As an industry analyst, I’ve had a front-row seat to the dramatic changes sweeping through the IT services sector. Recently, I reviewed the changes at many service providers, and it struck me just how quickly agentic AI and automation are reshaping the way service providers operate and deliver value.

It’s clear to me that the old ways of relying on billable hours and armies of consultants are fading fast. Clients today want more than just advice or manpower; they’re looking for outcomes, speed, and transparency.

There’s a growing sense that innovation is lacking from traditional providers, and that’s a wake-up call for the industry.

I’ve watched as leading service providers have started to restructure, reducing headcount and doubling down on AI and automation. It’s not just about efficiency, it’s about survival. The pricing models are shifting too, with clients demanding more value and less dependence on time and materials. This is a fundamental change in how services are bought and sold.

What excites me most is the rise of agentic AI across the service delivery chain. We’re seeing AI agents embedded everywhere—from onboarding and compliance to diagnostics and insights. The case studies being highlighted are compelling: AI-augmented consultants and outcome-based services aren’t just buzzwords—they’re delivering real results, like double-digit sales growth and significant cost reductions.

But this transformation isn’t just about technology. It’s about a new value equation, where continuous delivery, co-creation, and data-driven insights matter more than ever. Clients want stewardship, not just service. They want partners who can help them navigate complexity and deliver tangible business outcomes.

Looking ahead, I believe the journey to agentic AI maturity will be a defining story for our industry.

For providers, the challenge is clear: invest in shared platforms, rethink financial and talent models, and build trust through robust risk management.

As I reflect on these changes, I’m convinced that those who embrace agentic AI and orchestrated value will be the ones who thrive. The future of IT services is not just about agentic technology—it’s about reimagining how we deliver outcomes, build relationships, and create lasting impact for clients.

Get Ahead of the Curve: Attend IDC FutureScape Technology and AI Predictions in Singapore

If you’re a leader in services, now is the time to rethink your strategies—before AI forces the change for you. Join IDC and industry peers to gain exclusive insights from our 2026 technology and AI predictions for Asia/Pacific and catch my presentation on how AI is reshaping the services landscape to prepare organizations for the agentic era.

Linus Lai - Group Vice President, Research - IDC

Linus Lai is a distinguished member at IDC Asia/Pacific, in which he spearheads research in digital business, trust, infrastructure, and services. With over 25 years of industry experience, Linus is based in Sydney and serves as the chief analyst for Australia and New Zealand (ANZ). He is a founding member of IDC's Emerging Technology Advisory Council and a respected senior member of the region's CIO100, CSO, and Future Enterprise awards. In his role, Linus provides strategic insights for digital leaders and the technology sector, focusing on sourcing strategies and emerging technology across Asia/Pacific. His expertise has earned him numerous accolades for his contributions to country, regional, and quality research. Previously, as the head of research in Southeast Asia, Linus was instrumental in expanding IDC's presence and influence in the region. His thought leadership is frequently sought after through regular features in various publications and media outlets. He is also a prominent speaker at industry forums, keynote events, and strategy workshops. Before joining IDC, Linus worked with a leading outsourcing service provider with a digital banking focus. He holds a Master of Science degree from the University of Lincoln, United Kingdom.

As organizations advance deeper into the age of agentic AI, productivity gains are no longer enough. The next era of enterprise value will be defined by innovation, the ability to reimagine business models, uncover new revenue streams, and achieve outcomes once out of reach.

IDC’s FutureScape 2026 research signals this shift. After years of experimentation, AI has become a structural force of transformation. IDC believes that the enterprises that lead in the coming decade will use agentic AI to go beyond automation and embrace it for invention.

The new forces shaping enterprise growth

The landscape for 2026 and beyond is being redefined by several powerful currents. Trusted, high-quality data has become the foundation of every scalable AI initiative. Without it, decision-making falters and innovation is constrained. At the same time, organizations face mounting pressure to modernize legacy systems that hold back agility and increase costs.

Workforce transformation is just as important. AI is now woven into daily work, demanding role redesign, new skills development, and change management focused on helping people thrive alongside intelligent systems.

Meanwhile, trust, ethics, and transparency have become central to every AI strategy. Regulatory scrutiny is rising, and customers expect greater empathy and accountability from intelligent systems. Security and compliance remain top priorities as digital threats evolve. Together, these factors define how enterprises plan, invest, and compete in the years ahead.

The innovation imperative

While much of the focus on AI use cases to-date has been on cost savings and incremental productivity enhancements, IDC predicts that by 2026, 70% of G2000 CEOs will focus AI ROI on growth, driving C-suites to reinvent business models without expanding headcount

Agentic AI expands human capacity for exploration and experimentation, allowing organizations to model complex scenarios, synthesize data across ecosystems, and identify new opportunities in real time.

This acceleration signals that innovation, not efficiency, will become the defining competitive advantage.

The new currency of growth

In the agentic era, innovation becomes a measurable advantage. IDC predicts that enterprises using AI-driven development will release products and services up to 400% faster than their peers.

This acceleration reshapes how organizations capture opportunity, from R&D and financial modeling to supply-chain optimization, compressing timelines and amplifying creativity.

Innovation across industries

In manufacturing and operations, agentic systems are transforming how organizations design, produce, and deliver.

Manufacturers are using AI agents to simulate production scenarios, manage sustainability goals, and anticipate disruptions, creating more resilient, adaptive enterprises capable of continuous innovation.

The future of work is evolving in parallel. By 2029, G1000 organizations that measure human–AI collaboration will achieve operating margins up to 15% higher than those focused solely on automation. Leading enterprises will see employees as innovators working with AI, blending curiosity and computational power to accelerate product development, experience design and process reinvention.

Innovation anchored in trust

Trust is becoming an increasingly important element of the AI-fueled business. CEOs consistently point to trust as being critical focus area for business success. As AI systems gain autonomy, governance, transparency, and human oversight become essential to scaling safely. Organizations that embed accountability into design will innovate faster by reducing friction, improving regulatory alignment, and increasing stakeholder confidence. Trust frameworks provide the foundation for responsible experimentation and accelerated adoption.

The human engine behind innovation

Discussions about AI almost always include its impact on the workforce and the future of work. Agentic AI has a real potential to amplify human ingenuity. IDC predicts that by 2026, 40% of all G2000 job roles will involve collaboration with AI agents.

When planned thoughtfully this evolution allows people to focus on creativity, strategy, and problem-solving. Innovation becomes a partnership between human and machine, with humans providing context and imagination and AI agents delivering speed and scale. Together, they form an innovation engine capable of transforming industries and driving sustainable growth.

