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Friday, June 19, 2026

The Halo Is Changing: AI, Accenture, and the Reinvention of IT Services

There are moments in every industry when the numbers matter, but the narrative matters even more. Accenture’s recent market reaction feels like one of those moments. This is still a formidable company with global scale, trusted boardroom access, deep enterprise relationships, delivery discipline, and a long history of navigating technology transitions. It has not suddenly become weak, nor has it forgotten how to serve clients. The sharper point is that investors are now asking whether the old IT services value equation deserves the same valuation halo in an AI-native world.

For decades, the global services industry carried a powerful halo. Scale was seen as strength. Headcount was seen as capability. Global delivery centers were seen as industrial muscle. Certifications, offshore leverage, utilization, partner tiers, and pyramid structures were interpreted as signs of maturity. Large transformation programs were seen as proof of customer intimacy. The ability to mobilize thousands of people across geographies became the defining proof that large services firms were indispensable to enterprise technology. That halo was not artificial. The industry earned it by helping enterprises move from mainframes to ERP, from ERP to cloud, from fragmented systems to digital platforms, and from manual operations to automated workflows.



But AI is changing the lens through which the industry is being judged. That does not mean services companies are becoming irrelevant. In fact, the opposite may eventually prove true. As enterprises move from AI experimentation to AI at scale, services companies may become even more central because they sit at the intersection of technology, process, data, governance, compliance, change management, and execution. What is changing is not the relevance of services. What is changing is the measure of relevance.

This is where Phil Rosenzweig’s idea of the Halo Effect becomes useful. When companies perform well, observers describe their leadership as visionary, their culture as disciplined, their people as energized, and their strategy as bold. When performance turns, the same organization is suddenly described as complacent, overexposed, bureaucratic, or strategically confused. The underlying company may not have changed in a day; the interpretation has. Performance contaminates judgment. During success, everything is covered in gold dust. During pressure, everything is seen through smoke.

The services industry must avoid both extremes. The old halo said large services companies would always win because they had reach, relationships, talent, process maturity, and trusted delivery. The new reverse halo says they are vulnerable because AI will automate the work on which they depend. Both views are incomplete. IT services are not dead. Enterprises are not suddenly simple. Legacy estates remain complex. Data is still fragmented. Business processes are full of exceptions. Cyber risk is increasing. Regulatory scrutiny is rising. SaaS, cloud, data, and AI ecosystems are becoming more interconnected, not less. What is fading is not services; what is fading is the comfort of undifferentiated, labor-heavy, effort-priced services.

The old IT services equation was built around effort: people multiplied by billing rates, utilization, and duration. The industry perfected this model. It industrialized talent sourcing, training, global delivery, quality processes, program management, and account mining. It became a remarkable execution engine for the enterprise world. For every major technology wave—cloud, SaaS, digital, cybersecurity, data, analytics—the answer usually involved more migration, more integration, more support, and therefore more services effort. AI is different because it does not simply create new work; it questions the unit of work itself.

If a code migration that once required 200 people can be done by 40 people plus AI agents, who captures the saved value? If testing, documentation, support, configuration, process mapping, and knowledge management can be compressed dramatically, does the services firm protect the old effort model or lead the new productivity model? The right answer is clear: services firms must lead the productivity shift. Firms that help clients compress work, improve quality, reduce risk, and accelerate transformation will not lose relevance. They will move closer to the center of enterprise reinvention.

One analogy may help. The traditional services model was like a large factory floor. When demand increased, you added more stations, more workers, more supervisors, more shifts, and more throughput. Scale mattered because throughput depended on coordinated human effort. The AI-native services model looks more like a power plant. The question is not how many people are standing on the floor; the question is how much energy the system generates, how efficiently it converts input into output, how reliably it runs, and how safely it operates under stress. Services companies cannot simply sprinkle AI tools across the old factory and call it reinvention. They have to redesign the machinery itself: pricing, delivery methods, workforce architecture, incentives, IP creation, governance, and client value measurement.

