Mastering Time Series Forecasting with scikit-learn | PyData New York 2019 πŸ“Š

Discover how to approach time series prediction using machine learning techniques in this insightful talk by Ethan Rosenthal. Learn about the skits library and practical strategies for effective forecasting.

Mastering Time Series Forecasting with scikit-learn | PyData New York 2019 πŸ“Š
PyData
6.4K views β€’ Nov 30, 2019
Mastering Time Series Forecasting with scikit-learn | PyData New York 2019 πŸ“Š

About this video

This talk will frame the topic of time series forecasting in the language of machine learning. This framing will be used to introduce the skits library which provides a scikit-learn-compatible API for fitting and forecasting time series models using supervised machine learning. Finally, a real-world deployment of skits involving thousands of forecasts per hour will be demonstrated.

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Video Information

Views

6.4K

Likes

160

Duration

34:18

Published

Nov 30, 2019

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