DevOps Paradox Titelbild

DevOps Paradox

DevOps Paradox

Von: Darin Pope & Viktor Farcic
Jetzt kostenlos hören, ohne Abo

Über diesen Titel

What is DevOps? We will attempt to answer this and many more questions.PlanetPope, Inc. 2019-2026
  • DOP 338: The Assembly Line Problem: Why Adding AI to One Step Breaks Everything
    Feb 18 2026

    #338: Every company adding AI coding tools runs into the same wall. Developers produce more code, but features don't ship any faster. The bottleneck just slides downstream -- to QA, to security, to legal, to whoever comes next in the pipeline. And the team that got faster? They don't even realize the people upstream could be feeding them more work.

    Viktor's take: the fastest possible setup is one person carrying a feature from idea to production. Not one person doing everything alone -- a system designed so nobody waits. Tests run in CI. Deployments happen through Argo CD. Security scanning is automated. There's a real difference between wiring up a light switch and hiring a butler to flip it for you.

    None of this is new. The same thing happened with punch cards, client-server, cloud, Kubernetes. One group adopts the new thing, everyone else says it doesn't apply to them, and the market eventually forces their hand. Meanwhile, every team in every company says they'd love to change if only the rest of the organization would get on board. Every team says this. So who's actually blocked?

    YouTube channel:

    https://youtube.com/devopsparadox

    Review the podcast on Apple Podcasts:

    https://www.devopsparadox.com/review-podcast/

    Slack:

    https://www.devopsparadox.com/slack/

    Connect with us at:

    https://www.devopsparadox.com/contact/

    Mehr anzeigen Weniger anzeigen
    42 Min.
  • DOP 337: Nanoseconds Matter - InfluxDB and the Future of Real-Time Data
    Feb 11 2026

    #337: Time series databases have become essential infrastructure for the physical AI revolution. As automation extends into manufacturing, autonomous vehicles, and robotics, the demand for high-resolution, low-latency data has shifted from milliseconds to nanoseconds. The difference between a general-purpose database and a specialized time series solution is the difference between a minivan and an F1 car - both will get around the track, but only one is built for the demands of real-time operational workloads.

    The open source business model continues to evolve in unexpected ways. While companies like Elastic and Redis have seen hyperscalers fork their projects, a new partnership paradigm is emerging. Amazon Web Services now pays to license InfluxDB and offers it as a managed service, signaling a shift toward collaboration rather than competition. This approach benefits everyone: vendors maintain development velocity, cloud providers get workloads on their platforms, and customers receive better-supported products.

    Evan Kaplan, CEO of InfluxData, joins Darin and Viktor to discuss the trajectory from observability metrics to physical world instrumentation, why deterministic models matter more than probabilistic ones when your robot might run over your cat, and what it takes to build a sustainable open source company over a decade-plus journey.

    Evan's contact information:

    X: https://x.com/evankaplan

    LinkedIn: https://www.linkedin.com/in/kaplanevan/

    YouTube channel:

    https://youtube.com/devopsparadox

    Review the podcast on Apple Podcasts:

    https://www.devopsparadox.com/review-podcast/

    Slack:

    https://www.devopsparadox.com/slack/

    Connect with us at:

    https://www.devopsparadox.com/contact/

    Mehr anzeigen Weniger anzeigen
    43 Min.
  • DOP 336: Why Top Talent Won't Work for You Anymore
    Feb 4 2026

    #336: The workplace is on the verge of a transformation as significant as the Industrial Revolution. Just as Bring Your Own Device policies emerged after the iPhone disrupted corporate mobile standards, we are now entering an era where employees may arrive with their own AI teams in tow. The question is no longer whether AI will change hiring and employment - it is how quickly companies will adapt before being left behind by competitors who embrace this shift.

    Current AI productivity gains remain largely individual rather than organizational. Writing code twice as fast means nothing if the deployment pipeline stays the same speed. But within five to ten years, entire industries face disruption - from primary care physicians to transportation to knowledge work. Companies clinging to restrictive AI policies today risk driving away top talent who have already integrated these tools into their workflows. The intellectual property implications alone - who owns an AI stack trained on company processes when an employee leaves - will require entirely new frameworks for employment law.

    Darin and Viktor explore these scenarios through the lens of a hypothetical job interview where a candidate brings their own team of AI agents. The conversation surfaces uncomfortable questions about compensation models, corporate governance, and whether we are witnessing the emergence of a new kind of talent that blends human expertise with digital capabilities.

    YouTube channel:

    https://youtube.com/devopsparadox

    Review the podcast on Apple Podcasts:

    https://www.devopsparadox.com/review-podcast/

    Slack:

    https://www.devopsparadox.com/slack/

    Connect with us at:

    https://www.devopsparadox.com/contact/

    Mehr anzeigen Weniger anzeigen
    54 Min.
Noch keine Rezensionen vorhanden