Designing for enterprise-wide orchestration

The future belongs to organizations that treat agentic AI not as a collection of siloed projects but as the operating logic of the enterprise. After years of experimentation, the focus is shifting to orchestration, where AI agents interact, share data, and make autonomous decisions within trusted governance frameworks.

IDC predicts that by 2027, 40% of organizations will invest in AI-infused data architectures to avoid poor decisions, lost opportunities, and reduced competitiveness in a data-driven economy. When data is clean, connected, and governed, it fuels agility and innovation across every function. Organizations that make this transition toward enterprise-wide orchestration will create an adaptive business model capable of reinvention and growth.

Helping you chart the path to AI-fueled growth

Join IDC’s FutureScape 2026 webinars to explore the next frontier in AI-fueled business strategies. Learn how agentic AI is redefining innovation, the CIO agenda, and the enterprise of the future.

Gain insights that will help you move confidently from aspiration to execution.

Tony Olvet - GVP, Worldwide C-Suite & Digital Business Research - IDC

Tony Olvet is Group Vice President, Worldwide C-suite and Digital Business Research at IDC. His team's global research focuses on the connection between business transformation and digital investments across enterprises. Tony's analysis and insights help vendors, IT professionals, and business executives make fact-based decisions on technology strategy and digital business. Tony has worked with clients across a variety of organizations including global IT manufacturers, enterprise software vendors, telecom service providers, financial institutions and public sector organizations. He has been quoted in major business and industry media including CIO Magazine, The Globe and Mail, CBC and The Financial Post.

Artificial Intelligence has officially reached the “you can do anything with it” stage of technological hype. Judging just by AI vendor narratives, and by some of the media, it’s the golden key to productivity, efficiency, optimization and innovation. And if you add agents? They will think, write, negotiate, design, respond, validate automate, and probably brew your coffee and pick your tie, if you wear one. All you need to do is… well, everything else. And clients are trying, with 59% of organizations in Europe declaring they are using Agentic AI. 

Because while vendors keep promising moving mountains with a few lines of AI code, clients are still trying to figure out how to move their own data out of legacy systems and into AI. 

The Vendor: Here’s your AI, you can do anything with it! 

Two years into generative AI world, and still, you walk into any tech conference, and you can hear the same verse of a song we all know: “With (our) AI, you can/must/need/should/want to transform your business!”. 
And it does sound wonderful until you realize that behind the shiny demos and glossy ppt decks, there’s a subtle assumption that it is the client, who will have to make it happen. 

The vendor provides the vision; the client does the homework. 
And let’s not be fooled, it is not just a little homework. We’re talking about a full school year project, that, if you’ve ever done it, you’re dreading; from data preparation, to process standardization, to employee training, to infrastructure modernization. Let’s not forget we also need to build convincing business cases for the board. The same board that may also add to the noise with inflated expectations, like parents tricked by the school with a promise of great grades and a ticket to the best university, if only your child works hard enough. 

The Client: We’d love to, if only we had time… 

When you talk to most enterprises, you’ll probably hear a slightly different tone than that of vendors. Clients are not rejecting AI; they are overwhelmed and exhausted by it: 80% of clients in Europe say they manage to move beyond the PoC stage, but only half of those projects bring measurable outcomes. They’re juggling existing priorities often squeezed by budgets (even if AI spending seems to be relatively immune to budget cost, as we see in IDC research). And they are asked to lead AI transformation projects as if they had a spare team of data scientists and engineers hiding somewhere. 

And most painfully, vendors are often seen as teachers not that willing to help. As one manufacturing executive put it: “They come excited, but when asked for business cases or scenarios we can use, there’s silence”. 

That silence speaks volumes. Clients know that AI isn’t plug-and-play, it is much more complex and time-consuming.  You need to clean, prep, build, deploy, test and hope it scales. They understand that before you even dream of “autonomous decision making,” (though the sheer promise of autonomy can also scare some clients!) you need data consolidation, process standardization or cross-department alignment. Without that backbone connecting all stakeholders, no model will do magic. And oh, yes, change management, anyone? This needs to be planned and taken care of, too. Plus, once you have done all the work, you realize, this work continues: 49% of companies today focus also on making existing AI projects work better.  

But that’s rarely what the vendor pitch slides say. 

Only we are not at school anymore… 

Let’s agree, for many clients this feels like school all over again. Vendors show up as enthusiastic teachers, armed with the latest learning materials (“Look, a new LLM!” or “How about a fresh set of agents?”), and clients are expected to do the homework: research, structure, and present working examples at the next review. 

The difference? In school, a good teacher stays after class to help you understand the assignment. In AI world, too many vendors drop the textbook on a client’s desk, or a presentation into their mailbox, and head to the next classroom, I mean, to the next client… 

What is really needed is a different educational approach. Good teachers, like good business partners, guide, not grade. They adapt to the student’s (or client’s) level, pace, and context. They explain the “why” before demanding the “how”. That’s what’s so painfully missing in much of today’s vendor-client dynamic: tutorship instead of lectures. 

The missing link between a vision presented and the value expected  

The truth is, you cannot “do AI” without doing groundwork, in that sense, homework is needed. You are as good at math as the number of math problems you solved. And sure enough, that groundwork is not glamorous. 
And this much needed AI readiness isn’t about another platform or toolset; it’s about structure, sense, and support. The real hard work happens behind the scenes: making data talk to each other, mapping or streamlining processes, and, most importantly, preparing people to trust and use new systems. It’s less about technology as such, and much more about maturity: operational, organizational, and yes, managerial. 

To achieve that, what companies need most are partners who understand their business language as well as their data models. As one CIO put it: “We need partners, but we must drive the strategy, not follow vendors”. 

And that’s precisely where the conversation must change. We, or the market, desperately need to shift from unrealistic ambition – AI for all! to very realistic accountability – AI that fits. 

Going forward less pitching, more partnering, please… 

For vendors, this gap should be more than a talking point – it’s a wake-up call. The distance between what’s promised and what’s practical keeps growing, and clients are losing patience and hope. We’ve all heard the same speeches about collaboration, co-innovation and customer-centricity and yet too often, the market still gets more promise than substance. 

Clients aren’t lazy students skipping their homework. They’re professionals keeping production lines running, supply chains stable, and customers satisfied and all while being told they’re not “AI-ready” enough.  

