Agentic ai

Ask the Experts: Gen AI, Cybersecurity, & AI Agent Questions Answered

Ask the Experts: Gen AI, Cybersecurity, & AI Agent Questions Answered

Experts Martin Keen and Jeff Crume differentiate between Generative and Agentic AI, delve into the nature of AI hallucinations, and explore critical cybersecurity topics like the permanence of the dark web and the dangers of zero-click attacks.

Catastrophic agent failure and how to avoid it // Edward Upton // Agents in Production 2025

Catastrophic agent failure and how to avoid it // Edward Upton // Agents in Production 2025

Edward, a founding engineer at Asteroid, discusses the critical challenge of managing catastrophic failures in agentic browser solutions, particularly in high-stakes domains like healthcare and insurance. He shares real-world examples of agent failures and outlines a practical framework for building more reliable, predictable, and accountable agents by scoping their capabilities, implementing robust human-in-the-loop tooling, and employing independent evaluation systems.

Build Hour: GPT-5

Build Hour: GPT-5

OpenAI's Build Hour provides a deep dive into GPT-5, showcasing its advanced coding and agentic capabilities. The session covers the new Responses API, critical for leveraging the model's reasoning, along with new parameters for steerability and practical prompting techniques for building complex, reliable applications.

Build Hour: Built-In Tools

Build Hour: Built-In Tools

Built-in tools like web search, file search, and code interpreter allow developers to extend model capabilities out-of-the-box. This summary covers the concepts, compares them to function calling, and details a demo of building a data exploration dashboard using multiple tools in concert.

Small Language Models are the Future of Agentic AI Reading Group

Small Language Models are the Future of Agentic AI Reading Group

This paper challenges the prevailing "bigger is better" narrative in AI, arguing that Small Language Models (SLMs) are not just sufficient but often superior for agentic AI tasks due to their efficiency, speed, and specialization. The discussion explores the paper's core arguments, counterarguments, and the practical implications of adopting a hybrid LLM-SLM approach.

Distilling 200+ Hours of NeurIPS: What’s Next for AI // Nikolaos Vasiloglou // MLOps Podcast #336

Distilling 200+ Hours of NeurIPS: What’s Next for AI // Nikolaos Vasiloglou // MLOps Podcast #336

Nikolaos Vasiloglou, VP of Research ML at RelationalAI, shares his extensive analysis of the 2023 NeurIPS conference, distilling over 200 hours of content. Key themes include the dominance and evolution of agentic AI, the state of open-source vs. frontier LLMs, the first signs of deep learning models outperforming XGBoost on tabular data, and the critical rise of verification systems. He also explores the future of AI with data attribution for monetization and the concept of composable, LEGO-like language models.