Market Reality Check
Sponsored by Signals, the leader in AI Cloud Employee technology
The AI vs GTM: 2025 Market Reality Check survey reveals a market in cautious transition rather than revolutionary transformation. Based on responses from 499 GTM professionals, 60% of organizations remain stuck in experimental or observational stages, with 32.1% as "Explorers" running isolated pilots and 23.1% as "Observers" monitoring trends without active implementation.
Only 7.6% have achieved "Architect" status with AI fully embedded across GTM strategy.
This distribution exposes an industry grappling with the practical realities of scaling AI beyond proof-of-concepts, precisely the challenge that Signals addresses through its pre-trained Cloud Employees that deploy instantly without requiring extensive customization or training periods that keep most organizations trapped in pilot purgatory.
The survey successfully captured insights from a diverse cross-section of GTM leaders and practitioners, providing a representative view of the current AI adoption landscape.
The respondent base demonstrates strong representation across all organizational levels, with particularly robust participation from practitioners and middle management:
This distribution ensures the survey captures both strategic perspectives from leadership and tactical insights from those directly implementing AI solutions.
The survey data reveals a striking distribution of AI maturity across GTM organizations, with the majority clustered in the middle stages of adoption rather than at the extremes of complete rejection or full integration. This pattern suggests an industry in active transition, grappling with the practical realities of implementing AI technologies at scale.
These maturity levels range from Skeptics (Stage 0) who actively avoid AI initiatives, to Observers (Stage 1) monitoring trends, Explorers (Stage 2) running pilots, Operators (Stage 3) with established systems, and Architects (Stage 4) with full AI integration across their GTM strategy.
The largest segment of organizations, representing 32.1% of respondents, currently operates in the Explorer stage (Stage 2), characterized by running isolated AI pilots without a consistent organizational approach. This finding challenges the common assumption that companies are either fully embracing AI or completely avoiding it. Instead, the data reveals a more nuanced reality where organizations are actively experimenting but struggling to achieve systematic implementation.
The data demonstrates that while larger companies may have more resources, optimal AI adoption occurs in a specific size range where organizational agility meets adequate resource allocation.
Mid-sized companies (201-500 employees) demonstrate strong operational adoption, with 66.7% in Explorer or Operator stages and the highest concentration of Operators at 37.5%. This suggests that companies in this size range have found the optimal balance between resources and organizational complexity for implementing AI solutions with measurable results.
The 501-1,000 employee range presents an interesting pattern, with the highest percentage of Explorers at 38.2% and a notable 10.9% achieving Architect status. This size category appears to represent organizations with sufficient resources to invest in systematic AI experimentation while maintaining the agility necessary for comprehensive integration.
This pattern suggests that when executives are involved in AI initiatives, they tend to demand systematic implementation and measurable outcomes rather than experimental approaches. Only 9.7% of executives remain skeptical, indicating broad leadership recognition of AI's strategic importance.
Vice Presidents show a more conservative pattern, with 69.0% concentrated in Observer and Explorer stages, suggesting that this leadership tier may be more focused on evaluation and risk assessment before committing to full implementation.
These role-based patterns reveal that successful AI adoption requires alignment across organizational levels, with executives providing strategic direction, managers driving operational implementation, and team leads serving as innovation catalysts. The data suggests that organizations with strong representation in Operator and Architect stages across multiple hierarchical levels are most likely to achieve sustainable AI integration.
The implications of these findings extend beyond simple adoption metrics to reveal fundamental challenges in organizational change management, resource allocation, and strategic alignment that will determine long-term AI success in GTM functions. Organizations must recognize that AI adoption is not merely a technology implementation challenge but a comprehensive organizational transformation that requires careful attention to size-appropriate strategies, hierarchical dynamics, and stage-specific development approaches.
Companies with 501-1,000 employees have cracked the code on AI adoption, achieving the highest readiness scores across all critical dimensions. This segment demonstrates 85% readiness in data infrastructure, 69% executive championship, and 75% change management capability - numbers that dwarf both smaller and larger organizations.
The organizational readiness data exposes why size matters in AI transformation. Mid-sized companies don't just talk about AI - they've built the foundational capabilities to execute on it effectively.
