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Complete Python Machine Learning Data Science for Dummies

  • Development
  • Apr 18, 2025
SynopsisComplete Python Machine Learning & Data Science for Dummi...
Complete Python Machine Learning Data Science for Dummies  No.1

Complete Python Machine Learning & Data Science for Dummies, available at $54.99, has an average rating of 4.15, with 90 lectures, based on 73 reviews, and has 2350 subscribers.

You will learn about Machine Learning and Data Science using Python for Beginners This course is ideal for individuals who are Beginners who are interested in Machine Learning using Python It is particularly useful for Beginners who are interested in Machine Learning using Python.

Enroll now: Complete Python Machine Learning & Data Science for Dummies

Summary

Title: Complete Python Machine Learning & Data Science for Dummies

Price: $54.99

Average Rating: 4.15

Number of Lectures: 90

Number of Published Lectures: 90

Number of Curriculum Items: 90

Number of Published Curriculum Objects: 90

Original Price: $139.99

Quality Status: approved

Status: Live

What You Will Learn

  • Machine Learning and Data Science using Python for Beginners
  • Who Should Attend

  • Beginners who are interested in Machine Learning using Python
  • Target Audiences

  • Beginners who are interested in Machine Learning using Python
  • Hi.. Hello and welcome to my new course, Machine Learning with Python for Dummies. We will discuss about the overview of the course and the contents included in this course.

    Artificial Intelligence, Machine Learning? and Deep Learning Neural Networks are the most used terms now a days in the technology world. Its also the most mis-understood and confused terms too.

    Artificial Intelligence is a broad spectrum of science which tries to make machines intelligent like humans. Machine Learning and Neural Networks are two subsets that comes under this vast machine learning platform

    Lets check what’s machine learning now. Just like we human babies, we were actually in our learning phase then. We learned how to crawl, stand, walk, then speak words, then make simple sentences.. We learned from our experiences. We had many trials and errors before we learned how to walk and talk. The best trials for walking and talking which gave positive results were kept in our memory and made use later. This process is highly compared to a Machine Learning Mechanism

    Then we grew young and started thinking logically about many things, had emotional feelings, etc. We kept on thinking and found solutions to problems in our daily life. That’s what the Deep Learning Neural Network Scientists are trying to achieve. A thinking machine.

    But in this course we are focusing mainly in Machine Learning. Throughout this course, we are preparing our machine to make it ready for a prediction test. Its Just like how you prepare for your Mathematics Test in school or college.? We learn and train ourselves by solving the most possible number of similar mathematical problems. Lets call these sample data of similar problems and their solutions as the ‘Training Input’ and ‘Training Output’ Respectively. And then the day comes when we have the actual test. We will be given new set of problems to solve, but very similar to the problems we learned, and based on the previous practice and learning experiences, we have to solve them. We can call those problems as ‘Testing Input’ and our answers as ‘Predicted Output’. Later, our professor will evaluate these answers and compare it with its actual answers, we call the actual answers as ‘Test Output’. Then a mark will be given on basis of the correct answers. We call this mark as our ‘Accuracy’. The life of a machine learning engineer and a data-scientist is dedicated to make this accuracy as good as possible through different techniques and evaluation measures.

    Here are the major topics that are included in this course. We are using Python as our programming language. Python is a great tool for the development of programs which perform data analysis and prediction. It has tons of classes and features which perform the complex mathematical analysis and give solutions in simple one or two lines of code so that we don’t have to be a statistic genius or mathematical Nerd to learn data science and machine learning. Python really makes things easy.

    These are the main topics that are included in our course

    System and Environment preparation

    Installing Python and Required Libraries (Anaconda)

    Basics of python and sci-py

    Python, Numpy , Matplotlib and Pandas Quick Courses

    Load data set from csv / url

    Load CSV data with Python, NumPY and Pandas

    Summarize data with description

    Peeking data, Data Dimensions, Data Types, Statistics, Class Distribution, Attribute Correlations, Univariate Skew

    Summarize data with visualization

    Univariate, Multivariate Plots

    Prepare data

    -

    Data Transforms, Rescaling, Standardizing, Normalizing and Binarization

    Feature selection – Automatic selection techniques

    Univariate Selection, Recursive Feature Elimination, Principle Component Analysis and Feature Importance

    Machine Learning Algorithm Evaluation

    Train and Test Sets, K-fold Cross Validation, Leave One Out Cross Validation, Repeated Random Test-Train Splits.

    Algorithm Evaluation Metrics

    Classification Metrics – Classification Accuracy, Logarithmic Loss, Area Under ROC Curve, Confusion Matrix, Classification Report.

    Regression Metrics – Mean Absolute Error, Mean Squared Error, R 2.

