Roadmap to learn AI by dBug Labs-
- Basic computer architecture:
- Linux
- Containers - Docker
- Bash Cheatsheet
- Git-Introduction
- Python
- NumPy
- Pandas
- Matplotlib and Seaborn
- scikit-learn
- SciPy
- Try reading official documentation of various framework and libraries, learn to implement them the usual way and also from scratch.
- Machine Learning - Coursera (Note : this course is now divided into 3)
- MIT 6.034
- GeeksForGeeks Articles
- TensorFlow in Practice Specialization - Coursera
- fast.ai
- Stanford University's CS224n - NLP
- DEEP LEARNING - Yann LeCun
- Natural Language Processing by National Research University Higher School of Economics
- NLP course by Yandex Data School
- Full Stack Deep Learning
- Full Stack Python
- TensorFlow: Data and Deployment Specialization
- Django
- Flask
- Flutter
- Kaggle
- Google Dataset Database
Most important stuff around AI is that it is an ever evolving field and making a perfect roadmap is not possible,so make changes as you proceed in your ML/AI/DL journey . PRs are welcome.
We value keeping this site open source, but as you all know, plagiarism is bad. We spent a non-negligible amount of effort developing, designing, and trying to perfect this iteration of our website, and we are proud of it! All we ask is to not claim this effort as your own.
So, feel free to fork this repo. If you do, please just give us proper credit by linking back to our website, Thanks .