If vendors want to stay relevant, they need to move from selling solutions to solving problems. That means stepping off the stage, where they are fighting with competitors and into the trenches to fight for clients, learning the nuances of each industry and individual organization’s needs. It also means realizing that success isn’t measured in the number of features added, dashboards set up or models deployed, but in business outcomes that actually matter. 

This may sound like a cliché but still true: at the end of the day, clients don’t buy AI (or any other technology for that matter); they buy results.  

We all need less hype and more help 

The promise of (well executed) AI is real. But so is the fatigue with AI at this point. It’s time to close the gap between “you can do anything” and ” but you need to do everything yourself”. 

If vendors truly want clients to embrace AI, they must act less like teachers assigning homework – think Bismarck-style education, and more like tutors walking beside their students – think Socrates before he drank a hemlock infusion. It’s this moment, when we realize, unlike at school, there’s no final exam in business, only continuous learning. 

And I would bet those who help their clients learn with them, not for them, will be the ones still standing when the hype cycle fades. 

You will hear more about AI and agents in IDC EMEA’s FutureScape Predictions webcast this December. You can register here,  

You may also be interested in a webcast Ewa is presenting on AI Sovereignty. You can register for that one here.  

For an overall look at AI in EMEA, you can download this eBook.  

To learn more about how International Data Corporation (IDC) can support your technology market data needs, please contact us.

Ewa Zborowska - Research Director, AI, Europe - IDC

Ewa Zborowska is an experienced technology professional with 25 years of expertise in the European IT industry. Since 2003, she has been a member of the IDC team, based in Warsaw, researching IT services markets. In 2018, she joined the European team with a specific emphasis on cloud and AI. Ewa is currently the lead analyst for IDC’s European Artificial Intelligence Innovations and Strategies CIS.

Economic volatility, sovereignty and security concerns, and the rapid advance of AI are creating powerful crosscurrents that few enterprises or providers can ignore. IT leaders on both the enterprise and services sides are under pressure to deliver innovation at speed while maintaining control, transparency, and trust.

IDC’s FutureScape: Worldwide Services 2026 research identifies this moment as the agentic pivot: a stage where AI is shifting from experimentation to orchestration. It marks a turning point that is redefining how technology is designed, delivered, and consumed. For IT decision makers, the focus moves from operational efficiency to business impact. For service providers, it demands a redesign of delivery around intelligence, automation, and measurable outcomes.

Early indicators are already visible. Enterprises that have begun integrating automation and orchestration into their IT services stacks are achieving faster innovation cycles and more predictable cost control. These are the first signs of a broader transformation that will redefine how IT services are built, priced, and delivered.

Prediction: Services will become products

The traditional project model of IT services—long defined by customization, labor intensity, and phased delivery—is giving way to platform-based, increasingly AI-augmented offerings that can be deployed and scaled more quickly. For enterprises, this opens access to innovation with greater speed and clearer accountability for outcomes. For providers, it requires moving beyond resource-based contracts to productized portfolios that blend human expertise, automation, and data insight.

IDC research indicates that platform enablement is rapidly moving up enterprise sourcing agendas—an early sign that productized delivery is becoming a mainstream expectation.

As IT services evolve into productized, platform-driven offerings, how those services are valued is also transforming. The emphasis on agility and automation naturally shifts attention from inputs and effort to measurable business outcomes. That leads directly to the next major development in services transformation.

Prediction: Outcome-based economics will take hold

As automation expands, value is shifting from effort to impact. Many enterprises are beginning to explore payment models tied to performance—reliability, agility, or experience quality—rather than hours or inputs.

For service providers, this trend requires delivery architectures that make outcomes measurable and repeatable. IDC research shows that agentic automation is already reshaping operations and business-process services, enabling tasks to run autonomously while people focus on governance and innovation. These efficiencies pave the way for broader adoption of outcome-based models, where innovation and performance become quantifiable components of value.

As AI-driven orchestration takes hold, IT operations themselves are evolving toward more intelligent, self-managing systems, setting the stage for the next prediction.

Prediction: Intelligent orchestration will redefine operations

The emerging operating model for enterprises and their service partners is increasingly autonomous by design. Agentic orchestration brings together AI, automation, and human oversight to manage performance, compliance, and cost in real time. Some organizations are already experimenting with digital command centers that provide unified visibility across hybrid environments.

For CIOs, this means IT architectures will need to evolve toward self-optimization within defined policy boundaries. For services vendors, it signals a move toward intelligent ecosystems, where continuous insight replaces manual triage and analytics guide real-time decision-making.

But the agentic future isn’t only about automation and intelligence — it’s also about trust, governance, and human alignment.

Trust, sovereignty, and skills as enablers

Trust remains a central concern in the agentic economy. By 2027, most global enterprises are expected to reassess partners based on their ability to guarantee sovereign operations, data protection, and transparent AI governance. Providers that embed compliance and security into their automation frameworks will be better positioned to serve regulated industries.

At the same time, workforce priorities are shifting toward orchestration, oversight, and innovation, as AI increasingly manages parts of execution. Success will depend on how effectively organizations align human judgment and machine precision, whether within enterprise IT teams or across service-delivery networks.

These shifts are redefining the relationship between enterprise IT and the services industry.

A new alignment between IT buyers and providers

The dynamics of the agentic era are narrowing the distance between enterprise IT and service providers. CIOs now expect partners who can support and deliver against their transformation agendas, while providers are increasingly embedding their own IP and automation into every engagement.

This emerging alignment is built on trust, IP-led orchestration, and shared accountability for outcomes.
The result is a shared mandate:

  • Orchestrate talent and technology to deliver continuous innovation.
  • Modernize delivery and sourcing around platforms and measurable outcomes.
  • Operationalize trust through data governance and sovereign architectures.

Your next move

IDC’s FutureScape: Worldwide Services 2026 provides a data-driven roadmap for navigating this convergence. Begin with the Worldwide FutureScape Overview to understand the macro forces shaping the AI-driven economy, then explore the Worldwide Services FutureScape for deeper guidance on productization, automation, and orchestration strategies.

In the agentic era, the lines between enterprise IT and IT services continue to blur. Those who understand both sides of the equation are best positioned to shape what comes next.

Lars Goransson - Vice President, Research, Worldwide Services - IDC

Lars Goransson is Vice President of Research, Worldwide Services at IDC. He leads IDC’s global research and advisory for IT and business services, focusing on how technology suppliers and buyers can navigate market shifts, innovation, and business transformation. Lars’s research explores the evolving dynamics of the worldwide services landscape, providing clients with trusted tech intelligence and evidence-based insight to make confident decisions in a fast-changing digital economy. His work illuminates the path forward for organizations seeking to anticipate demand, validate investments, and seize new opportunities.

