EY Megatrends

How superfluid enterprises reshape organizations for competitive edge

Autonomous AI, smart contracts and digital twins will enable superfluid enterprises — flat networks that eliminate operating frictions.


In brief

  • The shift to superfluidity will involve three stages — AI-assisted operations, collaborative autonomy and fully superfluid enterprises.
  • Autonomous systems will handle routine execution while human leaders focus on strategic direction, ethical boundaries and ecosystem relationships.
  • Leaders need to build hybrid governance, transform talent strategies and redefine competitive advantage for an era of machine-driven operations.

This article is part of the first set of insights in the new EY Megatrends series: Preparing for the human-machine hybrid era

Sara, the Chief Operations Officer (COO) at a global manufacturing firm, is starting her Monday in the not-so-distant future. Instead of a flood of emails and meetings, she reviews an overnight report from her company's autonomous artificial intelligence (AI) systems. While she slept, three supply chain issues were automatically resolved through smart contract partnerships, two new supplier agreements were negotiated and implemented, and predictive maintenance algorithms helped avert four potential equipment failures by pre-ordering parts and scheduling technicians. Her weekend was uninterrupted, yet her company operated at peak efficiency nonstop.

Sara's role has significantly changed. She no longer handles daily crises or arranges endless meetings between departments. Instead, she directs strategic decisions within a flexible network of autonomous partners, setting high-level objectives while AI agents manage the complex coordination that used to take up 60% of her time.

This isn't science fiction, it's the rising reality of what we call the superfluid enterprise. In a superfluid organization, operational frictions have been all but eliminated, enabling data, talent and capital to flow smoothly and speedily across former silos. Departments collaborate seamlessly, external partners integrate effortlessly, and value moves at the speed of digital execution. These enterprises are increasingly autonomous, running 24/7 through autonomous AI agents and smart contracts, allowing them to adapt instantly to market changes while humans focus on strategy, creativity and judgment. The result is an organizational structure that is flat and organized around networks rather than hierarchical org charts, enabling the company to reshape itself as quickly as circumstances demand, and flow around obstacles that would have paralyzed traditional hierarchies.

For generations, successful organizations have excelled at managing friction: the many barriers that slow decision-making, hinder coordination and raise operational costs. But what happens when that friction vanishes? The convergence of several emerging technologies — agentic AI, quantum computing, blockchain-enabled smart contracts and decentralized autonomous organizations (DAOs) — are starting to eliminate these traditional barriers. This will ultimately build organizations where information, decisions and value flow with little resistance across what were once significant sources of friction.

The economic case for this change is both urgent and compelling. Gallup's 2024 State of the Global Workplace Report shows that employee disengagement costs the global economy $8.8 trillion each year in lost productivity, which amounts to about 9% of global GDP.1 US companies alone lose around $2.1 billion every day — over $766 billion annually — due to workplace incivility, including unnecessary meetings, duplicated processes and communication breakdowns.2 Internal friction —such as ineffective meetings, redundant approvals, and information silos — costs companies an average of $15,000 per employee each year, while data silos alone cause organizations to lose 20-30% of their revenue because of operational inefficiencies.3


Companies that successfully reduce this friction through AI-powered automation and smart contract governance report remarkable returns: two to three times ROI on AI investments, 35-50% operational cost savings, and cycle time reductions of 50-70%.4

Although the economic case for superfluidity has existed for decades, it is now becoming real and urgent due to underlying trends in technology, sustainability and geopolitics. Technological advancements are allowing companies to eliminate operational frictions in ways that were previously impossible. This includes rapid progress in AI, the maturation of blockchain and quantum computing — all accelerated by an environment where technology is evolving quickly and can suddenly reach tipping points that catch companies off guard (such as AI’s “ChatGPT moment”). Additionally, resource scarcity and an increasingly urgent climate crisis require more efficient supply chains, while geopolitical volatility raises the need for operational structures that can respond swiftly to changing events, all of which make superfluid enterprises more appealing.

The question facing leaders today isn't whether this transformation will happen, but whether their organization will lead it or be swept along by competitors who embrace superfluidity first.

