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Deep Learning for the Life Sciences

Applying Deep Learning to Genomics, Microscopy, Drug Discovery & More.

Using DeepChem with TensorFlow 2.x + Keras or PyTorch 🔥, projects and exercises adapted to run on Google Colab.

Repository of the book

Projects and exercises

Chapter Name TensorFlow PyTorch
3 - ML with DeepChem Predict toxicity of molecules ✔️ ✖️
3 - ML with DeepChem Digit Recognition (MNIST) ✔️ ✖️
4 - Molecules Predict solubility of molecules ✔️ ✖️
4 - Molecules SMARTS Strings ✔️ ✖️
5 - Biophysics Predict affinity of protein-ligands ✔️ ✖️
6 - Genomics Predict TF binding (JUND) ✔️ ✖️
6 - Genomics Predict TF binding with chromatin accessibility ✔️ ✖️
6 - Genomics Predict RNA Interference ✔️ ✖️
7 - Microscopy Cell counting ✔️ ✖️
7 - Microscopy Cell segmentation ✔️ ✖️
8 - Medicine Predict diabetic retinopathy progression ✔️ ✖️
9 - Generative models Generate molecules using MUV dataset ✔️ ✖️
10 - Interpretation - -
11 - Virtual Screening Virtual screening work-flow ✔️ -

Notes:

  1. On the Jupyter Notebooks the models don't save after/during the training. You must set model_dir and call model.restore() for use trained models, you can read more here.
  2. If you wish to run the models to train, please enable GPU on Colab (Runtime > Change runtime type > Hardware accelerator -> GPU).
  3. The projects are demonstrative, you shouldn't use them in a real life application, but you can have like reference to create robust models to research, exploration and more.

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Using DeepChem with TensorFlow 2.x and Keras

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