Unlock the full potential of generative AI and become a master of prompt engineering. Dive deeper into how you can use In-context Learning to build better and more reliable prompts. See how Retrieval Augmented Generation (RAG) works and what can go wrong that you can counteract with fact-checkable prompt formats. Overcome your struggles in getting the right output from generative AI models with template-based output formats to achieve precision in your interactions with AI models. Tap into powerful AI capabilities for tasks ranging from social media comment analysis to survey results interpretation and beyond. This course will empower you with the skills needed to build exceptional prompts, using simple techniques, such as preference-driven refinement, and become and expert in leveraging generative AI for productivity and creativity.
What You Will Learn:
In-Context Learning: Understand how to provide context within prompts to guide AI models towards more accurate and relevant outputs. Learn techniques to embed contextual information that enhances the model’s understanding and performance.
Retrieval Augmented Generation (RAG): Explore how to integrate retrieval systems with generative models to provide more precise and informed responses. This module covers the mechanisms to combine the strengths of both retrieval and generation.
Template Pattern and Examples: Master the art of crafting template-based prompts to achieve consistent and desired outputs. Learn how to tell generative AI to fit its output into your format and overcome struggles with getting exactly what you want.
Tapping Into AI Capabilities for Everyday Use: Delve into practical applications such as analyzing social media comments, interpreting survey results, and other everyday tasks where generative AI can make a significant impact. Gain hands-on experience with real-world examples.
Building Great Prompts: Discover simple methods for constructing effective prompts. Learn how preference-driven refinement can elevate your prompt engineering skills, ensuring that outputs meet your exact needs and preferences.
涵盖的内容
7个视频1篇阅读材料1个作业
显示有关单元内容的信息
7个视频•总计64分钟
Why Getting Generative AI to Write Like You is a Hard Prompt Engineering Task•7分钟
Prompts, Instructions, & Writing•7分钟
Iterative Refinement in a Conversation and Why It is Different•10分钟
In-Context Learning, Writing, & Information Density•15分钟
The Writing Persona Pattern•10分钟
Example Selection is Critical for In-Context Learning•5分钟
Preference-Driven Refinement of Prompts•11分钟
1篇阅读材料•总计1分钟
Learning More & Staying Connected•1分钟
1个作业•总计60分钟
Build Your Writing Persona•60分钟
Think More, Not Less, Prompting for Options
第 2 单元•小时 后完成
单元详情
涵盖的内容
5个视频1个作业
显示有关单元内容的信息
5个视频•总计31分钟
Exploiting Generation•5分钟
Five Ways to Solve the Problem•9分钟
Generation Approaches•7分钟
Generating Assessment Metrics•5分钟
Automated Search•5分钟
1个作业•总计75分钟
Think More•75分钟
Prompt Engineering: Machine Learning for Everyone
第 3 单元•小时 后完成
单元详情
涵盖的内容
8个视频1个作业
显示有关单元内容的信息
8个视频•总计63分钟
The Five Components of a Prompt•10分钟
Machine Learning for All•6分钟
Performing Classification with Prompts•9分钟
Clustering with Prompts•5分钟
Prediction with Prompts•8分钟
Recommendation with Prompts•4分钟
Training Models with Prompts: In-Context Learning•13分钟
How Many Examples and Which Examples Should Your Prompt Use?•8分钟
Vanderbilt University, located in Nashville, Tenn., is a private research university and medical center offering a full-range of undergraduate, graduate and professional degrees.
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J
JP
5·
已于 Aug 3, 2024审阅
Great course, very clearly explained, and the skills labs provide a timely way to practice the lecture material. Recommended!
M
MP
5·
已于 Jul 30, 2024审阅
Great course! You can always count on Jules White to learn about GenAI. Highly recommended. Looking forward to the next one.
D
DV
5·
已于 Sep 5, 2024审阅
Jules has so much insight into prompt engineering and why what he is teaching is important. I really appreciate his approach to teaching.
What will I actually learn in this prompt engineering course?
You'll learn how to write prompts that give you more reliable, structured, and useful AI outputs. It starts with writing and in-context learning, then builds into stronger control through template-based formatting and retrieval-augmented generation (RAG). Along the way, you'll apply the ideas to tasks like creating a writing persona or turning source information into a more structured analysis.
Do I need any prompt engineering experience before taking this course?
Some familiarity with generative AI will help, because this is an intermediate course rather than a from-scratch introduction. It moves fairly quickly into topics like in-context learning, output formatting, and retrieval instead of spending much time on basic prompting. If you've already experimented with AI tools and want better control over the results, the pace should feel reasonable.
Is this course beginner-friendly for prompt engineering?
It's a better fit for learners who already know the basics of using generative AI and want to get more precise with prompts. The teaching is clear, but the course assumes you're ready to think about examples, tone, structured outputs, and how retrieved information affects answers. If you're completely new to prompting, a more introductory course may be an easier starting point.
How long does it take to complete this course?
The course takes about 9 hours in total. That's short enough to finish in a few focused study sessions, while still leaving room to work through the examples and assignments. The workload includes lessons, a reading, and graded practice assignments.
Are there hands-on exercises or projects in this course?
Yes, there is hands-on work, though it's more assignment-based than project-heavy. You'll create prompts for tasks like building a writing persona, proposing multiple pathways toward a goal, and generating a report with headers, tables, and footnotes from source data. The practice is guided, so you apply each technique as you learn it instead of being left with a large open-ended project.
What skills and methods are covered in this course?
You'll spend most of the course learning how to make prompts more reliable, reusable, and easier to evaluate. That includes in-context learning, retrieval-augmented generation (RAG), and structured prompt formats that help control how answers are written. By the end, you should have a clearer sense of how to design prompts for writing, analysis, and everyday decision support tasks.
What can I actually do after finishing this course?
After finishing, you should be able to write prompts that produce clearer, more structured, and more trustworthy AI outputs. You'll know how to refine a prompt, use examples to guide style or behavior, and set up formats that make responses easier to check. For example, you could build a reusable prompt to analyze survey responses or generate a report that ties claims back to source facts.
Is this course more focused on theory or hands-on learning?
It's more concept-first than project-heavy, with guided practice built in. Most of the course explains why prompt choices change the output, then asks you to apply those ideas in focused assignments rather than large open-ended builds.
Why would I choose this course over other prompt engineering courses?
This course is a strong choice if you want prompt engineering taught as a repeatable working method, not just a list of prompt tips. It connects writing style, structured outputs, and RAG, and the assignments ask you to build reusable prompts for real tasks like reports and response analysis. If you already know the basics and want a short intermediate course focused on control and reliability, it's a very good fit.