Anomaly Detection in Large-Scale Cloud Systems: An Industry Case and Dataset
This program is tentative and subject to change.
As Large-Scale Cloud Systems (LCS) become increasingly complex, effective anomaly detection is critical for ensuring system reliability and performance. However, there is a shortage of large-scale, real-world datasets available for benchmarking anomaly detection methods.
To address this gap, we introduce a new high-dimensional dataset from IBM Cloud, collected over 4.5 months from the IBM Cloud Console. This dataset comprises 39,365 rows and 117,448 columns of telemetry data. Additionally, we demonstrate the application of machine learning models for anomaly detection and discuss the key challenges faced in this process.
This study and the accompanying dataset provide a resource for researchers and practitioners in cloud system monitoring. It facilitates more efficient testing of anomaly detection methods in real-world data, helping to advance the development of robust solutions to maintain the health and performance of large-scale cloud infrastructures.
This program is tentative and subject to change.
Fri 2 MayDisplayed time zone: Eastern Time (US & Canada) change
11:00 - 12:30 | AI for Analysis 4Research Track / New Ideas and Emerging Results (NIER) / SE In Practice (SEIP) at 212 | ||
11:00 15mTalk | RepairAgent: An Autonomous, LLM-Based Agent for Program Repair Research Track Islem BOUZENIA University of Stuttgart, Prem Devanbu University of California at Davis, Michael Pradel University of Stuttgart | ||
11:15 15mTalk | Evaluating Agent-based Program Repair at Google SE In Practice (SEIP) Patrick Rondon Google, Renyao Wei Google, José Pablo Cambronero Google, USA, Jürgen Cito TU Wien, Aaron Sun Google, Siddhant Sanyam Google, Michele Tufano Google, Satish Chandra Google, Inc | ||
11:30 15mTalk | Anomaly Detection in Large-Scale Cloud Systems: An Industry Case and Dataset SE In Practice (SEIP) Mohammad Saiful Islam Toronto Metropolitan University, Toronto, Canada, Mohamed Sami Rakha Toronto Metropolitan University, Toronto, Canada, William Pourmajidi Toronto Metropolitan University, Toronto, Canada, Janakan Sivaloganathan Toronto Metropolitan University, Toronto, Canada, John Steinbacher IBM, Andriy Miranskyy Toronto Metropolitan University (formerly Ryerson University) Pre-print | ||
11:45 15mTalk | Crash Report Prioritization for Large-Scale Scheduled Launches SE In Practice (SEIP) Nimmi Rashinika Weeraddana University of Waterloo, Sarra Habchi Ubisoft Montréal, Shane McIntosh University of Waterloo | ||
12:00 15mTalk | LogLM: From Task-based to Instruction-based Automated Log Analysis SE In Practice (SEIP) Yilun Liu Huawei co. LTD, Yuhe Ji Huawei co. LTD, Shimin Tao University of Science and Technology of China; Huawei co. LTD, Minggui He Huawei co. LTD, Weibin Meng Huawei co. LTD, Shenglin Zhang Nankai University, Yongqian Sun Nankai University, Yuming Xie Huawei co. LTD, Boxing Chen Huawei Canada, Hao Yang Huawei co. LTD Pre-print | ||
12:15 7mTalk | Using ML filters to help automated vulnerability repairs: when it helps and when it doesn’t New Ideas and Emerging Results (NIER) Maria Camporese University of Trento, Fabio Massacci University of Trento; Vrije Universiteit Amsterdam |