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Building AI Applications with Microsoft Semantic Kernel

You're reading from   Building AI Applications with Microsoft Semantic Kernel Easily integrate generative AI capabilities and copilot experiences into your applications

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Product type Paperback
Published in Jun 2024
Publisher Packt
ISBN-13 9781835463703
Length 252 pages
Edition 1st Edition
Languages
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Concepts
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Author (1):
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Lucas A. Meyer Lucas A. Meyer
Author Profile Icon Lucas A. Meyer
Lucas A. Meyer
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Table of Contents (14) Chapters Close

Preface 1. Part 1:Introduction to Generative AI and Microsoft Semantic Kernel FREE CHAPTER
2. Chapter 1: Introducing Microsoft Semantic Kernel 3. Chapter 2: Creating Better Prompts 4. Part 2: Creating AI Applications with Semantic Kernel
5. Chapter 3: Extending Semantic Kernel 6. Chapter 4: Performing Complex Actions by Chaining Functions 7. Chapter 5: Programming with Planners 8. Chapter 6: Adding Memories to Your AI Application 9. Part 3: Real-World Use Cases
10. Chapter 7: Real-World Use Case – Retrieval-Augmented Generation 11. Chapter 8: Real-World Use Case – Making Your Application Available on ChatGPT 12. Index 13. Other Books You May Enjoy

Creating and running a plan

Now that we have a planner, we can use it to create a plan for a user’s request and then invoke the plan to get a result. In both languages, we use two steps, one to create the plan and another one to execute it.

For the next two code snippets, assume you have the user’s request loaded into the ask string. Let’s see how to call the planner:

C#

var plan = await planner.CreatePlanAsync(kernel, ask);
var result = await plan.InvokeAsync(kernel);
Console.Write ($"Results: {result}");

Python

result = await planner.invoke(kernel, ask)
print(result.final_answer)

You may remember from Chapter 1 that in Python, the result variable contains all the steps to create the plan, so in order to see the plan’s results, you need to print result.final_answer. If you print the result variable, you’ll get a large JSON object.

An example of how a planner can help

Let’s see a simple example that already shows...

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