Neural Knowledge Extraction From Cloud Service IncidentsSEIP
Fri 28 May 2021 03:25 - 03:45 at Blended Sessions Room 1 - 3.3.1. Monitoring Cloud-Based Services
In the last decade, two paradigm shifts have reshaped the software industry - the move from boxed products to services and the widespread adoption of cloud computing. This has had a huge impact on the software development life cycle and the DevOps processes. Particularly, incident management has become critical for developing and operating large-scale services. Incidents are created to ensure timely communication of service issues and, also, their resolution. Prior work on incident management has been heavily focused on the challenges with incident triaging and de-duplication. In this work, we address the fundamental problem of structured knowledge extraction from service incidents. We have built SoftNER, a framework for unsupervised knowledge extraction from service incidents. We frame the knowledge extraction problem as a Named-entity Recognition task for extracting factual information. SoftNER leverages structural patterns like key,value pairs and tables for bootstrapping the training data. Further, we build a novel multi-task learning based BiLSTM-CRF model which leverages not just the semantic context but also the data-types for named-entity extraction. We have deployed SoftNER at Microsoft, a major cloud service provider and have evaluated it on more than 2 months of cloud incidents. We show that the unsupervised machine learning based approach has a high precision of 0.96. Our multi-task learning based deep learning model also outperforms the state of the art NER models. Lastly, using the knowledge extracted by SoftNER we are able to build significantly more accurate models for important downstream tasks like incident triaging.
Thu 27 MayDisplayed time zone: Amsterdam, Berlin, Bern, Rome, Stockholm, Vienna change
15:05 - 16:05 | 3.3.1. Monitoring Cloud-Based ServicesTechnical Track / SEIP - Software Engineering in Practice at Blended Sessions Room 1 +12h Chair(s): Andrea Zisman The Open University | ||
15:05 20mPaper | Fast Outage Analysis of Large-scale Production Clouds with Service Correlation MiningTechnical Track Technical Track Yaohui Wang Fudan University, Guozheng Li Peking University, Zijian Wang Fudan University, Yu Kang Microsoft Research, Beijing, China, Yangfan Zhou Fudan University, Hongyu Zhang The University of Newcastle, Feng Gao Microsoft Azure, Jeffrey Sun Microsoft Azure, Li Yang Microsoft Azure, Pochian Lee Microsoft Azure, Zhangwei Xu Microsoft Azure, Pu Zhao Microsoft Research, Beijing, China, Bo Qiao Microsoft Research, Beijing, China, Liqun Li Microsoft Research, Beijing, China, Xu Zhang Microsoft Research, Beijing, China, Qingwei Lin Microsoft Research, Beijing, China Pre-print Media Attached | ||
15:25 20mPaper | Neural Knowledge Extraction From Cloud Service IncidentsSEIP SEIP - Software Engineering in Practice Manish Shetty Microsoft Research, India, Chetan Bansal Microsoft Research, Sumit Kumar Microsoft, Nikitha Rao Microsoft Research, Nachiappan Nagappan Microsoft Research, Thomas Zimmermann Microsoft Research Link to publication DOI Pre-print Media Attached | ||
15:45 20mPaper | FIXME: Enhance Software Reliability with Hybrid Approaches in CloudSEIP SEIP - Software Engineering in Practice Jinho Hwang IBM Research, Larisa Shwartz IBM, Qing Wang Institute of Software, Chinese Academy of Sciences, Raghav Batta IBM, Harshit Kumar IBM, Michael Nidd IBM Pre-print Media Attached |
Fri 28 MayDisplayed time zone: Amsterdam, Berlin, Bern, Rome, Stockholm, Vienna change
03:05 - 04:05 | 3.3.1. Monitoring Cloud-Based ServicesTechnical Track / SEIP - Software Engineering in Practice at Blended Sessions Room 1 | ||
03:05 20mPaper | Fast Outage Analysis of Large-scale Production Clouds with Service Correlation MiningTechnical Track Technical Track Yaohui Wang Fudan University, Guozheng Li Peking University, Zijian Wang Fudan University, Yu Kang Microsoft Research, Beijing, China, Yangfan Zhou Fudan University, Hongyu Zhang The University of Newcastle, Feng Gao Microsoft Azure, Jeffrey Sun Microsoft Azure, Li Yang Microsoft Azure, Pochian Lee Microsoft Azure, Zhangwei Xu Microsoft Azure, Pu Zhao Microsoft Research, Beijing, China, Bo Qiao Microsoft Research, Beijing, China, Liqun Li Microsoft Research, Beijing, China, Xu Zhang Microsoft Research, Beijing, China, Qingwei Lin Microsoft Research, Beijing, China Pre-print Media Attached | ||
03:25 20mPaper | Neural Knowledge Extraction From Cloud Service IncidentsSEIP SEIP - Software Engineering in Practice Manish Shetty Microsoft Research, India, Chetan Bansal Microsoft Research, Sumit Kumar Microsoft, Nikitha Rao Microsoft Research, Nachiappan Nagappan Microsoft Research, Thomas Zimmermann Microsoft Research Link to publication DOI Pre-print Media Attached | ||
03:45 20mPaper | FIXME: Enhance Software Reliability with Hybrid Approaches in CloudSEIP SEIP - Software Engineering in Practice Jinho Hwang IBM Research, Larisa Shwartz IBM, Qing Wang Institute of Software, Chinese Academy of Sciences, Raghav Batta IBM, Harshit Kumar IBM, Michael Nidd IBM Pre-print Media Attached |