Introduction
- The
TensorFlow
machine learning library from Google provides many algorithms and models for efficient pipelines to process and forecast large time-series datasets.
Feature Engineering
- Use sine and cosine transformations to represent the periodic or cyclical nature of time-series data.
Data Windowing and Making Datasets
- Data windows enable single and multi-step time-series forecasting.
Single Step Forecasts
- Use the
keras
API to define neural network layers and attributes to construct different machine learning pipelines.
Multi Step Forecasts
- If a label_columns argument is not provided, the data window will forecast all features.