Deep Learning Foundation : Linear Regression and Statistics — Udemy — Last updated 7/2020 — Free download

Data science : Learn statistics behind linear regression and build your own working program from scratch in Python.

What you’ll learn

  • Linear regression statistics basics
  • Assumptions of linear regression hypothesis testing sampling
  • Program your own version of a linear regression model in Python
  • Derive and solve a linear regression model, and apply it appropriately to data science problems
  • Jupyter notebook and simple python programming


Hi Everyone welcome to new course which is created to sharpen your linear regression and statistical basics. linear regression is starting point for a data science this course focus is on making your foundation strong for deep learning and machine learning algorithms. In this course I have explained hypothesis testing, Unbiased estimators, Statistical test , Gradient descent. End of the course you will be able to code your own regression algorithm from scratch.

Who this course is for:

  • Python developers curious about data science
  • data science and machine leaning engineers


Deep Learning Foundation Linear Regression and Statistics.part1.rar   (download)
1.95 GB
Deep Learning Foundation Linear Regression and Statistics.part2.rar   (download)
1.95 GB
Deep Learning Foundation Linear Regression and Statistics.part3.rar   (download)
166.00 MB

Course content:

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