Udemy – Numerical Methods and Optimization in Python 2022-4

Udemy – Numerical Methods and Optimization in Python 2022-4 Downloadly IRSpace

Udemy – Numerical Methods and Optimization in Python 2022-4
Udemy – Numerical Methods and Optimization in Python 2022-4

Numerical Methods and Optimization in Python This course is about numerical methods and optimization algorithms in Python programming language. We are NOT going to discuss ALL the theory related to numerical methods (for example how to solve differential equations etc.) – we are just going to consider the concrete implementations and numerical principles The first section is about matrix algebra and linear systems such as matrix multiplication, gaussian elimination and applications of these approaches. We will consider the famous Google’s PageRank algorithm.

Then we will talk about numerical integration. How to use techniques like trapezoidal rule, Simpson formula and Monte-Carlo method to calculate the definite integral of a given function. The next chapter is about solving differential equations with Euler’s-method and Runge-Kutta approach. We will consider examples such as the pendulum problem and ballistics. Finally, we are going to consider the machine learning related optimization techniques. Gradient descent, stochastic gradient descent algorithm, ADAGrad, RMSProp and ADAM optimizer will be discussed – theory and implementations as well.

What you’ll learn

  • Understand linear systems and Gaussian elimination
  • Understand eigenvectors and eigenvalues
  • Understand Google’s PageRank algorithm
  • Understand numerical integration
  • Understand Monte-Carlo simultions
  • Understand differential equations – Euler’s method and Runge-Kutta method
  • Understand machine learning related optimization algorithms (gradient descent, stochastic gradient descent, ADAM optimizer etc.)

Who this course is for

  • This course is meant for student with quantitative background or software engineers who are interested in numerical methods

Specificatoin of Numerical Methods and Optimization in Python

  • Publisher : Udemy
  • Teacher : Holczer Balazs
  • Language : English
  • Level : All Levels
  • Number of Course : 161
  • Duration : 13 hours and 58 minutes

Content of Numerical Methods and Optimization in Python

Numerical Methods and Optimization in Python

Requirements

  • Mathematical background – differential equations, integration and matrix algebra

Pictures

Numerical Methods and Optimization in Python

Sample Clip

Installation Guide

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Subtitle : English

Quality: 720p

Download Links

Download Part 1 – 1 GB

Download Part 2 – 1 GB

Download Part 3 – 797 MB

File size

2.77 GB