
Sign up to save your podcasts
Or
This episode's guest is Keyan Kousha, founder of Stacker News.
Stacker News is a user-generated, feed-style news platform, modeled after Hacker News, but with the important distinction of having natively-integrated bitcoin lightning payments, as a means of fostering more natural communities (think less spam and antisocial behavior), cultivating high-signal bitcoin content, and providing a better user experience overall.
Stacker News is still in the very early days of its development, but it's a great showcase of how bitcoin can be used to improve upon an existing model, and in doing so, explore how improved incentives might influence media publishing, monetization, and moderation.
Keyan is a prime example of someone who caught the bitcoin bug, and just couldn't resist getting involved. The result is a product built with and for bitcoiners, and it was great to have him on the show to explain more about his motivations and ambitions.
---
Follow Keyan:
Follow John & Seetee:
Use Podcasting 2.0:
5
1818 ratings
This episode's guest is Keyan Kousha, founder of Stacker News.
Stacker News is a user-generated, feed-style news platform, modeled after Hacker News, but with the important distinction of having natively-integrated bitcoin lightning payments, as a means of fostering more natural communities (think less spam and antisocial behavior), cultivating high-signal bitcoin content, and providing a better user experience overall.
Stacker News is still in the very early days of its development, but it's a great showcase of how bitcoin can be used to improve upon an existing model, and in doing so, explore how improved incentives might influence media publishing, monetization, and moderation.
Keyan is a prime example of someone who caught the bitcoin bug, and just couldn't resist getting involved. The result is a product built with and for bitcoiners, and it was great to have him on the show to explain more about his motivations and ambitions.
---
Follow Keyan:
Follow John & Seetee:
Use Podcasting 2.0:
3,062 Listeners
1,206 Listeners
1,439 Listeners
765 Listeners
2,161 Listeners
442 Listeners
410 Listeners
1,834 Listeners
741 Listeners
253 Listeners
228 Listeners
460 Listeners
669 Listeners
417 Listeners
85 Listeners