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AI scraping vs. the open web. Who wins? 🥊
Let's say the quiet part out loud: AI companies have trained their models for years on your company's website data, regardless of if you want them to.
Fast forward to today: many publishers have lost up to 70% of website traffic (and huge chunks of revenue) because of this.
So what happens if some of these publications.... die? Then the AI companies have fewer, human-created source material to train future models on.
Rut roh.
Maybe the Really Simple Licensing protocol can save us all.
We talk with RSL Collective Co-founder Doug Leeds on if a new licensing structure can be a win-win-win for publishers, AI companies and end users.
You don't wanna miss this one. 👇
EP 618: RSL vs. the AI Scrape: Can LLM licensing save the open web?
Newsletter: Sign up for our free daily newsletter
More on this Episode: Episode Page
Join the discussion on LinkedIn: Thoughts on this? Join the convo on LinkedIn and connect with other AI leaders.
Upcoming Episodes: Check out the upcoming Everyday AI Livestream lineup
Website: YourEverydayAI.com
Email The Show: [email protected]
Connect with Jordan on LinkedIn
Topics Covered in This Episode:
Timestamps:
00:00 "Threat to the Open Web?"
06:08 "Edgar Walter's Web Innovations"
09:10 "RSL Collective: Unified Web Licensing"
12:37 "Join RSL Collective Initiative"
15:56 RSL Collective: Monetizing Content Access
19:47 "RSL Collective: AI Publishing Solution?"
20:34 Human-Led Training Enhances AI Quality
23:52 "Sustainable AI: A Hopeful Future"
Keywords:
Really Simple Licensing, RSL, open web, AI licensing, content licensing, online publishing, search engines, AI overviews, large language models, content rights, machine readable licenses, robots.txt, AI web crawlers, conten
Send Everyday AI and Jordan a text message. (We can't reply back unless you leave contact info)
Vibe coding is dead simple. Head to AI.Studio/build to create your first app.
Vibe coding is dead simple. Head to AI.Studio/build to create your first app.
By Everyday AI4.8
9595 ratings
AI scraping vs. the open web. Who wins? 🥊
Let's say the quiet part out loud: AI companies have trained their models for years on your company's website data, regardless of if you want them to.
Fast forward to today: many publishers have lost up to 70% of website traffic (and huge chunks of revenue) because of this.
So what happens if some of these publications.... die? Then the AI companies have fewer, human-created source material to train future models on.
Rut roh.
Maybe the Really Simple Licensing protocol can save us all.
We talk with RSL Collective Co-founder Doug Leeds on if a new licensing structure can be a win-win-win for publishers, AI companies and end users.
You don't wanna miss this one. 👇
EP 618: RSL vs. the AI Scrape: Can LLM licensing save the open web?
Newsletter: Sign up for our free daily newsletter
More on this Episode: Episode Page
Join the discussion on LinkedIn: Thoughts on this? Join the convo on LinkedIn and connect with other AI leaders.
Upcoming Episodes: Check out the upcoming Everyday AI Livestream lineup
Website: YourEverydayAI.com
Email The Show: [email protected]
Connect with Jordan on LinkedIn
Topics Covered in This Episode:
Timestamps:
00:00 "Threat to the Open Web?"
06:08 "Edgar Walter's Web Innovations"
09:10 "RSL Collective: Unified Web Licensing"
12:37 "Join RSL Collective Initiative"
15:56 RSL Collective: Monetizing Content Access
19:47 "RSL Collective: AI Publishing Solution?"
20:34 Human-Led Training Enhances AI Quality
23:52 "Sustainable AI: A Hopeful Future"
Keywords:
Really Simple Licensing, RSL, open web, AI licensing, content licensing, online publishing, search engines, AI overviews, large language models, content rights, machine readable licenses, robots.txt, AI web crawlers, conten
Send Everyday AI and Jordan a text message. (We can't reply back unless you leave contact info)
Vibe coding is dead simple. Head to AI.Studio/build to create your first app.
Vibe coding is dead simple. Head to AI.Studio/build to create your first app.

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