This transformation is critically important for Chief executive officers (CEOs) seeking a competitive edge, Chief Marketing Officers (CMOs) managing decentralized go-to-market efforts, Chief Operating Officers (COOs) streamlining complex processes, Chief Technology Officers (CTOs) developing scalable infrastructure, and Chief Risk Officers (CROs) safeguarding resilience in volatile markets. Each role faces unique challenges: CEOs must position their organizations for a significantly different competitive environment, CMOs need autonomous systems to coordinate global sales and partnerships, COOs require continuous operations to remove coordination bottlenecks, CTOs have to design platforms enabling 24/7 autonomous execution, and CROs must implement adaptive frameworks that sustain governance while allowing rapid reconfiguration. For boards overseeing long-term strategy, understanding the concept of superfluidity is crucial to assessing whether management is building organizations prepared for the next decade of business.

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1

Chapter 1

The journey to the superfluid enterprise

AI and other technologies are transforming organizations—removing friction, boosting agility, and empowering leaders to build truly superfluid enterprises.

Representative transformation pathway

The evolution toward superfluid enterprises will likely progress through three distinct phases, each building capabilities essential for the next. Understanding these stages assists organizations in planning the investments and navigating the cultural shifts needed for success. To see how this unfolds in practice, let's follow Sara's journey through each of the horizons.


Horizon 1: Foundation building

Sara arrives at work to find her AI assistant has prepared a briefing on overnight activities. Her company has deployed smart contracts for routine supplier payments, but she still needs to approve any contracts above US$50,000. Three AI agents have flagged potential supply chain risks based on weather patterns and geopolitical news, including tariff negotiations; Sara reviews their recommendations and decides which backup suppliers to activate. Her morning includes three video calls: one with the AI governance committee to review agent performance metrics, another with plant managers to discuss human-AI collaboration training results and a third with the tax function to discuss the tax implications of using backup suppliers.

 

Foundation-building organizations develop AI-native capabilities while maintaining familiar business structures. Their focus is on building infrastructure, conducting smart contract pilots, and improving human-AI collaboration skills. Sara's day is 40% shorter than it used to be, with AI handling routine coordination, but she remains deeply involved in strategic decisions and exception handling.

 

Success hinges on meeting specific metrics: 70% employee adoption of AI tools, a 30% reduction in process cycle times, and over 150% ROI on pilot programs. Organizations deploying comprehensive AI automation exemplify this systematic approach, with 78% of global organizations now using AI in at least one business function and 71% regularly using generative AI. The journey shows careful scaling from proof-of-concept to enterprise-wide transformation through structured governance, pipeline management, and resilient architecture design.5

 

Financial services organizations dominate this landscape due to their data-driven operations and complex risk management needs. Santander's One Pay FX uses blockchain to ensure transaction accuracy and security, offering customers faster and cheaper international payments while positioning the bank as a leader in blockchain adoption across European markets.6 Decentralized finance platforms now manage over US$214 billion in assets, demonstrating significant market appetite for automated financial services.7
 

Horizon 2: Autonomous coordination

Sara's Monday morning routine has changed significantly. She reviews an overnight dashboard showing her AI agents have independently resolved 15 operational issues, adjusted production schedules to accommodate a supplier delay, and negotiated better rates with three vendors through automated smart contract bidding. This enables Sara to focus her time on strategic partnerships, ethical review of AI decisions, and working with ecosystem partners across industries. When a complex quality problem arises that falls outside AI’s scope, the system automatically escalates it to Sara with full context and suggested solutions from multiple AI agents.

 

The second horizon marks the shift from "humans in the loop" to "humans on the loop," where organizations adopt quantum-enhanced AI systems for complex optimization while implementing hybrid governance models that combine human oversight with algorithmic decision-making. Sara's role has changed from operational manager to strategic orchestrator, with AI agents managing 80% of routine decisions while humans focus on exceptions, creativity and ethical oversight.

 

Goals include 80% autonomous decision-making for routine tasks, 50% faster responses to market changes, and over 200% ROI from ecosystem coordination. Healthcare transformation focuses on this horizon through integrated care ecosystems that coordinate patient outcomes across traditionally fragmented providers. Blockchain-based health records allow patients to control how their information is shared while ensuring privacy and security, with healthcare representing a target of 15% blockchain market penetration by 2030.8

 

Manufacturing firms, like Sara's company, approach this frontier through adaptive production networks that dynamically coordinate capacity, expertise and market access across traditional organizational boundaries. Distributed manufacturing platforms allow for rapid product development and market entry without requiring large investments in production infrastructure, cutting time-to-market by 50-70% and reducing capital requirements by 60%.9
 