    Spot-Checking Classification Algorithms

    Linear Algorithms –? Logistic Regression, Linear Discriminant Analysis.

    Non-Linear Algorithms – k-Nearest Neighbours, Naive Bayes, Classification and Regression Trees, Support Vector Machines.

    Spot-Checking Regression Algorithms

    Linear Algorithms –? ?Linear Regression, Ridge Regression, LASSO Linear Regression and Elastic Net Regression.

    Non-Linear Algorithms – k-Nearest Neighbours, Classification and Regression Trees, Support Vector Machines.

    Choose The Best Machine Learning Model

    Compare Logistic Regression, Linear Discriminant Analysis, k-Nearest Neighbours, Classification and Regression Trees, Naive Bayes, Support Vector Machines.

    Automate and Combine Workflows with Pipeline

    Data Preparation and Modelling Pipeline

    Feature Extraction and Modelling Pipeline

    Performance Improvement with Ensembles

    Voting Ensemble

    Bagging: Bagged Decision Trees, Random Forest, Extra Trees

    Boosting: AdaBoost, Gradient Boosting

    Performance Improvement with Algorithm Parameter Tuning

    Grid Search Parameter

    Random Search Parameter Tuning

    Save and Load (serialize and deserialize) Machine Learning Models

    Using pickle

    Using Joblib

    finalize a machine learning project

    steps For Finalizing classification models – pima indian dataset

    Dealing with imbalanced class problem

    steps For Finalizing multi class models – iris flower dataset

    steps For Finalizing regression models – boston housing dataset

    Predictions and Case Studies

    -

    Case study 1: predictions using the Pima Indian Diabetes Dataset

    Case study: Iris Flower Multi Class Dataset

    Case study 2: the Boston Housing cost Dataset

    Machine Learning and Data Science is the most lucrative job in the technology arena now a days. Learning this course will make you equipped to compete in this area.

    Best wishes with your learning. Se you soon in the class room.

    Course Curriculum

    Chapter 1: Course Overview & Table of Contents

    Lecture 1: Course Overview & Table of Contents

    Chapter 2: Introduction to Machine Learning – Part 1 – Concepts , Definitions and Types

    Lecture 1: Introduction to Machine Learning – Part 1 – Concepts , Definitions and Types

    Chapter 3: Introduction to Machine Learning – Part 2 – Classifications and Applications

    Lecture 1: Introduction to Machine Learning – Part 2 – Classifications and Applications

