Python Data Science Fundamentals: Getting Started
- Description
- Curriculum
- FAQ
- Reviews
Course Description: Python for Machine Learning: A Beginner’s Kickstart
Welcome to the Python for Machine Learning: A Beginner’s Kickstart course! This introductory course is designed to provide you with the fundamental skills and knowledge needed to dive into the exciting world of machine learning using Python.
Course Overview: In this course, you’ll gain hands-on experience with essential Python libraries for data manipulation, analysis, visualization, and machine learning. The course focuses on three core libraries: NumPy, Pandas, Matplotlib, and Scikit-learn. These libraries are the backbone of data science and machine learning in Python, and mastering them will give you a solid foundation to explore more advanced machine learning topics.
What You’ll Learn:
-
NumPy: Learn how to efficiently work with arrays and matrices, perform mathematical operations, and manipulate data in Python using NumPy.
-
Pandas: Discover the power of Pandas for data wrangling and manipulation, from handling data frames to performing data analysis and cleaning.
-
Matplotlib: Explore data visualization techniques using Matplotlib to create meaningful plots and charts.
-
Scikit-learn: Dive into the world of machine learning with Scikit-learn. Understand the basics of data preprocessing, model building, training, evaluation, and prediction.
Launch Your Data Science Journey: Embark on a transformative learning journey that will equip you with the fundamental skills and knowledge needed to excel in the field of data science. With Python at the heart of this course, you’ll harness the power of NumPy, Pandas, Matplotlib, and Scikit-learn to become a proficient data scientist.
Why Start Here: This course is designed to be your first step into the thrilling world of data science and machine learning. We’ll take you on a beginner-friendly adventure, focusing on essential Python libraries: NumPy for numerical computing, Pandas for data manipulation, Matplotlib for data visualization, and Scikit-learn for introductory machine learning.
Build Essential Skills: Discover the power of Python in data science as we guide you through the fundamental concepts of each library. By the end of the course, you’ll have a solid understanding of how to perform basic data analysis, visualization, and even create simple machine learning models.
-
5Introduction to NumPyVideo lesson
Code via GitHub - https://github.com/achalac/NumPy-Tutorial/tree/master/NumPy%20Tutorial
-
6Create a NumPy ndarray ObjectVideo lesson
Code via GitHub - https://github.com/achalac/NumPy-Tutorial/tree/master/NumPy%20Tutorial
-
7NumPy Array IndexingVideo lesson
Code via GitHub - https://github.com/achalac/NumPy-Tutorial/tree/master/NumPy%20Tutorial
-
8NumPy Array Slicing [ Numerical Python ]Video lesson
Code via GitHub - https://github.com/achalac/NumPy-Tutorial/tree/master/NumPy%20Tutorial
-
9NumPy Array Copy vs View [ Numerical Python ]Video lesson
Code via GitHub - https://github.com/achalac/NumPy-Tutorial/tree/master/NumPy%20Tutorial
-
10NumPy Array Reshaping [ Numerical Python ]Video lesson
Code via GitHub - https://github.com/achalac/NumPy-Tutorial/tree/master/NumPy%20Tutorial
-
11NumPy Array Iterating [ Numerical Python ]Video lesson
Code via GitHub - https://github.com/achalac/NumPy-Tutorial/tree/master/NumPy%20Tutorial
-
12Pandas IntroductionVideo lesson
Code via GitHub - https://github.com/achalac/Pandas-Tutorial
-
13Pandas DataFramesVideo lesson
Code via GitHub - https://github.com/achalac/Pandas-Tutorial
-
14Pandas Read CSV & Analyzing DataFramesVideo lesson
Code via GitHub - https://github.com/achalac/Pandas-Tutorial
-
15Pandas - Cleaning Empty CellsVideo lesson
Code GitHub - https://github.com/achalac/Pandas-Tutorial
-
16Pandas - Removing DuplicatesVideo lesson
Code via GitHub - https://github.com/achalac/Pandas-Tutorial
-
17Pandas - Data CorrelationsVideo lesson
Code via GitHub - https://github.com/achalac/Pandas-Tutorial
External Links May Contain Affiliate Links read more