Artificial intelligence is already reshaping how work gets done, but not in the way most people imagine. The popular narrative of AI as a “co-worker” oversells its role and misunderstands its limits. AI systems are not peers; they are instruments: programmable, bounded, and entirely dependent on human judgment. Their impact will come not from collaboration, but from how effectively organizations learn to design, deploy, and govern them.

In IDC’s FutureScape Future of Work 2026 research, we see this transformation unfolding unevenly but decisively.

The success of AI at work will depend less on technical power and more on the human systems built around it, including the processes, accountability, and oversight that turn automation into advantage.

Tools for all: From developers to line-of-business teams

The notion that AI is joining the workforce as a co-worker misreads its function. AI systems are tools used by both deeply technical developers and employees across business functions. IDC forecasts that by 2026, 40% of G2000 job roles will involve direct interaction with AI systems.

For developers, this means designing, securing, and maintaining the architectures that make AI dependable and compliant. Their work defines the system’s boundaries. For business users, AI will become part of daily operations; refining analysis, monitoring performance, and automating repeatable steps. The distinction is not about hierarchy but about fluency: the ability to use AI effectively without mistaking its capabilities for comprehension.

AI agents can recognize patterns within data and past interactions, but they lack awareness of intent, nuance, or institutional goals. They do not understand the broader organizational context in which decisions are made or the values that guide them. Their reliability depends on the quality of input and the competence of the person providing it.

The practical challenge ahead is building fluency across these roles. Developers must ensure systems perform as intended, while managers and employees must learn to apply them responsibly. The future of work will depend on dual skill sets: technical mastery and the human capacity for context, critical thinking, and ethical judgment.

As these technologies become embedded in daily operations, the question is no longer who uses AI, but how its presence changes the shape and distribution of work itself.

Redefining work and work roles

Agentic AI is reshaping the workforce through both elimination and creation. Some roles are being reduced or retired as AI systems take on repetitive functions that can be performed more efficiently and at lower cost. At the same time, new roles are emerging to oversee AI operations, manage governance and compliance, and translate technical performance into business outcomes.

These jobs will not replace those lost on a one-to-one basis. Instead, they redefine where expertise and decision-making authority reside. As tasks once distributed across many functions consolidate into automated systems, organizations must confront how to rebalance reporting structures, reassign responsibilities, and revise expectations.

This transition requires more than reskilling; it demands structural redesign. Organizations must let go of long-held roles that no longer add distinct value while supporting employees in taking on new responsibilities within evolving positions. Those that handle the shift effectively will go beyond adding job titles or automation layers. They will create clearer accountability and stronger alignment between human oversight and machine efficiency.

These shifts in responsibility and reporting require an organizing mechanism. One that ensures both governance and innovation evolve together.

Building structure: Centers of Excellence as engines of transition and trust

As organizations adapt to these changes, structure becomes the mechanism that determines whether transformation succeeds or stalls. The emergence of AI and Agentic Centers of Excellence (CoEs) marks a deliberate move from experimentation toward an integrated model for governance, innovation, and value creation.

First, CoEs help organizations make the transition from traditional automation to new ways of working. Rather than viewing AI as a replacement for existing tools, CoEs define how it should extend enterprise capability. They guide the redesign of processes, clarify which roles will evolve or disappear, and establish the standards that ensure AI is deployed responsibly and with purpose.

Second, CoEs serve as hubs for systemic, cross-functional governance. They bring together data, risk, technology, and human resources leaders to define how AI is used, monitored, and improved across the organization. This alignment prevents fragmented implementation and enforces accountability for outcomes, ensuring that AI decisions are traceable, ethical, and compliant.

Finally, CoEs sustain focus on innovation and long-term value. Internally, they drive a culture of continuous improvement through shared learning and benchmarking. Externally, they ensure AI investments translate into measurable client outcomes; improved service quality, faster delivery, and more adaptive customer engagement.

IDC’s Future of Work 2026 research shows that organizations with mature AI or Agentic CoEs are 20% more capable of competing on innovation, speed, and service excellence. These centers are not symbolic. They are the connective tissue linking technology capability to human expertise, operational discipline, and customer trust.

Redesigning work for a new conversation

The integration of agentic AI is not simply a technical evolution. It is an organizational negotiation.

C-suite leaders often approach AI with a “more, faster” mindset; a drive for scale, speed, and measurable productivity. Employees across functions experience the same transformation from a different vantage point: one that involves redefining responsibilities, acquiring new skills, and navigating the uncertainty of work that no longer looks or feels the same.

Bridging these perspectives will determine whether agentic AI delivers on its potential. The future of work depends on an ongoing dialogue between those who set direction and those who carry it out. It requires leadership that sees AI not only as an efficient tool but as a catalyst for redesigning how work is structured, supported, and rewarded.

The successful adoption of agentic AI will depend on a deliberate partnership between leadership and the workforce; a recognition that innovation and adaptation must advance together.

 The future of work will not be defined by speed alone, but by how organizations align ambition with understanding, progress with purpose, and productivity with shared accountability.

Access the full IDC Future of Work 2026 report to explore all predictions, and visit our FutureScape content hub for additional insights and resources.

Amy Loomis, Ph.D. - GVP, Research - IDC

Amy Loomis is Group Vice President for IDC's worldwide Workplace Solutions. Amy leads a team of analysts focused on the evolving nature of human resources, skills development, collaboration, and leadership across the employee lifecycle. Her research into the Future of Work explores the influence of hardware and software technologies such as artificial intelligence, data analytics, augmented and virtual reality and automation on the changing the nature of work. Her research also explores how technology and business strategy influence workers' skills and behaviors, organizational culture and how the workplace itself is enabling the future enterprise.

B2B buyers have rewritten the rules of engagement. They research independently, shift effortlessly between digital and in-person touchpoints, and expect every interaction to feel connected. The customer journey is no longer linear. It’s fluid, self-directed, and omnichannel.

Seventy four percent of buyers now prefer digital-first engagement, according to IDC’s2024 B2B Tech Buyer Behavior Survey. That preference means marketing leaders must coordinate across more channels than ever before, from brand websites and social media to in-person events and sales meetings.

The challenge? Many strategies look good on paper but break down in execution. Campaigns run in parallel instead of in sync. Content lands out of step with intent. Team handoffs create gaps buyers can’t ignore.

