# AI-For-Beginners **Repository Path**: jimvon/AI-For-Beginners ## Basic Information - **Project Name**: AI-For-Beginners - **Description**: No description available - **Primary Language**: Unknown - **License**: MIT - **Default Branch**: WirelessLife-patch-1 - **Homepage**: None - **GVP Project**: No ## Statistics - **Stars**: 0 - **Forks**: 0 - **Created**: 2024-11-04 - **Last Updated**: 2024-11-04 ## Categories & Tags **Categories**: Uncategorized **Tags**: None ## README [](https://github.com/microsoft/AI-For-Beginners/blob/main/LICENSE) [](https://GitHub.com/microsoft/AI-For-Beginners/graphs/contributors/) [](https://GitHub.com/microsoft/AI-For-Beginners/issues/) [](https://GitHub.com/microsoft/AI-For-Beginners/pulls/) [](http://makeapullrequest.com) [](https://GitHub.com/microsoft/AI-For-Beginners/watchers/) [](https://GitHub.com/microsoft/AI-For-Beginners/network/) [](https://GitHub.com/microsoft/AI-For-Beginners/stargazers/) [](https://mybinder.org/v2/gh/microsoft/ai-for-beginners/HEAD) [](https://gitter.im/Microsoft/ai-for-beginners?utm_source=badge&utm_medium=badge&utm_campaign=pr-badge) # Artificial Intelligence for Beginners - A Curriculum | ](./lessons/sketchnotes/ai-overview.png)| |:---:| | AI For Beginners - _Sketchnote by [@girlie_mac](https://twitter.com/girlie_mac)_ | Explore the world of **Artificial Intelligence** (AI) with Microsoft's 12-week, 24-lesson curriculum! Dive into Symbolic AI, Neural Networks, Computer Vision, Natural Language Processing, and more. Hands-on lessons, quizzes, and labs enhance your learning. Perfect for beginners, this comprehensive guide, designed by experts, covers TensorFlow, PyTorch, and ethical AI principles. Start your AI journey today!" In this curriculum, you will learn: * Different approaches to Artificial Intelligence, including the "good old" symbolic approach with **Knowledge Representation** and reasoning ([GOFAI](https://en.wikipedia.org/wiki/Symbolic_artificial_intelligence)). * **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](http://Tensorflow.org) and [PyTorch](http://pytorch.org). * **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: * Business cases of using **AI in Business**. Consider taking [Introduction to AI for business users](https://docs.microsoft.com/learn/paths/introduction-ai-for-business-users/?WT.mc_id=academic-77998-cacaste) learning path on Microsoft Learn, or [AI Business School](https://www.microsoft.com/ai/ai-business-school/?WT.mc_id=academic-77998-cacaste), developed in cooperation with [INSEAD](https://www.insead.edu/). * **Classic Machine Learning**, which is well described in our [Machine Learning for Beginners Curriculum](http://github.com/Microsoft/ML-for-Beginners). * Practical AI applications built using **[Cognitive Services](https://azure.microsoft.com/services/cognitive-services/?WT.mc_id=academic-77998-cacaste)**. For this, we recommend that you start with modules Microsoft Learn for [vision](https://docs.microsoft.com/learn/paths/create-computer-vision-solutions-azure-cognitive-services/?WT.mc_id=academic-77998-cacaste), [natural language processing](https://docs.microsoft.com/learn/paths/explore-natural-language-processing/?WT.mc_id=academic-77998-cacaste), **[Generative AI with Azure OpenAI Service](https://learn.microsoft.com/en-us/training/paths/develop-ai-solutions-azure-openai/?WT.mc_id=academic-77998-bethanycheum)** and others. * Specific ML **Cloud Frameworks**, such as [Azure Machine Learning](https://azure.microsoft.com/services/machine-learning/?WT.mc_id=academic-77998-cacaste), [Microsoft Fabric](https://learn.microsoft.com/en-us/training/paths/get-started-fabric/?WT.mc_id=academic-77998-bethanycheum), or [Azure