid trajectories, and incorporates a parameterizable scoring model to efficiently generate physically valid yet stressful trajectories for a broad range of mobile robots.
Posted Content

Refactoring Neural Networks for Verification.

TL;DR: An automated framework for DNN refactoring is presented, which aims to preserve the accuracy of the original network while producing a simpler network that is amenable to more efficient property verification.