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VC fund QuantumLight uses an AI model to identify outlier growth-stage companies with all 17 of its deals to date been guided by the model

May 28, 2025 //  by Finnovate

QuantumLight, a quantitative venture capital firm founded by Revolut’s Nik Storonsky has closed on a $250 million fund for backing founders across AI, Web3, Fintech, SaaS and Healthtech. The $250 million Fund I, which closed at hard cap, is backed by a global group of top-tier LPs, including billionaire tech founders and prominent institutions. Since launching in 2022, all 17 of the company’s deals to date have been recommended by its proprietary AI model. The Fund’s proprietary AI model, Aleph, is purpose-built to identify outlier growth-stage companies. Storonsky said “Our ambition is to build the world’s best systematic venture capital and growth equity firm – and support the new generation of founders by sharing some of the operating principles that we developed at Revolut.” This includes the launch of playbooks for portfolio companies to learn from the success of Revolut in hiring top talent and driving high-performance companies. Says CEO Ilya Kondrashov: “Our goal is to make the invisible operating systems behind iconic companies like Revolut visible and replicable. Founders shouldn’t have to reinvent the wheel when it comes to building high-performing teams. By sharing these tools and frameworks, we’re helping scale-ups move faster from day one.”

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Category: Asset & Wealth, Innovation Topics

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