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Data Science and Machine Learning in Python

  • Development
  • Mar 18, 2025
SynopsisData Science and Machine Learning in Python, available at $54...
Data Science and Machine Learning in Python  No.1

Data Science and Machine Learning in Python, available at $54.99, has an average rating of 4.45, with 126 lectures, based on 49 reviews, and has 269 subscribers.

You will learn about Machine Learning in Python Complete SQL BootCamp Using PostgreSQL TABLEAU – The Best Visualization Software Data Science concepts Data Wrangling, Cleaning and Data Preparation for Machine Learning Supervised and Unsupervised machine learning Python Model Selection Feature Engineering Dimensionality Reduction Regression Classification This course is ideal for individuals who are Beginner Data Science/Machine Learning Enthusiast who want to step into the world of Machine Learning. or Anyone who wants to be become a Data Scientist It is particularly useful for Beginner Data Science/Machine Learning Enthusiast who want to step into the world of Machine Learning. or Anyone who wants to be become a Data Scientist.

Enroll now: Data Science and Machine Learning in Python

Summary

Title: Data Science and Machine Learning in Python

Price: $54.99

Average Rating: 4.45

Number of Lectures: 126

Number of Published Lectures: 120

Number of Curriculum Items: 126

Number of Published Curriculum Objects: 120

Original Price: $199.99

Quality Status: approved

Status: Live

What You Will Learn

  • Machine Learning in Python
  • Complete SQL BootCamp Using PostgreSQL
  • TABLEAU – The Best Visualization Software
  • Data Science concepts
  • Data Wrangling, Cleaning and Data Preparation for Machine Learning
  • Supervised and Unsupervised machine learning
  • Python
  • Model Selection
  • Feature Engineering
  • Dimensionality Reduction
  • Regression
  • Classification
  • Who Should Attend

  • Beginner Data Science/Machine Learning Enthusiast who want to step into the world of Machine Learning.
  • Anyone who wants to be become a Data Scientist
  • Target Audiences

  • Beginner Data Science/Machine Learning Enthusiast who want to step into the world of Machine Learning.
  • Anyone who wants to be become a Data Scientist
  • This comprehensive course will be your guide to learning how to use the power of Python to analyze data, create beautiful visualizations, and use powerful machine learning algorithms!

    Harvard suggest that one of most important jobs in 21st century is a “Data Scientist”

    Data Scientist earn an average salary of a data scientist is over $120,000 in the USA ! Data Science is a rewarding career that allows you to solve some of the world’s most interesting problems!

    If you have some programming experience or you are an experienced developers who is looking to turbo charge your career in Data Science. This course is for you!

    You don’t need to spend thousand of dollars on other course , this course provides all the same information at a very low cost..

    With over 125+ HD?lectures(Python, Machine Learning, SQL,TABLEAU) and detailed code notebooks for every lecture, it is an extremely detailed course available on Udemy.

    Basically everything you need to BECOME?A?DATA?SCIENTIST IN ONE PLACE!!

    You will learn true machine learning with Python, programming in python, data wrangling in Python and creating visualizations.

    Some of the topics you will be learning:

  • Programming with Python

  • NumPy with Python

  • Data Wrangling in Python

  • Use pandas to handle Excel Files, text file, JSON, Cloud(AWS) and others

  • Connecting Python to SQL

  • Use Seaborn for data visualizations

  • Complete SQL Using PostgreSQL

  • TABLEAU – One of the best data visualization software

  • Machine Learning with SciKit Learn, including:

  • Linear Regression

  • Logistic Regression

  • K Nearest Neighbors

  • K Means Clustering

  • Decision Trees

  • Random Forests

  • Support Vector Machines

  • Naive Bayes

  • Hyper Parameter tuning

  • Feature Engineering

  • Model Selection

  • and much, much more!

  • Enroll in the course and become a data scientist today!

    Course Curriculum

    Chapter 1: Welcome to the Course.

    Lecture 1: Welcome to the Course!

    Lecture 2: Installing Python and Anaconda – Windows,Mac or Linux

    Lecture 3: ***Update on Udemy Reviews***

    Lecture 4: Recommended Anaconda Version

    Lecture 5: Basics of Jupyter Notebook

    Lecture 6: Course Notes

    Chapter 2: Python Crash Course

    Lecture 1: Python Crash Course Part 1

    Lecture 2: Python Crash Course Part 2

    Lecture 3: Python Crash Course Part 3

    Lecture 4: Python Exercises

    Lecture 5: Python Exercises Solutions

    Chapter 3: Numpy Basics

    Lecture 1: Numpy Operations Part 1

    Lecture 2: Numpy Operations Part 2

    Lecture 3: Numpy Operations Part 3

    Lecture 4: Numpy Exercises Overview

    Lecture 5: Numpy Exercises Solution Overview

    Chapter 4: Data Wrangling in Python: Pandas

    Lecture 1: Introduction to Pandas.

