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Python for Machine Learning: The Complete Beginner’s Course

Last updated on May 5, 2024 11:25 am
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Description

What you’ll learn

  • Learn Python programming and Scikit learn applied to machine learning regression
  • Understand the underlying theory behind simple and multiple linear regression techniques
  • Learn to solve regression problems (linear regression and logistic regression)
  • Learn the theory and the practical implementation of logistic regression using sklearn
  • Learn the mathematics behind decision trees
  • Learn about the different algorithms for clustering

To understand how organizations like Google, Amazon, and even Udemy use machine learning and artificial intelligence (AI) to extract meaning and insights from enormous data sets, this machine learning course will provide you with the essentials. According to Glassdoor and Indeed, data scientists earn an average income of $120,000, and that is just the norm! 

When it comes to being attractive, data scientists are already there. In a highly competitive job market, it is tough to keep them after they have been hired. People with a unique mix of scientific training, computer expertise, and analytical abilities are hard to find.

Like the Wall Street “quants” of the 1980s and 1990s, modern-day data scientists are expected to have a similar skill set. People with a background in physics and mathematics flocked to investment banks and hedge funds in those days because they could come up with novel algorithms and data methods.

That being said, data science is becoming one of the most well-suited occupations for success in the twenty-first century. It is computerized, programming-driven, and analytical in nature. Consequently, it comes as no surprise that the need for data scientists has been increasing in the employment market over the last several years.

The supply, on the other hand, has been quite restricted. It is challenging to get the knowledge and abilities required to be recruited as a data scientist.

In this course, mathematical notations and jargon are minimized, each topic is explained in simple English, making it easier to understand. Once you’ve gotten your hands on the code, you’ll be able to play with it and build on it. The emphasis of this course is on understanding and using these algorithms in the real world, not in a theoretical or academic context. 

You’ll walk away from each video with a fresh idea that you can put to use right away!

All skill levels are welcome in this course, and even if you have no prior statistical experience, you will be able to succeed!

Who this course is for:

  • Anyone who want to pursue a career in Machine Learning
  • Any Python programming enthusiast willing to add machine learning proficiency to their portfolio
  • Technologists who are curious about how Machine Learning works in the real world
  • Programmers who are looking to add machine learning to their skillset

Course content

  • Introduction to Machine Learning7 lectures • 10min
  • Introduction to Machine Learning
  • Optional: Setting Up Python & ML Algorithms Implementation7 lectures • 14min
  • Optional: Setting Up Python & ML Algorithms Implementation
  • Simple Linear Regression6 lectures • 11min
  • Simple Linear Regression
  • Multiple Linear Regression8 lectures • 20min
  • Multiple Linear Regression
  • Classification Algorithms: K-Nearest Neighbors10 lectures • 14min
  • Classification Algorithms: K-Nearest Neighbors
  • Classification Algorithms: Decision Tree8 lectures • 12min
  • Classification Algorithms: Decision Tree
  • Classification Algorithms: Logistic regression8 lectures • 14min
  • Classification Algorithms: Logistic regression
  • Clustering15 lectures • 27min
  • Clustering
  • Recommender System17 lectures • 25min
  • Recommender System
  • Conclusion1 lecture • 1min
  • Conclusion

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