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Machine Learning in Python- From Zero to Hero in 10 Hours

  • Development
  • Jan 24, 2025
SynopsisMachine Learning in Python: From Zero to Hero in 10 Hours, av...
Machine Learning in Python- From Zero to Hero 10 Hours  No.1

Machine Learning in Python: From Zero to Hero in 10 Hours, available at $74.99, has an average rating of 4.4, with 78 lectures, 3 quizzes, based on 69 reviews, and has 429 subscribers.

You will learn about Hands-on explanation of every major Machine Learning techniques. Model Development, Deployment and Monitoring. Regression: Simple, Polynomial, and Multinomial Classification: Logistic Regression, K-Nearest Neighbors (KNN), Support Vector Machine (SVM), Decision Tree, Naive Bayes Ensemble Modeling: Voting Classifier, Bagging, Boosting, Stacking, Random Forest Implementation of every concepts explained in the course. Source codes are made available to you for your use. Data Visualization with MatPlotLib and Seaborn Use train, test and Cross Validation to choose and tune data Feature Engineering (Reduce Noise, Outliers) and Data Preprocessing Practical examples of How to trade-off between Bias, Variance, Irreducible errors using Ensemble Learning model and Bagging, Boosting Understand how to implement Machine Learning at massive scale Understand math and statistics behind Machine Learning models This course is ideal for individuals who are Students and professionals who want to become Machine Learning Expert or Data Scientist. or IT Professionals, Mathematicians, Statisticians. or Machine learning enthusiasts. or Project Managers, Data Analytics, and Business Intelligence Professionals. or Python developers. It is particularly useful for Students and professionals who want to become Machine Learning Expert or Data Scientist. or IT Professionals, Mathematicians, Statisticians. or Machine learning enthusiasts. or Project Managers, Data Analytics, and Business Intelligence Professionals. or Python developers.

Enroll now: Machine Learning in Python: From Zero to Hero in 10 Hours

Summary

Title: Machine Learning in Python: From Zero to Hero in 10 Hours

Price: $74.99

Average Rating: 4.4

Number of Lectures: 78

Number of Quizzes: 3

Number of Published Lectures: 75

Number of Published Quizzes: 3

Number of Curriculum Items: 81

Number of Published Curriculum Objects: 78

Original Price: $89.99

Quality Status: approved

Status: Live

What You Will Learn

  • Hands-on explanation of every major Machine Learning techniques.
  • Model Development, Deployment and Monitoring.
  • Regression: Simple, Polynomial, and Multinomial
  • Classification: Logistic Regression, K-Nearest Neighbors (KNN), Support Vector Machine (SVM), Decision Tree, Naive Bayes
  • Ensemble Modeling: Voting Classifier, Bagging, Boosting, Stacking, Random Forest
  • Implementation of every concepts explained in the course. Source codes are made available to you for your use.
  • Data Visualization with MatPlotLib and Seaborn
  • Use train, test and Cross Validation to choose and tune data
  • Feature Engineering (Reduce Noise, Outliers) and Data Preprocessing
  • Practical examples of How to trade-off between Bias, Variance, Irreducible errors using Ensemble Learning model and Bagging, Boosting
  • Understand how to implement Machine Learning at massive scale
  • Understand math and statistics behind Machine Learning models
  • Who Should Attend

  • Students and professionals who want to become Machine Learning Expert or Data Scientist.
  • IT Professionals, Mathematicians, Statisticians.
  • Machine learning enthusiasts.
  • Project Managers, Data Analytics, and Business Intelligence Professionals.
  • Python developers.
  • Target Audiences

  • Students and professionals who want to become Machine Learning Expert or Data Scientist.
  • IT Professionals, Mathematicians, Statisticians.
  • Machine learning enthusiasts.
  • Project Managers, Data Analytics, and Business Intelligence Professionals.
  • Python developers.
  • Join the most comprehensive Machine Learning Hands-on Course, because now is the time to get started!

    From basic concepts about Python Programming, Supervised Machine Learning, Unsupervised Machine Learningto Reinforcement Machine Learning, Natural Language Processing (NLP),this course covers all you need to know to become a successful Machine Learning Professional!

    But that’s not all! Along with covering all the steps of Machine Learning functions,this course also has quizzes and projects, which allow you to practice the things learned throughout the course!

    You’ll not only learn about the concepts but also practice each of those concepts through hands-on and real-life Projects.

    And if you do get stuck, you benefit from extremely fast and friendly support – both via direct messaging or discussion. You have my word!

    With more than two decades of IT experience, I have designed this course for students and professionals who wish to master how to develop and support industry-standard Machine learning projects.

    This course will be kept up-to-date to ensure you don’t miss out on any changes once Machine Learning is required in your project!

    Why Machine Learning?

    In modern times, Machine Learning is one of the most popular (if not the most!) career choices. According to available data, Machine Learning Engineer Is The Best Job of 2019 with a 344% growth and an average base salary of $146,085 per year.

    If you are looking for a thriving career in Data Analytics, Artificial Intelligence, Robotics, this is the right time to learn Machine Learning.

    Don’t be left out and prepare well for these opportunities.

    So, what are you waiting for?

    Pay once, benefit a lifetime! This is an evolving course! Machine Learningand future enhancements will be covered in this course. You won’t lose out on anything! Don’t lose any time, gain an edge, and start now!

