Tuesday, November 5, 2024

WEKA Introduces New WEKApod Appliances to Accelerate Enterprise AI Deployments

Related stories

Absci and Twist Bioscience Collaborate to Design Novel Antibody using Generative AI

Absci Corporation a data-first generative AI drug creation company, and...

GreyNoise Intelligence Discovers Zero-Day Vulnerabilities in Live Streaming Cameras with the Help of AI

GreyNoise Intelligence, the cybersecurity company providing real-time, verifiable threat...

Medidata Launches Bundled Solutions to Support Oncology and Vaccine Trials

Medidata, a Dassault Systèmes brand and leading provider of...

Blend Appoints Mike Mischel as SVP of AI Consulting

Blend, a leader in data science and AI-powered solutions,...

Patronus AI Launches Industry-First Self-Serve API for AI Evaluation and Guardrails

Patronus AI announced the launch of the Patronus API, the first...
spot_imgspot_img

WekaIO, the AI-native data platform company, unveiled two new WEKApod™ data platform appliances : the WEKApod Nitro for large-scale enterprise AI deployments and the WEKApod Prime for smaller-scale AI deployments and multi-purpose high-performance data use cases. WEKApod data platform appliances provide turnkey solutions combining WEKA® Data Platform software with best-in-class high-performance hardware to provide a powerful data foundation for accelerated AI and modern performance-intensive workloads.

The WEKA Data Platform delivers scalable AI-native data infrastructure purpose-built for even the most demanding AI workloads, accelerating GPU utilization and retrieval-augmented generation (RAG) data pipelines efficiently and sustainably while providing efficient write performance for AI model checkpointing. Its advanced cloud-native architecture enables ultimate deployment flexibility, seamless data portability, and robust hybrid cloud capability.

Also Read: Multiverse Computing Expands to the U.S. with New San Francisco Office

WEKApod delivers all the capabilities and benefits of WEKA Data Platform software in an easy-to-deploy appliance ideal for organizations leveraging generative AI and other performance-intensive workloads across a broad spectrum of industries. Key benefits include:

WEKApod Nitro: Delivers exceptional performance density at scale, delivering over 18 million IOPS in a single cluster, making it ideal for large-scale enterprise AI deployments and AI solution providers training, tuning, and inferencing LLM foundation models. WEKApod Nitro is certified for NVIDIA DGX SuperPOD™. Capacity starts at half a petabyte of usable data and is expandable in half-petabyte increments.

WEKApod Prime: Seamlessly handles high-performance data throughput for HPC, AI training and inference, making it ideal for organizations that want to scale their AI infrastructure while maintaining cost efficiency and balanced price-performance. WEKApod Prime offers flexible configurations that scale up to 320 GB/s read bandwidth, 96 GB/s write bandwidth, and up to 12 million IOPS for customers with less extreme performance data processing requirements. This enables organizations to customize configurations with optional add-ons, so they only pay for what they need and avoid overprovisioning unnecessary components. Capacity starts at 0.4PB of usable data with options extending up to 1.4PB.

“Accelerated adoption of generative AI applications and multi-modal retrieval-augmented generation has permeated the enterprise faster than anyone could have predicted, driving the need for affordable, highly-performant and flexible data infrastructure solutions that deliver extremely low latency, drastically reduce the cost per tokens generated and can scale to meet the current and future needs of organizations as their AI initiatives evolve,” said Nilesh Patel, chief product officer at WEKA. “WEKApod Nitro and WEKApod Prime offer unparalleled flexibility and choice while delivering exceptional performance, energy efficiency, and value to accelerate their AI projects anywhere and everywhere they need them to run.”

SOURCE: PRNewswire

Subscribe

- Never miss a story with notifications


    Latest stories

    spot_img