Nominal Secures $75 Million to Revolutionize Hardware Testing

Nominal has raised $75 million in a Series B funding round led by Sequoia Capital to modernize hardware testing processes. The funding will accelerate product development and expand Nominal's offerings.

Nominal has raised $75 million in a Series B funding round led by Sequoia Capital, with participation from Lightspeed Venture Partners and other investors, announced in a press release. The funding aims to enhance Nominal's unified, real-time test stack for physical systems, which is already trusted by organizations such as the U.S. Air Force, Anduril, and Shield AI.

Nominal's platform automates data capture and analysis, enabling faster validation and deployment of critical hardware. The company has seen significant growth, with a tenfold increase in revenue and a sixfold increase in customer base across sectors like aerospace, defense, and energy. The Series B funding will accelerate the development of Nominal's products, including Nominal Core and Nominal Connect, and support new offerings in embedded and operational use cases.

Founded in 2022, Nominal aims to replace outdated testing tools with a secure, integrated platform that reduces test-to-decision time from days to minutes. This approach allows engineering teams to accelerate product development without increasing headcount, making testing more efficient and cost-effective.

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