Python Machine Learning Course Using Jupyter Lab
This Python machine learning course offers a quick, hands-on introduction to machine learning using Python and Jupyter Lab. Learn linear regression, build prediction models, and explore scikit-learn without prior programming experience. Perfect for beginners.
What You’ll Learn
This Python machine learning course will teach you:
- Python 3 Basics:
Get started with Python 3, mastering its syntax and fundamental programming concepts. - Jupyter Lab Essentials:
Learn how to create and manage Jupyter Notebooks within the Jupyter Lab environment. - Exploratory Data Analysis:
Perform data analysis and visualizations to uncover insights using Python libraries. - Linear Regression:
Understand and implement linear regression models to make predictions based on data. - Scikit-learn Fundamentals:
Utilize scikit-learn for various machine learning tasks and build prediction models.
- Dataframes in Python:
Learn to create and manipulate data frames for efficient data handling and analysis. - Model Evaluation:
Evaluate your machine learning models using metrics like MAE, MSE, RMSE, and R2Score. - Plotting with Matplotlib:
Create and customize scatter plots and other visualizations to better understand your data. - Train-Test Split Method:
Apply the split train-test method to validate your machine learning models. - Kaggle Resources:
Explore additional learning materials and datasets on Kaggle for further studies in machine learning.
Included in the Python Machine Learning Course
Suitable for the Following Careers
Course Content
Section 1: Introduction
Section 3: Linear regression
Section 4: Multiple linear regression
Section 5: Resources for further studies
Audio Version of Training
OPEN FULL CURRICULUM
Requirements
Description of the Python Machine Learning Course
This introductory Python machine learning course using Jupyter Lab is designed to give you a quick, practical entry into the world of machine learning. No prior programming experience is required! Through engaging content and hands-on labs, we will guide you from an absolute beginner to someone equipped with fundamental machine learning skills using Python and Jupyter Lab.
This course is entirely practical and hands-on, focusing on building and evaluating prediction models using simplified, pre-cleaned datasets.
Skills you will acquire include:
- Get a strong foundation in Python 3, including essential programming concepts.
- Learn to create and manage Jupyter Notebooks within Jupyter Lab.
- Perform data analysis and visualizations to uncover insights using Python libraries.
- Understand and implement linear regression for predictive modeling.
- Utilize the scikit-learn library for various machine learning tasks and model building.
- Assess your machine learning models using metrics like MAE, MSE, RMSE, and R2Score.
- Create and customize visualizations to better understand your data.
- Validate your machine learning models using the train-test split method.
- Discover additional learning materials and datasets for further studies in machine learning.
This introductory Python machine learning course is perfect for anyone wanting a quick, hands-on introduction to machine learning, complete beginners in machine learning, and those who want to learn how to create Jupyter Notebooks using Jupyter Lab instead of Anaconda. Enroll today and get a taste of machine learning, equipping yourself with the skills to tackle more advanced topics in the future. Start your journey with us, and see you inside!
Who Is This Course For
This course is ideal for beginners, tech enthusiasts, aspiring data analysts, and Python professionals looking to gain hands-on experience in Python machine learning using Jupyter Lab. It is also perfect for anyone eager to explore data analysis and predictive modeling.
Course Instructor
Paul Chin is a semi-retired college lecturer with over 20 years of experience in teaching computing and information technology. His interests span reverse engineering, coding, graphics design, app and game development, music, health, spirituality, and well-being. In his spare time, Paul enjoys playing the piano and keyboard.
Paul is passionate about teaching both face-to-face and online, aiming to educate and inspire others to succeed and live their dreams. His course topics include reverse engineering with tools like dnSpy, Cutter, and x64dbg, WiFi hacking, C programming, HTML, JavaScript, and VR game development.
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Testimonials
Grant P.
Good slow but steady pace and doesn't assume any level of prerequisite knowledge. Teacher's voice is also calming to listen to.
Droi R.
I was unsure whether to dive into Machine Learning and was looking for a quick and easy course to test the waters before diving in. And I found this. It quickly gave me a taste of Machine Learning without all the unnecessary talk. The instructor was direct to the point. This has helped me to decide whether I want to go in-depth into Machine Learning or not. And I found that I like it and will further my studies in this field. Thanks to the Instructor!
Y G.
Nice, short and practical introduction to ML with Python and Jupiter Lab! It is suitable for Mac users too (not just Windows) like myself.
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