Udemy
    •  
    •  
    •  
    •  
    •  
    •  
    •  
    •  
Turn what you know into an opportunity and reach millions around the world.
Learn More
Your cart is empty.
Keep shopping
Unleashing Unlabelled Data: Self-Supervised Learning
Rating: 4.5 out of 5(118 ratings)
529 students

Unleashing Unlabelled Data: Self-Supervised Learning

Master the Power of Unlabelled Data: Self-Supervised Machine Learning Techniques in Python for Artificial Intelligence
Created byMinerva Singh
Last updated 5/2025
English

What you'll learn

  • Understanding the concepts behind basic machine learning tasks, including clustering and classification
  • Learn about the uses of self-supervised machine learning
  • Implement self-supervised machine learning frameworks such as autoencoders using Python
  • Learn about deep learning frameworks such as Keras and H2O

Course content

4 sections28 lectures2h 33m total length
  • Welcome To The Course2:19
  • What Is Self-Supervised Machine Learning (ML)?2:22
  • Data and Code0:03
  • Python Installation5:44
  • Start With Google Colaboratory Environment7:13
  • Google Colabs and GPU5:50
  • Installing Packages In Google Colab4:27
  • Install H2O In Colab3:18
  • Installing H2O Locally2:11

Requirements

  • Basic Python data science concepts
  • Basic Python syntax
  • Understanding of the Colab environment

Description

Self-supervised machine learning is a paradigm that learns from unlabeled data without explicit human labelling. It involves creating surrogate or pretext tasks that the model is trained to solve using the raw data. By focusing on these tasks, the model learns to capture underlying patterns and structures, enabling it to discover useful representations. Self-supervised learning benefits from abundant unlabeled data reduces the need for manual annotation, and produces rich and transferable representations. It has found success in various arenas, offering a promising approach to leverage unlabeled data for extracting meaningful information without relying on external labels.


IF YOU ARE A NEWCOMER TO SELF-SUPERVISED MACHINE LEARNING, ENROLL IN MY LATEST COURSE ON HOW TO LEARN ALL ABOUT THIS LATEST ADVANCEMENT IN ARTIFICIAL INTELLIGENCE

This course will help you gain fluency in deploying data science-based BI solutions using a powerful clouded based python environment called GoogleColab. Specifically, you will


  • Learn the main aspects of implementing a Python data science framework within  Google Colab.

  • Learn what self-supervised machine learning is and its importance

  • Learn to implement the common data science frameworks and work with important AI packages, including H2O and Keras

  • Use common self-supervised machine learning techniques to learn from unlabelled data

  • Carry out important AI tasks, including denoising images and anomaly detection


In addition to all the above, you’ll have MY CONTINUOUS SUPPORT to ensure you get the most value out of your investment!

ENROLL NOW :)

Why Should You Take My Course?

My course provides a foundation to conduct PRACTICAL, real-life self-supervised machine learning By taking this course, you are taking a significant step forward in your data science journey to become an expert in harnessing the power of unlabelled data for deriving insights and identifying trends.

I have an MPhil (Geography and Environment) from the University of Oxford, UK. I also completed a data science intense PhD at Cambridge University (Tropical Ecology and Conservation). I have several years of experience analyzing real-life data from different sources, producing publications for international peer-reviewed journals and undertaking data science consultancy work. In addition to all the above, you’ll have MY CONTINUOUS SUPPORT to ensure you get the most value out of your investment!

ENROLL NOW :)

Who this course is for:

  • Data Scientists who want to increase their knowledge of self-supervised machine learning
  • Students of Artificial Intelligence (AI)
  • Students interested in learning about frameworks such as autoencoders