ML-For-Beginners
Machine Learning curriculum
A structured curriculum teaching classic machine learning techniques using Python and Scikit-learn, with a focus on practical projects and hands-on exercises.
12 weeks, 26 lessons, 52 quizzes, classic Machine Learning for all
70k stars
1k watching
15k forks
Language: HTML
last commit: 10 days ago data-scienceeducationmachine-learningmachine-learning-algorithmsmachinelearningmachinelearning-pythonmicrosoft-for-beginnersmlpythonrscikit-learnscikit-learn-python
Related projects:
Repository | Description | Stars |
---|---|---|
microsoft/data-science-for-beginners | A comprehensive 10-week curriculum teaching data science fundamentals using Python and Jupyter Notebook | 28,439 |
microsoft/ai-for-beginners | A 12-week curriculum teaching the basics of Artificial Intelligence through practical lessons, quizzes, and labs using popular frameworks like TensorFlow and PyTorch. | 35,160 |
microsoft/web-dev-for-beginners | A 12-week, comprehensive web development curriculum covering HTML, CSS, and JavaScript | 83,782 |
gokumohandas/made-with-ml | Teaches machine learning fundamentals and software engineering practices for building production-ready ML applications | 37,816 |
yorko/mlcourse.ai | An online learning platform covering various machine learning topics from basics to advanced algorithms | 9,831 |
dotnet/machinelearning-samples | A collection of samples and examples demonstrating the usage of ML.NET for machine learning tasks in .NET applications. | 4,508 |
dotnet/machinelearning | A cross-platform machine learning framework for .NET that enables developers to build, train, and deploy models without prior expertise in ML. | 9,071 |
zuzoovn/machine-learning-for-software-engineers | A structured study plan to help software developers learn machine learning and become a machine learning engineer | 28,216 |
datatalksclub/mlops-zoomcamp | Teaches practical aspects of productionizing ML services | 11,227 |
ml5js/ml5-library | Makes machine learning algorithms accessible to web developers | 6,510 |
ageron/handson-ml | A resource for learning machine learning with Python | 25,231 |
jindongwang/transferlearning | A comprehensive resource for software developers to learn and implement transfer learning, domain adaptation, and related techniques. | 13,547 |
chiphuyen/machine-learning-systems-design | A resource guide covering the four main steps of designing a machine learning system: project setup, data pipeline, modeling, and serving. | 9,227 |
justmarkham/scikit-learn-videos | A tutorial series on machine learning with Python using scikit-learn | 3,680 |
mlflow/mlflow | A platform for managing machine learning projects from inception to deployment | 19,021 |