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Why long-running AI agents break on HTTP and how Ably is fixing it artwork
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Why long-running AI agents break on HTTP and how Ably is fixing it

The New Stack Makers by The New Stack Podcast

May 6, 202600:31:31Technology

In this episode of The New Stack Makers , Matthew O’Riordan, CEO of Ably, explains how infrastructure originally built for human collaboration is now well-suited for long-running AI agents. While Ably initially resisted...

About This Episode

Why long-running AI agents break on HTTP and how Ably is fixing it is an episode from The New Stack Makers by The New Stack Podcast. In this episode of The New Stack Makers , Matthew O’Riordan, CEO of Ably, explains how infrastructure origi...

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Episode Details

Published May 6, 2026, 00:31:31 long, audio available.

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What is Why long-running AI agents break on HTTP and how Ably is fixing it about?

In this episode of The New Stack Makers , Matthew O’Riordan, CEO of Ably, explains how infrastructure originally built for human collaboration is now well-suited for long-running AI agents. While Ably initially resisted positioning itself as an AI company, the rise of agents that reason, call tools, and operate over extended periods revealed a natural fit for its real-time communication platform. O’Riordan highlights the limitations of HTTP for these use cases. While effective for short, request-response interactions, HTTP struggles with persistent, stateful experiences—such as handling dropped connections, multi-device usage, or mid-task interruptions. To address this, a new “durable session” layer is emerging, enabling continuous synchronization between agents and users through shared state, presence, and recovery mechanisms. Ably’s solution, AI Transport, augments existing architectures by keeping HTTP for requests while shifting responses to durable sessions. Features like mutable message streams and “live objects” allow seamless reconnection and collaboration. The goal is to provide a drop-in layer that developers can adopt without rethinking their stack—moving beyond traditional pub/sub models. Learn more from The New Stack around Ably and AI Transport: How MCP Uses Streamable HTTP for Real-Time AI Tool Interaction Ably Touts Real-Time Starter Kits for Vercel and Netlify AI Agents Need Help. Here’s 4 Ways To Ship Software Reliably Join our community of newsletter subscribers to stay on top of the news and at the top of your game.

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Why long-running AI agents break on HTTP and how Ably is fixing it is an episode from The New Stack Makers by The New Stack Podcast.

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This episode is 00:31:31 long.

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This episode was published on May 6, 2026.

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Why long-running AI agents break on HTTP and how Ably is fixing it is from The New Stack Makers by The New Stack Podcast.

What are the episode details?

Published May 6, 2026 and 00:31:31 long