B2B/Tech companies, despite being immersed in the technology ecosystem, rank third at 47.4% - indicating that proximity to AI technology doesn't automatically translate to advanced internal implementation. These companies may be more focused on building AI products than implementing AI for their own GTM functions.
The emergence of mid-sized companies as AI leaders creates a new competitive dynamic. These organizations are building AI capabilities faster than larger competitors while maintaining agility advantages over resource-constrained smaller companies. This "mid-size momentum" suggests a potential reshuffling of competitive landscapes as AI-enabled mid-sized companies compete more effectively against larger, slower-moving incumbents.
For GTM leaders, the message is clear: company size is the driving force in AI adoption, but that force doesn't move in a straight line. The real sweet spot lies in the middle, where resources meet agility, and where strategic vision can be executed without bureaucratic drag.
Despite growing investments, most organizations lack centralized AI budget oversight. The data shows that team-level purchases and ad-hoc executive decisions dominate budget management approaches, indicating that AI procurement remains fragmented across business units.
This fragmentation creates several problems: duplicated efforts, incompatible tool stacks, and missed opportunities for enterprise-wide AI strategies. Organizations spending over $120k annually often lack visibility into total AI-related expenditures across departments.
Funding sources reveal another telling pattern. Rather than securing new budget lines, organizations are primarily redirecting existing resources, consolidating legacy tools, reallocating headcount budgets from unfilled positions, and leveraging natural attrition savings.
Key Finding: Only 11% directly linked AI investments to workforce reductions, contradicting fears about AI-driven layoffs.
This creates a "messy middle" where most organizations are spending enough on AI to feel committed but not enough to achieve transformative results. They're caught between pilot-phase experimentation and production-scale deployment, exactly where the Explorer stage companies identified in Section 2 find themselves.
The data suggests that breakthrough AI adoption requires addressing foundational issues, data infrastructure, talent acquisition, and centralized governance, before increasing spending. Organizations that solve these barriers first will likely emerge as the Architect-stage leaders identified in the maturity analysis.
Address data infrastructure, talent acquisition, and centralized governance before increasing AI spending.
Organizations are being resourceful by redirecting existing budgets rather than securing new funding lines.
Organizations that solve foundational barriers first will likely emerge as the Architect-stage leaders.
The most striking pattern emerges in the $125,000-$175,000 income bracket, where all AI perception metrics spike dramatically.
Key data points from the AI Perceptions by Income graph:
• Money-making potential: 4.06-4.11 (on a 5-point scale)
• Job threat concerns: 3.33-3.94 (on a 5-point scale)
• Fear levels: 3.89-4.00 (on a 5-point scale)
AI perceptions spike dramatically in the $125K-$175K income range, showing both highest optimism and highest anxiety. This "high-earner paradox" likely reflects the position of senior individual contributors and middle managers, roles that combine deep domain expertise with process-heavy responsibilities. They understand AI's capabilities well enough to see both its transformative potential and its threat to their specialized roles.
Unlike executives who set strategy or junior staff who execute tasks, this middle tier of senior individual contributors and middle managers feels most exposed to AI-driven disruption.
Leadership roles correlate directly with AI anxiety. Executives score highest across all perception measures: 4.17 for money-making belief (on a 5-point scale), 3.79 for job threat (on a 5-point scale), and 3.62 for fear (on a 5-point scale). This creates what we term the "AI Anxiety Index", a combined measure of job threat and fear perceptions.
Those responsible for driving AI adoption are also the most personally threatened by it. Executives likely understand the strategic implications better than any other group, creating both excitement about competitive advantages and existential concerns about their own relevance.
The human psychology data reveals several strategic imperatives:
The $125K-$175K income group represents the highest-potential change agents, they see AI's value clearly but need support managing displacement fears. These professionals likely influence procurement decisions and team adoption patterns.
Leadership anxiety about personal relevance could undermine organizational AI strategies. Executives need role redefinition frameworks, not just technology training, to channel their AI understanding into strategic advantage.
Organizations risk losing institutional knowledge if experienced workers remain in observation mode while younger workers drive implementation. Reverse mentoring programs could pair AI-native younger employees with domain-expert senior staff.
Cookie-cutter AI adoption approaches will fail. Pacific Coast strategies emphasizing rapid experimentation need adaptation for regions where methodical, proven implementation carries more organizational credibility.