Databricks](https://docs.microsoft.com/learn/paths/data-engineer-azure-databricks?WT.mc_id=academic-77998-cacaste). Consider using [Build and operate machine learning solutions with Azure Machine Learning](https://docs.microsoft.com/learn/paths/build-ai-solutions-with-azure-ml-service/?WT.mc_id=academic-77998-cacaste) and [Build and Operate Machine Learning Solutions with Azure Databricks](https://docs.microsoft.com/learn/paths/build-operate-machine-learning-solutions-azure-databricks/?WT.mc_id=academic-77998-cacaste) learning paths. * **Conversational AI** and **Chat Bots**. There is a separate [Create conversational AI solutions](https://docs.microsoft.com/learn/paths/create-conversational-ai-solutions/?WT.mc_id=academic-77998-cacaste) learning path, and you can also refer to [this blog post](https://soshnikov.com/azure/hello-bot-conversational-ai-on-microsoft-platform/) for more detail. * **Deep Mathematics** behind deep learning. For this, we would recommend [Deep Learning](https://www.amazon.com/Deep-Learning-Adaptive-Computation-Machine/dp/0262035618) by Ian Goodfellow, Yoshua Bengio and Aaron Courville, which is also available online at [https://www.deeplearningbook.org/](https://www.deeplearningbook.org/). For a gentle introduction to *AI in the Cloud* topics you may consider taking the [Get started with artificial intelligence on Azure](https://docs.microsoft.com/learn/paths/get-started-with-artificial-intelligence-on-azure/?WT.mc_id=academic-77998-cacaste) Learning Path. --- # Content
| No | Lesson | Intro | PyTorch | Keras/TensorFlow | Lab |
|---|---|---|---|---|---|
| I | Introduction to AI | ||||
| 1 | Introduction and History of AI | Text | |||
| II | Symbolic AI | ||||
| 2 | Knowledge Representation and Expert Systems | Text | Expert System, Ontology, Concept Graph | ||
| III | Introduction to Neural Networks | ||||
| 3 | Perceptron | Text | Notebook | Lab | |
| 4 | Multi-Layered Perceptron and Creating our own Framework | Text | Notebook | Lab | |
| 5 | Intro to Frameworks (PyTorch/TensorFlow) and Overfitting | Text | PyTorch | Keras/TensorFlow | Lab |
| IV | Computer Vision | Microsoft Azure AI Fundamentals: Explore Computer Vision | |||
| Microsoft Learn Module on Computer Vision | PyTorch | TensorFlow | |||
| 6 | Intro to Computer Vision. OpenCV | Text | Notebook | Lab | |
| 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 Adversarial Cat | Lab |
| 9 | Autoencoders and VAEs | Text | PyTorch | TensorFlow | |
| 10 | Generative Adversarial Networks Artistic Style Transfer | Text | PyTorch | TensorFlow GAN Style Transfer | |
| 11 | Object Detection | Text | PyTorch | TensorFlow | Lab |
| 12 | Semantic Segmentation. U-Net | Text | PyTorch | TensorFlow | |
| V | Natural Language Processing | Microsoft Azure AI Fundamentals: Explore Natural Language Processing | |||
| Microsoft Learn Module on Natural language processing | PyTorch | TensorFlow | |||
| 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 | Lab |
| 16 | Recurrent Neural Networks | Text | PyTorch | TensorFlow | |
| 17 | Generative Recurrent Networks | Text | PyTorch | TensorFlow | Lab |
| 18 | Transformers. BERT. | Text | PyTorch | TensorFlow | |
| 19 | Named Entity Recognition | Text | TensorFlow | Lab | |
| 20 | Large Language Models, Prompt Programming and Few-Shot Tasks | Text | PyTorch | ||
| VI | Other AI Techniques | ||||
| 21 | Genetic Algorithms | Text | Notebook | ||
| 22 | Deep Reinforcement Learning | Text | PyTorch | TensorFlow | Lab |
| 23 | Multi-Agent Systems | Text | |||
| VII | AI Ethics | ||||
| 24 | AI Ethics and Responsible AI | Text | MS Learn: Responsible AI Principles | ||
| Extras | |||||
| X1 | Multi-Modal Networks, CLIP and VQGAN | Text | Notebook | ||