Skip to Content
Dismiss
創新
專為 AI 打造的平台

整合式、自動化、可將資料轉化為高效情報。

深入了解
Dismiss
拉斯維加斯,6 月 16-18 日
Pure//Accelerate® 2026

探索如何完整釋放資料價值。 

立即報名

AI and Sustainability: Is There a Problem?

Dive into the natural tension between sustainability goals and AI innovation, and how flash storage can help you strike a balance.

Actions
4 min. read

Introduction

By Patrick Smith, VP, EMEA Field CTO, Pure Storage

AI can do more and more. Think of any topic and an AI or genAI tool can effortlessly generate an image, video or text. Yet the environmental impact of, say, generating a video by AI is often forgotten. For example, generating one image by AI consumes about the same amount of power as charging your mobile phone. A relevant fact when you consider that more and more organizations are betting on AI.  

After all, training AI models requires huge amounts of data, and massive data centers are needed to store all this data. In fact, there are estimates that AI servers (in an average scenario) could consume in the range of 85 to 134Twh of power annually by 2027. This is equivalent to the total amount of energy consumed in the Netherlands in a year.

The message is clear: AI consumes a lot of energy and will, therefore, have a clear impact on the environment. 

Does AI Have a Sustainability Problem?

To create a useful AI model, a number of things are needed. These include training data, sufficient storage space and GPUs. Each component consumes energy, but GPUs consume by far the largest amount of power. According to researchers at OpenAI, the amount of computing power used has been doubling every 3.4 months since 2012. This is a huge increase that is likely to continue into the future, given the popularity of various AI applications. This increase in computing power is having an increasing impact on the environment.

Organizations wishing to incorporate an AI approach should therefore carefully weigh the added value of AI against its environmental impact; while it's unlikely a decision maker would put off a project or initiative, this is about having your cake and eating it. Looking at the bigger picture and picking technology which meets both AI and sustainability goals. In addition to this, the underlying infrastructure and the GPUs themselves need to become more energy-efficient. At its recent GTC user conference, NVIDIA highlighted exactly this, paving the way for more to be achieved with each GPU with greater efficiency.

Reducing the Impact of AI on the Environment

A number of industries are important during the process for training and deploying an AI model: The storage industry, data center industry, and semiconductor industry. To reduce AI's impact on the environment, steps need to be taken in each of these sectors to improve sustainability.

聚焦於永續性與能源效率的圖像,可能隱含有環保友善的主題象徵。
聚焦於永續性與能源效率的圖像,可能隱含有環保友善的主題象徵。
報告

我們致力於推動企業責任文化

了解我們的環境、社會與管理 (ESG) 策略,以及營運、供應鏈與產品的重大貢獻影響。

The Storage Industry and the Role of Flash Storage

In the storage industry, concrete steps can be taken to reduce the environmental impact of AI. An example is all-flash storage solutions which are significantly more energy-efficient than traditional disk-based storage (HDD). In some cases, all-flash solutions can deliver a 69% reduction in energy consumption compared to HDD. Some vendors are even going beyond off-the-shelf SSDs and developing their own flash modules, allowing the array's software to communicate directly with flash storage. This makes it possible to maximize the capabilities of the flash and achieve even better performance, energy usage and efficiency, that is, data centers require less power, space and cooling.

Data Centers Power Efficiency

Data centers can take a sustainability leap with better, more efficient cooling techniques, and making use of renewable energy. Many organizations, including the EU, are looking at Power Usage Efficiency (PUE) as a metric -- how much power is going into a data center vs how much is used inside. While reducing the PUE is a good thing, it's a blunt and basic tool which doesn't account for, or reward, the efficiency of the tech installed within the data center.

Semiconductor Industry

The demand for energy is insatiable, not least because semiconductor manufacturers -- ,especially of the GPUs that form the basis of many AI systems -- are making their chips increasingly powerful. For instance, 25 years ago, a GPU contained one million transistors, was around 100mm² in size and did not use that much power. Today, GPUs just announced contain 208 billion transistors, and consume 1200W of power per GPU. The semiconductor industry needs to be more energy efficient. This is already happening, as highlighted at the recent NVIDIA GTC conference, with CEO Jensen Huang saying that due to the advancements in the chip manufacturing process, GPUs are actually doing more work and so are more efficient despite the increased power consumption.

