40 min listen
New Fan Engagement Models for Athletes and Influencers
Froma16z Podcast
ratings:
Length:
19 minutes
Released:
May 26, 2020
Format:
Podcast episode
Description
Today’s episode is about a practical application of crypto — namely, the way it can “tokenize” fandom. More broadly, it’s about fan engagement, and the increasingly blurred lines between sports, culture and tech.
We talked to NBA player Spencer Dinwiddie, of the Brooklyn Nets. Spencer created a new platform on the crypto blockchain Ethereum that gives fans the opportunity to invest directly in his revenue-generating potential, through debt securities.
Joining this conversation are a16z managing partner and tech investor Jeff Jordan, who has long followed the evolving relationship between sports and tech. Also joining is Jesse Walden, a former a16z crypto partner and co-founder of Mediachain. He’s also a former music promoter and manager whose focus was on helping artists stay independent.
We discuss the evolution of models for fan engagement; how social media has changed the game; and where technologies like cryptonetworks and blockchains come in.
We talked to NBA player Spencer Dinwiddie, of the Brooklyn Nets. Spencer created a new platform on the crypto blockchain Ethereum that gives fans the opportunity to invest directly in his revenue-generating potential, through debt securities.
Joining this conversation are a16z managing partner and tech investor Jeff Jordan, who has long followed the evolving relationship between sports and tech. Also joining is Jesse Walden, a former a16z crypto partner and co-founder of Mediachain. He’s also a former music promoter and manager whose focus was on helping artists stay independent.
We discuss the evolution of models for fan engagement; how social media has changed the game; and where technologies like cryptonetworks and blockchains come in.
Released:
May 26, 2020
Format:
Podcast episode
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