How FuriosaAI Became South Korea’s AI Chip Disruptor


South Korean AI chip startup FuriosaAI turned down a reported $800 million acquisition offer from Meta (NASDAQ:META) in order to remain independent and build its own AI hardware mission‑driven business, TechCrunch reports.

FuriosaAI then secured a major partnership to supply its purpose‑built RNGD, pronounced “Renegade,” chip to LG AI Research’s recently launched EXAONE 4.0 large language model platform, targeting enterprise deployments across electronics, finance, telecommunications, and biotechnology sectors, TechCrunch says.

FuriosaAI declined Meta’s acquisition bid in March due to disagreements over post‑acquisition organizational restructuring and strategic direction, rather than price concerns, according to TechCrunch.

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FuriosaAI CEO June Paik, a former Samsung and Advanced Micro Devices (NASDAQ:AMD) engineer, told TechCrunch that the company wanted to continue its mission of sustainable AI innovation on its own path, resisting a buyout that conflicted with its vision and operational autonomy.

TechCrunch says that rejecting a significant acquisition offer signals FuriosaAI’s belief that independence and long‑term control are more valuable than a quick large check from Big Tech.

Founded in 2017, FuriosaAI remains a compact operation with around 15 core staff across Seoul and Santa Clara, California, yet manages global impact through key partnerships and a cutting‑edge hardware design approach, TechCrunch says.

RNGD is FuriosaAI’s second‑generation data center accelerator, built on Taiwan Semiconductor Manufacturing Co.’s (NYSE:TSM) 5-nanometer process and engineered specifically for large language model and multimodal inference workloads, according to the company website.

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At its core is the tensor contraction processor architecture, which FuriosaAI says treats tensor contraction as a first‑class operation instead of relying on fixed‑size matrix multiplication primitives, unlocking higher efficiency and flexibility in deep learning computations.

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