    Chapter 4: System and Environment preparation – Part 1

    Lecture 1: System and Environment preparation – Part 1

    Chapter 5: System and Environment preparation – Part 2

    Lecture 1: System and Environment preparation – Part 2

    Chapter 6: Learn Basics of python – Assignment

    Lecture 1: Learn Basics of python – Assignment

    Chapter 7: Learn Basics of python – Flow Control

    Lecture 1: Learn Basics of python – Assignment

    Chapter 8: Learn Basics of python – Functions

    Lecture 1: Learn Basics of python – Functions

    Chapter 9: Learn Basics of python – Data Structures

    Lecture 1: Learn Basics of python – Data Structures

    Chapter 10: Learn Basics of NumPy – NumPy Array

    Lecture 1: Learn Basics of NumPy – NumPy Array

    Chapter 11: Learn Basics of NumPy – NumPy Data

    Lecture 1: Learn Basics of NumPy – NumPy Data

    Chapter 12: Learn Basics of NumPy – NumPy Arithmetic

    Lecture 1: Learn Basics of NumPy – NumPy Arithmetic

    Chapter 13: Learn Basics of Matplotlib

    Lecture 1: Learn Basics of Matplotlib

    Chapter 14: Learn Basics of Pandas – Part 1

    Lecture 1: Learn Basics of Pandas – Part 1

    Chapter 15: Learn Basics of Pandas – Part 2

    Lecture 1: Learn Basics of Pandas – Part 2

    Chapter 16: Understanding the CSV data file

    Lecture 1: Understanding the CSV data file

    Chapter 17: Load and Read CSV data file using Python Standard Library

    Lecture 1: Load and Read CSV data file using Python Standard Library

    Chapter 18: Load and Read CSV data file using NumPy

    Lecture 1: Load and Read CSV data file using NumPy

    Chapter 19: Load and Read CSV data file using Pandas

    Lecture 1: Load and Read CSV data file using Pandas

    Chapter 20: Dataset Summary – Peek, Dimensions and Data Types

    Lecture 1: Dataset Summary – Peek, Dimensions and Data Types

    Chapter 21: Dataset Summary – Class Distribution and Data Summary

    Lecture 1: Dataset Summary – Class Distribution and Data Summary

    Chapter 22: Dataset Summary – Explaining Correlation

    Lecture 1: Dataset Summary – Explaining Correlation

    Chapter 23: Dataset Summary – Explaining Skewness – Gaussian and Normal Curve

    Lecture 1: Dataset Summary – Explaining Skewness – Gaussian and Normal Curve

    Chapter 24: Dataset Visualization – Using Histograms

    Lecture 1: Dataset Visualization – Using Histograms

    Chapter 25: Dataset Visualization – Using Density Plots

    Lecture 1: Dataset Visualization – Using Density Plots

    Chapter 26: Dataset Visualization – Box and Whisker Plots

    Lecture 1: Dataset Visualization – Box and Whisker Plots

    Chapter 27: Multivariate Dataset Visualization – Correlation Plots

    Lecture 1: Multivariate Dataset Visualization – Correlation Plots

    Chapter 28: Multivariate Dataset Visualization – Scatter Plots

    Lecture 1: Multivariate Dataset Visualization – Scatter Plots

    Chapter 29: Data Preparation (Pre-Processing) – Introduction

    Lecture 1: Data Preparation (Pre-Processing) – Introduction

    Chapter 30: Data Preparation – Re-scaling Data – Part 1

    Lecture 1: Data Preparation – Re-scaling Data – Part 1

    Chapter 31: Data Preparation – Re-scaling Data – Part 2

    Lecture 1: Data Preparation – Re-scaling Data – Part 2

    Chapter 32: Data Preparation – Standardizing Data – Part 1

    Lecture 1: Data Preparation – Standardizing Data – Part 1

    Chapter 33: Data Preparation – Standardizing Data – Part 2

    Lecture 1: Data Preparation – Standardizing Data – Part 2

    Chapter 34: Data Preparation – Normalizing Data

    Lecture 1: Data Preparation – Normalizing Data

    Chapter 35: Data Preparation – Binarizing Data

    Lecture 1: Data Preparation – Binarizing Data

    Chapter 36: Feature Selection – Introduction

    Lecture 1: Feature Selection – Introduction

    Chapter 37: Feature Selection – Uni-variate Part 1 – Chi-Squared Test

    Lecture 1: Feature Selection – Uni-variate Part 1 – Chi-Squared Test

    Chapter 38: Feature Selection – Uni-variate Part 2 – Chi-Squared Test

    Lecture 1: Feature Selection – Uni-variate Part 2 – Chi-Squared Test

    Chapter 39: Feature Selection – Recursive Feature Elimination

    Lecture 1: Feature Selection – Recursive Feature Elimination

    Chapter 40: Feature Selection – Principal Component Analysis (PCA)

    Lecture 1: Feature Selection – Principal Component Analysis (PCA)

    Chapter 41: Feature Selection – Feature Importance

    Lecture 1: Feature Selection – Feature Importance

    Chapter 42: Refresher Session – The Mechanism of Re-sampling, Training and Testing

    Lecture 1: Refresher Session – The Mechanism of Re-sampling, Training and Testing

    Chapter 43: Algorithm Evaluation Techniques – Introduction

    Lecture 1: Algorithm Evaluation Techniques – Introduction

    Chapter 44: Algorithm Evaluation Techniques – Train and Test Set

    Lecture 1: Algorithm Evaluation Techniques – Train and Test Set

    Chapter 45: Algorithm Evaluation Techniques – K-Fold Cross Validation

    Lecture 1: Algorithm Evaluation Techniques – K-Fold Cross Validation

    Chapter 46: Algorithm Evaluation Techniques – Leave One Out Cross Validation

    Lecture 1: Algorithm Evaluation Techniques – Leave One Out Cross Validation

    Chapter 47: Algorithm Evaluation Techniques – Repeated Random Test-Train Splits

    Lecture 1: Algorithm Evaluation Techniques – Repeated Random Test-Train Splits

    Chapter 48: Algorithm Evaluation Metrics – Introduction

    Lecture 1: Algorithm Evaluation Metrics – Introduction

    Chapter 49: Algorithm Evaluation Metrics – Classification Accuracy

    Lecture 1: Algorithm Evaluation Metrics – Classification Accuracy

    Chapter 50: Algorithm Evaluation Metrics – Log Loss

    Lecture 1: Algorithm Evaluation Metrics – Log Loss

    Instructors

  • Complete Python Machine Learning Data Science for Dummies  No.2
    Abhilash Nelson
    Computer Engineering Master & Senior Programmer at Dubai
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  • 1 stars: 2 votes
  • 2 stars: 4 votes
  • 3 stars: 8 votes
  • 4 stars: 26 votes
  • 5 stars: 33 votes
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