Published 4/2023
MP4 | Video: h264, 1280×720 | Audio: AAC, 44.1 KHz
Language: English | Size: 8.76 GB | Duration: 10h 5m
Machine Learning, Data-Driven Engineering, Wavelet Analysis, Fourier Transforms, and Dynamical Systems
Free Download What you’ll learn
Understand the principles and applications of Fourier analysis and wavelets (with emphasis on the physical insights rather than the mathematics)
Use Fourier series and transforms to analyze data in various domains
Apply machine learning methods to different problems
Extract features from data using wavelets
Understand the importance of sparsity of natural data
Understand the revolutionary concept of compressed sensing, with realistic examples.
Discover the governing equations of a dynamical system from time series data (SINDy algorithm)
Implement efficient Machine Learning algorithms with Matlab
Understand and apply the Singular Value Decomposition (SVD) (we even prove it!)
Learn how to use the SVD to approximate images
Understand the Least Squares Method (LSM) from practical examples
Understand and apply the Fast Fourier Transform (FFT) – one of the most important algorithms ever discovered
Understand and apply the Discrete Cosine Transform (DCT)
Learn how to derive the Inverse Wavelet Transform
Learn how to derive the Inverse Discrete Cosine Transform
Learn how to derive the Inverse Fourier Transform
Learn how to derive the Uncertainty Principle, and how this affects the time-frequency resolution
Requirements
Familiarity with some linear algebra will make the class easier to follow along with.
Calculus might be useful to understand machine learning techniques and wavelets to a greater degree. My primary aim is not to show you the mathematics, but with some mathematical background you would be able to appreciate the contents more thoroughly
Description
Welcome to my course on Machine Learning and Data Analysis, a course that will teach you how to use advanced algorithms to solve real problems with data. I am Emanuele, a mechanical engineer with a PhD in advanced algorithms, and I will be your instructor for this course.This course consists of four main parts:Part 1: Overview on Fourier Analysis and Wavelets. You will learn the basics of these two powerful mathematical tools for analyzing signals and images in different domains.Part 2: Data Analysis with Fourier Series, Transforms and Wavelets. You will learn how to apply these methods to process and explore data efficiently and effectively, both in time and frequency domains.Part 3: Machine Learning Methods. You will learn how to use techniques that enable computers to learn from data and make intelligent predictions or decisions, such as linear regression, curve fitting, least squares, gradient descent, Singular Value Decomposition (and more).Part 4: Dynamical Systems. You will learn how to model and understand complex and nonlinear phenomena that change over time, using mathematical equations. We will also apply machine learning techniques to dynamical systems, such as the SINDy algorithm.By the end of this course, you will be able to:Understand the principles and applications of Fourier analysis and waveletsUse Fourier series and transforms to analyze data in various domainsApply machine learning methods to different problemsExtract features from data using waveletsUnderstand the importance of sparsity of natural data, as well as the revolutionary concept of compressed sensing, with realistic examples.Discover the governing equations of a dynamical system from time series data (SINDy algorithm).I hope you enjoy this course and find it useful for your personal and professional goals.————————————————————————————————————————————Let’s provide some more details about the main parts of this course: Part 1 constitutes a preliminary introduction to Fourier and Wavelet Analysis. The focus will be on understanding the most relevant concepts related to these fundamental topics.In part 2, the Fourier series and the Fourier Transform are introduced. Although the most important mathematical formulae are shown, the focus is not on the mathematics. One of the key points of this part is to show one possible application of the Fourier Transform: the spectral derivative. Then, we introduce the concept of Wavelets more in detail by showing some applications of Multiresolution Analysis.This is exemplified with Matlab, without using rigorous mathematical formulae. The student can follow and get the intuition even if they have no access to Matlab.Another important achievement of this part is to convey a simple but thorough explanation of the well-known computational FFT method.There are also some extras on the Inverse Wavelet Transform and the Uncertainty principle (here we see more mathematics, but this is an extra, if you want to skip it, just do it).In part 3, some machine learning techniques are introduced: the methods of curve-fitting, gradient descent, linear regression, Singular Value Decomposition (SVD), classification, Gaussian Mixture Model (GMM). The objective in this part is to show some practical applications and cast light on their usefulness.We will also focus on sparsity and compressed sensing, which are related concepts in signal processing. Sparsity means that a signal can be represented by a few non-zero coefficients in some domain, such as frequency or wavelet. Compressed sensing means that a signal can be reconstructed from fewer measurements than the Nyquist-Shannon sampling theorem requires, by exploiting its sparsity and using optimization techniques. These concepts are useful for reducing the dimensionality and complexity of data in machine learning applications, such as image processing or radar imaging.Part 4 is a self-contained introduction to dynamical models. The models contained in this part are the prey-predator model, the model of epidemics, the logistic model of population growth.The student will learn how to implement these models using free and open-source software called Scilab (quite similar to Matlab).Related to Part 4, there is an application of machine learning technique called SINDy, which is an acronym for Sparse Identification of Nonlinear Dynamics. It is a machine learning algorithm that can discover the governing equations of a dynamical system from time series data. The main idea is to assume that the system can be described by a sparse set of nonlinear functions, and then use a sparsity-promoting regression technique to find the coefficients of these functions that best fit the data. This way, SINDy can recover interpretable and parsimonious models of complex systems.Note: For some of the lectures of the course, I was inspired by S.L. Brunton and J. N. Kutz’s book titled "Data-Driven Science and Engineering". This book is an excellent source of information to dig deeper on most (although not all) of the topics discussed in the course.