This is why Vishal Sikka’s warning deserves attention. His argument that services-led and software companies may need radical reinvention, even potentially outside the glare of public markets, should not be read only as a call to go private. It is better understood as a call for strategic freedom. Public companies are often rewarded for quarterly stability: predictable margins, utilization, cash conversion, dividends, buybacks, and incremental growth. But AI reinvention may require bold moves that create short-term discomfort—cannibalizing legacy revenue, shrinking effort-heavy work, investing heavily in AI-native platforms, changing incentives, retraining at scale, acquiring capability rather than capacity, and accepting temporary margin pressure. The larger question is whether services companies can act with the independence and speed required to disrupt themselves before clients or competitors do it for them.

The positive interpretation is that services companies are not starting from weakness. They have enormous advantages if they choose to use them differently. They understand enterprise complexity. They know how large companies actually operate. They understand messy legacy estates, regulatory constraints, process exceptions, security concerns, data fragmentation, and organizational resistance. They have relationships with CIOs, CFOs, CHROs, business heads, and transformation leaders. They know how to run programs across geographies, functions, and platforms. In an AI world, where the hardest work will be moving from pilot to production, these advantages can become even more valuable.

The Netflix analogy is relevant here. Netflix did not survive because it loved DVDs. It survived because it was willing to attack the DVD model while that model was still profitable. It moved from mail-order DVDs to streaming, then from streaming distribution to original content, and then into global entertainment infrastructure. The hardest time to reinvent is not when the old model is dead; it is when the old model is still producing cash. That is where many services companies are today. The traditional model is not dead. It still produces revenue, employs millions, serves clients, and creates value. But the next model must be built before the old one visibly declines.

The services industry also needs to avoid the classic mistake of judging performance only in absolute terms. A company can improve and still fall behind. Revenue can grow and still disappoint. Margins can remain healthy and still be repriced. Internal dashboards can show thousands of people trained on AI, hundreds of pilots launched, dozens of partnerships announced, and many internal productivity programs underway. But these are absolute measures. The real question is relative: are services companies moving faster than client expectations, faster than competitors, and faster than the rate at which AI is commoditizing traditional effort?

This is where the measurement system must change. In the old model, the industry measured headcount, utilization, pyramid ratio, billability, certifications, bookings, revenue, margin, and delivery efficiency. Those metrics still matter, but they are no longer sufficient. The new measures must include AI-led productivity, cycle-time compression, defect reduction, autonomous resolution, reusable IP adoption, revenue from AI-native offerings, client outcomes achieved, work eliminated through automation, agent governance maturity, and value delivered per employee. The industry does not need to abandon discipline. It needs a new discipline.

Another analogy helps here: the difference between a barometer and a thermostat. Many companies use AI metrics like a barometer. They report the weather: how many people were trained, how many pilots were launched, how many tools were deployed, how many partnerships were signed. That is useful, but it does not change the room. A thermostat changes the temperature. Services firms now need thermostat metrics: how much work was actually compressed, how much quality improved, how much speed increased, how much cost was avoided, how much revenue shifted to differentiated offerings, and how much measurable value was created for the client. The industry does not need more AI weather reports. It needs proof that the operating temperature has changed.

The future value equation for services companies will not be people multiplied by rates. It will be intelligence multiplied by trust. The winning firms will combine domain depth, data capability, AI-native delivery, reusable IP, governance, ecosystem orchestration, and change leadership. In banking, life sciences, manufacturing, insurance, telecom, retail, healthcare, and the public sector, AI cannot be deployed safely with generic coding skills alone. It requires business context, regulatory understanding, process redesign, exception handling, auditability, security, human oversight, and measurable outcomes. AI without domain depth is like a brilliant intern: fast, impressive, and occasionally dangerous. Enterprises will still need guides, architects, integrators, and accountable transformation partners. The opportunity is for services firms to become those partners at much higher levels of value.

This is why the next phase could put services companies at centerstage. The first phase of generative AI was model fascination. The second phase was pilot proliferation. The third phase will be enterprise adoption at scale. That third phase is where services companies matter most. Models alone do not transform enterprises. Copilots alone do not redesign operating models. Agents alone do not resolve data quality, security, compliance, integration, and change management. The real enterprise AI challenge is not creating impressive demos. It is making AI work reliably, safely, repeatedly, and measurably inside complex organizations. That is a services problem as much as a technology problem.

