The new DDN Enterprise AI HyperPOD | DDN at NVIDIA GTC DC with Joe Corvaia on The Ravit Show
DDN·2025-11-03 17:05

AI ROI and Business Outcomes - Achieving real AI ROI requires focusing on specific business outcomes and problem-solving [4][5] - Infrastructure planning is crucial for optimizing AI investments and achieving a greater return on invested capital [6] - Enterprises should clearly define measurable metrics to gauge the success of AI projects [21] Infrastructure as a Strategic Asset - Data infrastructure is a strategic asset that drives efficiency and optimization for AI projects [8][9] - Integrating infrastructure tightly into the ecosystem maximizes investments and drives ROI [9] - Early AI deployments sometimes overlook infrastructure efficiencies, leading to underutilization and wasted resources [10] Scaling AI Factories - DDN's new enterprise hyperpod, built with Super Micro and powered by NVIDIA, helps enterprises scale AI from pilot to exascale [11] - The Hyper Pod is a pre-engineered platform that simplifies AI inference tuning for various industries, sovereign clouds, and AI factories [11][12] - This platform enables scalable deployment and is optimized for high-performance, high-scale inference or tuning [12] Industry Impact of AI Infrastructure - Healthcare and life sciences benefit from AI in drug discovery, precision medicine, and genomics, improving physician efficiency and patient care [14] - Financial services leverage AI for algorithmic trading, fraud analytics, and risk management [14] - Other industries benefiting from AI include oil and gas, automotive (self-driving cars), and next-generation hyperscalers [15][16] Advice for Enterprise Leaders - Enterprise leaders should clearly define the outcomes they want to drive and the problems they aim to solve with AI [17][18] - Maximizing return on investment in infrastructure assets is essential, considering speed, performance, and utilization [18] - Enterprises should be mindful of their unique goals when deploying AI systems [20]