- Регистрация
- 27 Авг 2018
- Сообщения
- 37,510
- Реакции
- 532,973
- Тема Автор Вы автор данного материала? |
- #1
- Use autocorrelation to build time-series features.
- Detect and remove seasonal trends.
- Handle missing values.
- Download and ingest csv-formatted data.
- Handle dates in with a custom python converter.
- Evaluate a time-series model’s performance.
- Build a weather predictor using python.
- Some experience with python is helpful, but not required.
Welcome!
In this course, we’ll walk through every step of making your own weather predictor. We’ll find weather data, explore it and get it in order. We’ll use the modeling tools of deseasonalization and linear regression to predict temperatures at the beach. We’ll use the statistical tools of autoregression and confidence intervals to guide our feature selection and apply our results. And we’ll code the whole thing up from scratch in python and organize it to be easy to read and easy to extend.
When you’re done, you’ll have a standalone weather predictor that can estimate high temperatures three days from now. You’ll also have hands-on experience solving a real word data science problem from end to end.
Who this course is for
- Machine learning students and data scientists seeking project-based time series modeling and autocorrelation instruction.
DOWNLOAD: