NVIDIA GTC: WekaIO, the AI-native data platform company, unveiled WEKApod™: A powerful new data platform appliance certified for NVIDIA DGX SuperPOD™ with NVIDIA DGX H100 systems. The appliance integrates WEKA’s AI-native data platform software with class-leading storage hardware to provide a ready-to-use, purpose-built environment for AI applications. Customers can deploy the WEKApod Data Platform Appliance as part of their NVIDIA DGX SuperPOD solution, helping them rapidly provision compute, storage, and networking resources and get their AI projects into production faster.
The WEKApod Data Platform Appliance offers an exceptional, highly performant data management foundation for NVIDIA DGX SuperPOD deployments – a single cluster can deliver up to 18,300,000 IOPs. It also provides efficient write performance for AI model checkpointing, delivering superior training efficiency, scalability, enterprise-grade resiliency, and support for real-time applications.
WEKApod delivers all the capabilities of WEKA’s Data Platform software in an easy-to-deploy appliance for enterprise AI, generative AI, and GPU cloud customers. Key benefits include:
Also Read: IPC Systems Partners with Business Systems to Deliver Future-Proofed Data Management Strategies
Class-Leading Performance
The WEKA Data Platform’s AI-native architecture delivers the world’s fastest AI storage and exceptionally high performance for AI data pipelines. It ensures low latency regardless of file size and provides high levels of write throughput required by checkpointing operations to ensure business-critical continuity.
Maximum Efficiency for Improved Sustainability
The WEKA Data Platform provides increased performance density that lowers energy usage by maximizing space utilization, improving cooling efficiency, optimizing power distribution, and reducing idle energy consumption. This enables WEKA customers to decrease their carbon footprint by up to 260 tons of CO2e per petabyte stored.
Further, the WEKA Data Platform delivers efficient storage access, ensuring that computational tasks, such as training and inference processes, are executed with maximum performance, reducing idle time and overall energy consumption. By efficiently utilizing resources and minimizing data movement, the WEKA platform helps lower the associated energy costs and the carbon footprint of AI deployments, enabling organizations to achieve sustainability and environmental goals while driving AI initiatives forward.
SOURCE : PRNewswire