danielruijs/dd2424-project
Project in the course DD2424 Deep Learning in Data Science at KTH Royal Institute of Technology. This project compares the performance of different neural network architectures (RNN, LSTM, and Transformer) for generation of text from the Harry Potter series.
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MIT
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May 16, 2025
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