In 2026, organisations will progress beyond experimenting with AI, to relying on it to enhance various areas of business operations. The adoption of AI agents inIn 2026, organisations will progress beyond experimenting with AI, to relying on it to enhance various areas of business operations. The adoption of AI agents in

Running AI at scale: Why 2026 demands new data foundations

2026/02/15 22:02
6 min read

In 2026, organisations will progress beyond experimenting with AI, to relying on it to enhance various areas of business operations. The adoption of AI agents in the workplace will become a natural part of how work gets done by fast-tracking decision making, strengthening teamwork, and coordinating activities across multiple platforms. Every digital action executed in daily business operations will contribute to building a layer of intelligence that can push organisations to work more efficiently and operate with greater certainty and control.

However, as the usage of AI grows, so do expectations and stakes. Organisations can no longer depend on fragmented data practices, informal guidelines, or weak governance practices. They will require clear guardrails that explain how automated choices are made, what data they use, and how accuracy and dependability are maintained when humans and AI work together in tandem. The harsh reality at the core of this problem is that AI can’t scale reliably if it is based on data foundations created for yesterday’s technology.

Designing architectures fit for autonomous intelligence 

For years, organisations have operated with separate operational and analytical environments, relying on distinct systems to manage transactions on one side and insights on the other. This made sense when data volumes were modest and decision-making cycles allowed for delay. Today, it is one of the most significant barriers to scaling AI.

The longstanding operational systems (OLTP) / analytical systems (OLAP) divide creates duplication, latency, and fragility. Data moves back and forth between systems that were never designed to work together, introducing inconsistencies at the very moment organisations need absolute reliability. AI agents, which rely on the ability to reason over live organisational data, are constrained by architectures that cannot provide the immediacy or coherence they require.

This is why more organisations are now challenging the old model and moving toward data architectures where operational and analytical workloads share the same underlying data foundation. Enterprises will start dismantling legacy structures and adopting modern, consistent foundations that bring both workloads together. The result will be reduced complexity, stronger governance, and far more reliable data flows into AI systems. Most importantly, unification gives AI agents the low-latency, high-quality data they need to operate safely and autonomously. This is not an optimisation exercise. It is a prerequisite for AI that can deliver real time operational intelligence at scale.

Turning AI agents into everyday operations 

With these foundations in place, AI agents will move beyond experimental pilots and become embedded into everyday operations. They will support complex, multi-step tasks, reasoning across organisational data and interacting with systems in ways that feel increasingly natural. For many organisations, agents will become trusted participants in routine processes, augmenting human expertise.

This shift is becoming clear in data intensive industries where accuracy is critical. In life sciences, AI agents are being applied to large volumes of unstructured information that were previously difficult to analyse at speed. AstraZeneca has shown how agent-based approaches can be used to parse over 400,000 clinical trial documents, converting complex scientific data into structured inputs for analytics and downstream AI. The value lies not in automation alone, but in making trusted data usable without compromising rigour or control.

As AI becomes more entwined with core decision making, high accuracy and governance is critical. Errors in these environments are not far-fetched concepts — they carry operational, regulatory, and ethical consequences. Looking ahead, effectiveness will be shaped less by model size or sophistication and more by the ability to combine high-quality data, unified governance across data and AI, deep domain understanding and systems designed to prioritise accuracy over convenience.

Reskilling the workforce for AI-driven operations 

As AI systems take on greater responsibility, reliability will become the defining measure of success. Models that perform well in controlled environments can degrade quickly when exposed to live data and changing conditions. Without continuous evaluation and the ability to improve accuracy, trust in automated intelligence erodes.

In response, leading organisations are adopting evaluation first approaches, where AI agents are assessed continuously against real tasks and real feedback. New classes of agent development tools are emerging to support this shift, enabling teams to define an agent’s purpose and quality expectations in natural language, automatically generate task-specific evaluations and improve performance over time using enterprise data. This reduces reliance on trial and error – moving AI beyond one off deployment towards systems that can be monitored, refined, and continuously aligned with business needs as conditions evolve.

Alongside this, one of the most important shifts in 2026 will be the democratisation of AI education. The organisations that excel will not be those with the most complex models, but those with workforces prepared to collaborate confidently with AI. Most AI related roles of the future will be existing roles, reshaped by real time intelligence and automation, requiring practical, contextual training rather than deep technical expertise.

As unified architectures reduce the operational burden on data teams, employees across the business will find it easier to experiment, iterate and innovate. Upskilling goes beyond being a technical initiative, but also a cultural one that empowers people to work more effectively alongside intelligent systems.

Rebuilding organisations for speed, trust and autonomy 

The growing interplay between humans and AI will reshape how organisations operate. Bloated, disconnected SaaS stacks will begin to recede as companies move towards simpler, more unified platforms that offer clarity as well as efficiency.

