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Introduction to Deep Learning

There is strong demand for machine learning (DL) skills and expertise to solve challenging business problems both globally and locally in KSA. This course will help learners build capacity in core DL tools and methods and enable them to develop their own deep learning applications. This course covers the basic theory behind DL algorithms but the majority of the focus is on hands-on examples using PyTorch.

Learning Objectives

The primary learning objective of this course is to provide students with practical, hands-on experience with state-of-the-art machine learning and deep learning tools that are widely used in industry.

This course covers portions of chapters 10-19 of Hands-on Machine Learning with Scikit-Learn, Keras, and TensorFlow and chapters 11-19 of Machine Learning with PyTorch and Scikit-Learn. The following topics will be discussed.

  • Introduction to Artificial Neural Networks (ANNs)
  • Training Deep Neural Networks (DNNs)
  • Custom Models and Training with PyTorch and Lightning
  • Stratgeies for Loading and Preprocessing Data
  • Training and Deploying PyTorch Models at Scale

Lessons

The lessons are organizes into modules and sub-modules with the idea that they can taught somewhat independently to accommodate specific audiences.

Tutorial Open in Google Colab Open in Kaggle
First Steps with PyTorch Google Colab Kaggle
Building Data Pipelines with PyTorch Google Colab Kaggle
Building Neural Networks with PyTorch Google Colab Kaggle
Introduction to PyTorch Lightning Google Colab Kaggle

Module 2: Training DNNs

Tutorial Open in Google Colab Open in Kaggle
Deep Dive into PyTorch Google Colab Kaggle
Vanishing and Exploding Gradients Google Colab Kaggle
Transfer Learning and Unsupervised Pre-training Google Colab Kaggle
Faster Optimizers Google Colab Kaggle
Learning Rate Schedulers Google Colab Kaggle
Regularization Google Colab Kaggle
  • Consolidation of previous days content via Q/A and live coding demonstrations.
  • The morning session will focus on various topics related to training and deploying PyTorch models as scale by covering chapter 19 of Hands-on Machine Learning with Scikit-Learn, Keras, and TensorFlow.
  • The afternoon session will allow time for a final assessment as well as additional time for learners to complete any of the previous assessments.

Assessment

Student performance on the course will be assessed through participation in a Kaggle classroom competition.

Repository Organization

Repository organization is based on ideas from Good Enough Practices for Scientific Computing.

  1. Put each project in its own directory, which is named after the project.
  2. Put external scripts or compiled programs in the bin directory.
  3. Put raw data and metadata in a data directory.
  4. Put text documents associated with the project in the doc directory.
  5. Put all Docker related files in the docker directory.
  6. Install the Conda environment into an env directory.
  7. Put all notebooks in the notebooks directory.
  8. Put files generated during cleanup and analysis in a results directory.
  9. Put project source code in the src directory.
  10. Name all files to reflect their content or function.

Building the Conda environment

After adding any necessary dependencies that should be downloaded via conda to the environment.yml file and any dependencies that should be downloaded via pip to the requirements.txt file you create the Conda environment in a sub-directory ./envof your project directory by running the following commands.

export ENV_PREFIX=$PWD/env
mamba env create --prefix $ENV_PREFIX --file environment.yml --force

Once the new environment has been created you can activate the environment with the following command.

conda activate $ENV_PREFIX

Note that the ENV_PREFIX directory is not under version control as it can always be re-created as necessary.

For your convenience these commands have been combined in a shell script ./bin/create-conda-env.sh. Running the shell script will create the Conda environment, activate the Conda environment, and build JupyterLab with any additional extensions. The script should be run from the project root directory as follows.

./bin/create-conda-env.sh

Ibex

The most efficient way to build Conda environments on Ibex is to launch the environment creation script as a job on the debug partition via Slurm. For your convenience a Slurm job script ./bin/create-conda-env.sbatch is included. The script should be run from the project root directory as follows.

sbatch ./bin/create-conda-env.sbatch

Listing the full contents of the Conda environment

The list of explicit dependencies for the project are listed in the environment.yml file. To see the full lost of packages installed into the environment run the following command.

conda list --prefix $ENV_PREFIX

Updating the Conda environment

If you add (remove) dependencies to (from) the environment.yml file or the requirements.txt file after the environment has already been created, then you can re-create the environment with the following command.

$ mamba env create --prefix $ENV_PREFIX --file environment.yml --force

Using Docker

In order to build Docker images for your project and run containers with GPU acceleration you will need to install Docker, Docker Compose and the NVIDIA Docker runtime.

Detailed instructions for using Docker to build and image and launch containers can be found in the docker/README.md.

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Course materials for a multi-day course on deep learning.

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