Machine Learning with Python
Video: .mp4 (1280x720, 30 fps(r)) | Audio: aac, 44100 Hz, 2ch | Size: 3.28 GB
Genre: eLearning Video | Duration: 5.5 hour | Language: English

What you'll learn

Machine Learning, Deep Learning, AI and Data Science Basic Concepts
Applications of ML/AI/DS and Job prospects
Supervised, Un-supervised Learning
Environment Setup : Anaconda and Jupyter Notebook
Python package "Numpy" for numerical computation, Python package "MatDescriptionlib" for visualization and Descriptionting, Python package "pandas" for data analysis
Basics of Probability Theory
Understanding different types of data
Examining distribution of the variables
Examining relationship among variables
Exploratory data analysis using Python
Linear regression model / hypothesis
Linear regression on bi-variate data
Multivariate Regression
Polynomial regression
Python implementation of Gradient descent algorithm for regression.
Using in-built Python libraries for solving linear regression problem.
Logistic regression for binary classification problem.
Logistic regression for multiclass classification problem.
Python implementation of Gradient Descent update rule for logistic regression.
Using Python built in library for logistic regression problem.
K-Nearest Neighbour Classifier, Naïve Bayes Classifier, Decision Tree Classifier, Support Vector Machine Classifier, Random Forest Classifier (We shall use Python built-in libraries to solve classification problems using above mentioned classification algorithms)
High dimensionality in data set and its problems.
Linear Algebra Review: Eigen value decomposition.
Feature Selection and Feature Extraction techniques
Principal Component Analysis (PCA)
Implementation of PCA in python.
k-Means clustering algorithm and its limitation
Implementation of k-Means clustering algorithm in python
Hierarchical Clustering.
Implementation of Hierarchical clustering in Python.
Perceptron and its learning rule and its limitations.
Multi-layered Perceptron (MLP) and its architecture.
Learning Rule : Back-Propagation
Building an MLP in Python.

Requirements

Mathematics Prerequisite : Basic concepts of Function & Curve tracking, basics of Multivariable Calculus : Partial Derivatives, Optimization : finding maxima and minima of a function, Linear Algebra: Vector & Matrices
Statistics Prerequisite : Basic Concepts of frequency distribution and histogram Description, Cumulative frequency distribution and ogive, Basic understanding of probablity
Python Prerequisite : Basic Idea, Data Type, Function, OOPS concepts

Description

This course will guide you to learn this thing:

Installation of Anaconda Distribution and Jupyter Notebook

Introduction to NumpyIntroduction to MatDescriptionlib

Introduction to PandasProbablity Theory

IntroductionExploratory Data Analysis

Basic ConceptsDistribution of Variable

Anyone interested in Machine learning can take the course.

Here in the course, we are going to use Python as a Programming Language.

Who this course is for:

Anyone interested to learn Machine Learning with Python



Download link:
Kod:
rapidgator_net: https://rapidgator.net/file/29f8dafb9bfecf156ef8fa6f3ee975e0/micy5.Machine.Learning.with.Python.part1.rar.html https://rapidgator.net/file/f27e37300a257084ac942f4d92f8654f/micy5.Machine.Learning.with.Python.part2.rar.html nitroflare_com: https://nitroflare.com/view/042E6F05BDAB61B/micy5.Machine.Learning.with.Python.part1.rar https://nitroflare.com/view/447AEAE34A5BDAC/micy5.Machine.Learning.with.Python.part2.rar
Links are Interchangeable - No Password - Single Extraction