TSFEL: Time Series Feature Extraction Library
Fraunhofer Portugal Research · University of Bremen · +1 more institution
Abstract
Time series feature extraction is one of the preliminary steps of conventional machine learning pipelines. Quite often, this process ends being a time consuming and complex task as data scientists must consider a combination between a multitude of domain knowledge factors and coding implementation. We present in this paper a Python package entitled Time Series Feature Extraction Library (TSFEL), which computes over 60 different features extracted across temporal, statistical and spectral domains. User customisation is achieved using either an online interface or a conventional Python package for more flexibility and integration into real deployment scenarios. TSFEL is designed to support the process of fast…
Citation impact
- FWCI
- 38.90
- Percentile
- 100%
- References
- 33
Authors
9Topics & keywords
- Computer science
- Python (programming language)
- Feature extraction
- Data mining
- Software deployment
- Time series
- Pipeline transport
- Artificial intelligence