A roadmap for getting started with Machine Learning
-
Updated
Jul 2, 2026
A roadmap for getting started with Machine Learning
A "production-ready" simple project template to quickly start an Artificial Intelligence (AI), Machine Learning (ML) and/or Data Science (DS) project with basic files, branches and directory structure.
Beginner → Intermediate (Student & Self-Learner Friendly)
Welcome to the Machine Learning Roadmap! This comprehensive guide will take you from the basics to becoming proficient in machine learning. Whether you're a beginner or looking to expand your skills, this roadmap will provide you with a structured path to follow.
A collection of machine learning projects, programs and papers
14.9M-trip analytics platform with Python, PostgreSQL, dbt, data quality, and Tableau.
Темы из математики, которые нужны в Data Science: статистика, вероятность, линейная алгебра, математический анализ, оптимизация и метрики ML. Roadmap по математике для Data Science, Machine Learning и Deep Learning
🚀 AI & Machine Learning Roadmap | Beginner to Advanced | Projects, Notes, and Resources to Master AI 🔥
A curated collection of key research papers and resources on LLMs and deep learning, organized by topic to provide a clear learning path from fundamentals to advanced techniques.
Week 3 of my AI/ML learning journey. Focused on math foundations with NumPy and Matplotlib — including matrix multiplication, vector operations, statistics, and data visualization.
The foundations of ML, built from scratch — one notebook at a time. NumPy → Pandas → Visualization → Statistics → ML → Deep Learning.
Add a description, image, and links to the ml-roadmap topic page so that developers can more easily learn about it.
To associate your repository with the ml-roadmap topic, visit your repo's landing page and select "manage topics."