Skip to content

Latest commit

 

History

History
 
 

13-continued-learning

Folders and files

NameName
Last commit message
Last commit date

parent directory

..
 
 
 
 

Additional resources

Here are links to other great resources to continue your learning and building with Generative AI.

Are we missing a great resource? Let us know by submitting a PR!

🧠 One Collection to Rule Them ALl

After completing this course, check out our Generative AI Learning collection to continue leveling up your Generative AI knowledge!

Lesson 1 - Introduction to Generative AI and LLMs

🔗 How GPT models work: accessible to everyone

🔗 Fundamentals of Generative AI

🔗 How GPT models work: accessible to everyone

🔗 Generative AI: Implication and Applications for Education

Lesson 2 - Exploring and Comparing Different LLM types

🔗 How to use Open Source foundation models curated by Azure Machine Learning (preview) - Azure Machine Learning | Microsoft Learn

🔗 The Large Language Model (LLM) Index | Sapling

🔗 [2304.04052] Decoder-Only or Encoder-Decoder? Interpreting Language Model as a Regularized Encoder-Decoder (arxiv.org)

🔗 Retrieval Augmented Generation using Azure Machine Learning prompt flow

🔗 Grounding LLMs

🔗 The Large Language Model (LLM) Index | Sapling

🔗 [2304.04052] Decoder-Only or Encoder-Decoder? Interpreting Language Model as a Regularized Encoder-Decoder (arxiv.org)

Lesson 3 - Using Generative AI Responsibly

🔗 Fundamentals of Responsible Generative AI

🔗 Grounding LLMs

🔗 Fundamentals of Responsible Generative AI

🔗 Being Responsible with Generative AI

🔗 GPT-4 System Card

Lesson 4 - Understanding Prompt Engineering Fundamentals

🔗 Getting Started with Azure OpenAI Services

Apply Prompt Engineering with Azure OpenAI services

Introduction to Prompt Engineering

🔗 Prompt Engineering Overview

🔗 Azure OpenAI for Education Prompts

🔗 Introduction to Prompt Engineering

🔗 Prompt Engineering Overview

🔗 Azure OpenAI for Education Prompts

Lesson 5 - Creating Advanced Prompts

🔗 Prompt Engineering Techniques

Lesson 6 - Building Text Generation Applications

🔗 Prompt Engineering Techniques

Lesson 7 - Building Chat Applications

🔗 System message framework and template recommendations for Large Language Models (LLMs)

🔗 Learn how to work with the GPT-35-Turbo and GPT-4 models

🔗 Fine-Tuning language models from human preferences

🔗 Build natural language solutions with Azure OpenAI Services

🔗 OpenAI Fine-Tuning

Lesson 8 - Building Search Applications

🔗 Azure Cognitive Search

🔗 OpenAI Embedding API

🔗 Cosine Similarity

Lesson 9 - Building Image Generation Applications

🔗 Generate Images with Azure OpenAI Service

🔗 OpenAI's DALL-E and CLIP 101: A Brief Introduction

🔗 OpenAI's CLIP paper

🔗 OpenAI's DALL-E and CLIP 101: A Brief Introduction

🔗 OpenAI's CLIP paper

Lesson 10 - Building Low Code AI Applications

🔗 Create bots with Microsoft Copilot Studio

🔗 Add intelligence with AI Builder and GPT

🔗 Get Started with AI Builder

🔗 Detect Objects with AI Builder

🔗 Build a canvas app solution with Copilot in Power Apps

🔗 Power Platform Copilot Prompt Library

Lesson 11- Integrating Applications with Function Calling

🔗 OpenAI Functions Documentation

Lesson 12 - Designing UX for AI Applications

🔗 Best practices for building collaborative UX with Human-AI partnership

🔗 Designing Human-Centric AI Experiences: Applied UX Design for Artificial Intelligence by Akshay Kpre

🔗 UX for AI: Design Practices for AI Developers

🔗 New skills in the age of AI by John Maeda

🔗 Designing Human-Centric AI Experiences: Applied UX Design for Artificial Intelligence by Akshay Kpre