The energy usage of datacentres, particularly for AI applications, has been covered extensively – and for good reason. AI consumes more power and runs hotter thanThe energy usage of datacentres, particularly for AI applications, has been covered extensively – and for good reason. AI consumes more power and runs hotter than

Pipe flow to datalakes: How AI can streamline its water and energy usage

The energy usage of datacentres, particularly for AI applications, has been covered extensively – and for good reason. AI consumes more power and runs hotter than standard computing loads. In 2022, the IEA reported that the total power used by datacentres, including for AI and cryptocurrency, was around 460TWh.  

Although estimates see this power usage potentially grow to 945TWh by 2030, electric vehicles are predicted to consume around 780TWh by 2030, to put this in context. When we look at AI specifically, Schneider Electric has estimated that AI’s share of this power consumption is currently around 8% and may grow to 15-20% by 2028.  

These estimates are still prone to be too high. Koomey’s Law tells us that over time, we see greater efficiencies in computing – or specifically, that the number of calculations per unit of energy increase over time. For example, between 2010 and 2018, the amount of computing being done in datacentres increased by over 500%, but the amount of energy being used only increased by 6%.  

However, although the amount of energy used by AI is considerable, it can also return the favour.  

AI: Water and Chips with that?  

AI’s contribution to human endeavor is already significant. Perhaps the most high-profile example is AlphaFold, which helps us predict protein structures, improving drug discovery and our understanding of diseases.  

But we’ve seen many other applications, including improving chili yields in India, reducing conflict between humans and snow leopards, or supporting better risk modelling for insurance companies.  

AI lives in the cloud, so the most logical place to use AI to reduce water usage is the datacentre. Datacentres have historically been cooled with air conditioning. With AI’s workloads, cloud companies are rapidly realizing that air is insufficient, and the future will revolve around using liquid cooling.  

The reason for this is simple: the thermal conductivity of water is about 23 times better than air, and when you consider additional factors like flow rate, water’s volumetric heat capacity is over 3000 times better than air when used in an industrial setting.  

On this basis alone, it’s a no-brainer to use water to cool technology infrastructure. Better conductivity means more power efficiency, and ultimately, less power used to remove more heat.  

And we’re still seeing innovation in this field. Historically, cloud companies and gamers alike have attached plates to CPUs (and often, GPUs) and used water to remove the heat. This is known as direct liquid to chip cooling.  

We are now starting to see immersive cooling techniques emerge, where the entire server is immersed in fluid. Although this has a number of implications for unit maintenance, servers immersed in fluid are not only more power-efficient, but it also eliminates dust from units, improving component lifespans.  

So how do we use AI to further improve this efficiency?  

Air, water and changing priorities 

AI’s core strength lies in pattern recognition, analysing complex data sets and finding links. Most servers have the ability to measure their own workloads and temperatures, and this data can be fed back to data lakes where AI systems can learn how to optimise cooling and power requirements.  

However, sensors can also be put on the servers themselves, measuring water flow and consequently obtaining more information about a server’s temperature and cooling requirements.  

It’s important to remember that cloud servers don’t exist in isolation. Local weather affects cooling: many datacentres use ‘free air cooling’ and use ambient temperature to cool the servers – this is more effective in Iceland than in Florida, for example. At the same time, most datacentres use dry coolers outside to do evaporative cooling – but this is less effective in areas of high humidity.  

Balancing these equations is where AI excels. AI can analyse not only the temperature and power consumption of the servers, but also the environment around them, including data from weather stations. This helps to react to local conditions, but also to predict them and streamline water usage now and in the future.  

Conversely, the datacentre may not be in an area of water scarcity, in which case, AI can be tailored to optimise the server performance or the power usage of the pumps and other equipment. Datacentres in urban areas may prioritise noise reduction to avoid disturbing local residents – which AI can also help with, optimising systems to decrease volume from mechanical operations.  

Self-optimising technologies 

The technology industry is always moving forwards, and although the AI industry has seen a considerable amount of backlash, it also has considerable potential to improve our lives and the world around us. However, we should always have sustainability in mind, considering how to provide for today’s needs while still safeguarding the world of tomorrow.  

This does require a complex conjunction of worlds: AI needs data to operate, which means using a combination of IoT and industrial expertise alongside data analysis techniques. But with the right skills, vision and commitment, we can not only benefit from AI directly, but also use it to streamline its own resource consumption, driving a self-improving virtuous circle.  

Market Opportunity
Pipe Network Logo
Pipe Network Price(PIPE)
$0.06463
$0.06463$0.06463
+1.92%
USD
Pipe Network (PIPE) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact [email protected] for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.

You May Also Like

Ethereum Options Expiry Shows Risks Below $2,900

Ethereum Options Expiry Shows Risks Below $2,900

The post Ethereum Options Expiry Shows Risks Below $2,900 appeared on BitcoinEthereumNews.com. Ether (ETH) has been unable to sustain prices above $3,400 for the
Share
BitcoinEthereumNews2025/12/25 10:24
Fed forecasts only one rate cut in 2026, a more conservative outlook than expected

Fed forecasts only one rate cut in 2026, a more conservative outlook than expected

The post Fed forecasts only one rate cut in 2026, a more conservative outlook than expected appeared on BitcoinEthereumNews.com. Federal Reserve Chairman Jerome Powell talks to reporters following the regular Federal Open Market Committee meetings at the Fed on July 30, 2025 in Washington, DC. Chip Somodevilla | Getty Images The Federal Reserve is projecting only one rate cut in 2026, fewer than expected, according to its median projection. The central bank’s so-called dot plot, which shows 19 individual members’ expectations anonymously, indicated a median estimate of 3.4% for the federal funds rate at the end of 2026. That compares to a median estimate of 3.6% for the end of this year following two expected cuts on top of Wednesday’s reduction. A single quarter-point reduction next year is significantly more conservative than current market pricing. Traders are currently pricing in at two to three more rate cuts next year, according to the CME Group’s FedWatch tool, updated shortly after the decision. The gauge uses prices on 30-day fed funds futures contracts to determine market-implied odds for rate moves. Here are the Fed’s latest targets from 19 FOMC members, both voters and nonvoters: Zoom In IconArrows pointing outwards The forecasts, however, showed a large difference of opinion with two voting members seeing as many as four cuts. Three officials penciled in three rate reductions next year. “Next year’s dot plot is a mosaic of different perspectives and is an accurate reflection of a confusing economic outlook, muddied by labor supply shifts, data measurement concerns, and government policy upheaval and uncertainty,” said Seema Shah, chief global strategist at Principal Asset Management. The central bank has two policy meetings left for the year, one in October and one in December. Economic projections from the Fed saw slightly faster economic growth in 2026 than was projected in June, while the outlook for inflation was updated modestly higher for next year. There’s a lot of uncertainty…
Share
BitcoinEthereumNews2025/09/18 02:59
Arizona Senator Proposes Exempting Bitcoin and Crypto from Taxes

Arizona Senator Proposes Exempting Bitcoin and Crypto from Taxes

Understanding the specific tax exemption proposal's scope, mechanics, and limitations provides foundation for evaluating feasibility and implications. The exemption presumably covers capital gains taxes on cryptocurrency appreciation at state level, though personal income tax and corporate tax treatment requires clarification. Scope questions include whether exemption applies to trading profits, mining income, staking rewards, DeFi yields, NFT sales, and business cryptocurrency revenue.
Share
MEXC NEWS2025/12/25 11:47