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Practical Time Series Forecasting with Python

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Educational matherials for the Course CS-GH301.

An Introduction to Time Series Forecasting with Python

Course Abstract

In this course, we learn how to analyze and forecast time series, study the basic theoretical concepts without going too deep into mathematical aspects, examine different models and techniques. Along the way, we make our hands dirty applying all studied models to a real-world dataset of UK foreign visits using such trendy Python libraries as StatsModels, Prophet, scikit-learn, and keras.

You will see, there is nothing complex in understanding and forecasting time series, you just need the right tools and the knowledge.

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Install with pip

Installation requires a working build environment that can be build automatically using make utility:

$ make
$ make run

After these commands your default browser should open a Jupyter notebook's index page.

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Author

Andrii Gakhov is a mathematician and software engineer holding a Ph.D. in mathematical modeling and numerical methods. He has been a teacher for a number of years in the School of Computer Science at V. Karazin Kharkov National University, Ukraine and currently works as a software practitioner for ferret go GmbH, the leading community moderation, automation, and analytics company in Germany.

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