Car Price Prediction in 1 Hr : Build an ML Model with Python
Published 6/2025
Duration: 1h 8m | .MP4 1280x720 30 fps(r) | AAC, 44100 Hz, 2ch | 563 MB
Genre: eLearning | Language: English
Published 6/2025
Duration: 1h 8m | .MP4 1280x720 30 fps(r) | AAC, 44100 Hz, 2ch | 563 MB
Genre: eLearning | Language: English
Learn how to clean data, apply encoding, and train ML models using Python — all in under 60 minutes.
What you'll learn
- How to build a complete machine learning model from scratch using Python
- How to clean, preprocess, and prepare real-world car data for training
- How to apply One Hot Encoding and Label Encoding for categorical features
- How to use Linear Regression to make predictions
- How to use Google Colab for running and sharing machine learning notebooks
- How to apply core machine learning concepts to real-world problems
Requirements
- Basic understanding of Python syntax (variables, functions, loops)
- No prior experience with machine learning required
- A web browser and internet connection (we’ll use Google Colab — no installations needed)
- Curiosity and willingness to learn by doing
Description
Course Description:
Learn machine learning by building a real-world project — from start to finish — in just one hour.
This course offers a fast, focused, and practical introduction to machine learning using one of the most relatable examples: predicting car prices. You’ll work with real-world data and use industry-standard tools likePython,Pandas,Scikit-learn, andGoogle Colabto develop a complete machine learning pipeline. Best of all, there's no need to install anything — all work is done in the cloud.
This hands-on course is designed for:
Beginners who want to learn ML through practical application rather than theory
Developers curious about applying ML to real-world problems
Students looking to add a portfolio project
Anyone interested in exploring how machine learning models are trained and evaluated
Throughout the course, you’ll follow a structured, step-by-step process to build your car price prediction model. You’ll start with raw CSV data and end with a fully trained and tested ML model that can make predictions on unseen data.
You’ll learn how to:
Import and inspect real-world car pricing data
Clean and preprocess data using Pandas
ApplyOne Hot EncodingandLabel Encodingto categorical variables
Train aLinear Regressionmodel and evaluate its performance
Improve accuracy with aRandom Forest Regressor
Usetrain_test_splitto validate your model’s performance
Calculate error metrics like Mean Squared Error (MSE)
UseGoogle Colabto write, run, and share your code
By the end of the course, you will:
Understand the end-to-end machine learning workflow
Be comfortable using key tools in the Python ML ecosystem
Be able to apply what you've learned to your own datasets and problems
Have a completed, portfolio-ready machine learning project
This course is short by design — perfect for busy learners or those just getting started with ML. It emphasizes action over theory, with clear explanations and practical takeaways at every step.
Join now and take your first step into the world of machine learning — no fluff, no filler, just real results in under an hour.
Who this course is for:
- Beginners who want a hands-on introduction to machine learning
- Python developers curious about applying ML to real-world data
- Data science students looking to build a quick portfolio project
- Anyone interested in learning how to train and evaluate ML models
- Busy professionals who want to build a real ML model in under an hour
More Info