KPMG Experts: AI Helps Cut Energy Waste by Up to 30% Within Strategic Energy Management Framework

Author:
KPMG

Date
09/15/2025

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KPMG reinforced the fact that buildings waste energy even after costly upgrades. But there’s a solution: Strategic Energy Management (SEM), a model that turns energy and emissions from long-term goals into day-to-day tasks backed by AI, should be used t

KPMG

Outdated hardware isn’t the issue, but bad management is, experts reveal

­KPMG has recently released a report on “How AI is helping to improve energy efficiency and management in real estate.” It says that traditional retrofits are too slow and costly to deliver the scale of cuts required to reach net-zero goals of 2050, and instead points out that artificial intelligence is a faster route, but only together with the Strategic Energy Management (SEM) framework.

Exergio, a company that developed an AI-based tool for energy efficiency in commercial buildings, says that findings reflect what is already visible in real-world cases.

“AI is already helping buildings cut waste by 20-30% in our projects, no matter the climate or the age of the property,” said Donatas Karčiauskas, CEO of Exergio. “But those savings only last if there’s smart energy management behind them. That’s exactly the point KPMG makes, efficiency isn’t a one-off upgrade, it’s how you run the building day after day.”

KPMG states that SEM should track how buildings use energy and assign clear responsibility for fixing problems. According to Karčiauskas, this usually means facility managers or energy officers are tasked with day-to-day oversight. However, certain tasks such as changing parameters in sensors should be automatically assigned to AI and machine learning models to adjust in real-time, with experts overseeing the process.

On its own, implementing a SEM mindset typically delivers 5-7% savings per year. But when used with AI, they rise to around 20%-30% state energy efficiency experts.

There are three tiers of SEM, according to the report. The first tier focuses on getting more out of what is already in place: engineers have to tune HVAC, lighting, and control systems so they run more efficiently day to day. This, according to Karčiauskas, is “a task of AI at the moment as we want to achieve faster savings”.

The second step is replacing worn or outdated equipment, for instance, boilers, chillers, or pumps, with models that use less energy. The third adds renewables or long-term power contracts, but only once the building’s basic energy consumption has been brought under control.

The authors of the paper stress that renewables should come last, since they deliver limited value if the building’s consumption has not already been optimised.

The study also indicates that efficiency depends less on new hardware and more on how existing systems are managed.

“What’s missing is a culture of active energy management. SEM lays down the rules, and AI keeps the systems running to them minute by minute, with people still in control,” continued Karčiauskas.

SEM has a five-step cycle. It includes assessment, planning, implementation, building capability, and monitoring. Within this setup, AI could regulate HVAC concurrently based on occupancy, weather, and usage, while managers define energy-saving goals, set comfort ranges, and review results.

“We used the same approach before it was called SEM – simply because it made sense, and that’s where everyone should focus on. Our platform connects to the building's energy management systems and uses metrics such as sensor data and occupancy patterns to adjust HVAC simultaneously. That’s how efficiency becomes a continuous management task, not something postponed until the next renovation. It reflects what KPMG calls ‘human-centric AI’ that supports transparency and trust,” concluded Karčiauskas.

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