Crunchbase Sector Snapshot: Funding To AI-Related Healthcare Startups Is Robust This Year - Crunchbase News
<a href="https://news.google.com/rss/articles/CBMijgFBVV95cUxNaGFud21od0JSVVpGMm9GYkYtb2tFcnpNNEJ4N29mWC0yYXhheDlLck5uRHZvVDU5Zk9fVVhWTW0xY3dfMmlzMDZJanJqYWZuUXVoaVpiRmRpTG1zemxaeTRlNmgyVXFNZEUyMnJqSjl1eS1TX2hSUzZTZ09JWGtESG9jU1NhQmJYbm95T0Jn?oc=5" target="_blank">Crunchbase Sector Snapshot: Funding To AI-Related Healthcare Startups Is Robust This Year</a> <font color="#6f6f6f">Crunchbase News</font>
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Anthropic just paid $400 million for a startup with fewer than 10 people
Anthropic has acquired Coefficient Bio, a stealth biotech AI startup founded barely eight months ago, in an all-stock deal worth just over $400 million. The acquisition brings a team of fewer than 10 people, nearly all former Genentech computational biology researchers, into Anthropic’s healthcare and life sciences division, and it signals something larger than a [ ] This story continues at The Next Web

How NinjaOne went from scrappy startup to $5B challenger in the race to unify IT operations
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I helped build Uber and Discord and now my tools help fuel billion-dollar unicorns. But Silicon Valley is losing the AI race to itself
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