Horizon 3: Full superfluidity

Sara's role has become almost unrecognizable from her 2025 position. She now focuses on strategic vision, creative problem-solving, and ensuring the company's autonomous operations align with human values and social impact goals. The company's AI systems manage full end-to-end operations — from customer acquisition to product delivery — while keeping transparency through digital twins that Sara can inspect anytime. Her Monday mornings involve reviewing the AI systems' strategic recommendations for entering new markets, and assessing ethical implications of autonomous decisions including seamless analysis of global and local tax laws and regulations, as well as collaborating with other human leaders across the ecosystem on challenges that need uniquely human judgment, empathy and creative thinking.

The question isn't whether machines can make decisions—it's how we maintain human agency over the decisions that matter most.

The third horizon signifies enterprise-wide autonomous operations, with humans focusing on strategic guidance, creative innovation and ethical oversight. Advanced AI systems handle real-time organizational reconfiguration while maintaining human accountability for purpose and values. Organizations achieve over 90% autonomous operations while creating new forms of human value through creativity, storytelling and strategic thinking.

Sinclair Schuller, EY Americas Responsible AI Leader, describes this as the "governance at the speed of algorithms" challenge: "We need AI systems capable of policing other AIs through sophisticated frameworks that operate automatically while ensuring human accountability for strategic decisions. The question isn't whether machines can make decisions — it's how we maintain human agency over the decisions that matter most."

This horizon remains mostly theoretical, but early signs suggest that organizations mastering the first two horizons will be prepared to lead this ultimate transformation when advanced AI capabilities become sufficiently mature to support fully autonomous business operations.

The transformation of Sara's role illustrates the fundamental shift from managing operational friction to orchestrating autonomous networks. In Horizon 1, she learned to collaborate with AI as an assistant. In Horizon 2, she became a strategic conductor of AI agents. In Horizon 3, she evolved into a creative visionary, ensuring that autonomous operations serve human purposes. Her weekend stays uninterrupted across all three horizons, but the scope and complexity of autonomous work grow from routine tasks to entire business ecosystems.

How the superfluid enterprise could drive superfluid markets and economies

Almost nine decades ago, economist Ronald Coase established that firms exist to remove operating frictions. Yet, firms have also benefited by perpetuating some sources of external friction—such as switching costs or information asymmetries, which built economic moats, giving them more market power and competitive advantage.

With the move to superfluidity, these friction-based advantages will turn into strategic vulnerabilities, meaning that superfluid enterprises could have effects beyond company walls, and make markets and economies superfluid as well.

Consider three key shifts that are changing competitive dynamics:

  • The erosion of switching costs: Traditional switching costs — such as data migration complexity, retraining requirements, and integration challenges — are diminishing as AI systems become capable of automatically translating between any platforms. Smart contracts can automate even the most complex vendor transitions, lowering switching costs from millions of dollars and months of effort to thousands of dollars and days of automated migration.
  • The democratization of information: Many successful companies have built defenses by controlling how information flows and keeping information asymmetries. Today, AI systems make market intelligence, pricing data and operational insights accessible to more people. What used to take specialized analysts weeks to gather can now be generated, examined and acted on by AI agents instantly.
  • The automation of coordination: Complex supplier networks, regulatory requirements and multi-stakeholder coordination once created natural barriers to entry. Organizations with superior coordination capabilities enjoyed sustainable advantages. In a superfluid enterprise, autonomous AI agents will excel at these coordination tasks, reducing the salience of coordination complexity as an entry barrier.

JPMorgan Chase's blockchain-based payment platform, Kinexys (formerly Onyx), exemplifies this core shift in reducing payment friction. By utilizing blockchain technology for cross-border payments, the platform offers 24/7 real-time settlements in minutes rather than the traditional two to three days required by correspondent banking systems. Since its launch, Kinexys has processed over $1.5 trillion in transaction volume and now manages more than $2 billion in daily transactions, with payment volumes increasing 10 times year-over-year. The platform enables near-instant cross-border FX transactions in USD, EUR, and GBP, creating competitive advantage that attracts new business and fosters innovative service models.10

Companies succeeding in this shift aren't trying to keep friction-based defenses — they're aiming to remove friction first, building network effects and ecosystem benefits that grow in the opposite way. As more partners join their superfluid platforms, these companies become more valuable to everyone, creating positive feedback cycles that traditional friction-based strategies can't compete with.

