Agentic AI with .NET Tutorial
Lesson 1 of 9 11% of course

From Chatbots to Agents

1 · 5 min · 5/23/2026

Learn From Chatbots to Agents in our free Agentic AI with .NET Tutorial series. Step-by-step explanations, examples, and interview tips on Toolliyo Academy.

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From Chatbots to Agents — Agentic AI with .NET Tutorial
Advanced track — Semantic Kernel

Advanced From Chatbots to Agents in Agentic AI with .NET Tutorial. Deep dive with production-oriented examples—not a shallow overview.

Architecture & mental model

Agentic apps combine LLMs with tools (search, SQL, APIs). In .NET, Semantic Kernel plugins wrap functions the model can invoke. Reliability requires guardrails, logging, and human approval for destructive actions.

Implementation (production-style)

Type the code below; change names and types to match your domain. Compare with how Semantic Kernel teams structure layers in mature codebases.

// Semantic Kernel pattern (illustrative)
var kernel = Kernel.CreateBuilder()
    .AddOpenAIChatCompletion(modelId, apiKey)
    .Build();

kernel.Plugins.AddFromType();

var result = await kernel.InvokePromptAsync(
    "Find order 1042 status and email summary to support@company.com",
    new KernelArguments { ["customerId"] = 1042 });

Decision checklist

  • Requirements: What are latency, consistency, and security needs for "From Chatbots to Agents"?
  • Boundaries: Which layer owns this logic (UI, API, domain, infrastructure)?
  • Failure modes: What happens when dependencies time out or return partial data?
  • Observability: What logs or metrics prove this feature works in production?

Hands-on lab (45–60 min)

  1. Reproduce the primary example for "From Chatbots to Agents" in a scratch project using Semantic Kernel.
  2. Add one automated test (unit or integration) that would fail if you break the core behavior.
  3. Introduce a deliberate bug (wrong lifetime, missing await, wrong dependency order) and observe the symptom.
  4. Document one trade-off you would present in a design review.

Pitfalls senior engineers avoid

  • Unbounded tool loops without max steps.
  • No cost/latency budgets.
  • Skipping evaluation on tool-selection accuracy.

Interview depth

Question: Explain From Chatbots to Agents to a junior developer in 2 minutes, then list two trade-offs.

Strong answer: Start with the problem it solves, describe one real project usage, mention a failure you debugged or would test for, and close with alternatives (when not to use this approach).

Next level

Pair this lesson with official docs for Semantic Kernel, then read source or decompile one framework call path involved in "From Chatbots to Agents". Advanced mastery comes from combining reading, debugging, and shipping.

Summary

You completed an advanced treatment of From Chatbots to Agents. Revisit after building a feature that uses it end-to-end; spaced repetition with real code beats re-reading alone.

Test your knowledge

Quizzes linked to this course—pass to earn certificates.

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Agentic AI with .NET Tutorial

On this page

Architecture & mental model Implementation (production-style) Decision checklist Hands-on lab (45–60 min) Pitfalls senior engineers avoid Interview depth Summary
Agentic Concepts
From Chatbots to Agents Tools, Plugins, and Function Calling Planning and ReAct Loops
.NET Implementation
Semantic Kernel Setup Create Plugins for Your Domain Multi-Step Plans with SK Persist Agent State
Reliability
Evaluation and Regression Tests Agentic AI Interview Questions