Manufacturing is getting faster, messier, and more expensive when quality slips.
Daniel First, Founder and CEO at Axion, joins Amir to break down how AI is changing the way manufacturers detect issues in the field, trace root causes across messy data, and shorten the time from “customers are hurting” to “we fixed it.”
Episode Summary
Daniel First, Founder and CEO at Axion, explains why modern manufacturing is living in the bottom of the quality curve longer than ever, and how AI can help companies spot issues early, investigate faster, and actually close the loop before warranty costs and customer trust spiral. If you work anywhere near hardware, infrastructure, or complex systems, this is a sharp look at what “AI first” means when real products fail in the real world.
You will hear why quality is becoming a competitive weapon, how unstructured signals hide the truth, and what changes when AI agents start doing the detection, investigation, and coordination work humans have been drowning in.
What you will take away
Quality is not just a defect problem, it is a speed and trust problem, especially when product cycles keep compressing.
AI creates leverage by pulling together signals across the full product life cycle, not by sprinkling a chatbot on one system.
The fastest teams win by finding issues earlier, scoping impact correctly, and fixing what matters before customers notice the pattern.
A clear ROI often lives in warranty cost avoidance and downtime reduction, not just “efficiency” metrics.
“AI first” gets real when strategy becomes operational, and contradictions in how teams prioritize issues get exposed.
Timestamped highlights
00:00 Why manufacturing is a different kind of problem, and why speed is harder than it looks
01:10 What Axion does, and how it detects, investigates, and resolves customer impacting issues
05:10 The new reality, faster product cycles mean living in the bottom of the quality curve
10:05 Why it can take hundreds of days to truly solve an issue, and where the time disappears
16:20 How to evaluate AI vendors in manufacturing, specialization, integrations, and cross system workflows
22:40 The shift coming to quality teams, from reading data all day to making higher level decisions
28:10 What “AI first” looks like in practice, and how AI exposes misalignment across teams
A line worth repeating
“Humans are not that great at investigating tens of millions of unstructured data points, but AI can detect, scope, root cause, and confirm the fix.”
Pro tips you can apply
When evaluating an AI solution, ask three questions up front: how specialized the AI must be, whether you need a full workflow solution or just an API, and whether the use case spans multiple systems and teams.
Treat early detection as a first class objective, the longer the accumulation phase, the more cost and customer damage you silently absorb.
Align issue prioritization to strategy, not just frequency, cost, or the loudest internal voice.
Follow:
If this episode helped you think differently about quality, speed, and AI in the real world, follow the show on Apple Podcasts or Spotify so you do not miss the next one. If you want more conversations like this, subscribe to the newsletter and connect with Amir on LinkedIn.