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Scientific topics: Probability

and Contributors: Kaivan Kamali

and Resource type: e-learning

5 e-learning materials found
  • e-learning

    A Docker-based interactive Jupyterlab powered by GPU for artificial intelligence in Galaxy

    • beginner
    Statistics and probability Statistics and machine learning deep-learning image-segmentation interactive-tools jupyter-lab machine-learning protein-3D-structure
  • e-learning

    Deep Learning (Part 1) - Feedforward neural networks (FNN)

    • beginner
    Statistics and probability Statistics and machine learning
  • e-learning

    Deep Learning (Part 2) - Recurrent neural networks (RNN)

    • beginner
    Statistics and probability Statistics and machine learning
  • e-learning

    Deep Learning (Part 3) - Convolutional neural networks (CNN)

    • beginner
    Statistics and probability Statistics and machine learning
  • e-learning

    Image classification in Galaxy with fruit 360 dataset

    • beginner
    Statistics and probability Statistics and machine learning
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TeSS has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement No. 676559.