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Artificial Intelligence for Beginners - A Curriculum

This curriculum is being actively developed on GitHub. Look into contributing to see which areas require active contributions. Please consider this a pre-release, and do not actively use in the classroom yet!

Sketchnote by (@girlie_mac)
AI For Beginners - Sketchnote by @girlie_mac

Azure Cloud Advocates at Microsoft are pleased to offer a 12-week, 24-lesson curriculum all about Artificial Intelligence.

In this curriculum, you will learn:

  • Different approaches to Artificial Intelligence, including the "good old" symbolic approach with Knowledge Representation and reasoning (GOFAI).
  • Neural Networks and Deep Learning, which are at the core of modern AI. We will illustrate the concepts behind these important topics using code in two of the most popular frameworks - TensorFlow and PyTorch.
  • Neural Architectures for working with images and text. We will cover recent models but may lack a little bit on the state-of-the-art.
  • Less popular AI approaches, such as Genetic Algorithms and Multi-Agent Systems.

What we will not cover in this curriculum:

For a gentle introduction to AI in the Cloud topics you may consider taking the Get started with artificial intelligence on Azure Learning Path.


Content

No Lesson Intro PyTorch Keras/TensorFlow Lab
I Introduction to AI PAT
1 Introduction and History of AI Text
II Symbolic AI PAT
2 Knowledge Representation and Expert Systems Text Expert System, Ontology, Concept Graph
III Introduction to Neural Networks PAT
3 Perceptron Text Notebook Lab
4 Multi-Layered Perceptron and Creating our own Framework Text Notebook Lab
5 Intro to Frameworks (PyTorch/TensorFlow)
Overfitting
Text
Text
PyTorch Keras/TensorFlow Lab
IV Computer Vision MS Learn MS Learn PAT
6 Intro to Computer Vision. OpenCV Text Notebook
7 Convolutional Neural Networks
CNN Architectures
Text
Text
PyTorch TensorFlow Lab
8 Pre-trained Networks and Transfer Learning
Training Tricks
Text
Text
PyTorch TensorFlow
Dropout sample
Lab
9 Autoencoders and VAEs Text PyTorch TensorFlow
10 Generative Adversarial Networks Text PyTorch TensorFlow
11 Object Detection Text PyTorch TensorFlow
12 Semantic Segmentation. U-Net Text PyTorch TensorFlow
V Natural Language Processing MS Learn MS Learn PAT
13 Text Representation. Bow/TF-IDF Text PyTorch TensorFlow
14 Semantic word embeddings. Word2Vec and GloVe Text PyTorch TensorFlow
15 Language Modeling. Training your own embeddings Text PyTorch TensorFlow
16 Recurrent Neural Networks Text PyTorch TensorFlow
17 Generative Recurrent Networks Text PyTorch TensorFlow
18 Transformers. BERT. Text PyTorch TensorFlow
19 Named Entity Recognition Text PyTorch TensorFlow
20 Large Language Models, Prompt Programming and Few-Shot Tasks Text PyTorch TensorFlow
VI Other AI Techniques PAT
21 Genetic Algorithms Text Notebook
22 Deep Reinforcement Learning Text PyTorch TensorFlow
23 Multi-Agent Systems Text
VII AI Ethics PAT
24 AI Ethics and Responsible AI Text
Extras
X1 Multi-Modal Networks, CLIP and VQGAN Text

Mindmap of the Course

Each lesson contains some pre-reading material (linked as Text above), and some executable Jupyter Notebooks, which are often specific to the framework (PyTorch or TensorFlow). The executable notebook also contains a lot of theoretical material, so to understand the topic you need to go through at least one version of the notebooks (either PyTorch or TensorFlow). There are also Labs available for some topics, which give you an opportunity to try applying the material you have learnt to a specific problem.

Some sections also contain links to MS Learn modules that cover related topics. Microsoft Learn provides a convenient GPU-enabled learning environment, although in terms of content you can expect this curriculum to go a bit deeper.

Course sections also include the links to PATs - Progress Assessment Tool, a list of items that you are likely to get to know after completing the module. You can review it and assess your progress on the course yourself.

Getting Started

Students, there are a couple of ways to use the curriculum. First of all, you can just read the text and look through the code directly on GitHub. If you want to run the code in any of the notebooks - you can find the advice on how to do it in this blog post.

However, if you would like to take the course as a self-study project, we suggest that you fork the entire repo to your own GitHub account and complete the exercises on your own or with a group:

  • Start with a pre-lecture quiz
  • Read the intro text for the lecture
  • If the lecture has additional notebooks, go through them, reading and executing the code. If both TensorFlow and PyTorch notebooks are provided, you can focus on one of them - chose your favourite framework
  • Notebooks often contain some of the challenges that require you to tweak the code a little bit to experiment
  • Take the post-lecture quiz
  • If there is a lab attached to the module - complete the assignment
  • Visit the Discussion board to and "learn out loud" by filling out the appropriate PAT rubric. A 'PAT' is a Progress Assessment Tool that is a rubric you fill out to further your learning. You can also react to other PATs so we can learn together

For further study, we recommend following these Microsoft Learn modules and learning paths.

Teachers, we have included some suggestions on how to use this curriculum.


Credits

✍️ Hearty thanks to our authors Dmitry Soshnikov, Evgenii Pishchik, with editors Jen Looper and Lateefah Bello

🎨 Thanks as well to our sketchnote illustrator: Tomomi Imura

🙏 Special thanks 🙏 to our Microsoft Student Ambassador authors, reviewers and content contributors, notably TBD

Meet the Team

Promo video

🎥 Click the image above for a video about the project and the folks who created it!


Pedagogy

We have chosen two pedagogical tenets while building this curriculum: ensuring that it is hands-on project-based and that it includes frequent quizzes.

By ensuring that the content aligns with projects, the process is made more engaging for students and retention of concepts will be augmented. In addition, a low-stakes quiz before a class sets the intention of the student towards learning a topic, while a second quiz after class ensures further retention. This curriculum was designed to be flexible and fun and can be taken in whole or in part. The projects start small and become increasingly complex by the end of the 12 week cycle.

Find our Code of Conduct, Contributing, and Translation guidelines. Find our Support Documentation here and security information here. We welcome your constructive feedback!

A note about quizzes: All quizzes are contained in this app, for 50 total quizzes of three questions each. They are linked from within the lessons but the quiz app can be run locally; follow the instruction in the etc/quiz-app folder.

Offline access

You can run this documentation offline by using Docsify. Fork this repo, install Docsify on your local machine, and then in the etc/docsify folder of this repo, type docsify serve. The website will be served on port 3000 on your localhost: localhost:3000.

Help Wanted!

Would you like to contribute a translation? Please read our translation guidelines.

Other Curricula

Our team produces other curricula! Check out: