Agents 101: From Chatbots to Autonomous Systems

Episode 3- What “tools” and API calling mean in agent systems

30 min · 13. feb. 2026
episode Episode 3- What “tools” and API calling mean in agent systems cover

Beskrivelse

Text isn’t enough to get real work done. In this episode, we explain what “tools” and API calling actually mean inside AI agent systems, and why they’re the difference between a model that talks and a system that acts. You’ll learn how agents connect to external software like CRMs, databases, email, payments, and internal systems, how APIs let them send and receive structured data, and how this turns language into real-world execution. We cover the basics without jargon: what an API is, how tool calls work step by step, common failure points, and the reliability and security tradeoffs teams face in production. If you want to build or evaluate real agents, this is the foundation that makes everything else possible.

Kommentarer

0

Vær den første til at kommentere

Tilmeld dig nu og bliv en del af Agents 101: From Chatbots to Autonomous Systems-fællesskabet!

Kom i gang

2 måneder kun 19 kr.

Derefter 99 kr. / måned · Opsig når som helst.

  • Podcasts kun på Podimo
  • 20 lydbogstimer pr. måned
  • Gratis podcasts

Alle episoder

5 episoder

episode Episode 4- Memory in AI agents (short-term vs long-term) cover

Episode 4- Memory in AI agents (short-term vs long-term)

Most AI systems don’t actually “remember” anything. Unless memory is deliberately engineered, every interaction starts from zero. In this episode, we break down memory in AI agents, specifically the difference between short-term memory inside a model’s context window and long-term memory stored externally in databases or vector stores. You’ll understand what each type does and why both are necessary for real-world agents. We explain how memory is stored, retrieved, and reinserted into the model’s reasoning process, and where systems typically fail. By the end, you’ll be able to evaluate agent architectures, design for persistence, and make informed product decisions around personalization, continuity, and cost.

13. feb. 202619 min
episode Episode 3- What “tools” and API calling mean in agent systems cover

Episode 3- What “tools” and API calling mean in agent systems

Text isn’t enough to get real work done. In this episode, we explain what “tools” and API calling actually mean inside AI agent systems, and why they’re the difference between a model that talks and a system that acts. You’ll learn how agents connect to external software like CRMs, databases, email, payments, and internal systems, how APIs let them send and receive structured data, and how this turns language into real-world execution. We cover the basics without jargon: what an API is, how tool calls work step by step, common failure points, and the reliability and security tradeoffs teams face in production. If you want to build or evaluate real agents, this is the foundation that makes everything else possible.

13. feb. 202630 min
episode Episode 2- How large language models (LLMs) actually work (at a high level) cover

Episode 2- How large language models (LLMs) actually work (at a high level)

LLMs feel intelligent. But under the hood, they’re not thinking. They’re predicting. In this episode, we explain in plain English how large language models like ChatGPT actually work. What they’re trained on, what a “token” really is, how probabilities drive every word they generate, and why they sometimes sound confident but still get things wrong. We break down the core mechanics step by step: training on massive text data, learning patterns, predicting the next word, and using context to stay coherent. No math. No jargon. Just the mental model you need to reason clearly about what these systems can and cannot do. By the end, you’ll understand their strengths, limits, and how to use them wisely in real products and workflows.

13. feb. 202639 min