The Complete Prompt Engineering For Ai Bootcamp (2023)
Published 4/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.62 GB | Duration: 4h 21m
Published 4/2023
MP4 | Video: h264, 1280x720 | Audio: AAC, 44.1 KHz
Language: English | Size: 2.62 GB | Duration: 4h 21m
Learn practical skills for working with AI professionally, including ChatGPT, Midjourney, and GitHub Copilot.
What you'll learn
Recall the most commonly used AI tools and their relative strengths or weaknesses
Recognize the core tenets of prompt engineering, as well as common tips & tricks
Apply what you’ve learned to generate a new AI products in 5 real-world projects
Understand the concepts and tooling you need to run AI reliably in production
Requirements
Basic Python Skills
Description
Are you eager to dive into the world of AI and master the art of Prompt Engineering? The Complete Prompt Engineering for AI Bootcamp (2023) is your one-stop solution to learn all about working with cutting-edge AI tools like ChatGPT, Midjourney, GitHub Copilot, GPT-4, DALL-E, and Stable Diffusion!Whether you're an aspiring AI engineer or a seasoned professional looking to upgrade your skills, this comprehensive bootcamp has got you covered. You'll learn practical techniques to harness the power of AI for various professional applications, from generating text and images to enhancing software development and boosting your creative projects.The number of papers published on AI every month is growing exponentially, and it’s becoming increasingly difficult to keep up. The open-source project Stable Diffusion is the fastest growing repository in GitHub in history, and ChatGPT is the fastest growing consumer product in history, hitting 1 million users in less than a week and 100m in a few months.This course will walk you through:Introduction to Prompt Engineering and its importanceWorking with AI tools such as ChatGPT, Midjourney, GitHub Copilot, GPT-3, DALL-E, and Stable DiffusionUnderstanding the capabilities, limitations, and best practices for each AI toolMastering tokens, log probabilities, and AI hallucinationsGenerating and refining lists, summaries, and role promptingUtilizing AI for sentiment analysis, contextualization, and step-by-step reasoningTechniques for overcoming token limits and meta-promptingAdvanced AI applications, including inpainting, outpainting, and progressive extractionLeveraging AI for real world projects like generating SEO blog articles and stock photosHere's what some students have to say about our Prompt Engineering teaching:"Good information on a fast moving target. Lots of links for further study."“The best parts of the online training were demonstrations and real-life hints. Interesting and useful examples”"Mike is really knowledgeable and really accommodating."So why wait? Boost your career and explore the limitless potential of AI by enrolling in The Complete Prompt Engineering for AI Bootcamp (2023) today!
Overview
Section 1: Five Pillars of Prompting
Lecture 1 What is Prompt Engineering?
Lecture 2 Providing Examples
Lecture 3 Giving Direction
Lecture 4 Adjusting Parameters
Lecture 5 Formatting Responses
Lecture 6 Chaining AIs
Section 2: Intro to ChatGPT
Lecture 7 What is ChatGPT?
Lecture 8 Prompting ChatGPT
Lecture 9 ChatGPT Capabilities and Limitations
Section 3: Intro to Midjourney
Lecture 10 What is Midjourney?
Lecture 11 Prompting Midjourney
Lecture 12 Midjourney Capabilities and Limitations
Section 4: Intro to GitHub Copilot
Lecture 13 What is GitHub Copilot?
Lecture 14 Installing Copilot
Lecture 15 Prompting GitHub Copilot
Lecture 16 GitHub Copilot Capabilities and Limitations
Section 5: Intro to GPT-3
Lecture 17 What is GPT-3?
Lecture 18 Prompting GPT-3
Lecture 19 GPT-3 Capabilities and Limitations
Section 6: Intro to DALL-E 2
Lecture 20 What is DALL-E 2?
Lecture 21 Prompting DALL-E 2
Lecture 22 DALL-E 2 Capabilities and Limitations
Section 7: Intro to Stable Diffusion
Lecture 23 What is Stable Diffusion?
Lecture 24 Prompting Stable Diffusion
Lecture 25 Stable Diffusion Capabilities and Limitations
Section 8: How does AI work?
Lecture 26 What are Tokens?
Lecture 27 Log Probabilities
Lecture 28 AI Hallucinations
Section 9: Standard Text Model Practices
Lecture 29 List Generation
Lecture 30 Advanced List Generation
Lecture 31 Advanced List Generation - Exporting JSON
Lecture 32 Advanced List Generation - Exporting YML
Lecture 33 Sentiment Analysis
Lecture 34 Explain It Like I'm Five
Lecture 35 Least to Most
Lecture 36 Let's Think Step by Step
Lecture 37 Role Prompting
Lecture 38 Ask for Context
Lecture 39 Progressive Summarization
Section 10: Standard Image Model Practices
Lecture 40 Inpainting
Lecture 41 Outpainting
Lecture 42 Style Modifiers
Lecture 43 Quality Boosters
Lecture 44 Weighted Terms
Lecture 45 Negative Prompts
Section 11: Advanced Text Model Techniques
Lecture 46 Overcoming Token Limit - Chunking In ChatGPT
Lecture 47 Overcoming Token Limit - ChatGPT Chunking In Code
Lecture 48 Question Rewriting
Lecture 49 Meta Prompting
Lecture 50 Chain of Thought Reasoning
Lecture 51 Vector Databases
Lecture 52 Reason and Act (ReAct)
Section 12: Advanced Image Model Techniques
Lecture 53 Meme Unbundling
Lecture 54 Dreambooth
Lecture 55 Meme Mapping
Section 13: AI Text Model Projects
Lecture 56 SEO Blog Articles
Lecture 57 Summarizing Text
Lecture 58 Review Classification
Section 14: AI Image Model Projects
Lecture 59 AI Stock Photos
Lecture 60 Making a Brand Logo
Section 15: Conclusion
Lecture 61 AI Resource Hub
Lecture 62 Next steps after the course
Developers interested in AI and hoping to learn how to get more reliable results in production.