The Unseen AI Disruptions for Power Grids: LLM-Induced Transients
Recent breakthroughs of large language models (LLMs) have exhibited superior capability across major industries and stimulated multi-hundred-billion-dollar investment in AI-centric data centers in the next 3-5 years. This, in turn, bring the increasing concerns on sustainability and AI-related energ...
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Zusammenfassung: | Recent breakthroughs of large language models (LLMs) have exhibited superior
capability across major industries and stimulated multi-hundred-billion-dollar
investment in AI-centric data centers in the next 3-5 years. This, in turn,
bring the increasing concerns on sustainability and AI-related energy usage.
However, there is a largely overlooked issue as challenging and critical as AI
model and infrastructure efficiency: the disruptive dynamic power consumption
behaviour. With fast, transient dynamics, AI infrastructure features ultra-low
inertia, sharp power surge and dip, and a significant peak-idle power ratio.
The power scale covers from several hundred watts to megawatts, even to
gigawatts. These never-seen-before characteristics make AI a very unique load
and pose threats to the power grid reliability and resilience. To reveal this
hidden problem, this paper examines the scale of AI power consumption, analyzes
AI transient behaviour in various scenarios, develops high-level mathematical
models to depict AI workload behaviour and discusses the multifaceted
challenges and opportunities they potentially bring to existing power grids.
Observing the rapidly evolving machine learning (ML) and AI technologies, this
work emphasizes the critical need for interdisciplinary approaches to ensure
reliable and sustainable AI infrastructure development, and provides a starting
point for researchers and practitioners to tackle such challenges. |
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DOI: | 10.48550/arxiv.2409.11416 |