AIStream-Peelout/flow_tutorials
Public tutorials of using Flow Forecast for forecasting and classifying time series data
These tutorials demonstrate how to forecast and classify time series data using advanced deep learning models. You input historical data, such as river flow measurements, COVID-19 cases, or market prices, and receive predictions for future trends or classifications. This resource is for data scientists, researchers, or analysts who need to apply state-of-the-art deep learning methods to complex time series problems.
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Use this if you are a data scientist familiar with deep learning and want to learn how to apply advanced models like Informer or DA-RNN to diverse time series forecasting and classification tasks.
Not ideal if you are looking for a simple, out-of-the-box solution without diving into model architectures or deep learning frameworks.
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Last pushed
May 05, 2024
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