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SK hynix expands U.S. presence with new Bellevue, Seattle office in efforts to get closer to its largest customers — offices near Nvidia, Amazon, and Microsoft highlight co-designed HBM efforts

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Tom's Hardware

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SK hynix is expanding its U.S. presence with a new office in the Seattle area, strategically placing itself near major tech giants like Nvidia, Amazon, and Microsoft. The company's focus on High Bandwidth Memory (HBM) for AI infrastructure has driven its transformation into a leading supplier in this space. The Seattle location will facilitate closer collaboration with customers on co-designed memory stacks for GPUs and AI accelerators. This move aligns with SK hynix's broader U.S. expansion strategy, including plans for an advanced packaging facility in Indiana, to strengthen its position in the competitive HBM market and enhance relationships with American customers.

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