Sector pathways to superfluidity: varied timelines and distinct approaches

The journey to superfluidity will vary across sectors depending on regulatory frameworks, data requirements, competitive forces and technological development. Recognizing these patterns helps organizations forecast changes and discover cross-industry innovation opportunities. Here are a few examples:


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Chapter 2

Building blocks of the superfluid enterprise

Building superfluid enterprises requires combining multiple technologies and rethinking the human-machine hybrid partnership.

A confluence of technologies

Superfluid enterprises utilize three core technologies working in synchronized harmony:
 

1. Agentic AI for coordination

In a superfluid enterprise, advanced AI agents do more than automate individual tasks, they coordinate complex, multi-step processes across organizations. These agents understand context, make decisions within set parameters, and adapt to changing conditions without human intervention.

 

Real-world implementations demonstrate this potential. CrewAI's enterprise adoption platform, now adopted by 60% of Fortune 500 companies, allows AI agents to work together on complex projects, with some implementations replacing entire departments' coordination tasks. Teams report spending 60% more time on creative problem-solving and 40% less time on status updates and administrative coordination.11 JPMorgan's autonomous payment systems coordinate multiple banking functions that previously required extensive human coordination.12
 

2. Smart contracts for governance

Blockchain-based smart contracts replace traditional contracts that require human interpretation and enforcement. They execute automatically when predefined conditions are met, enabling business processes to run at algorithmic speed with perfect consistency and transparency. Enterprise adoption is growing rapidly, with large organizations (10,000+ employees) representing 60% of smart contract usage and 90% of global organizations having started adopting blockchain technology.13

 

Power Ledger's blockchain platform showcases this potential in the energy sector. The system enables peer-to-peer energy trading through smart contracts that automatically match buyers and sellers, process payments, and optimize renewable energy distribution. Platform participants are saving 15-25% on energy costs while boosting renewable energy usage by 40% — outcomes that would be impossible to achieve through traditional utility coordination systems.14
 

3. Digital twins for visibility

Digital twins — dynamic, virtual replicas of a company’s physical objects, processes or systems — offer unmatched transparency and control for autonomous operations. When AI agents run the vast majority of a finance function, digital twins can generate real-time, auditable models of those processes, maintaining human oversight even in fully autonomous operations. Advanced implementations of digital twins reach 90-95% predictive accuracy compared to 60-70% for traditional monitoring systems.15

 

Organizations that can unlock enterprise data securely and compliantly while enabling autonomous coordination will achieve superfluidity first. The winners won't just be those with the best AI—they'll be those who can orchestrate AI, smart contracts, and human creativity into seamless networks that adapt faster than traditional hierarchies can respond.
 

The human quotient: building hybrid human-AI partnerships

The most effective superfluid transformations focus not on replacing humans but on forming partnerships that enhance human abilities in ways that pure automation cannot reach. Research consistently shows that hybrid human-AI approaches perform better than either humans or AI working alone.

The combination of humans, AI and narrative leads to a 265% boost in creativity compared to humans alone, while AI alone achieves just 120% of human-only performance.

Research by Bryan Cassady, CEO of the Global Entrepreneurship Alliance and author of The Generative Organization, reveals compelling patterns: “The combination of humans, AI and narrative — the distinctly human ability to create meaning, context, and strategic direction from data and turn AI-generated insights into compelling stories — leads to a 265% boost in creativity compared to humans alone, while AI alone achieves just 120% of human-only performance.”16 This finding challenges the common belief that AI's value lies in replacing human labor; rather, the greatest benefit comes from complementary capabilities that neither humans nor AI can achieve alone.

