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SGLearn@Python for Data Science Machine Learning Bootcamp

  • Development
  • Apr 19, 2025
SynopsisSGLearn@Python for Data Science & Machine Learning Bootca...
SGLearn@Python for Data Science Machine Learning Bootcamp  No.1

SGLearn@Python for Data Science & Machine Learning Bootcamp, available at $199.99, has an average rating of 4.43, with 144 lectures, based on 7 reviews, and has 22 subscribers.

You will learn about Use Python for Data Science and Machine Learning Use Spark for Big Data Analysis Implement Machine Learning Algorithms This course is ideal for individuals who are This course is meant for people with at least some programming experience It is particularly useful for This course is meant for people with at least some programming experience.

Enroll now: SGLearn@Python for Data Science & Machine Learning Bootcamp

Summary

Title: SGLearn@Python for Data Science & Machine Learning Bootcamp

Price: $199.99

Average Rating: 4.43

Number of Lectures: 144

Number of Published Lectures: 144

Number of Curriculum Items: 144

Number of Published Curriculum Objects: 144

Original Price: S$184.98

Quality Status: approved

Status: Live

What You Will Learn

  • Use Python for Data Science and Machine Learning
  • Use Spark for Big Data Analysis
  • Implement Machine Learning Algorithms
  • Who Should Attend

  • This course is meant for people with at least some programming experience
  • Target Audiences

  • This course is meant for people with at least some programming experience
  • Welcome to the SGLearn Series targeted at Singapore-based learnerspicking up new skillsets and competencies.

    This course is an adaptation of the same course by Jose Marcial Portilla and is specially produced in collaboration with Jose for Singaporean learners. If you are a Singaporean, you are eligible for the CITREP+ funding scheme, terms and conditions apply.

    ?

    Note from Jose .?

    Are you ready to start your path to becoming 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!

    Data Scientist has been ranked the number one job on Glassdoor and the average salary of a data scientist is over $120,000 in the United States according to Indeed! Data Science is a rewarding career that allows you to solve some of the world’s most interesting problems!

    This course is designed for both beginners with some programming experience or experienced developers looking to make the jump to Data Science!

    This comprehensive course is comparable to other Data Science bootcamps that usually cost thousands of dollars, but now you can learn all that information at a fraction of the cost! With?over 100 HD video lectures?and?detailed code notebooks for every lecture?this is one of?the most comprehensive course for data science and machine learning on Udemy!

    We’ll teach you how to program with Python, how to create amazing data visualizations, and how to use Machine Learning with Python! Here a just a few of the topics we will be learning:

  • Programming with Python

  • NumPy with Python

  • Using pandas?Data Frames to solve complex tasks

  • Use pandas?to handle Excel Files

  • Web scraping with python

  • Connect Python?to SQL

  • Use matplotlib and seaborn for data visualizations

  • Use plotly for interactive visualizations

  • Machine Learning with SciKit Learn, including:

  • Linear Regression

  • K Nearest Neighbors

  • K Means Clustering

  • Decision Trees

  • Random Forests

  • Natural?Language Processing

  • Neural Nets and Deep Learning

  • Support Vector?Machines

  • and much, much more!

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

    Course Curriculum

    Chapter 1: Course Introduction

    Lecture 1: Introduction to the Course

    Lecture 2: Course Help and Welcome

    Lecture 3: Course FAQs

    Chapter 2: Environment Set-Up

    Lecture 1: Environment Set-up and Installation

    Chapter 3: Jupyter Overview

    Lecture 1: Jupyter Notebooks

    Lecture 2: Optional: Virtual Environments

    Chapter 4: Python Crash Course

    Lecture 1: Welcome to the Python Crash Course Section!

    Lecture 2: Introduction to Python Crash Course

    Lecture 3: Python Crash Course – Part 1

    Lecture 4: Python Crash Course – Part 2

    Lecture 5: Python Crash Course – Part 3

    Lecture 6: Python Crash Course – Part 4

    Lecture 7: Python Crash Course Exercises – Overview

    Lecture 8: Python Crash Course Exercises – Solutions

    Chapter 5: Python for Data Analysis – NumPy

    Lecture 1: Welcome to the NumPy Section!

