The Daily AI Show podcast

Why AI Still Feels Hard to Use

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On Monday’s show, the DAS crew discussed how AI tools are landing inside real workflows, where they help, where they create friction, and why many teams still struggle to turn experimentation into repeatable value. The conversation focused on post holiday reality checks, agent reliability, workflow discipline, and what actually changes day to day work versus what sounds good in demos.


Key Points Discussed


Most teams still experiment with AI instead of operating with stable, repeatable workflows


AI feels helpful in bursts but often adds coordination and review overhead


Agents break down without constraints, guardrails, and clear ownership


Prompt quality matters less than process design once teams scale usage


Many companies confuse tool adoption with operational change


AI value shows up faster in narrow tasks than broad general assistants


Teams that document workflows get more ROI than teams that chase tools


Training and playbooks matter more than model upgrades


Timestamps and Topics

00:00:18 👋 Opening and Monday reset

00:03:40 🎄 Post holiday reality check on AI habits

00:07:15 🤖 Where AI helps versus where it creates friction

00:12:10 🧱 Why agents fail without structure

00:17:45 📋 Process over prompts discussion

00:23:30 🧠 Tool adoption versus real workflow change

00:29:10 🔁 Repeatability, documentation, and playbooks

00:36:05 🧑‍🏫 Training teams to think in systems

00:41:20 🏁 Closing thoughts on practical AI use

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