The result: fractured engagement, wasted resources, and pipeline momentum that stalls before deals have a chance to progress.

Omnichannel excellence isn’t about doing more. It’s about orchestrating journeys that connect signals, smooth transitions, and move buyers forward with purpose. 

The most common omnichannel mistakes and how to fix them

Recognizing the pitfalls is the first step. Knowing how to counter them is what turns a disconnected approach into a system that drives real growth.

Mistake 1: Treating channels as silos instead of orchestrated journeys.

Too many organizations still manage channels in isolation. The website belongs to digital. Events sit with operations. Sales owns in-person conversations. Each team runs its own playbook. This leaves buyers to experience the brand in fragments.

Smart marketing leaders know that buyers disengage when the journey feels disjointed. In fact, more than a third of CMOs say creating a unified omnichannel journey will shape their strategy in the next 12-18 months, according to IDC’s 2024 Worldwide CMO Priorities Study.

The fix is orchestration: designing intentional transitions, linking intelligence with context, and enabling sales to activate in real time. When teams rally around the buyer—not their silos—the journey flows. And everyone wins.

Mistake 2: Over-automating without personalization.

Automation has scaled marketing, but when applied without personalization it can backfire. Too many flows and triggers run on autopilot, delivering impersonal and repetitive outreach that feels robotic.

And buyers notice. Personalized interactions consistently generic touchpoints by 30%, according to IDC’s FutureScape: Worldwide Chief Marketing Officer 2025 Predictions.

The solution isn’t to ditch automation. It’s to evolve it.

AI-powered personalization and adaptive content turn automation into a precision tool, ensuring every message is timely, relevant, and buyer-specific.

Mistake 3: Keeping marketing intelligence separate from sales.

Marketing often collects rich intent data, but sales either can’t see it, or lacks the context to act on it. Sales Development Representatives chase leads without intel. Meanwhile, buyers continue down self-directed paths.

The disconnect is expensive. Nearly 80% of buyers say they plan to use more digital sources for complex buying decisions and rely less on salespeople, according to the 2024 B2B Tech Buyer Behavior Survey. Which means every sales interaction matters even more.  

The fix is signal-based activation: turning every meaningful action, like demo requests or  pricing page visits, into a clear and contextual sales play. With insights from marketing, sales can move faster, build trust, and drive real progress.

Mistake 4: Sticking to static content sequences.

Many nurture programs still rely on rigid sequences: download an asset, get added to a drip. Attend an event, receive a standard follow-up. But buyers don’t move in neat, linear paths anymore.

Without integration and real-time intelligence, signals are missed. Someone ready to buy gets slowed down. Someone just starting out gets overwhelmed. Both disengage.

Why? Systems often don’t talk to each other.

When data flows freely and AI interprets signals in real time, content evolves with the buyer. The result? Dynamic flows that respond to behavior, reduce drop-off, and keep engagement moving forward.

From friction to flow

Each of these mistakes creates friction. Together, they derail growth.

  • Disjointed channels frustrate prospects
  • Over-automation without personalization erodes trust
  • Sales teams miss the signals that matter
  • Static content fails to keep up with today’s buyers

Fixing them takes more than ad hoc patches. It takes a disciplined approach—built on buyer intelligence, intentional transitions, and AI-driven alignment.

  • Orchestrate the journey to create flow
  • Personalize at scale to build relevance
  • Align with AI to unify teams and accelerate growth

Buyers expect more. With orchestration and AI in your toolbox, you can deliver the seamless omnichannel excellence they demand and turn every interaction into a moment that matters.

Across the technology ecosystem, a persistent, and increasingly problematic, obsession with top-line revenue continues to dominate the conversation. It’s a legacy mindset, rooted in traditional channel models where volume, rebates, and resell margins defined success. But in today’s world of cloud platforms, marketplaces, SaaS solutions, and interconnected services, that mindset is not just outdated — it’s actively distorting how vendors engage with partners. 
 
The reality is simple: value drives profit margin. Revenue is secondary. 
 
Smart partners already know this. They prioritize profitability, customer outcomes, and solution relevance. They understand that a $20 million partner business with 10% profit margin is far more sustainable than a $100 million partner business scraping by on 1% profit margin. Yet many vendors continue to celebrate inflated revenue optics, often without empathy or understanding of the complex financial mechanics that underpin those numbers. 

The danger of revenue aggregation 

In an ecosystem model, a single customer spend of $X might touch: 

  • A services-led partner or MSP
  • A cloud marketplace
  • An ISV
  • A distributor
  • A hyperscaler platform
  • A subcontractor or specialist integrator 

Each entity may report revenue from that same transaction. The result? Massive inflation of ecosystem revenue totals — with no deduplication. The same dollar is counted multiple times across the ecosystem. It’s a mirage of scale that masks the real question: who is delivering value, and who is capturing margin? 
 
Those who glamourize big numbers through aggregation — without acknowledging the complexity of transaction flows, margin splits, and service overlays — risk misleading the market. Worse, they risk misguiding their own partner strategies. In an increasingly AI-, cloud-, and marketplace-centric landscape, understanding how revenue is earned, shared, and sustained is far more important than how much is reported. 

Who are partners really working for? 

Revenue matters – especially to vendors. A partner that drives increased consumption and revenue from a customer is doing exactly what vendors want. And that’s fine – as long as it’s in the best interests of the customer. 
 
But every partner must strike a balance. Are they working for the benefit of the vendors in their portfolio, or for the customers they serve? That’s a tightrope. And not everyone has the balance right. 
 
Partners who prioritize vendor incentives over customer outcomes risk losing trust, relevance, and long-term opportunity. The most successful partners are those who align vendor goals with customer value, not the other way around. 

What vendors should do differently 

Vendors must evolve how they measure and support partner success. That means: 

  • Moving beyond transactional metrics to focus on customer success, lifecycle engagement, and solution impact 
  • Recognizing services-led and IP-driven partners as strategic influencers, not just resellers 
  • Understanding profit margin mechanics across the ecosystem — and designing programs that reward value creation, not just volume 
  • Avoiding one-size-fits-all partner models that fail to reflect the diversity of partner roles in AI, cloud, and vertical solutions 

What partners should do differently 

Partners must also rethink how they define success and where they focus their energy. That means: 

  • Prioritizing profitability over volume — chasing real profit margin, not just top-line growth 
  • Investing in services, integration, and vertical expertise to stay relevant in complex solution environments 
  • Building trust with customers by aligning technology choices to business outcomes, not vendor incentives 
  • Understanding their role in the ecosystem — not just as resellers, but as orchestrators of value across multiple partners and entities 

The partners who thrive in this environment are those who: 

  • Lead with customer success and lifecycle engagement 
  • Build vertical-specific solutions with real-world impact 
  • Understand how to navigate and influence multi-vendor, multi-platform ecosystems 
  • Know when to say no — to deals, incentives, or programs that don’t serve their long-term strategy 

IDC’s ecosystem lens 

IDC’s ecosystem research focuses on value creation, margin capture, and strategic influence. We analyze how partners orchestrate outcomes, how they align with customer buying journeys, and how they evolve their business models to stay relevant. You can find more information here.  

