Get in Touch

Course Outline

Introduction to Google Colab Pro

  • Comparing Colab and Colab Pro: features and limitations.
  • Creating and managing notebooks.
  • Configuring hardware accelerators and runtime settings.

Python Programming in the Cloud

  • Working with code cells, markdown, and notebook structure.
  • Installing packages and setting up the environment.
  • Saving and versioning notebooks in Google Drive.

Data Processing and Visualization

  • Loading and analyzing data from files, Google Sheets, or APIs.
  • Utilizing Pandas, Matplotlib, and Seaborn.
  • Streaming and visualizing large datasets.

Machine Learning with Colab Pro

  • Implementing Scikit-learn and TensorFlow in Colab.
  • Training models on GPUs and TPUs.
  • Evaluating and tuning model performance.

Working with Deep Learning Frameworks

  • Using PyTorch with Colab Pro.
  • Managing memory and runtime resources.
  • Saving checkpoints and training logs.

Integration and Collaboration

  • Mounting Google Drive and accessing shared datasets.
  • Collaborating through shared notebooks.
  • Exporting content to GitHub or PDF for distribution.

Performance Optimization and Best Practices

  • Managing session lifetime and timeouts.
  • Structuring efficient code within notebooks.
  • Strategies for long-running or production-level tasks.

Summary and Next Steps

Requirements

  • Proficiency in Python programming.
  • Familiarity with Jupyter notebooks and fundamental data analysis concepts.
  • Understanding of standard machine learning workflows.

Target Audience

  • Data scientists and analysts.
  • Machine learning engineers.
  • Python developers engaged in AI or research initiatives.
 14 Hours

Upcoming Courses

Related Categories