Conclusion

It's been clear for years that AI consumes huge amounts of energy and therefore can have a negative environmental impact. The demand for more and more AI generated programmes, projects, videos and more will keep growing in the coming years. Organizations embarking on an AI initiative need to carefully measure the impact of their activities. Especially with increased scrutiny on emissions and ESG reporting, it's vital to understand the repercussions of energy consumption by AI in detail and mitigate wherever possible.

Initiatives such as moving to more energy efficient technology, including flash storage, or improving data center capabilities can reduce the impact. Every sector involved in AI can and should take concrete steps towards a more sustainable course. It is important to keep investing in the right areas to combat climate change!

Actions
4 min. read

We Also Recommend

您的瀏覽器已不受支援!

較舊版的瀏覽器通常存在安全風險。為讓您使用我們網站時得到最佳體驗,請更新為這些最新瀏覽器其中一個。

Personalize for Me
Steps Complete!
1
2
3
Continue where you left off
Personalize your Everpure experience
Select a challenge, or skip and build your own use case.
迎向未來的虛擬化策略

因應所有需求的儲存方案

任意規模皆可實行 AI 專案

資料管道、訓練、推論專用的高效能儲存裝置

防護資料遺失問題

保衛資料的網路彈性解決方案

降低雲端作業成本

Azure、AWS 與私有雲專用的高成本效益儲存裝置

加速應用程式與資料庫效能

低延遲儲存裝置,達成應用程式高效能

降低資料中心耗能與空間使用

高效資源運用的儲存裝置,改善資料中心運用率

Confirm your outcome priorities
Your scenario prioritizes the selected outcomes. You can modify or choose next to confirm.
Primary
Reduce My Storage Costs
Lower hardware and operational spend.
Primary
Strengthen Cyber Resilience
Detect, protect against, and recover from ransomware.
Primary
Simplify Governance and Compliance
Easy-to-use policy rules, settings, and templates.
Primary
Deliver Workflow Automation
Eliminate error-prone manual tasks.
Primary
Use Less Power and Space
Smaller footprint, lower power consumption.
Primary
Boost Performance and Scale
Predictability and low latency at any size.
What’s your role and industry?
We've inferred your role based on your scenario. Modify or confirm and select your industry.
Select your industry
Financial services
Government
Healthcare
Education
Telecommunications
Automotive
Hyperscaler
Electronic design automation
Retail
Service provider
Transportation
Which team are you on?
Technical leadership team
Defines the strategy and the decision making process
Infrastructure and Ops team
Manages IT infrastructure operations and the technical evaluations
Business leadership team
Responsible for achieving business outcomes
Security team
Owns the policies for security, incident management, and recovery
Application team
Owns the business applications and application SLAs
Describe your ideal environment
Tell us about your infrastructure and workload needs. We chose a few based on your scenario.
Select your preferred deployment
Hosted
Dedicated off-prem
On-prem
Your data center + edge
Public cloud
Public cloud only
Hybrid
Mix of on-prem and cloud
Select the workloads you need
Databases
Oracle, SQL Server, SAP HANA, open-source

Key benefits:

  • Instant, space-efficient snapshots

  • Near-zero-RPO protection and rapid restore

  • Consistent, low-latency performance

 

AI/ML and analytics
Training, inference, data lakes, HPC

Key benefits:

  • Predictable throughput for faster training and ingest

  • One data layer for pipelines from ingest to serve

  • Optimized GPU utilization and scale
Data protection and recovery
Backups, disaster recovery, and ransomware-safe restore

Key benefits:

  • Immutable snapshots and isolated recovery points

  • Clean, rapid restore with SafeMode™

  • Detection and policy-driven response

 

Containers and Kubernetes
Kubernetes, containers, microservices

Key benefits:

  • Reliable, persistent volumes for stateful apps

  • Fast, space-efficient clones for CI/CD

  • Multi-cloud portability and consistent ops
Cloud
AWS, Azure

Key benefits:

  • Consistent data services across clouds

  • Simple mobility for apps and datasets

  • Flexible, pay-as-you-use economics

 

Virtualization
VMs, vSphere, VCF, vSAN replacement

Key benefits:

  • Higher VM density with predictable latency

  • Non-disruptive, always-on upgrades

  • Fast ransomware recovery with SafeMode™

 

Data storage
Block, file, and object

Key benefits:

  • Consolidate workloads on one platform

  • Unified services, policy, and governance

  • Eliminate silos and redundant copies

 

What other vendors are you considering or using?
Thinking...
Your personalized, guided path
Get started with resources based on your selections.