14.01.2022, 14:23
A Mathematical Approach of Machine Learning using Python
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz, 2 Ch
Genre: eLearning | Language: English + srt | Duration: 117 lectures (31h 12m) | Size: 18.6 GB
In this course the mathematical concepts of machine learning will be taught to learners, with python in Google Colab
What you'll learn
In depth knowledge of mathematics behind building ML models
How to prepare data for feeding into models
In depth analysis of support vector machines and their kernels
Concepts of Ensemble methods in machine learning
Building Recommendation system by using concepts of machine learning
Building Recommendation System
Implementation of CNN models
Implementation of Fashion MNIST
Recurrent Neural network
Quiz at the end of each Section to test the concepts you have learned
Natural Language Processing
Active Learning
Requirements
No Prerequisites, only will to learn
Description
This course of mathematical approach to machine learning is a very comprehensive and unique course in itself. Machine Learning is a revolution now days but we cannot master machine learning without getting the mathematical insight, and this course is designed for the same. Our course starts from very basic to advance concepts of machine learning. We have divided the course into different modules which start from the introduction of python its programming basic and important programming constructs which are extensively used in ML programming. We have also designed modules of pandas, sklearn, scipy, seaborn and matplotlib for gearing the students with all important tools which are needed in dealing with data and building the model. The machine learning module focuses on the mathematical derivation on white board through video lectures because we believe that white box view of every concept is very important for becoming an efficient ML expert.
Concepts like gradient descent algorithm, Restricted Boltzmann Algorithm, Perceptron, Multiple Layer Perceptron, Support Vector Machine, Radial Basis Function , Naïve Bayes Classifier, Ensemble Methods, recommendation system and many more are being implemented with examples using Google Colab.
Further I wish best of luck to learners for their sincere efforts in advance.
Use of various components of statistics in analyzing data
Graphical representation of data to get deep insight of the patterns
Mathematical analysis of algorithms to remove the black box view
Practical implementation of all important ML Algorithms
Building various models from scratch using advance algorithms
Understanding the use of ML in research
Quiz at the end of each section
Who this course is for
undergraduates, graduates who want to learn python and machine learning along with their mathematical concepts
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