    Course Curriculum

    Chapter 1: Introduction

    Lecture 1: What is Machine Learning

    Lecture 2: Machine Learning Terms and Keywords

    Lecture 3: Types of ML Algorithm

    Chapter 2: Basic Math and Statistics

    Lecture 1: Different Types of Data

    Chapter 3: Prerequisite Tools

    Lecture 1: IDE tools

    Lecture 2: Anaconda & Jupyter Notebook Installation

    Lecture 3: Google Collab

    Lecture 4: Kaggle

    Chapter 4: Python Programming

    Lecture 1: Python Basics

    Lecture 2: Numpy- Single Dimensional Array (Vector)

    Lecture 3: Numpy-Multidimensional Array (Matrix)

    Lecture 4: Numpy-Statistical Functions

    Lecture 5: Pandas

    Lecture 6: Pandas- Time Series

    Lecture 7: Matplot

    Lecture 8: Seaborn

    Chapter 5: Data Pre-processing

    Lecture 1: Introduction

    Lecture 2: Data Preprocessing

    Chapter 6: Part 1: Supervised Learning -> Regression

    Lecture 1: Supervised Learning : Regression

    Chapter 7: Simple Linear Regression

    Lecture 1: Simple Linear Regression

    Lecture 2: Hans-on: Simple Linear Regression Algorithm

    Lecture 3: Hands-on: Simple Linear Regression -1

    Lecture 4: Hands-on: Simple Linear Regression -2

    Chapter 8: Multiple Linear Regression (MLR)

    Lecture 1: Multiple Linear Regression Introduction

    Lecture 2: Multiple Linear Regression Data Set

    Lecture 3: Hands-on: Multiple Linear Regression – 1

    Lecture 4: Hands-on: Multiple Linear Regression -2

    Lecture 5: Hands-on: Multiple Linear Regression -3

    Chapter 9: Polynomial Linear Regression (PLR)

    Lecture 1: Polynomial Regression Introduction

    Lecture 2: Hands-on: Polynomial Linear Regression

    Chapter 10: K-Nearest Neighbors (KNN)

    Lecture 1: KNN Introduction

    Lecture 2: Hand-on: KNN Regression- Step1

    Lecture 3: Hands-on: KNN Regression -Step2

    Chapter 11: Advanced Regression Techniques

    Lecture 1: LASSO and Ridge

    Chapter 12: Part 2: Supervised Learning -> Classification

    Lecture 1: Classification Models

    Chapter 13: KNN Classifier

    Lecture 1: KNN Classifier – Data Source

    Lecture 2: Hands-on: KNN Classifier -Step1

    Lecture 3: Hands-on: KNN Classifier – Step2

    Chapter 14: Logistic Regression

    Lecture 1: Logistic Regression Introduction

    Lecture 2: Logistic Regression Data Source

    Lecture 3: Hands-on:Logistic Regression- Step1

    Lecture 4: Hands-on: Logistic Regression – Step2

    Lecture 5: Hands-on: Logistic Regression – Step3

    Chapter 15: Support Vector Machine (SVM)

    Lecture 1: Vector Dot Product

    Lecture 2: Support Vector Machine (SVM) Intuition

    Lecture 3: Hands-on: SVM -Linear Kernel

    Lecture 4: Hands-on: SVM -RBF Kernel

    Chapter 16: Naive Bayes

    Lecture 1: Bayes Theorem

    Lecture 2: Naive Bayes Intuition

    Lecture 3: Hands-on: Gaussian Naive Bayes

    Lecture 4: Multinomial Naive Bayes Intuition

    Lecture 5: NLP and Naive Bayes Projec t-Prerequisite

    Lecture 6: Countervectorizers

    Lecture 7: Term Frequency (TF) – Inverse Document Frequency (IDF)

    Lecture 8: Hands-on: Multinomial Naive Bayes- 1

    Lecture 9: Hands-on: Multinomrial Naive Bayes -2

    Chapter 17: Decision Tree

    Lecture 1: Decision Tree

    Lecture 2: Decision Tree Classifier – Data Source

    Lecture 3: Hands-on Decision Tree Classifier

    Lecture 4: Decision Tree Classifier Intuition

    Lecture 5: Decision Tree- GINI, Depth, Sample, Entropy

    Chapter 18: Ensemble Learning

    Lecture 1: Bias, Variance & Irreducible Errors

    Lecture 2: Ensemble Learning -Data Source

    Lecture 3: Voting Classifier

    Lecture 4: Voting Classifier-2

    Lecture 5: Bagging

    Lecture 6: Random Forest

    Lecture 7: Boosting

    Lecture 8: Adaboost

    Lecture 9: Gradient Boosting – Intuition

    Lecture 10: Gradient Boosting

    Chapter 19: K-Fold Validation

    Lecture 1: Cross Validation Introduction

    Chapter 20: Model Deployment

    Lecture 1: Model Deployment

    Lecture 2: Model Deployment as REST API

    Chapter 21: Bonus Lectures

    Lecture 1: Further Learning

    Instructors

  • Machine Learning in Python- From Zero to Hero 10 Hours  No.2
    Sanjay Singh
    Data and Machine Learning Professional
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  • 1 stars: 1 votes
  • 2 stars: 1 votes
  • 3 stars: 7 votes
  • 4 stars: 20 votes
  • 5 stars: 40 votes
  • Frequently Asked Questions

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