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Published inNov 2022
PublisherPackt
ISBN-139781803246802
Edition1st Edition
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Manu Joseph
Manu Joseph
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Manu Joseph

Manu Joseph is a self-made data scientist with more than a decade of experience working with many Fortune 500 companies enabling digital and AI transformations, specifically in machine learning-based demand forecasting. He is considered an expert, thought leader, and strong voice in the world of time series forecasting. Currently, Manu leads applied research at Thoucentric, where he advances research by bringing cutting-edge AI technologies to the industry. He is also an active open-source contributor and developed an open-source library—PyTorch Tabular—which makes deep learning for tabular data easy and accessible. Originally from Thiruvananthapuram, India, Manu currently resides in Bengaluru, India, with his wife and son
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Forecasting with sequence-to-sequence models and attention

Let’s pick up the thread from Chapter 13, Common Modeling Patterns for Time Series, where we used Seq2Seq models to forecast a sample household (if you have not read the previous chapter, I strongly suggest you do it now) and modify the Seq2SeqModel class to also include an attention mechanism.

Notebook alert

To follow along with the complete code, use the notebook named 01-Seq2Seq RNN with Attention.ipynb in the Chapter14 folder and the code in the src folder.

We are still going to inherit the BaseModel class we have defined in src/dl/models.py, and the overall structure is going to be very similar to the Seq2SeqModel class. The key difference will be that in our new model, with attention, we do not accept a fully connected layer as the decoder. It is not because it is not possible, but for convenience and brevity of the implementation. In fact, implementing a Seq2Seq model with a fully connected decoder can...

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Modern Time Series Forecasting with Python
Published in: Nov 2022Publisher: PacktISBN-13: 9781803246802

Author (1)

author image
Manu Joseph

Manu Joseph is a self-made data scientist with more than a decade of experience working with many Fortune 500 companies enabling digital and AI transformations, specifically in machine learning-based demand forecasting. He is considered an expert, thought leader, and strong voice in the world of time series forecasting. Currently, Manu leads applied research at Thoucentric, where he advances research by bringing cutting-edge AI technologies to the industry. He is also an active open-source contributor and developed an open-source library—PyTorch Tabular—which makes deep learning for tabular data easy and accessible. Originally from Thiruvananthapuram, India, Manu currently resides in Bengaluru, India, with his wife and son
Read more about Manu Joseph