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Pure Storage: Industrial AI, Shift to RAG Shaping APJ’s Business, IT Environments in 2025

New year, new directions for APJ-Based Businesses

Pure StorageĀ®, the IT pioneer that delivers the world’s most advanced data storage technology and services, has shared its outlook for 2025.

While Artificial Intelligence (AI) will continue to shape the technology landscape in Asia Pacific and Japan region (APJ), 2025 will bring significant shifts in the way that organisations invest and utilise AI as the region moves towards a more mature AI environment. Pure Storage also expects sustainability to return to becoming a top three priority for companies while cybersecurity strategies move towards data protection.

Pure Storage’s Predictions for 2025

Here are Pure Storageā€™s predictions for the coming year:

Industrial AI will take off as the next AI wave in 2025.

Next year will see the next wave in this current AI revolution. Market observers estimate that most GPUs deployed are currentlyĀ severely underutilised. Additionally,Ā the majority of GPUsĀ are deployed in a handful of companies, including the hyperscalers, with very few in private enterprises.

This will shift in 2025, as enterprises bring much of the AI capability in-house to extract even more value out of their data and “industrialise” AI. Pure Storage calls this Industrial AI, which brings its own set of challenges including governanceā€”specifically around how to train the models with proprietary data that needs to be kept confidential even between departments. Agentic AI and Large Quantitative Models (LQMs) will play a key role in this wave.

Machine Learning and Agentic AI will transform decision-making in enterprises in 2025.

While Pure Storage expects Agentic AI to only become mainstream from 2026 onwards, it nonetheless sees agentic systems changing the way AI is used for decision-making in enterprises next year. Additionally, enterprises will unlock more value from Machine Learning in allowing them to analyse complex datasets, identify patterns, and act with velocity. Streamlining laborious and manual tasks such as data modelling will allow enterprises to solve more challenges with greater speed, while scaling and enabling faster iteration and product evolution.

Use cases will be more internally focused than GenAI, with interest coming from large IT organisations in companies such as banks and telcos with complex infrastructure environments. With machine learning and Agentic AI, seamless and rapid access to the right decision-making data becomes increasingly critical.

Enterprise spend on AI will rise dramatically in 2025, pivot towards grounded approaches such as RAG.

Paradoxically, in dollar terms, enterprise investments in AI will increase in 2025 while the total number of GenAI proof of concepts (POCs) and pilots will decline. In 2024, the failure rate for POCs was higher than anticipated as they failed to deliver on expectations, or were not economically viable when scaling from the training phase to the inference phase.

Rather than an AI reckoning, enterprises will move toward a renewed focus on fundamental business values and practical AI. Generic, off-the-shelf AI solutions like ChatGPT are set to decline in enterprise use as trust concerns over output reliability increase. In 2025, organisations will increasingly pivot to grounded approaches leveraging techniques like Retrieval-Augmented Generation (RAG).

This shift will reflect a deeper commitment to AI transparency and ethics, with a preference for context-aware systems that mitigate data biases and inaccuracies. Pure Storage estimates that demand for RAG will surge, particularly in fields like healthcare and financial services, where real-time data integration and contextually accurate responses are critical for nuanced understanding and decision-making.

The value of data will be thrust back into the spotlight in 2025 as organisations seek better outcomes from AI and analytics investments.

One of the key learnings from 2023 and 2024 is that a less sophisticated algorithm powered by a large dataset will outperform a more sophisticated algorithm accessing a smaller dataset. Armed with this knowledge, enterprises in 2025 will undertake projects to free-up siloed and locked-up datasets in the quest to improve the output of their analytics and AI investments.

This emphasis on data unification will also reflect a broader understanding of data’s strategic importance in driving innovation and maintaining a competitive edge. As organisations aim to harness the full potential of AI and analytics, they will prioritise initiatives that enhance data quality, streamline access, and foster collaboration among teams. Ultimately, this focus on unifying internal datasets will pave the way for more informed decision-making, improved customer experiences, and sustainable growth.

Sustainability will return to the top three of corporate priorities as we approach the first milestone of 2030.

The year 2030 is a milestone that many companies set to meet sustainability targetsā€“targets that have been put on the backburner due to AI FOMO of the past couple of years. Governments and regulatory organisations are intensifying efforts to mandate companies to meet their sustainability obligations. Enterprises will now have to prioritise energy-efficient technology solutions in order to meet those obligations.

Cybersecurity strategies shift to data protection.

Cybersecurity strategies in 2025 will move towards data protection, as organisations come to terms with being attacked no longer a question of if but when. Several factors are driving this shift in strategy: cybercriminal capabilities being enhanced by AI; increased national legislation; and more stringent compliance requirements from regulatory authorities. When GenAI was first introduced, we saw how ChatGPT was used to improve the quality of phishing emails. Cybercriminals have become even more sophisticated today, using recursive AI to find vulnerabilities in their target’s IT infrastructure.

Organisations that fail to adapt to this AI-driven threat landscape risk severe financial losses, reputational damage, and potential business failure. Proactive investment in advanced cybersecurity measures and recovery strategies will be crucial for survival in the face of these evolving threats. Having a data protection strategy gives organisations a means of resuming business operations quickly in the event of an attack.

Executive Insight from Pure Storage

“The technology landscape is moving fast which makes having a flexible and agile IT infrastructure all the more important. The continuous innovation in the Pure Storage platform ensures that we stay on top of the developments in AI, sustainability and cyber security. The design win with the top four hyperscaler that we announced last week is conclusive proof that our platform can support all workloads, including AI, at the largest scales,”Ā said Nathan Hall, Vice President and General Manager, Asia Pacific and Japan, at Pure Storage.

“2025 will mark a turning point as organisations refine their AI strategies to achieve tangible results and navigate the complexities of a maturing AI landscape. We can expect take-up for RAG andĀ data unification technologies to soar, as organisations place a premium on data integrity, ethics, and sustainability,” addedĀ Matthew Oostveen, Vice President and Chief Technology Officer, Asia Pacific and Japan, at Pure Storage.

DSA Editorial

The regionā€™s leading specialist IT news publication focused on Data Lifecycle, Storage Infrastructure and Data-Driven Transformation. DSA has nearly 17,000 e-news subscribers, over 6500 unique visitors per day, over 20,000 social media followers and a reputation for deep domain knowledge.

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