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Darts: User-Friendly Modern Machine Learning for Time Series

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arxiv 2110.03224 v3 pith:CU3VFP6P submitted 2021-10-07 cs.LG stat.CO

Darts: User-Friendly Modern Machine Learning for Time Series

classification cs.LG stat.CO
keywords seriesdartslearningmachinemodelstimeforecastinglibrary
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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We present Darts, a Python machine learning library for time series, with a focus on forecasting. Darts offers a variety of models, from classics such as ARIMA to state-of-the-art deep neural networks. The emphasis of the library is on offering modern machine learning functionalities, such as supporting multidimensional series, meta-learning on multiple series, training on large datasets, incorporating external data, ensembling models, and providing a rich support for probabilistic forecasting. At the same time, great care goes into the API design to make it user-friendly and easy to use. For instance, all models can be used using fit()/predict(), similar to scikit-learn.

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