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Chris Smith: How to think about adding AI to your product

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Manage episode 389035179 series 2631105
Content provided by Andrew Skotzko. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Andrew Skotzko or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

Chris Smith is a longtime engineering leader who has been in the trenches of building with AI & machine learning for years. He’s led the development of data systems & strategies at tech giants like early Google, Yahoo, and Sun; S&P 500's like Live Nation; and a wide variety of startups.

Topics discussed:

(00:00) AI industry at inflection point, causing chaos

(09:05) Machine learning, neural nets, and generative AI

(14:03) Generative AI: LLMs + broad understanding

(21:56) Open source models improve specialized problem solving

(25:06) Access to data leads to competitive advantage

(32:53) AI training improves productivity and learning speed

(42:51) Reduced investment in GPT models speeds results

(48:47) Expectation mismatch leads to brand perception risks

(53:54) Non-technical work is crucial for AI product success

(57:30) Building a computer vision product from scratch

(01:03:14) A strategic approach to refining and testing prototypes

(01:08:04) Closing learning loops

Links & resources mentioned

Find the full transcript at: https://podcast.makethingsthatmatter.com/chris-smith-how-to-add-ai-to-product/#transcript

Send episode feedback on Twitter @askotzko , or via email

Chris Smith:

LinkedIn

X / Twitter: @xcbsmith

• Bluesky @xcbsmith

Related episodes:

#75 Chris Smith: Simple guidelines for AI investment sizing

People & orgs:

Dr. Marily Nika - AI Lead, Meta Reality Lab

Travis Corrigan - Head of Product, Smith.AI

Books:

Evidence Guided - Itamar Gilad

Other resources:

GPT = “generative pre-trained transformer”

Wizard of Oz experiment

Tom Chi - learning loop

Joel Spolsky: The iceberg secret, revealed

ML Ops

Computer vision

Precision-Recall curves

Leaked Google memo: “There is no moat”

Universal basic income (UBI)

Stop-loss order


This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit blog.makethingsthatmatter.com
  continue reading

82 episodes

Artwork
iconShare
 
Manage episode 389035179 series 2631105
Content provided by Andrew Skotzko. All podcast content including episodes, graphics, and podcast descriptions are uploaded and provided directly by Andrew Skotzko or their podcast platform partner. If you believe someone is using your copyrighted work without your permission, you can follow the process outlined here https://player.fm/legal.

Chris Smith is a longtime engineering leader who has been in the trenches of building with AI & machine learning for years. He’s led the development of data systems & strategies at tech giants like early Google, Yahoo, and Sun; S&P 500's like Live Nation; and a wide variety of startups.

Topics discussed:

(00:00) AI industry at inflection point, causing chaos

(09:05) Machine learning, neural nets, and generative AI

(14:03) Generative AI: LLMs + broad understanding

(21:56) Open source models improve specialized problem solving

(25:06) Access to data leads to competitive advantage

(32:53) AI training improves productivity and learning speed

(42:51) Reduced investment in GPT models speeds results

(48:47) Expectation mismatch leads to brand perception risks

(53:54) Non-technical work is crucial for AI product success

(57:30) Building a computer vision product from scratch

(01:03:14) A strategic approach to refining and testing prototypes

(01:08:04) Closing learning loops

Links & resources mentioned

Find the full transcript at: https://podcast.makethingsthatmatter.com/chris-smith-how-to-add-ai-to-product/#transcript

Send episode feedback on Twitter @askotzko , or via email

Chris Smith:

LinkedIn

X / Twitter: @xcbsmith

• Bluesky @xcbsmith

Related episodes:

#75 Chris Smith: Simple guidelines for AI investment sizing

People & orgs:

Dr. Marily Nika - AI Lead, Meta Reality Lab

Travis Corrigan - Head of Product, Smith.AI

Books:

Evidence Guided - Itamar Gilad

Other resources:

GPT = “generative pre-trained transformer”

Wizard of Oz experiment

Tom Chi - learning loop

Joel Spolsky: The iceberg secret, revealed

ML Ops

Computer vision

Precision-Recall curves

Leaked Google memo: “There is no moat”

Universal basic income (UBI)

Stop-loss order


This is a public episode. If you would like to discuss this with other subscribers or get access to bonus episodes, visit blog.makethingsthatmatter.com
  continue reading

82 episodes

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