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Microsoft CTO Kevin Scott on How Far Scaling Laws Will Extend

Training Data

NOTE

Embrace Parallelism to Optimize Computation

Advancements in hardware architecture and networking are enabling greater parallelism in computation, highlighting the necessity for multi-GPU and multi-compute node environments for both training and inference. As models evolve beyond single GPU capabilities, innovation in networking facilitates efficient integration of computational resources at various levels within data centers. Despite the challenges of power density and cooling since 2012, inference and training require distinct architectural considerations. Inference can be more straightforward than training, necessitating tailored environments that can take years to establish.

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