Overview
Section 1: Overview of Fourier and Wavelet Analysis
Lecture 1 Overview of Fourier Analysis
Lecture 2 Space-Frequency resolution for the Short Time Fourier Transform
Lecture 3 Wavelets and Space-Frequency resolution
Section 2: Data Analysis with Fourier Series and Transform
Lecture 4 Summary of Fourier Series and Fourier Transform
Lecture 5 Notation for the Fourier Transform
Lecture 6 Fourier Transform of the derivative of a function
Lecture 7 The importance of the Fast Fourier Transform (FFT)
Lecture 8 Spectral derivative
Lecture 9 Wavelets and Multiresolution Analysis
Lecture 10 Extra: Why the Dirac delta helps derive the Inverse Fourier Transform
Lecture 11 Extra: Mathematical derivation of the Inverse Wavelet Transform
Lecture 12 Extra: Uncertainty principle – mathematical proof
Section 3: Methods in Machine Learning
Lecture 13 Curve fitting
Lecture 14 Example of curve fitting – least squares method
Lecture 15 Gradient descent
Lecture 16 Singular Value Decomposition – SVD
Lecture 17 Approximation of images with the SVD
Lecture 18 Supervised machine learning – extraction of features with SVD and Wavelets
Lecture 19 Linear regression: least squares method in matrix form
Lecture 20 Linear regression: sensitivity to outliers in the data
Lecture 21 Classification/decision trees
Lecture 22 Gaussian Mixture Models
Lecture 23 Example of Gaussian mixture model
Section 4: Sparsity and Compressed Sensing
Lecture 24 Sparsity and compressed sensing: intro to sparsity
Lecture 25 Sparsity and compressed sensing: why "natural" signals are compressible
Lecture 26 Sparsity and compressed sensing: intro to compressed sensing
Lecture 27 Example of compressed sensing
Lecture 28 Definition of the Discrete Cosine Transform (DCT) and its inverse
Lecture 29 Extra: formula which is crucial to finding the Inverse Discrete Cosine Transform
Section 5: Dynamical systems
Lecture 30 Introduction to the section on mathematical models
Lecture 31 Pure prey-predator model
Lecture 32 Equilibrium points and their stability
Lecture 33 Equilibrium points in the prey-predator model
Lecture 34 Introduction to Scilab
Lecture 35 Constructing the model with Scilab part 1
Lecture 36 Constructing the model with Scilab part 2
Lecture 37 How parameters affect the output of the model
Lecture 38 Influence of fishing on the model
Lecture 39 Addition of logistic terms to the model
Lecture 40 Model on the evolution of epidemics
Lecture 41 Mathematical analysis of stability
Lecture 42 Simulation and mathematics of the logistic model with one population
Section 6: Machine learning applied to dynamical systems
Lecture 43 Dynamical systems and chaos: Lorenz system
Lecture 44 Machine learning to find dynamical models behind data (SYNDy algorithm)
Section 7: Proof of the SVD decomposition
Lecture 45 Introduction to this section on the proof of the SVD
Lecture 46 Diagonalization theorem in Linear Algebra
Lecture 47 Intuition behind the Singular Value Decomposition (SVD)
data scientists who seek to reinforce their understanding of Machine Learning techniques and step up their game,Wannabe data analysts or A.I. enthusiasts,ML engineers,software developers,applied mathematicians,physicists,Researchers,Programmers,Anyone who wants to learn how to use advanced algorithms to solve real problems with data. It is especially useful for those who are interested in machine learning and data analysis.
Homepage
https://www.udemy.com/course/advanced-data-analysis-using-wavelets-and-machine-learning/
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