Giga Computing expands NVIDIA RTX PRO server portfolio for Artificial Intelligence

Giga Computing, a subsidiary of GIGABYTE Group, announced the XL44-SX2-AAS1 server integrating NVIDIA RTX PRO 6000 Blackwell Server Edition GPUs with BlueField-3 DPU and ConnectX-8 SuperNICs. The system is designed to accelerate next-generation enterprise Artificial Intelligence workloads by combining high-density compute and high-speed networking.

Giga Computing, a subsidiary of GIGABYTE Group, announced the availability of the XL44-SX2-AAS1 server, an NVIDIA RTX PRO Server that combines NVIDIA RTX PRO 6000 Blackwell Server Edition GPUs with the NVIDIA BlueField-3 data processing unit and NVIDIA ConnectX-8 SuperNICs. The company presents the platform as a unified compute and networking solution intended to power the next generation of enterprise Artificial Intelligence.

The XL44-SX2-AAS1 follows the NVIDIA MGX modular reference design and is described as a high-density, high-performance system. It can be accelerated by up to eight NVIDIA RTX PRO 6000 Blackwell Server Edition GPUs, each equipped with 96 GB of GDDR7 memory. The announcement highlights the system´s focus on extreme Artificial Intelligence acceleration and lists use cases including generative Artificial Intelligence, 3D rendering, and scientific simulations.

In addition to GPU compute, the server integrates NVIDIA ConnectX-8 SuperNIC Switch Boards to enhance interconnect and data transfer, alongside the BlueField-3 DPU for offload and networking tasks. Giga Computing frames the XL44-SX2-AAS1 as a platform that unifies computing and high-speed data transfer to deliver improved performance and interconnect for enterprise Artificial Intelligence deployments. Availability was announced by the company as part of its NVIDIA RTX PRO server offering.

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