Wei Luo will present her MSE Thesis talk "SketchProbe: Discovering Vulnerabilities in Sketch-based Applications with Reinforcement Learning" on Wednesday, April 24, 2024 at 2pm in CS 402.
Wei Luo will present her MSE Thesis talk "SketchProbe: Discovering Vulnerabilities in Sketch-based Applications with Reinforcement Learning" on Wednesday, April 24, 2024 at 2pm in CS 402. Advisor: Maria Apostolaki, Reader: Benjamin Eysenbach All are invited to attend. Please see abstract below. Abstract: Sketches are approximate data structures critical to network traffic monitoring. They are specifically designed for environments constrained by memory, enabling the maintenance of accurate statistics within a compact space. This efficiency comes at the cost of estimation error that varies based on the workload encountered by the sketch. Traditionally, sketch-based applications are optimized for average traffic scenarios, and this assumption of standard patterns of network traffic introduces vulnerabilities, as these applications may not be prepared for atypical or adversarial traffic patterns. Manual testing for these vulnerabilities is time-intensive and often impractical due to the vast range of possible traffic scenarios. In this paper, we introduce SketchProbe, a novel system leveraging Reinforcement Learning (RL) to identify adversarial traffic patterns in sketch-based applications. Unlike manual identification, SketchProbe automates the discovery process, ensuring a thorough and efficient exploration of potential failure modes. Our evaluation indicates that SketchProbe effectively identifies critical scenarios that significantly impact the performance of sketch-based applications, which is valuable for improving the robustness of such applications.
Grace Liu will present her MSE Thesis talk "Detecting Climate Change in Binary and Continuous Data " on Friday, April 26, 2024 at 1pm in Icahn 200. Advisor: Tom Griffiths; Reader: Gabriel Vecchi All are invited to attend. Please see abstract below. Abstract: This project investigates how people detect changes in continuous climate data (mean winter temperatures) and binary climate data (lake freeze). We find that participants shown the binary data detect greater change than participants shown the continuous data, even when correlation is controlled. We also show that using a Bayesian restrospective single changepoint detection algorithm on the data shows greater saliency of changepoints in binary data over continuous data, providing a possible explanation for the experimental results. CS Grad Calendar Link: https://calendar.google.com/calendar/event?action=TEMPLATE&tmeid=NnRocjlkNmlwM3JjY2E3dnVlYjJuMnV1b2IgYWNnMDc5YmxzbzRtczNza2tmZThwa2lyb2dAZw&tmsrc=acg079blso4ms3skkfe8pkirog%40group.calendar.google.com
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