InfoTechTarget and Informa Tech's Digital Businesses Combine.

Together, we power an unparalleled network of 220+ online properties covering 10,000+ granular topics, serving an audience of 50+ million professionals with original, objective content from trusted sources. We help you gain critical insights and make more informed decisions across your business priorities.

AI Meets Storage: Comparing On-Prem, Cloud, and Hybrid Architectures Across the AI Lifecycle

Presented by

Bob Epstein, IBM; Rohan Mehta, Micron Technology; Erik Smith, Dell Technologies; Himabindu Tummala, Dell Technologies

About this talk

In today’s evolving IT landscape, selecting the right storage architecture is critical for optimal performance, scalability, data governance, and cost-efficiency. Furthermore, AI workloads have uniquely influenced how we meet these demands from our storage infrastructure. This webinar provides a technical deep dive into three fundamental storage deployment models – on-premises, cloud, and hybrid – examining their architectures and operational trade-offs through the lens of two key concepts: indirection (accessing data through mapping layers that provide flexibility and abstraction) and redirection (rerouting data requests to enable failover, load balancing, and optimized performance). We are going to take some of the key stages of AI lifecycle development as sample use-cases (such as data ingestion, preparation, training, inferencing, and retrieval) and compare how each storage model can serve these use-cases across varying access patterns, data volumes, and performance requirements. Attendees will gain a practical framework for aligning AI workloads with the most suitable storage architecture, balancing cost, scalability, and latency. Whether you are building AI infrastructure from scratch or optimizing existing deployments, this session will help you make informed decisions for AI-ready storage. Learning Objectives and Key Takeaways: • Introduction to the 3 different types of storage deployment models – on-prem, cloud, and hybrid • Trade-offs for each deployment model • Importance of indirection and redirection • Understand how AI-specific data types and access patterns (e.g., embeddings, checkpointing) influence storage performance and design • Evaluate trade-offs in latency, scalability, security, and cost when choosing storage for different stages of the AI pipeline • Gain a decision-making framework for selecting the right storage model based on workload characteristics and infrastructure goals
Data Center Management

Data Center Management

16859 subscribers118 talks
Best practices for achieving an efficient data center
With today’s pressures on lowering our carbon footprint and cost constraints within organizations, IT departments are increasingly in the front line to formulate and enact an IT strategy that greatly improves energy efficiency and the overall performance of data centers. This channel will cover the strategic issues on ‘going green’ as well as practical tips and techniques for busy IT professionals to manage their data centers. Channel discussion topics will include: - Data center efficiency, monitoring and infrastructure management; - Data center design, facilities management and convergence; - Cooling technologies and thermal management And much more
Related topics