
Sign up to save your podcasts
Or
In today's Coredump Session, we dive into a wide-ranging conversation about the intersection of AI, open source, and embedded systems with the teams from Memfault and Goliath. From the evolution of AI at the edge to the emerging role of large language models (LLMs) in firmware development, the panel explores where innovation is happening today — and where expectations still outpace reality. Listen in as they untangle the practical, the possible, and the hype shaping the future of IoT devices.
Speakers:
Key Takeaways:
Chapters:
00:00 Episode Teasers & Welcome
01:10 Meet the Panel: Memfault x Golioth
02:56 Why AI at the Edge Isn’t Actually New
05:33 The Real Use Cases for AI in Embedded Devices
08:07 How Much Chaos Are You Willing to Introduce?
11:19 Edge AI vs. Cloud AI: Where It’s Working Today
13:50 LLMs in Embedded: Promise vs. Reality
17:16 Why Hardware Can’t Keep Up with AI’s Pace
20:15 Building Unique Models When Public Datasets Fail
36:14 Open Source’s Big Moment (and What Comes Next)
42:49 Will AI Kill Open Source Contributions?
49:30 How AI Could Change Software Supply Chains
52:24 How to Stay Relevant as an Engineer in the AI Era
Join the Interrupt Slack
Watch this episode on YouTube
Follow Memfault
Other ways to listen:
Apple Podcasts
iHeartRadio
Amazon Music
GoodPods
Castbox
Visit our website
In today's Coredump Session, we dive into a wide-ranging conversation about the intersection of AI, open source, and embedded systems with the teams from Memfault and Goliath. From the evolution of AI at the edge to the emerging role of large language models (LLMs) in firmware development, the panel explores where innovation is happening today — and where expectations still outpace reality. Listen in as they untangle the practical, the possible, and the hype shaping the future of IoT devices.
Speakers:
Key Takeaways:
Chapters:
00:00 Episode Teasers & Welcome
01:10 Meet the Panel: Memfault x Golioth
02:56 Why AI at the Edge Isn’t Actually New
05:33 The Real Use Cases for AI in Embedded Devices
08:07 How Much Chaos Are You Willing to Introduce?
11:19 Edge AI vs. Cloud AI: Where It’s Working Today
13:50 LLMs in Embedded: Promise vs. Reality
17:16 Why Hardware Can’t Keep Up with AI’s Pace
20:15 Building Unique Models When Public Datasets Fail
36:14 Open Source’s Big Moment (and What Comes Next)
42:49 Will AI Kill Open Source Contributions?
49:30 How AI Could Change Software Supply Chains
52:24 How to Stay Relevant as an Engineer in the AI Era
Join the Interrupt Slack
Watch this episode on YouTube
Follow Memfault
Other ways to listen:
Apple Podcasts
iHeartRadio
Amazon Music
GoodPods
Castbox
Visit our website