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I joined Y Combinator with 14 users, building a dev tool for myself. Then Saai Arora joined as CTO, and we started growing and shipping 2x faster. It forced us to rebuild product and infra from the ground up for teams, not solo devs. We are ending the batch...

71,721 views • 1 month ago •via X (Twitter)

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