Lesson Progress
0% Complete
π Free Resources
π Online Courses & Tutorials
- Google AI / Learn with Google AI β Beginner-friendly guides & ML crash courses.
- Microsoft Learn β AI Fundamentals β Free modules on AI, ML, and Azure AI.
- Coursera (Audit Mode) β Many AI/ML courses are free to audit (no certificate).
- Fast.ai β Hands-on deep learning course for beginners.
- Kaggle Learn β Short, practical coding tutorials (Python, ML, NLP, etc.).
π Blogs & Websites
- Towards Data Science (Medium) β Real-world AI/ML use cases & tutorials.
- OpenAI Blog β Updates on AI research, applications, and best practices.
- Analytics Vidhya β AI concepts explained simply with examples.
π₯ YouTube Channels
- 3Blue1Brown β Visual explanations of math behind AI.
- Two Minute Papers β Easy-to-digest research breakdowns.
- freeCodeCamp.org β Full free AI/ML courses.
π° Paid Resources
π Online Learning Platforms
- Coursera (Specializations, e.g., Andrew Ngβs Machine Learning, Deep Learning AI)
- Udemy β Affordable AI/ML courses with lifetime access.
- edX (MIT, Harvard) β Professional AI programs with certificates.
- DataCamp β Interactive coding practice in Python, ML, and AI.
π Books
- Artificial Intelligence: A Modern Approach by Stuart Russell & Peter Norvig (classic).
- Hands-On Machine Learning with Scikit-Learn, Keras, and TensorFlow by AurΓ©lien GΓ©ron.
- Deep Learning by Ian Goodfellow, Yoshua Bengio, and Aaron Courville.
π« Professional Programs
- AI Nanodegree (Udacity) β In-depth projects and mentoring.
- Stanford / MIT Professional Certificates β Advanced programs for career growth.
π₯ Communities & Practice
- Kaggle β Compete in ML competitions & use real datasets.
- Reddit (r/MachineLearning, r/Artificial) β Discussions & research updates.
- Discord & Slack AI Groups β Networking with AI learners & pros.
- LinkedIn Learning & Groups β Professional AI learning + networking.
β Tip: Start free β build foundation β then invest in paid advanced courses/books for specialization.