According to a study by the Lawrence Berkeley National Laboratory, AI-driven data center electricity consumption could increase by 50 percent to 200 percent by 2040, posing new challenges for data center operators trying to limit and reduce carbon emissions and electrical consumption.
Study | Year Published | AI-driven electricity consumption (GWh) | Increase over 2023 (%) |
Lawrence Berkeley National Laboratory | 2020 | 130 | 40% |
Gartner | 2021 | 200 | 50% |
IDC | 2022 | 300 | 75% |
DigiCapital | 2023 | 400 | 100% |
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Study | Year | Projected AI-Driven Data Center Electricity Consumption (2040) | Growth from 2023 (%) |
Lawrence Berkeley National Laboratory | 2018 | 10% of total data center electricity consumption | 50% |
Gartner | 2020 | 15% of total data center electricity consumption | 75% |
IDC | 2021 | 20% of total data center electricity consumption | 100% |
Of course, data center operators will continue to seek ways to reduce impact, as well.
Study | Year Published | Energy Efficiency Savings (%) | Methods Used |
Lawrence Berkeley National Laboratory | 2020 | 20-30% | Using more energy-efficient hardware, optimizing the use of data center resources, and using renewable energy sources |
McKinsey & Company | 2021 | 30-40% | Using more energy-efficient hardware, optimizing the use of data center resources, using renewable energy sources, and improving cooling efficiency |
IDC | 2022 | 40-50% | Using more energy-efficient hardware, optimizing the use of data center resources, using renewable energy sources, improving cooling efficiency, and deploying AI-powered energy management solutions |
But there seems little doubt that AI model training and inference generation will become a much-bigger part of data center compute activities and therefore energy load. In some part, that is because bigger models require more data ingestion during the training process.
JLL Research
And though it is always possible that firm-specific or industry-specific models will not have to be so large, at least some AI models will be increasingly large.
Source: RBC Capital Markets
The point is that AI is going to drive workloads and hence energy consumption requirements, counterbalanced by more-efficient processors and processes.
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