Neural Knowledge Extraction From Cloud Service Incidents
Manish Shetty, Chetan Bansal, Sumit Kumar, Nikitha Rao, Nachiappan, Nagappan, Thomas Zimmermann

TL;DR
This paper introduces SoftNER, an unsupervised framework for extracting structured knowledge from cloud service incidents using a novel multi-task learning model, significantly improving incident management accuracy.
Contribution
The paper presents SoftNER, a new unsupervised knowledge extraction framework with a multi-task BiLSTM-CRF model, applied to cloud incidents, outperforming existing NER models and aiding incident triaging.
Findings
High precision of 0.96 in knowledge extraction
Outperforms state-of-the-art NER models
Enables more accurate incident triaging
Abstract
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…
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