AI’s growing demand for resources is unsustainable. NTT DATA paper calls for action and offers solutions

     A new white paper from NTT DATA, a global leader in AI, digital  business and technology services, highlights the urgent need to embed sustainability into every  layer of AI development and deployment to counteract the technology’s environmental impact.  Deploying innovative solutions for sustainable AI is a corporate responsibility and a strategic  opportunity to create lasting value, build organisational strength and consume fewer essential  resources.

    Photo for illustration purposes only | Photo by Bhautik Patel/Unsplash/NHA File Photo

    The new paper, Sustainable AI for a Greener Tomorrow, illustrates the growing environmental  impact of AI and outlines a path to sustainable innovation. The technology requires enormous  volumes of electricity to support surging computational demands to train large language models,  run inference pipelines and maintain always-on services. Researchers predict AI workloads will  drive more than 50 per cent of data centre power consumption by 2028. Other primary environmental 

    impacts include water consumption for data centre cooling systems, e-waste and rare earth  mineral extraction for hardware production.  

    “The resource consequences of AI’s rapid growth and adoption are daunting, but the technology  also can empower innovative solutions to the environmental problems it creates,” said David  Costa, Head of Sustainability Innovation Headquarters, NTT DATA. “AI’s amazing capabilities  can help manage energy grids more efficiently, reduce overall emissions, model environmental  risks and improve water conservation. It’s vital for organizations to recognize the challenge and  build sustainability into AI systems from the start.” 

    Key Insights 

    • Expand From Performance to Green Priorities: NTT DATA’s AI experts and  sustainability consultants urge the use of holistic sustainability goals, not just conventional  AI performance metrics such as accuracy and speed. Efficiency must be prioritized, not  as a trade-off, but as a core design principle. 
    • Quantify Environmental Impact: AI’s energy consumption, carbon emissions and water  footprint need standard and verifiable metrics. Industry benchmarks such as the “AI  Energy Score” and “Software Carbon Intensity (SCI) for AI offer ways to embed  sustainability into governance, procurement and compliance protocols. 
    • Lifecycle-Centric Approach: Sustainable AI requires lifecycle thinking, from raw material  extraction and hardware production to system deployment and ultimate disposal.
    • Shared Accountability Across the Ecosystem: Responsibility is widely distributed,  encompassing hardware manufacturers, data center operators, software developers,  cloud providers, policymakers, investors and consumers. Cross-sector cooperation is  essential for systemic change.

      Barriers and Best Practices 

      Today, fragmented assessments and inconsistent metrics frequently prevent meaningful  benchmarking. Many organisations focus narrowly on energy or emissions without considering  water usage, rare material depletion and e-waste. These and other factors must be addressed  comprehensively. Even when environmental goals are set, organisations often lack actionable  methods to apply sustainability at every stage of the AI lifecycle. 

      To address these and other concerns, the report outlines numerous best practices, including: 

      • Applying green software engineering patterns to reduce resource consumption
      • Running AI workloads in locations and at times that align with renewable energy  availability 
      • Leveraging remote GPU Services and on-premises AI 
      • Reducing e-waste by prioritising modular and upgradable components, and extending  hardware lifespans through refurbishment, reuse and responsible recycling

       

    While the road to sustainable AI is complex, an intentional, end-to-end redesign of the AI lifecycle  can help fulfill this technology’s positive potential while protecting the environmental systems on  which all living things depend.

    Source: NTT DATA (Press Release)