Stuart and Andreas recently presented a webcast, The New Partner Playbook: Ecosystem-Led Growth in EMEA, which you can find here.  

If you have any further questions, drop them in the form here.  

 

Stuart Wilson - Senior Research Director, EMEA Partnering Ecosystems - IDC

Stuart Wilson is senior research director for IDC’s Europe, Middle East & Africa (EMEA) Partnering Ecosystems program. With over two decades of global experience, Stuart focuses on the rise of complex, connected ecosystems and how platform models are reshaping routes to market and partner engagement frameworks.

Andreas Storz - Senior Research Manager, EMEA Partnering Ecosystems - IDC

Andreas Storz is senior research manager for IDC’s Europe, Middle East & Africa (EMEA) Partnering Ecosystems program. Based in the US, Andreas focuses on the evolution of go-to-market models, new digital value chains and the wider impact on partner ecosystems, exploring how current and future trends will impact the vendor, distributor, and partner landscape.

Apple’s Vision Pro was already a technological marvel when it launched. With its ultra-high-resolution displays, spatial audio, and seamless integration into Apple’s ecosystem, it set a new benchmark for mixed reality. But in 2025, Apple chose not to rest on its laurels. The updated Vision Pro, now powered by the M5 chip, refines the experience in meaningful ways especially for the professionals and developers who rely on it most.

A Subtle but Significant Upgrade

At first glance, the 2025 Vision Pro doesn’t scream “new.” The design remains familiar, and the core experience is still rooted in spatial computing. But the changes Apple has made are thoughtful and impactful.

The most immediately noticeable improvement is the new Dual Knit Band. Comfort has long been a sticking point for head-mounted devices, and Apple’s solution here is elegant. The new band distributes weight more evenly, reduces pressure points, and makes long sessions far more tolerable. It’s a small change that dramatically improves usability for users who wear the headset for hours at a time.

M5: Power, Efficiency, and AI Muscle

The real story, however, is the M5 chip. Apple’s latest silicon brings a substantial performance boost, with improvements in both speed and battery life. Apps launch faster, multitasking feels smoother, and the headset runs cooler under load. These enhancements alone would justify the upgrade for many users.

But what sets the M5 apart is its new AI cores, integrated directly into the GPU. This architectural shift allows developers to move AI workloads from the cloud to the device, enabling faster, more responsive experiences. For spatial computing, where latency can break immersion, this is a critical advancement.

It also future-proofs the Vision Pro. While the device was already ahead of the competition in terms of hardware, the M5 ensures it stays that way. Developers now have the tools to build richer, more intelligent applications that can run natively without relying on external servers.

A Device Built for Work, Not Just Play

Despite Apple’s consumer-facing marketing, the Vision Pro remains a business-first product. Enterprises use it for training, collaboration, and design. Developers use it to prototype and deploy spatial apps. These users care deeply about performance, and even small improvements can have outsized impacts on productivity.

The M5’s inclusion across Apple’s ecosystem—on the latest iPad Pro and MacBook Pro—further streamlines development. Teams can build and test across devices with consistent performance, making it easier to create seamless cross-platform experiences.

Still Ahead, But Not Untouchable

Apple’s decision to push forward with the Vision Pro is strategic and helps the company stay relevant in this fast changing market. The mixed reality space is heating up, with competitors like Meta, Samsung, and others ramping up their efforts. Apple entered this market later than usual, and while it hasn’t dominated in terms of volume, it has set the standard for quality.

The 2025 update helps Apple maintain that lead. By improving comfort, boosting performance, and enabling on-device AI, the Vision Pro becomes even more compelling for its core audience.

Where Apple Still Needs to Improve

That said, there’s room for growth. Sharing the device remains cumbersome as the primary user cannot simply hand off the headset to someone else for use. Apple’s reliance on eye tracking and Optic ID is great for security and immersion, but they also create friction when sharing. For the Vision Pro to be used by a guest, the Guest User profile must either be enabled from a nearby iPhone/iPad or enabled by the primary user before handing over the headset. This allows the device owner to share a selection of experiences with a guest for a period of time. While this process feels restrictive for consumers, enterprise users benefit from a more streamlined approach: they can save their eye and hand setup on one Vision Pro and use it across other headsets within the same organization, making sharing significantly easier.

Siri also continues to lag. In a world where AI assistants are becoming more conversational and context-aware, Apple’s voice interface feels dated. With competitors integrating advanced AI into their headsets, Apple needs to accelerate its efforts here to stay competitive.

Final Thoughts

The 2025 Vision Pro is less of a radical reinvention and more thoughtful refinement. Apple didn’t need to push the tech forward, but it did. And in doing so, it’s made the device more comfortable, more powerful, and more developer-friendly.

For businesses and developers, these changes matter. The M5 chip unlocks new possibilities, the Dual Knit Band improves day-to-day usability, and the continued focus on performance ensures the Vision Pro remains a leader in spatial computing.

Apple may not dominate this market in terms of volume, but with the Vision Pro, it continues to define what premium mixed reality should look like.

Jitesh Ubrani - Research Manager - IDC

Jitesh is a Research Manager for the Worldwide Mobile Device Trackers, including Wearables, Augmented Reality (AR), Virtual Reality (VR), Tablets, and Phones. The team focuses on the market sizing, forecasting, and analyzing trends to provide insight into the competitive landscape of the worldwide mobile industry. Prior to joining IDC in 2012, Jitesh was part of the Market Analysis and Intelligence team at Bell Mobility, one of Canada's largest telecom service providers, where his role focused on understanding smartphone adoption and usage as well as consumer purchasing behavior. Mr. Ubrani holds a bachelor of commerce degree with a major in Economics from Ryerson University and is currently based in Toronto, Canada.