    Lecture 2: Introduction to Numpy

    Lecture 3: Numpy Arrays

    Lecture 4: Quick Note on Array Indexing

    Lecture 5: Numpy Array Indexing

    Lecture 6: Numpy Operations

    Lecture 7: Numpy Exercises Overview

    Lecture 8: Numpy Exercises Solutions

    Chapter 6: Python for Data Analysis – Pandas

    Lecture 1: Welcome to the Pandas Section!

    Lecture 2: Introduction to Pandas

    Lecture 3: Series

    Lecture 4: DataFrames – Part 1

    Lecture 5: DataFrames – Part 2

    Lecture 6: DataFrames – Part 3

    Lecture 7: Missing Data

    Lecture 8: Groupby

    Lecture 9: Merging Joining and Concatenating

    Lecture 10: Operations

    Lecture 11: Data Input and Output

    Chapter 7: Python for Data Analysis – Pandas Exercises

    Lecture 1: SF Salaries Exercise Overview

    Lecture 2: Note on SF Salary Exercise

    Lecture 3: SF Salaries Solutions

    Lecture 4: Ecommerce Purchases Exercise Overview

    Lecture 5: Ecommerce Purchases Exercise Solutions

    Chapter 8: Python for Data Visualization – Matplotlib

    Lecture 1: Welcome to the Data Visualization Section!

    Lecture 2: Introduction to Matplotlib

    Lecture 3: Matplotlib Part 1

    Lecture 4: Matplotlib Part 2

    Lecture 5: Matplotlib Part 3

    Lecture 6: Matplotlib Exercises Overview

    Lecture 7: Matplotlib Exercises – Solutions

    Chapter 9: Python for Data Visualization – Seaborn

    Lecture 1: Introduction to Seaborn

    Lecture 2: Distribution Plots

    Lecture 3: Categorical Plots

    Lecture 4: Matrix Plots

    Lecture 5: Regression Plots

    Lecture 6: Grids

    Lecture 7: Style and Color

    Lecture 8: Seaborn Exercise Overview

    Lecture 9: Seaborn Exercise Solutions

    Chapter 10: Python for Data Visualization – Pandas Built-in Data Visualization

    Lecture 1: Pandas Built-in Data Visualization

    Lecture 2: Pandas Data Visualization Exercise

    Lecture 3: Pandas Data Visualization Exercise- Solutions

    Chapter 11: Python for Data Visualization – Plotly and Cufflinks

    Lecture 1: Introduction to Plotly and Cufflinks

    Lecture 2: Plotly and Cufflinks

    Chapter 12: Python for Data Visualization – Geographical Plotting

    Lecture 1: Introduction to Geographical Plotting

    Lecture 2: Choropleth Maps – Part 1 – USA

    Lecture 3: Choropleth Maps – Part 2 – World

    Lecture 4: Choropleth Exercises

    Lecture 5: Choropleth Exercises – Solutions

    Chapter 13: Data Capstone Project

    Lecture 1: Welcome to the Data Capstone Projects!

    Lecture 2: 911 Calls Project Overview

    Lecture 3: 911 Calls Solutions – Part 1

    Lecture 4: 911 Calls Solutions – Part 2

    Lecture 5: Finance Data Project Overview

    Lecture 6: Finance Project – Solutions Part 1

    Lecture 7: Finance Project – Solutions Part 2

    Lecture 8: Finance Project – Solutions Part 3

    Chapter 14: Introduction to Machine Learning

    Lecture 1: Welcome to the Machine Learning Section!

    Lecture 2: Link for ISLR

    Lecture 3: Introduction to Machine Learning

    Lecture 4: Machine Learning with Python

    Chapter 15: Linear Regression

    Lecture 1: Linear Regression Theory

    Lecture 2: model_selection Updates for SciKit Learn 0.18

    Lecture 3: Linear Regression with Python – Part 1

    Lecture 4: Linear Regression with Python – Part 2

    Lecture 5: Linear Regression Project Overview

    Lecture 6: Linear Regression Project Solution

    Chapter 16: Cross Validation and Bias-Variance Trade-Off

    Lecture 1: Bias Variance Trade-Off

    Chapter 17: Logistic Regression

    Instructors

  • SGLearn@Python for Data Science Machine Learning Bootcamp  No.2
    DioPACT SG
    SGLearn
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  • 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!