The center of gravity will therefore move from “AI tools” to “AI operating models.” This is where services firms can lead. They can help clients redesign processes around agents, modernize data foundations, integrate AI into enterprise applications, build control towers for agent governance, establish human-in-the-loop models, measure productivity, manage risk, retrain workforces, and convert scattered pilots into scalable transformation programs. This is not lower-value work. It is higher-value work. But it must be priced, sold, staffed, and measured differently.

There is also a human dimension to this transition. The IT services industry employs millions of people. Behind phrases like automation, productivity, compression, and AI leverage are careers, families, aspirations, and identities. Reinvention cannot simply be a financial exercise. Developers must become AI-augmented engineers. Testers must become quality architects. Business analysts must become process intelligence specialists. Project managers must become transformation orchestrators. Support teams must become automation supervisors. Domain experts must become agent trainers, model evaluators, and governance owners. The worst version of the future is AI as a blunt cost-cutting weapon. The best version is AI as a way to raise the quality, leverage, and dignity of work.

The final lesson from the Halo Effect is humility. Markets overpraise during good times and overpunish during bad times. A single stock reaction does not define the destiny of a company or an industry. Accenture and other leading services firms have reinvented many times before, and it would be unwise to underestimate their ability to do so again. But it would be equally unwise to dismiss the signal. AI is forcing the services industry to justify its value in a world where intelligence is abundant, automation is accelerating, and clients are under pressure to do more with less.

The old halo was built on scale. The new halo will be built on intelligent scale. The old model sold effort. The new model must sell outcomes. The old model celebrated utilization. The new model must celebrate work compression. The old model priced people. The new model must price value. The old model implemented systems. The new model must redesign work. The old model was powered by labor arbitrage. The new model will be powered by agentic leverage, domain depth, data readiness, governance, and trust.

This is not the end of IT services. It may be the beginning of a more important chapter. Services companies can move to centerstage in the enterprise AI era because they are uniquely positioned to translate AI potential into enterprise reality. But to do so, they must change what they measure, what they reward, what they sell, how they deliver, and how they define value. The halo has not disappeared. It is changing. The companies that understand this will not merely survive the AI transition. They will define it.

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Tuesday, June 16, 2026

Mastering Token Economics: How Agentic AI Reshapes Enterprise Opex and Strategic Control - Part 2

Part 1 was about operating models and talent, Part 2 is about money: the token economics of Agentic AI. As organizations move from human-centric opex (salaries, benefits, overhead) to agent-centric opex (tokens, APIs, compute, orchestration), they discover that the path is anything but linear.

On paper, the vision is enticing: a future mix where 20–30% of today’s headcount opex is replaced by spending on tokens, models, and data. In practice, enterprises face a messy middle: overlapping costs, surging token usage, unclear ROI per task, and governance models that lag the technology curve.

The goal of this second part is to reinterpret those challenges through your Agentic AI framework – not as obstacles, but as design levers that large enterprises can use to build structural advantage.

The cost-per-task paradox: Falling prices, stubborn bills

The research describes an uncomfortable reality: even as model prices fall sharply (roughly an order-of-magnitude per generation), the effective cost per task is often staying flat. Three forces drive this:

  • Most organizations stay on the latest frontier model instead of downgrading once a new generation arrives.

  • Tokens per query rise as agents tackle more complex, multi-step workflows involving tool calls, error correction, and large context windows.

  • Usage expands rapidly once teams experience what agents can do, leading to more workflows being automated or augmented.

The net effect: token prices per unit decline, but total token consumption multiplies, leaving the overall bill “stubbornly high.” That is the cost-per-task paradox.

From an Agentic AI viewpoint, this is not surprising. As the capability frontier moves, enterprises naturally push more decision-making and autonomy into agents. The work itself becomes more complex, not less. Without intentional design, cost follows complexity.

