Skip to content

awaisrauf/MOOCs

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 

Repository files navigation

📖 Voyage de MOOCs

❤️ What: I love online learning; it feeds my curiosity and gives me the joy of exploration with freedom. I started my MOOC journey back in 2013 on Edx with Harvard's famous course called CS50. Ever since, I have taken many courses spanning many diverse fields. This repo contains relevant material about the MOOC I have taken.

🗄️ Why this Repo: A few years ago, I found that I could learn more efficiently by taking notes and sharing my progress. As I later found out, this personal finding is backed by science. In the book "Willpower", social psychologist Baumeister wrote extensively about the power of tracking progress, pre-commitment, and writing. Following this, I have started taking notes and recording my progress.

⚙️ My Learning Mechanism: There are two often-cited styles of learning: i) by reading books or taking courses and solving exercises, ii) directly delving into a related project or a problem, and learning by doing. We can think of these two as supervised (more structured feedback) and unsupervised (you have to create your structure and signal) learning. However, I think that a combination of these two -- pre-training on courses/books and fine-tuning on projects/tasks -- is the more optimal solution.

This combination consists of two steps. Start by taking/reading a few relevant courses/books quickly, and the aim is to complete the course/book as soon as possible. Start working on a project once I'm familiar with its basics. Then, I will keep revisiting it as I do more work on the project. For instance, I want to draw new types of plots for a paper, and I am trying to figure out how. I would start by reading Matplotlib documentation or taking a small MOOC (along with playing with some toy examples) and then move on to the task at hand.

Courses Progress

  • 📕 Book - Deep Learning Book by Aaron Courville, Ian Goodfellow, and Yoshua Bengio
    • Part I: Applied Math and Machine Learning Basics
    • Part II: Modern Practical Deep Networks
    • Part III: Deep Learning Research
  • 💻 DataCamp - Coding Best Practices with Python
    • Writing Efficient Python Code
    • Writing Efficient Code with pandas
    • Writing Functions in Python
    • Working with the Class System in Python
    • Creating Robust Workflows in Python
    • Software Engineering for Data Scientists in Python
    • Unit Testing for Data Science in Python
  • ✍🏼 Stanford and Lagunita - Writing in Science
  • 📉 Stanford and Lagunita - Statistical Reasoning
  • 🤖 Coursera - Deep Learning Specialization
    • Course 1: Neural Networks and Deep Learning
    • Course 2: Improving Deep Neural Networks: Hyperparameter tuning, Regularization and Optimization
    • Course 3: Structuring Machine Learning Projects
    • Course 4: Convolutional Neural Networks
    • Course 5: Sequence Models
  • ⚙️ Facebook and Udacity - Pytorch Challenge
  • 🕸️ Udacity - ND0044 - Full Stack NanoDegree
    • SQL and Data Modeling for the Web
    • API Development and Documentation
    • Identity Access Management
    • Server Deployment and Containerization
  • 🏧 Harvard and Edx - CS50's Introduction to Computer Science
  • 🔘 UT Austin and Edx - Embedded Systems - Shape The World: Microcontroller
  • 📊 DataCamp - Data Visulization with Python
    • Course 1: Introduction to Data Visualization with Matplotlib
  • 🈹 Coursera - Natural Language Processing
    • Natural Language Processing with Classification and Vector Spaces
  • ❌ Standford - CS20SI Tensorflow for Research