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Timeseries from the Ground Up
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1. Data Exploration.ipynb
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6. ARIMA.ipynb

Timeseries from the Ground Up

Code and slides to accompany the online series of webinars: by Data For Science.

The availability of large quantity of cheap sensors brought forth by the so called “Internet of Things” has resulted in an explosion of the amounts of time varying data. Understanding how to mine, process and analyze such data will only to become an ever more important skill in any data scientists toolkit.

In this lecture, we will work through the entire process of how to analyze and model time series data, how to detect and extract trend and seasonality effects and how to implement the ARIMA class of forecasting models. Both real and synthetic datasets will be used to illustrate the different kinds of models and their underlying assumptions.


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