Three levels of token economics: CEO, GM, and individual

The attached material frames token economics as a three-level problem: CEO, general manager (GM), and individual user.

  • At the CEO level, the destination is clear: massively higher productivity and a shift in opex composition. Leaders are impatient with organizational friction, not with AI’s potential. In Agentic AI language, they are trying to move the entire enterprise from tool-usage to agent-orchestration.

  • At the GM level, the problem is budgets and speed. Pilots show strong results, but scaling to thousands of users requires approvals, security reviews, and redesigns that don’t fit quarterly cycles. Token spend doesn’t neatly map to existing line items, creating friction in P&L management.

  • At the individual level, token usage is extremely skewed. Early data indicates that the top 5% of users often consume more tokens than the remaining 95% combined. These are the “hero users” – superagents in human form – who often say, “I don’t need a team; they slow me down.”

In your Agentic AI framework, these three levels correspond to:

  • Strategic agency (CEO level): where to bet, how far to shift decisions into agents, and how to sequence change.

  • Operational agency (GM level): how to fund and govern an AI compute budget that cuts across traditional functions.

  • Individual agency (user level): how to empower superusers without blowing up cost, and how to bring the rest of the organization across the experiential chasm.

Recognizing these three vantage points helps large enterprises avoid one-size-fits-all approaches to token economics.

What would actually swing the economics?

Several variables could radically alter the trajectory of token economics – positively or negatively. Through an Agentic AI lens, each is a design choice or external constraint that leaders must actively monitor and shape:

  • Token cost trajectory: If frontier pricing falls by 10x per generation and usage does not scale proportionally, the economics tip quickly. So far, however, organizations keep shifting to newer frontier models while increasing task complexity.

  • On-premise inference: Running open-weight models on enterprise-owned silicon could shift costs from opex to capex. This is underexplored but potentially a major lever, especially for high-volume, repeatable workloads.

  • Model right-sizing: Matching model complexity and cost to task value is critical. A draft internal email does not need the most advanced reasoning model, whereas a customer-facing financial forecast might.

  • SaaS and platform lock-in: Major enterprise platforms (CRM, ERP, ITSM, HR) control the data fabric. Their willingness to expose agent-friendly APIs and shift to consumption-based pricing will either accelerate or slow the opex shift.

  • Organizational clock speed: Enterprises that decouple AI and org design decisions from annual planning will move faster than those anchored to rigid fiscal cycles.

  • Regulation and trust: Even if agents can perform complex compliance or risk tasks, human sign-off is still required today. The speed of regulatory adaptation and trust-building sets an upper bound on agent autonomy.

  • Quality at scale: Pilots are easy; running thousands of concurrent agent workflows with robust monitoring, error correction, and fallback mechanisms is hard.

Agentic AI enterprises treat these as a portfolio of levers, not as fixed background conditions. They experiment with on-premise inference, push vendors on APIs, build robust monitoring for quality at scale, and actively manage model selection rather than defaulting to a single model for everything.

Designing an AI compute budget: Treat tokens like cloud in 2015

One of the most actionable recommendations in the research is to create a dedicated AI compute budget, rather than funding tokens opportunistically from existing line items. This mirrors how leading enterprises treated cloud migration 10–15 years ago: as a transformation initiative with its own governance, metrics, and guardrails.

In an Agentic AI framework, this dedicated compute budget becomes the financial backbone for your agent fabric. It allows you to:

  • Make deliberate trade-offs between frontier vs last-generation vs open-weight models.

  • Fund high-impact, high-complexity use cases that require premium reasoning, while keeping routine workflows on cheaper models.

  • Align token spend with strategic outcomes (e.g., time-to-market reduction, NPS improvement, risk reduction) rather than viewing it as generic “IT cost.”

Without this, AI investments become fragmented, and token spend is vulnerable to mid-quarter cuts that kill momentum. For large enterprises, this is a structural decision: treat AI compute as a shared, strategic utility, not as discretionary functional spend.

Portfoliating your models: Stop flying first class for every trip

The research suggests that organizations that “model-match” (choosing the right model for each task) can see 3–5x cost differences compared to those that use a single frontier model for everything. This is exactly where Agentic AI architectures can shine.