    Lecture 2: Pandas : Basics Functions

    Lecture 3: Pandas : Slicing and Row Selection

    Lecture 4: Pandas : Descriptive Statistics

    Lecture 5: Pandas: Missing and Cleaning Data

    Lecture 6: Pandas: Groupby and Indexing

    Lecture 7: Pandas: Pivot Table & CrossTab

    Lecture 8: Pandas:TimeSeries data operation.

    Lecture 9: Pandas: Merging, Joining and Concatenating Dataframes

    Lecture 10: Pandas: Importing and Exporting Data – CSV/Excel/AWS/SQL/Online

    Lecture 11: In-Built Visualization in Pandas

    Lecture 12: Pandas Exercise

    Lecture 13: Pandas Exercise Solution

    Chapter 5: Plotting Data in Python : Seaborn

    Lecture 1: Seaborn Introduction

    Lecture 2: Case Study 1 – Visualizing Data Distribution Using Seaborn

    Lecture 3: Case Study 2 – Plotting Categorical Variables Using Seaborn

    Lecture 4: Case Study 3 – Plotting Linear Relationships

    Lecture 5: Case Study 4 – Visualizing Statistical Relationship

    Chapter 6: Introduction to Machine Learning

    Lecture 1: Machine Learning Algorithmns Overview

    Lecture 2: Scikit-Learn Introduction

    Lecture 3: Data Processing – Standardization & Normalization,OneHotEncoding

    Lecture 4: Data Processing – Train_Test_Split

    Lecture 5: Machine Learning PreProcessing Template

    Chapter 7: Supervised Learning – Regression

    Lecture 1: Linear Regression Intuition

    Lecture 2: Linear Regression Overview

    Lecture 3: Linear Regression Exercise Overview

    Lecture 4: Linear Regression Solutions Overview

    Lecture 5: KNeighborsRegressor -Intuition

    Lecture 6: Decision Tree Regressor

    Lecture 7: RandomForestRegressor – Intuition

    Lecture 8: Support Vector Regression Intuition

    Lecture 9: RANSAC Regressor – Intuition

    Lecture 10: Lasso Regressor – Intuition

    Lecture 11: Ridge Regression – Intuition

    Lecture 12: Gaggle of Regressors – Overview

    Lecture 13: Gaggle of Regressors Exercise Overview

    Lecture 14: Gaggle of Regressors Solution Overview

    Chapter 8: Supervised Learning – Classification

    Lecture 1: Classification Models Intuition

    Lecture 2: Logistic Regression Intuition

    Lecture 3: Logistic Regression Overview Part 1

    Lecture 4: Logistic Regression Overview Part 2

    Lecture 5: Logistic Regression Exercise Overview

    Lecture 6: Logistic Regression Exercise Solution Overview

    Lecture 7: KNeighbours Classifier

    Lecture 8: KNeighbours Classifier

    Lecture 9: Decision Tree & Random Forest Classifier

    Lecture 10: Decision Tree and Random Forest Classifier & Model Selection

    Lecture 11: Support Vector Machines Classifier

    Lecture 12: Naives Bayes Classifier

    Lecture 13: Gaggle of Classifiers

    Lecture 14: Gaggle of Classifiers – Exercise Overview

    Lecture 15: Gaggle of Classifiers – Exercise Solutions Overview

    Chapter 9: UnSupervised Learning – Clustering

    Lecture 1: KMeans Clustering

    Chapter 10: Model Selection and Dimensionality Reduction

    Lecture 1: Model Selection and HyperParameters

    Lecture 2: Feature Engineering & Dimensionality Reduction

    Chapter 11: BONUS : Extensive SQL BootCamp

    Lecture 1: SQL With PostgreSQL Introduction

    Lecture 2: Setting up PostgreSQL

    Lecture 3: Course Files

    Lecture 4: PgAdmin 4 Overview

    Lecture 5: Import Database in PostgreSQL

    Lecture 6: SELECT

    Lecture 7: ORDER BY

    Lecture 8: SELECT DISTINCT

    Lecture 9: WHERE CLAUSE

    Lecture 10: LIMIT

    Lecture 11: FETCH

    Lecture 12: LIKE

    Lecture 13: IN CLAUSE

    Lecture 14: BETWEEN AND ALIAS – AS

    Lecture 15: IS NULL CLAUSE

    Lecture 16: JOINS INTUITION

    Lecture 17: INNER JOIN

    Lecture 18: LEFT JOIN

    Instructors

  • Data Science and Machine Learning in Python  No.2
    Gaurav Chauhan
    Data and Cloud Architect
  • Rating Distribution

  • 1 stars: 1 votes
  • 2 stars: 1 votes
  • 3 stars: 6 votes
  • 4 stars: 20 votes
  • 5 stars: 21 votes
  • Frequently Asked Questions

    How long do I have access to the course materials?

    You can view and review the lecture materials indefinitely, like an on-demand channel.

    Can I take my courses with me wherever I go?

    Definitely! If you have an internet connection, courses on Udemy are available on any device at any time. If you don’t have an internet connection, some instructors also let their students download course lectures. That’s up to the instructor though, so make sure you get on their good side!