Publications des scientifiques de l'IRD

Alnegheimish S., Liu D. Y., Sala C., Berti-Equille Laure, Veeramachaneni K., Acm. (2022). Sintel : a machine learning framework to extract insights from signals. Proceedings of the 2022 International Conference on Management of Data, 1855-1865. ISSN 0730-8078.

Titre du document
Sintel : a machine learning framework to extract insights from signals
Année de publication
2022
Type de document
Article référencé dans le Web of Science WOS:000852705400133
Auteurs
Alnegheimish S., Liu D. Y., Sala C., Berti-Equille Laure, Veeramachaneni K., Acm
Source
Proceedings of the 2022 International Conference on Management of Data, 2022, 1855-1865 ISSN 0730-8078
The detection of anomalies in time series data is a critical task with many monitoring applications. Existing systems often fail to encompass an end-to-end detection process, to facilitate comparative analysis of various anomaly detection methods, or to incorporate human knowledge to refine output. This precludes current methods from being used in real-world settings by practitioners who are not ML experts. In this paper, we introduce Sintel, a machine learning framework for end-to-end time series tasks such as anomaly detection. The framework uses state-of-the-art approaches to support all steps of the anomaly detection process. Sintel logs the entire anomaly detection journey, providing detailed documentation of anomalies over time. It enables users to analyze signals, compare methods, and investigate anomalies through an interactive visualization tool, where they can annotate, modify, create, and remove events. Using these annotations, the framework leverages human knowledge to improve the anomaly detection pipeline. We demonstrate the usability, efficiency, and effectiveness of Sintel through a series of experiments on three public time series datasets, as well as one real-world use case involving spacecraft experts tasked with anomaly analysis tasks. Sinters framework, code, and datasets are open-sourced at https://github.com/sintel-dev/.
Plan de classement
Informatique [122]
Localisation
Fonds IRD [F B010086137]
Identifiant IRD
fdi:010086137
Contact
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    IRD - Délégation régionale Île-de-France & Ouest
    Campus Condorcet - Hôtel à projets
    8 cours des Humanités - 93322 Aubervilliers Cedex
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