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    Building AI Startups & Raising Funds with Ryan Shannon #41

    en-gbJanuary 29, 2024

    About this Episode

    Our guest today is Ryan Shannon, AI Investor at Radical Ventures, a world-known venture capital firm investing exclusively in AI. Radical's portfolio includes hot startups like Cohere, Covariant, V7 and many more. 

    In our conversation, we talk about how to start an AI company & what makes a good founding team. Ryan also explains what he and Radical look for when investing and how they help their portfolio after the investment. We finally chat about some cool AI Startups like Twelve Labs and get Ryan’s predictions on hot startups in 2024.

    If you enjoyed the episode, please leave a 5 star review and subscribe to the AI Stories Youtube channel.

    Link to Train in Data courses (use the code AISTORIES to get a 10% discount): https://www.trainindata.com/courses?affcode=1218302_5n7kraba

    Follow Ryan on LinkedIn: https://www.linkedin.com/in/ryan-shannon-1b3a7884/

    Follow Neil on LinkedIn: https://www.linkedin.com/in/leiserneil/  

    ---

    (0:00) - Intro

    (2:42) - Ryan's background and journey into AI investing

    (11:15) -  Radical Ventures

    (14:34) - How to keep up with AI breakthroughs? 

    (22:42) - How Ryan finds and evaluates founders to invest in

    (32:54) - What makes a good founding team? 

    (38:57) - Ryan's role at Radical 

    (45:53) - How to start an AI company 

    (50:22) - Twelve Labs

    (59:19) - Future of AI and hot startups in 2024

    (1:09:48) - Career advice

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    Building AI Startups & Raising Funds with Ryan Shannon #41

    Our guest today is Ryan Shannon, AI Investor at Radical Ventures, a world-known venture capital firm investing exclusively in AI. Radical's portfolio includes hot startups like Cohere, Covariant, V7 and many more. 

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    ---

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