Shorten Link: http://bit.ly/eccb2022
ECCB web: https://eccb2022.org/ntb-t03/
https://docs.google.com/presentation/d/1zAcJcWtyA-kh7AP_Hy_7OuzjQigppFaG74hLejJVlD8/edit?usp=sharing
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Exercise 1: MNIST with fully connected network [open]
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Exercise 2: Fine tuning CNN model to your own data [open]
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Exercise 3: Transformers and transfer learning [open]
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Exercise 4: Gradio demo on sequences [open] and images [open]
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Extra exercise (not presented during the tutorial): CNN for genomic sequences - basics [open], fastai [open]
Where to go next:
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Transformers - Stanford course on transformers, DeepMind paper on algorithms
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Transformers on genomic and proteomic sequences:
- DNABert paper - language model trained on genome
- AlphaFold2 paper
- ESM2 paper - language model trained on proteome
- ML Protein Engineering Seminar Series
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Navigating the pitfalls of applying machine learning in genomics