Discover how organizations worldwide are implementing AI across multiple infrastructure venues in this AI Workload Strategies 2025 report, commissioned by Telehouse.
Workloads are widely distributed across venues, with 76% of AI workloads currently hosted in the cloud or in different types of data centres
Over half have experienced significant network issues, and 39% have had to halt AI projects altogether because of networking issues.
More than 90% of organizations view access to cloud on-ramps as critical or quite important to AI/ML architecture
Top worries include data centre-to-cloud networking, moving data for training and inferencing, and effectively streaming high volumes of information.
Over 40% of industry verticals – including media and entertainment, telecoms, electricity and oil/gas, are adopting colocation to host their AI/ML workloads
Interested in understanding AI’s impact on infrastructure planning and data movement? This detailed report covers the key considerations for infrastructure planning and data movement from model retraining frequency to networking bottlenecks. Gain insights on how organisations are balancing performance, cost, and compliance as AI workloads mature.
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