A practical portfolio approach looks like this:

  • Frontier models for high-stakes, high-complexity tasks where quality and reasoning depth drive significant business value.

  • Previous-generation or mid-tier closed models for moderate-risk, moderate-complexity tasks at scale.

  • Open-weight models (possibly on-prem) for high-volume, low-risk tasks where latency and cost are more important than frontier capability.

From an Agentic AI perspective, this is essentially agent routing and arbitration. A top-level orchestrator agent decides which model to call based on the task type, required assurance level, and cost sensitivity. As the research notes, when a large telco reorchestrated its architecture so that a super-agent routed tasks to smaller, specialized models instead of pushing everything through frontier, it reported a 90% cost reduction and 3x throughput. That is token economics as system design.

Instrumenting cost per task: From blind spend to actionable telemetry

Perhaps the most important – and most underdeveloped – practice in enterprises today is instrumenting cost per task, per workflow, per outcome. Many organizations have no idea what it costs, in token and compute terms, to:

  • Generate a proposal

  • Resolve a Tier-1 support ticket

  • Produce a first-draft contract

  • Run a specific analytics scenario or simulation

Without this telemetry, enterprises are optimizing blind. In an Agentic AI framework, cost-per-task instrumentation becomes part of the agent observability stack. Alongside quality metrics, latency, and error rates, you track economic metrics at the same level of granularity. That enables:

  • Rational decisions on where to apply frontier vs cheaper models.

  • Real-time governance on superusers’ token consumption without blunt caps that kill high-value experiments.

  • Dynamic routing and throttling based on budget constraints, not just technical constraints.

For large enterprises, building this metering early is painful but essential. Retrofitting cost observability after hundreds of agent workflows are live will be far more expensive.

Planning for the dual-cost transition: Paying for people and tokens

There will be a period – likely several years – where enterprises pay for both the legacy workforce and a rapidly growing token bill. The research is explicit: this is not a smooth glide path; it is a nonlinear transition full of cost overlaps and quarters where the math looks ugly.

In Agentic AI terms, this is the cost of parallel agency:

  • Human agency remains fully in place (existing roles, org charts, and processes).

  • Agentic agency is being layered on top (agents embedded in workflows, pods running faster, new AI-native initiatives).

Executives should treat this as a deliberate investment phase, not as a failed cost-saving exercise. That requires:

  • Mapping where overlaps are most acute – which workflows will still have full human teams while agents come online.

  • Setting explicit ROI expectations and timeframes for each major AI investment.

  • Communicating to boards and investors that this is a structural transformation, not a short-term headcount arbitrage.

In practice, this looks like the “Next Monday” style prompts from the research: pull your top SaaS contracts and current token spend, instrument one end-to-end workflow, and use that as a reference point for broader planning.

Opportunities for large enterprises: From cost management to strategic leverage

If we step back, the emerging picture for large enterprises is not just about surviving token economics; it is about using them as a strategic lever in your Agentic AI journey.

Here are the core opportunities:

  • Design a token-aware Agentic architecture: Agents route tasks to appropriate models based on value, risk, and cost. This turns token economics into a design parameter, not a post-hoc surprise.

  • Use token telemetry to prioritize transformation: High-cost, high-frequency workflows become priority candidates for redesign, on-prem inference, or specialized models.

  • Build a new governance layer around AI compute: A dedicated budget, clear guardrails, and cross-functional oversight avoid both overspend and under-investment.

  • Leverage dual models to accelerate learning: While legacy and agentic models coexist, you can compare outcomes, costs, and cycle times, building a rigorous evidence base for scaling decisions.

  • Signal to talent and vendors that you are an Agentic enterprise: By redefining roles, renegotiating SaaS contracts around API usage, and openly investing in agent-first capabilities, you position your organization as a preferred destination for top talent and cutting-edge partners.

For CXOs, the most important mindset shift is this: token economics are not a separate finance problem to be “handled” after AI deployment. They are integral to how you design Agentic AI into your enterprise – from architecture and operating model to talent and strategy.


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