#186 Ronen Dar: Maximizing GPU Utilization for AI with Run:ai

Release Date:

This episode is sponsored by 1Password. 1Password combines industry-leading security with award-winning design to bring private, secure, and user-friendly password management to everyone. Companies lose hours every day just from employees forgetting and resetting passwords. A single data breach costs millions of dollars. 1Password secures every sign-in to save you time and money. Right now, my listeners get a free 2-week trial at:  https://www.1password.com/eyeonai In this episode of Eye on AI, join us as we explore the cutting-edge world of GPU optimization with Ronen Dar, CTO and co-founder of Run:ai.  Delve into the intricacies of managing and maximizing GPU utilization in an era marked by a severe GPU shortage. Ronen shares his insights on how Run:ai's innovative software is revolutionizing AI infrastructure, making GPU resources more efficient and accessible. The conversation spans the technical challenges of scaling AI models, the evolution of GPU demands from basic algorithms to complex systems like GPT-4, and the strategic innovations helping enterprises overcome these hurdles. Ronen also reflects on the future of AI development, predicting an exponential increase in demand for computational power and the innovative solutions poised to meet these needs. Tune in to uncover the technological advancements that are propelling AI capabilities forward and shaping the future of AI deployment across industries. Don't forget to like, subscribe, and hit the notification bell for more deep dives into the technologies that are transforming our digital landscape. Stay Updated: Craig Smith Twitter: https://twitter.com/craigss Eye on A.I. Twitter: https://twitter.com/EyeOn_AI (00:00) Preview (02:46) Introducing Ronen Dar (04:00) Ronen's background and RunAI's origins (09:13) The need for efficient GPU utilization in AI (13:14) RunAI's core value proposition (15:33 RunAI's deployment model (18:55) The growing demand for compute power and GPUs (22:08) Challenges in scaling models beyond 70 billion parameters (27:52) RunAI's open platform approach (31:00) Addressing latency and throughput challenges in inference (34:36) RunAI's integration with AI tools and frameworks (39:37) Reducing the cost of inference with GPU virtualization (43:54) Challenges in auto-scaling for large language models (47:06) The future of the GPU market and demand (50:49) NVIDIA's dominance and the role of competitors like Cerebras (54:20) RunAI's global customer base and demand patterns (57:52) NVIDIA's vision and the evolution of GPU architectures (01:01:25) Compute requirements for the metaverse and future AI applications (01:03:56) Concerns about power consumption and carbon footprint

#186 Ronen Dar: Maximizing GPU Utilization for AI with Run:ai

Title
Reorganizing DoD for the AI Future
Copyright
Release Date

flashback