Three human skills are becoming increasingly important in superfluid organizations:

  • Context engineering: While AI excels at processing information within set boundaries, humans will remain vital for framing problems, setting limits and establishing success criteria across complex, multi-stakeholder ecosystems. Context engineering involves turning strategic goals into frameworks that AI agents can carry out while staying aligned with organizational values and stakeholder expectations.
  • Strategic thinking: Humans excel at asking the crucial question: "Are we solving the right problems?" As AI systems continuously optimize within set parameters, human strategic thinking shifts toward meta-iteration — the ability to step back, evaluate system performance, and redirect automated processes toward higher-value goals. This involves recognizing patterns across multiple domains and knowing when to redirect systems that optimize for the wrong goals.
  • Story-driven innovation: Human storytelling abilities become major catalysts when paired with AI analysis. Stories independently increase human creativity by 45%, but when combined with AI-generated insights, they enable breakthrough innovations that pure data analysis cannot reach.17 The key is that humans can take AI-generated data points and transform them into compelling business cases that motivate teams, secure funding, and drive strategic change. Humans who can interpret AI insights and turn them into compelling narratives become "mega-experts": individuals who excel at human-AI collaboration, with organizations reporting that 55% of businesses admit making wrong decisions about AI-related employee redundancies, highlighting the importance of strategic human roles in AI transformation.18

Dr. Terri Horton, work futurist, stresses that successful human-AI collaboration requires treating AI systems as sophisticated tools rather than human-like partners, while ensuring both humans and AI contribute to clearly defined business objectives.

Organizations successfully navigating this transition understand that the goal isn't just efficiency through replacement, it's about amplification through collaboration. The companies that see the highest returns on AI investment are those that redesign work to leverage uniquely human capabilities while letting AI handle coordination, analysis, and execution tasks that machines do more effectively.

Redefining competitive advantage in a transparent world

If superfluid enterprises enable unprecedented transparency and universal access to AI capabilities, how do organizations build sustainable competitive advantage? The answer lies not in controlling information or maintaining barriers, but in mastering three new sources of differentiation.

  • Speed of adaptation: While all companies may access similar technologies, competitive advantage goes to those who can reconfigure the fastest. Organizations that excel at quickly coordinating AI agents, smart contracts and human creativity can respond to market changes in hours rather than months, creating temporal advantages that grow over time.
  • Network orchestration: Success increasingly relies on coordinating complex ecosystems rather than controlling internal resources. Companies that become central nodes in valuable networks, attracting top partners, suppliers and talent through superior coordination, build positions that are hard to duplicate even with similar technology.
  • Purpose-driven innovation: In a world where operational excellence becomes a commodity due to AI, competitive advantage shifts toward human-centred value creation. Organizations that blend adaptable capabilities with inspiring missions, ethical principles and creativity-led innovation foster loyalty and differentiation that pure efficiency cannot achieve.

The defining characteristic of success in superfluid markets isn't technological advantage — it's the organizational ability to constantly blend human creativity with AI coordination to generate unique value for connected stakeholder networks.

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Chapter 3

Actions for leaders

Leaders must build tech foundations, evolve governance, and develop talent to prepare their organizations for the shift to superfluid enterprise operations.

The move to superfluid operations is a journey, and we are still in Horizon 1. Getting to Horizon 3 will require addressing issues ranging from regulatory uncertainty ­— for instance, around autonomous business operations, the enforceability of smart contracts, liability for AI decisions and shifting tax environments — to the complexity of linking legacy systems, ensuring data quality and achieving interoperability.

Still, there is much that business leaders can and should be doing now to build the foundation and enable the move to superfluidity. Here are five near-term actions leaders can take in Horizon 1, while also building a foundation to prepare for the move to Horizons 2 and 3.
 

1. Lay the technology foundation

Evaluate your current technology setup to prepare for AI readiness and ecosystem compatibility. Invest in technology that eliminates data silos, connects your current systems and creates a stable platform for AI tools to operate reliably. This foundation enables AI systems to access the necessary information and work together effectively, even in complex or unpredictable business situations.

 

Superfluid transformation is cumulative. Organizations that begin building capabilities now will develop advantages that become increasingly difficult for competitors to replicate. Those who can unlock enterprise data securely and compliantly will achieve superfluidity first. Early investments in data quality, integration capabilities, and AI-native architectures compound over time, creating organizational capabilities that provide sustained competitive advantage.

 

Organizations waiting for "perfect" AI solutions will find themselves increasingly isolated from ecosystem partners who have embraced current capabilities with continuous improvement approaches. Perfection is less important than progression. Companies that start now with imperfect but improving systems will develop the expertise, partnerships, and infrastructure that late entrants cannot quickly acquire.
 

