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Preparing AI for the unexpected: Lessons from recent IT incidents

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Manage episode 435145212 series 3475282
内容由Dr. Andrew Clark & Sid Mangalik, Dr. Andrew Clark, and Sid Mangalik提供。所有播客内容(包括剧集、图形和播客描述)均由 Dr. Andrew Clark & Sid Mangalik, Dr. Andrew Clark, and Sid Mangalik 或其播客平台合作伙伴直接上传和提供。如果您认为有人在未经您许可的情况下使用您的受版权保护的作品,您可以按照此处概述的流程进行操作https://zh.player.fm/legal

Can your AI models survive a big disaster? While a recent major IT incident with CrowdStrike wasn't AI related, the magnitude and reaction reminded us that no system no matter how proven is immune to failure. AI modeling systems are no different. Neglecting the best practices of building models can lead to unrecoverable failures. Discover how the three-tiered framework of robustness, resiliency, and anti-fragility can guide your approach to creating AI infrastructures that not only perform reliably under stress but also fail gracefully when the unexpected happens.
Show Notes

  • Model robustness (00:10:03)
    • Robustness is a very important but often overlooked component of building modeling systems. We suspect that part of the problem is due to:
      • The Kaggle-driven upbringing of data scientists
      • Assumed generalizability of modeling systems, when models are optimized to perform well on their training data but do not generalize enough to perform well on unseen data.

  • Model resilience (00:16:10)
    • Resiliency is the ability to absorb adverse stimuli without destruction and return to its pre-event state.
    • In practice, robustness and resiliency, testing, and planning are often easy components to leave out. This is where risks and threats are exposed.
    • See also, Episode 8. Model validation: Robustness and resilience

  • Models and antifragility (00:25:04)
    • Unlike resiliency, which is the ability to absorb damaging inputs without breaking, antifragility is the ability of a system to improve from challenging stimuli. (i.e. the human body)
    • A key question we need to ask ourselves if we are not actively building our AI systems to be antifragile, why are we using AI systems at all?

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  • YouTube - Was it something that we said? Good. Share your favorite quotes.
  • Visit our page - see past episodes and submit your feedback! It continues to inspire future episodes.
  continue reading

章节

1. Preparing AI for the unexpected: Lessons from recent IT incidents (00:00:00)

2. Intro: Technology, incidents, and why? (00:00:03)

3. The "7P's" (00:09:05)

4. Model robustness (00:10:03)

5. Model resilience (00:16:10)

6. Models and antifragility (00:25:04)

23集单集

Artwork
icon分享
 
Manage episode 435145212 series 3475282
内容由Dr. Andrew Clark & Sid Mangalik, Dr. Andrew Clark, and Sid Mangalik提供。所有播客内容(包括剧集、图形和播客描述)均由 Dr. Andrew Clark & Sid Mangalik, Dr. Andrew Clark, and Sid Mangalik 或其播客平台合作伙伴直接上传和提供。如果您认为有人在未经您许可的情况下使用您的受版权保护的作品,您可以按照此处概述的流程进行操作https://zh.player.fm/legal

Can your AI models survive a big disaster? While a recent major IT incident with CrowdStrike wasn't AI related, the magnitude and reaction reminded us that no system no matter how proven is immune to failure. AI modeling systems are no different. Neglecting the best practices of building models can lead to unrecoverable failures. Discover how the three-tiered framework of robustness, resiliency, and anti-fragility can guide your approach to creating AI infrastructures that not only perform reliably under stress but also fail gracefully when the unexpected happens.
Show Notes

  • Model robustness (00:10:03)
    • Robustness is a very important but often overlooked component of building modeling systems. We suspect that part of the problem is due to:
      • The Kaggle-driven upbringing of data scientists
      • Assumed generalizability of modeling systems, when models are optimized to perform well on their training data but do not generalize enough to perform well on unseen data.

  • Model resilience (00:16:10)
    • Resiliency is the ability to absorb adverse stimuli without destruction and return to its pre-event state.
    • In practice, robustness and resiliency, testing, and planning are often easy components to leave out. This is where risks and threats are exposed.
    • See also, Episode 8. Model validation: Robustness and resilience

  • Models and antifragility (00:25:04)
    • Unlike resiliency, which is the ability to absorb damaging inputs without breaking, antifragility is the ability of a system to improve from challenging stimuli. (i.e. the human body)
    • A key question we need to ask ourselves if we are not actively building our AI systems to be antifragile, why are we using AI systems at all?

What did you think? Let us know.

Do you have a question or a discussion topic for the AI Fundamentalists? Connect with them to comment on your favorite topics:

  • LinkedIn - Episode summaries, shares of cited articles, and more.
  • YouTube - Was it something that we said? Good. Share your favorite quotes.
  • Visit our page - see past episodes and submit your feedback! It continues to inspire future episodes.
  continue reading

章节

1. Preparing AI for the unexpected: Lessons from recent IT incidents (00:00:00)

2. Intro: Technology, incidents, and why? (00:00:03)

3. The "7P's" (00:09:05)

4. Model robustness (00:10:03)

5. Model resilience (00:16:10)

6. Models and antifragility (00:25:04)

23集单集

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