Cloud strategies will evolve in parallel, with greater emphasis on control, agility, and transparent governance.

Organisations will start to resemble connected networks rather than rigid hierarchies. Small, focused teams supported by AI enabled systems working on reliable data, will move faster and solve problems more effectively. Decision making will become more distributed, and innovation cycles will shorten as AI is trusted not just as a tool, but as an active contributor to operational success. 

Why reliability, not scale, defines success 

In 2026, AI deployment will be the easy first step; the real difficulty will be maintaining its reliability as it becomes the focus point of everyday operations. Businesses will require intelligence that utilises real-time data and operates with clear governance to become systems that people can depend on, rather than experiment with.

Success will be determined by operational discipline rather than model ambition. Established foundations, regular evaluation in real-world settings, and people with the practical abilities to direct, question, and improve automated judgements as circumstances change are all vital for AI to deliver value.

With these aspects in place, AI begins to function as infrastructure rather than as a collection of projects. In a world that is becoming more and more agent-driven, decision-making accelerates, organisations adapt to change more rapidly, and intelligence becomes the durable advantage.

Market Opportunity
Particl Logo
Particl Price(PART)
$0.2388
$0.2388$0.2388
-1.36%
USD
Particl (PART) Live Price Chart
Disclaimer: The articles reposted on this site are sourced from public platforms and are provided for informational purposes only. They do not necessarily reflect the views of MEXC. All rights remain with the original authors. If you believe any content infringes on third-party rights, please contact service@support.mexc.com for removal. MEXC makes no guarantees regarding the accuracy, completeness, or timeliness of the content and is not responsible for any actions taken based on the information provided. The content does not constitute financial, legal, or other professional advice, nor should it be considered a recommendation or endorsement by MEXC.
Tags:

You May Also Like

Peso likely range-bound as market eyes BSP meet

Peso likely range-bound as market eyes BSP meet

THE PESO may move sideways against the dollar this week before an expected rate cut by the Bangko Sentral ng Pilipinas (BSP) and following the release of softer
Share
Bworldonline2026/02/16 00:02
SUI Price Eyes Breakout, Targets $11 Says Analyst

SUI Price Eyes Breakout, Targets $11 Says Analyst

The post SUI Price Eyes Breakout, Targets $11 Says Analyst appeared on BitcoinEthereumNews.com. SUI price shows a technical setup for a macro breakout with analyst Dan Gambardello targeting $10-$11 levels. Recent partnership with Google’s Agentic Payments Protocol adds fundamental support to the technical analysis as SUI moves closer to potential breakout levels. SUI Price Analysis Points to $10-$11 Breakout Target Dan Gambardello has identified a clear ascending triangle formation on SUI price daily chart with upside targets around $10.79. The analyst simplified this target range to $10-$11 for practical trading purposes. The pattern shows sustained higher lows meeting resistance at current levels before a potential breakout. VanEck maintains more aggressive SUI crypto targets ranging from $13-$25 according to Gambardello’s research. SUI Price Analysis | Source: Dan Gambardello, X The $10 level is a more conservative higher high area for the current cycle. Midterm targets point to $7.50 in the 1.618 Fibonacci extension zone before longer-term objectives. The monthly RSI shows extreme compression that Gambardello describes as “screaming for a macro breakout to the upside.” This momentum oscillator behavior typically precedes major price movements in the crypto market. SUI crypto risk model currently sits at 51 and matches pre-bull market levels seen in coins like Ethereum. Gambardello compared this to Ethereum’s December 2020 reading of 51 before its major breakout. The March 2017 Ethereum reading of 53 preceded that cycle’s parabolic move. The analyst also noted that SUI price trades near the same levels from almost a year ago in November 2024. Bollinger Bands Signal Historic Compression CryptoBullet has identified the tightest Bollinger Bands in SUI’s entire trading history on the weekly chart. The BBW indicator compression reached levels that were historically followed by major price movements. This setup mirrors conditions before SUI’s previous major rallies. Historical data shows SUI price delivered +253% gains between December 2023 and March 2024 following similar compression. SUI…
Share
BitcoinEthereumNews2025/09/18 11:32
Scaramucci Says Trump Memecoins Drained Altcoin Market, Yet Sees Bitcoin Reaching $150,000 by Year-End ⋆ ZyCrypto

Scaramucci Says Trump Memecoins Drained Altcoin Market, Yet Sees Bitcoin Reaching $150,000 by Year-End ⋆ ZyCrypto

The post Scaramucci Says Trump Memecoins Drained Altcoin Market, Yet Sees Bitcoin Reaching $150,000 by Year-End ⋆ ZyCrypto appeared on BitcoinEthereumNews.com.
Share
BitcoinEthereumNews2026/02/16 02:02