2. Establish governance that evolves with superfluid adoption

Three-quarters (75%) of technology leaders cite governance as their main concern when deploying autonomous systems, yet only 18% of organizations have established comprehensive AI governance councils.19 This governance gap creates serious risks related to accountability, compliance and ethical decision-making as systems become more autonomous. Meanwhile, organizations with comprehensive AI governance frameworks report significantly higher transformation success rates, with 78% of organizations using AI in at least one business function and those with structured approaches showing stronger outcomes compared to those pursuing rapid, uncontrolled deployments.20

 

Develop hybrid governance models — frameworks that blend human strategic oversight with AI-powered operational decisions. In these systems, humans define objectives, set ethical boundaries and monitor outcomes, while AI systems handle routine choices within established parameters. Begin with pilot programs in non-critical business areas, set clear success metrics and develop frameworks for scaling successful methods across the organization. As these systems prove reliable and build stakeholder confidence, organizations can gradually expand the scope of autonomous decision-making while maintaining human accountability for strategic direction.

 

This requires rethinking traditional approval processes, risk management frameworks and quality assurance systems. Superfluid governance emphasizes setting parameters and monitoring outcomes rather than controlling processes. Leaders must become comfortable with systems that make operational decisions independently while maintaining clear accountability for strategic direction and ethical boundaries. The fundamental shift is from "approving every decision" to "ensuring decisions align with our values and objectives."

3. Build key workforce skills and initiate cultural change

Fifty-eight percent of CIOs report that cloud computing skills are in the shortest supply, while 40% of organizations cite skills gaps as major barriers to transformation.21 The move to advanced operations requires new skills that combine technical knowledge with business strategy and ethical reasoning — skills that are currently scarce in the market.

 

Systematically invest in developing key skills in your workforce, such as context engineering, strategic thinking and story-driven innovation skills. Measure success by business impact: track how AI-enabled employees contribute to revenue growth, customer acquisition and competitive advantage rather than traditional productivity metrics like hours worked or tasks completed. Focus training programs on human-AI collaboration instead of traditional skill replacement or purely technical training.

 

The transformation to superfluid enterprise requires cultural change as much as developing skills. Employees will thrive by learning to work with AI agents as collaborative partners rather than just tools, becoming comfortable delegating routine decisions and focusing on higher-value creative and strategic work.

 

The main challenge in this cultural shift isn't technology, it's management’s willingness to give up operational control while keeping strategic oversight. Traditional management depends on human oversight for key decisions, but autonomous operations require trust in systems to make operational choices within set boundaries.
 

4. Rethink your ecosystem strategy

Systematically map your value network and identify opportunities for smart contract automation and cross-organizational coordination. Start with simple bilateral agreements and grow toward complex multi-stakeholder orchestration as capabilities develop. The aim is to create network effects that make your organization more valuable to ecosystem partners.

 

Successful ecosystem strategies prioritize removing friction for all participants instead of maintaining proprietary advantages. Lowering rather than raising switching costs may seem counterintuitive, but it can be very successful in gaining market adoption — as demonstrated by open source software models — and build stronger competitive positions through network effects and collaborative value creation.
 

5. Transform Organizational Structure and Talent Management

The shift to superfluidity demands fundamental changes in organizational design. Traditional hierarchical structures with rigid chains of command will be replaced by flatter networks of executives collaborating with interconnected AI agents. This change affects talent management in three key areas:

  • Leadership Development: Prepare executives to coordinate AI agent networks instead of overseeing traditional reporting structures. Leaders need to become comfortable with decentralized decision-making while still maintaining strategic oversight.
  • Role Redesign: Rethink roles around human-AI collaboration instead of only human tasks. Focus on creating roles that use distinct human skills — creativity, ethics, strategic thinking — while letting AI agents handle coordination and execution.
  • Performance Management: Move from individual productivity metrics to measures of ecosystem impact. Assess employees on their ability to enhance AI capabilities, foster cross-functional innovation and contribute to network effects instead of just traditional task completion metrics.
     

About the authors


Summary

The shift toward superfluid enterprises signifies a fundamental change in how business creates value. As AI, blockchain, and ecosystem technologies mature, organizations will need to choose between leading by reducing operational friction and building network-based advantages, or risk being displaced by more agile competitors. Beyond technology, success requires changes in governance, culture, and strategic thinking. While we are still in Horizon 1, there is much leaders can do today to prepare for and accelerate this shift. Those that succeed will see this transformation as a chance to boost human creativity and strategic thinking, not just automate existing processes.

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