Three key themes will dominate IT industry developments in the coming years:

  • Orchestrating a sustained expansion in AI agent use across the enterprise
  • Navigating major tech sector transformations driven by the IT industry’s own Agentic AI pivot
  • Taking early advantage of the fast-maturing technologies in quantum computing, next-generation connectivity, and physical AI devices to boost resiliency and business reach.

For CIOs, these converging forces signal a new leadership mandate.

IDC’s 2026 IT Predictions highlight ten developments that every enterprise should track closely. Together, they outline an ambitious yet attainable roadmap for the next five years.

1. From AI models to composite intelligence

By 2026, a renewed focus on explainability and reliability drives 70% of organizations to adopt composite AI, blending generative, prescriptive, predictive, and agentic technologies.

CIOs will need to integrate these diverse AI capabilities into cohesive systems that are transparent, auditable, and trustworthy. Building an AI governance foundation that tracks model lineage, set ethical guardrails, and ensures accountability is critical for scaling enterprise AI responsibly.

2. Orchestrating the agent explosion

By 2027, G2000 agent use will jump 10x and token/call loads 1,000x, making agent vetting, orchestration, and optimization essential IT responsibilities

The era of agentic orchestration is here. CIOs must prepare for exponential growth in autonomous agents that are interacting with individuals, critical data, and other agents. These agents will also be learning tasked with making more decisions, making continuous agent-vetting a vital task. Managing this complexity requires robust monitoring, explainability, and lifecycle control to prevent “agent sprawl” and ensure outcomes remain compliant and aligned with business goals.

3. Agents as the new interface

By 2028, 45% of IT product and services interactions will use agents as the primary interface for ongoing operations.

Agents are becoming the face of IT products and services, redefining how organizations consume technology. Procurement, service delivery, and user experience will be mediated by intelligent agents, transforming how value is assessed and measured. CIOs will need to lead on redefining enterprise architecture and user experience for this new agent mediated IT environment.

4. Measuring collaboration over productivity

By 2029, organizations that measure AI-human collaboration will have margins up to 15% higher than those focusing solely on productivity.

The leaders of tomorrow will not be those who automate the most, but those who collaborate the best. CIOs must foster environments where effective combined human creativity and agentic intelligence is critical. The leaders will those that prove best at defining collaboration metrics that quantify augmentation and innovation rather than simple cost savings.

5. Services become modular and autonomous

By 2029, 30% of global IT services will be delivered as modular, platform-enabled products, driven by demand for speed, transparency, GenAI, and Agentic AI-enabled autonomous service orchestration.

The services landscape is undergoing its own agentic transformation. Platform-enabled IT ecosystems with sophisticated AI orchestration will replace static service contracts with adaptive, API-driven delivery models. CIOs must evolve governance, procurement, and budgeting processes to support continuous, autonomous service improvement.

6. The cloud modernization imperative

By 2027, the massive computational and data demands of AI will compel 80% of organizations to modernize legacy cloud environments by shifting to new platforms specifically designed for AI workloads.

Legacy cloud environments—public or private—won’t sustain agentic scale. CIOs must migrate to AI-optimized infrastructure with GPU-rich, heterogeneous compute capacity and agile workload placement. The winners will be those who modernize their cloud strategy not just for scalability but for AI-driven elasticity and efficiency.

7. Data collaboration as the new competitive edge

By 2028, 60% of enterprises will collaborate on data via private data exchanges or clean rooms on a broad variety of use cases, including data federation for generative and agentic AI.

In the AI era, data sharing is no longer optional. It’s the foundation of competitive advantage. CIOs must identify and take full advantage of trusted data ecosystems from their tech partners. Prioritize solutions that balance sovereignty and privacy with the need for cross-industry innovation.

8. Quantum rediness becomes urgent

By 2030, quantum-accelerated supercomputing will be used by the US, EU, and China governments for solving 50% of complex defense and science-related problems, including breaking encryption schemes.

Quantum’s arrival will reshape the security landscape. CIOs must invest early in post-quantum resilience. Focus on testing hybrid encryption, revisiting identity and key management, and developing contingency plans for quantum-era threats.

9. Next-generation connectivity extends enterprise reach

By 2029, 75% of enterprises will adopt LEO satellite connectivity to complement terrestrial networks, enabling critical satellite D2C, D2D and highspeed broadband as part of a unified digital fabric.

Multi-orbit connectivity will define the next generation of connectivity for the distributed enterprise. CIOs should view LEO and 5G as strategic enablers of global edge-to-cloud integration—building network architectures that can adapt to dynamic workloads, accelerate geographic expansion, and reduce risks in a time of geopolitical instability.

10. Edge intelligence accelerates local decision-making

By 2030, 50% of enterprise AI inference workloads will be processed locally on endpoints or edge nodes, reducing cloud traffic and latency while supporting greater control over sensitive data.

As AI moves closer to the user, CIOs must rethink infrastructure, governance, and security models. Edge intelligence will reduce latency, enhance privacy, and create new opportunities for real-time, autonomous decision-making at the organization’s operational front line.

The CIO as navigator

These ten predictions reinforce a simple truth: the CIO is now the chief orchestrator of the intelligent enterprise. From agent governance to quantum readiness, success in this decade hinges on mastering the balance between innovation and integrity, automation and collaboration, scale and sovereignty.

The path ahead is complex but navigable. With a deliberate strategy, a modernized tech stack, and a workforce ready to collaborate with AI, CIOs can transform today’s turbulence into tomorrow’s advantage.

Rick Villars - Group VP, Worldwide Research - IDC

Rick is IDC's chief analyst guiding research on the future of the IT Industry. He coordinates all IDC research related to the impact of Cloud and the shift to digital business models across infrastructure, platforms, software, and services. He helps enterprises develop effective strategies for using their diverse portfolio of cloud investments and applications. He supplies early guidance on implications of critical innovations such as the shift to cloud-based control platforms for deploying/managing infrastructure, data, and code delivery as well as the emergence of AI as a critical IT workload and part of all IT products/services.

Beyond revenue: why telecom’s future depends on profitability, not just revenue

On 24 September 2025, I moderated a panel at Connected Britain titled “Monetising Your Network for a Better Tomorrow” — or, as Carlos Bock aptly put it, “Monetising Your Network for a Better Today.” The panel brought together influential voices from across the telecom ecosystem — Ronan Kelly (Managing Director, AllPoints Fibre), Stefan Stanislawski (CEO, Lightning Fibre), Carlos Bock (Executive Chairman, F&W Networks), Will Rhodes (Carrier Managed Service Consultant, Ciena), and Dan Bloch (Senior VP Global Solution, Calix) — to tackle one of the industry’s most urgent challenges: how to unlock new value in a market that’s saturated, commoditised, and fiercely competitive.

