Pytorch Seq2Seq with Attention for Machine Translation
Offered By: Aladdin Persson via YouTube
Course Description
Overview
Build a Sequence to Sequence (Seq2Seq) model with Attention from scratch using PyTorch for machine translation. Apply the model to translate German sentences to English using the Multi30k dataset in this 25-minute tutorial. Learn how to implement the Seq2Seq architecture with Attention mechanism, a powerful technique for improving translation quality. Explore additional resources, including GitHub repositories, research papers, and PyTorch tutorials, to deepen your understanding of the topic. Gain insights into the practical application of advanced natural language processing techniques for neural machine translation tasks.
Syllabus
Pytorch Seq2Seq with Attention for Machine Translation
Taught by
Aladdin Persson
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