Time series processing framework and utilities for deep learning
Project description
TimeWarPY - Time Series Pre and Post Processing Methods
Background and Objective
TimeWarPy is a library I created because I kept running into time-series related pre and post processing that is discussed a lot in ML literature but not standardized in a popular ML library. Most industry related forecasting methods are not well suited for real-time deep learning architectures. TimeWarPy is a stab at making these operations both fast and convenient for real-time applications through an easy to use set of core processing objections.
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