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

How to Leverage AI Without Compromising Sustainability Goals

The total amount of digital data created globally is only set to rise due to the surge in AI-generated data. Patrick Smith of Pure Storage asks how businesses can maximize storing all that data in a financially and environmentally sustainable way.

Actions
5 min. read

Introduction

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

There’s no denying that Artificial Intelligence (AI) has become one of the fastest growing and largest areas of enterprise technology investment and innovation in recent years. Given there are so many practical applications for this technology, it’s no surprise that AI is supporting mainstream use cases, ranging from healthcare and life sciences to semiconductor and chip manufacturing, automotive, financial services, and beyond.

While generative AI tools such as ChatGPT have dominated the headlines in recent months, the reality is that AI has been present for a number of years. However, the latest wave of widely accessible generative AI tools is resulting in more machine generated data than ever before, and this is driving the unprecedented growth of unstructured data worldwide. In fact, IDC predicts that by 2025, the total amount of digital data created globally will rise to 175 zettabytes (from approximately 40 zettabytes in 2019). This estimate can actually be considered conservative, given the surge in AI-generated data we are seeing today. 

In a somewhat perpetual cycle, greater volumes of data and the acceleration of AI means a bigger opportunity for businesses to turn this information into actionable intelligence, to innovate faster than their competitors, increase customer satisfaction, streamline operations, and ultimately become a more successful company. However, just as we refine oil into useful products such as fuel and plastics, data must also be refined before it can provide value. This is where data analytics (increasingly AI-based) comes in.

Gartner® 2025 年魔力象限報告
Gartner® 2025 年魔力象限報告
公告
Gartner® 2025 年魔力象限報告

「執行力」與「願景完整性」兩大重要指標雙雙獲得最高的地位

Everpure 榮獲 Gartner® 2025 年企業級儲存平台魔力象限領導者,且在「執行力」與「願景完整性」兩大重要指標中雙雙獲得最高地位。

How can businesses succeed with AI projects?

In order to power AI, and AI-based data analytics, organizations need a flexible, reliable, performant, and perhaps most importantly, sustainable data storage infrastructure in place.

  1. Performance is key because AI relies on sending massive amounts of data into GPUs, over and over again. The faster organizations do that, the quicker and better results they get. AI resources (GPUs, data scientists) are expensive and in high-demand, so keeping them waiting on access to data can lead to a hefty bill. Just as important as feeding the GPUs, is accelerating the whole data preparation and curation workflows, helping to collect and process the data in the first place.
  2. Flexibility comes in as AI is easily the most rapidly evolving space in technology - tools, techniques, data-sets and use-cases are evolving every single day. As a result, it’s critical to invest in technology and infrastructure choices that are going to allow organizations to adapt to changes quickly.
  3. Enterprise reliability and controls are more important to organizations than ever with AI environments. These are mission critical environments, and any downtime can lead to exorbitant costs. As a result, availability and reliability are essential. Additionally, AI projects are often large sprawling projects and heavily automated. Having controls around quotas, security, and ease of management is critical. 
  4. Last but certainly not least is one of the planet’s most pressing concerns, sustainability.

Why do businesses need to run AI sustainability?

Current estimates have data centers accounting for between one to four percent of all global energy consumption. In fact, in some countries datacenter expansion has been halted because they cannot access adequate power. AI is not going anywhere, and overall it will be an overwhelmingly positive tool for humanity, helping us automate repetitive tasks, treat diseases more effectively, and better understand our world through weather and climate patterns. However, from an environmental perspective, it only adds to energy consumption and carbon footprint concerns. In the wake of this immense challenge and opportunity, building an efficient and sustainable technology infrastructure for AI is critical to mitigating global warming and the worst impacts of climate change.

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。

How can customers capitalize on AI in a sustainable way?

As data volumes grow and high performance becomes mainstream as a requirement for AI, sustainability concerns come to the fore. As these needs increase, so do costs in terms of power, cooling and the space to house equipment. In today’s context of soaring energy prices this is not only an environmental issue, but an operational and financial challenge for businesses too. 

Fortunately, some companies are designing and building products and delivering services that allow customers to dramatically decrease their own environmental footprints. For example, all-flash storage solutions are considerably more efficient than their spinning disk (HDD) counterparts. What’s more, flash storage is much better suited to running AI projects. 

This is because the key to results is connecting AI models or AI powered applications to data. To do this successfully you need lots of data, this data can’t be cold, and crucially data needs to be easily accessible, across silos and applications. This simply isn’t possible with HDD based storage underpinning your operations, all-flash is needed. 

To further bolster the adoption of sustainable technology choices, consider whether your organization has a sustainability officer, someone responsible for the company’s overall carbon footprint. Involve those stakeholders at the beginning of the process to ensure no stone goes unturned on your journey to sustainable AI.

FIGURE 1  The era of digital transformation changes a number of factors impacting storage reliability.

How can you prepare for success?

To prepare for a world in which ever-growing amounts of unstructured data will be the subject of much-increased use of AI analytics, companies will need storage in colossal volumes that offers rapid access and is efficient in sustainability terms.

Businesses should look for vendors with a roadmap for high density flash storage capacity that can handle workloads from the most performance-hungry to those currently categorized as secondary but which will gain in importance with the rise of constant AI processing. Companies should also evaluate vendor purchasing options that can build in seamless capacity and technology upgrades for years ahead. 

Lastly, organizations should look for all-flash storage providers that can demonstrate third-party verified ESG metrics, so that AI projects can be executed without damaging the environment, and their bottom line.

Actions
5 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.