The answer, it turns out, isn’t about chasing revenue growth. It’s about profitability.

From ARPU to AMPU: a necessary shift in focus

For more than a decade, telecom operators have measured success by one metric above all others: average revenue per user (ARPU). But as competition intensifies and price wars continue to drive down returns, ARPU alone tells an incomplete story. Carlos Bock noted, customers today are getting a “Ferrari for the price of a Honda.” Ultra-fast, highly reliable connectivity is priced like a commodity — and operators have been complicit in that race to the bottom.

It’s time to shift the industry’s focus from ARPU to AMPU (Average Margin Per User). Understanding what customers pay is no longer enough — telcos must grasp what each user contributes to profitability. During the panel, Ronan Kelly posed a simple yet revealing question: “Who here knows their AMPU?” Out of more than 200 attendees, only two raised their hands. This striking moment underscored a critical gap — most operators lack visibility into per-user margin data, even though it’s essential for informed strategic decisions.

Ultimately, telcos are valued not by the size of their top-line revenue, but by their EBITDA margin — the efficiency with which they generate earnings, as measured by metrics like Discounted Cash Flow (DCF) and EBITDA multiples.

Beyond connectivity: monetisation through value creation

Connectivity will always be the bedrock of telecom. But as bandwidth becomes abundant and undifferentiated, telcos must move beyond selling “pipes” and start selling outcomes.

That means evolving from a product-centric mindset — faster speeds, bigger data packages — to a customer-centric value proposition that focuses on enterprises language and outcomes e.g., visibility, reliability, security, and predictability.

Monetisation isn’t just about launching new services; it’s also about repackaging and optimising what already exists. Whether that’s offering connectivity-as-a-service, bundling security capabilities, or embedding network insights into enterprise workflows, the goal is the same: deliver differentiated value that customers are willing to pay a premium for.

One example came from Stefan Stanislawski, highlighted how telcos can unlock profitability by embedding themselves in their communities. By supporting initiatives like the Heathfield Agricultural Show and enabling smart farming through real-time data transmission, remote monitoring, and IoT connectivity, Lightning Fibre is not just selling broadband — it’s solving real challenges for rural customers. This approach transforms the telco from a utility provider into a trusted local brand. As Stefan put it, “We want to build a community, we want to build a local brand, we want to connect to our customers in these rural areas, understand their challenges, and solve their problems.”

AI as a catalyst for profit growth

Emerging technologies — especially AI, GenAI and Agentic AI — will be the defining factor separating the winners from the laggards.

Ronan Kelly captured this shift bluntly: “there are two types of telcos — those that leverage AI, and those that don’t. The latter, are on a path to bankruptcy.” The industry is already bifurcating into two camps: those integrating AI deeply into operations and customer offerings, and those resisting it. The former will see margins expand, the latter risk irrelevance.

But AI adoption isn’t just a technology challenge — it’s a people challenge. Ronan highlighted the fear many employees feel about AI changing their roles (and how they feel as if they were cheating), Ronan linked this to the early days of Excel: “Did the person who switched from paper to spreadsheets feel like they were cheating?”

AI and automation have real impact on operational efficiency (driving down costs) and revenue enablement (enhancing targeting, personalising offerings, and uncovering new revenue streams). Operators that use AI to intelligently segment customers, tailor marketing, and optimise service delivery will achieve higher margins and stronger competitive positioning.

Dan Bloch added that AI’s real power lies in precision — enabling targeted marketing, customer segmentation, and focused sales strategies. Instead of casting a wide net, “Telcos can use AI to deliver the right message to the right customer at the right time, driving both relevance and profitability.

Profit through partnerships and ecosystems

The B2B telecom ecosystem is undergoing significant disruption. Hyperscalers, system integrators, multicloud providers, and other non-traditional players are increasingly offering communication services — often with greater agility and deeper enterprise integration. This shift is intensifying competition and pressuring telcos in their core markets.

The result is a fragmented landscape where traditional telcos can no longer rely solely on infrastructure ownership or legacy relationships. Instead, they must rethink their role in the value chain — moving from isolated service providers to collaborative ecosystem partners. Sustainable monetisation will depend on telcos’ ability to co-create value with these emerging players, rather than compete against them in a zero-sum game.

Will Rhodes stressed that “no single operator can capture the full value chain alone. Sustainable monetisation will depend on ecosystem collaboration — where each player understands its value contribution and shares in the resulting margins.”

Whether it’s partnering with cloud hyperscalers for edge services, security vendors for managed offerings, or local organisations to build community-focused solutions, the future of telecom monetisation will be built on shared value creation rather than isolated competition.

What “good” looks like 

In this new era, successful telecom operators will:

  • Know their profitability at a granular level, including per-user margins.
  • Shift from network providers to value enablers, delivering capabilities and outcomes rather than just connectivity.
  • Use AI strategically to boost both efficiency and revenue.
  • Build ecosystems that expand value creation and customer relevance.

The operators that fail to evolve will continue competing on price — and in doing so, erode the very margins they need to survive.

Final thoughts

Telecom’s future growth story isn’t about adding more zeros to the revenue line. It’s about building a business that’s profitable, resilient, and indispensable. That requires a mindset shift — from chasing scale to maximising value, from ARPU to AMPU, and from selling bandwidth to selling outcomes.

To close the session, I asked each panellist to leave the audience with one word that captures their vision for the future of telecom:

  • CarlosOptimise
  • StefanRelationship
  • DanPersonalise
  • RonanDifferentiate
  • WillPartner

As the Connected Britain panel made clear, the telcos that embrace this transformation will not only monetise their networks for a better tomorrow — they’ll secure their profitability today.

AI in EMEA 2025, a recent eBook, features a section on telco. You can download it here.

For more information on AI, join our 2026 tech predictions webcast on Dec 3rd. The Agentic Business Future: Driving Resilience, Sovereignty, and Innovation in EMEA, IDC’s Tech Predictions for 2026 and Beyond.

Masarra Mohamad - Senior Research Analyst, European 5G Enterprise Strategies - IDC

Masarra Mohamed is a senior research analyst specializing in analysing the connectivity and communications services markets, focusing on the changing networking requirements, trends, and competitive dynamics that support enterprises in their digital transformation. She explores how enterprise network strategies evolve to enable cloud, AI, and security.