The data suggests that successful AI adoption depends less on technology capabilities and more on addressing the complex human psychology around career security, professional identity, and regional business culture. Organizations that treat AI transformation as primarily a human challenge, supported by technology, are more likely to achieve sustained adoption and competitive advantage.
The money is moving, but it's not growing, it's shifting.
Company size creates spending ceilings, but not in the way you'd expect:
Mid-size companies (501-1,000 employees) show the highest growth rates. They're big enough to invest meaningfully, small enough to move fast.
Here's the disconnect: Everyone's planning to spend more, but most are still managing it like a side project. Team-level purchasing with no centralized oversight creates:
This explains why 31% of companies remain stuck in Explorer mode - they're spending money but not building systems.
The budget data reveals five critical market dynamics:
The bottom line? AI budgets are growing, but AI strategy isn't keeping pace. Companies are throwing money at the problem without building the systems to solve it.
That's why the next 12 months will separate the AI winners from the AI spenders.
Executive hesitation follows closely at 40.4%, creating a leadership paradox: executives know they need AI, but they're not convinced enough to fully commit. This "hedge your bets" mentality keeps organizations stuck in pilot purgatory, never quite investing enough to see transformational results.
Color intensity indicates barrier percentage: Lighter = Lower, Darker = Higher
Data quality concerns spike dramatically at the Observer stage (43.6%), suggesting that organizations become acutely aware of their data problems precisely when they start seriously considering AI implementation. This awareness is both a blessing and a curse - it's necessary for successful AI deployment, but it can also create analysis paralysis.
They're not fighting for initial investment; they're dealing with the massive costs of scaling AI across the entire organization. Their budget challenges are about sustaining growth, not starting it.
The gap between AI excitement and AI investment reveals the true state of organizational commitment to AI transformation. While 90% of organizations express interest in AI for GTM functions, the budget allocation tells a more conservative story, one where strategic repositioning of existing resources matters more than dramatic new investment, and where spending patterns reveal the pragmatic reality behind the marketing rhetoric.
The 2025 projections show modest growth, not revolutionary change. While 45% of organizations spent less than $20,000 in 2024, only 35% plan to remain in that bracket for 2025. The growth is primarily concentrated in the $20,000-$60,000 range, where organizations are moving from proof-of-concept to pilot-scale implementations. This represents evolution, not revolution.
Redirected headcount budget from unfilled positions represents 22% of AI funding, revealing how organizations are beginning to view AI as a workforce multiplier rather than simply a productivity tool. This funding source is particularly significant because it suggests organizations are making conscious trade-offs between human resources and AI capabilities.
Natural attrition savings (10%) and workforce reduction savings (5%) combine to represent 15% of AI funding, indicating that while job displacement concerns are valid, they're not the primary driver of AI investment. Most organizations are finding AI funding through operational efficiency rather than direct workforce replacement.
The relatively low percentage of funding from workforce reductions (5%) contradicts popular narratives about AI-driven layoffs. This suggests that organizations are primarily using AI to augment human capabilities rather than replace them, at least in the current implementation phase.
The budget reality behind AI GTM adoption reveals a market in transition, not the explosive growth often portrayed in vendor marketing, but a methodical, sustainable progression toward AI integration. Organizations that understand and work with these budget realities, rather than against them, are far more likely to achieve meaningful, lasting AI transformation.
The artificial intelligence revolution in go-to-market functions is unfolding through a complex interplay of budget reallocations, measured optimism, and an underlying tension between hope and fear. Analysis of spending patterns and market sentiment from 241 GTM leaders reveals a nuanced landscape where enthusiasm for AI's potential is tempered by practical concerns and strategic caution.
This "Hope and Fear Paradox" reveals the psychological complexity underlying AI adoption decisions. These conflicted leaders are not paralyzed by their contradictory emotions; they maintain above-average spending plans with an average 2025 investment level equivalent to $60,000-$79,000 annually. However, their propensity to increase spending (40.4%) lags behind purely optimistic leaders (62.1%).
Highest levels of both optimism and fear
Over 70% believe AI could threaten their jobs while simultaneously championing AI initiatives
Most balanced sentiment
Show moderate optimism with minimal fear
Greatest stress
Caught between executive mandates for AI adoption and practical implementation challenges
The paradox manifests differently across organizational levels, with executives experiencing the most intense internal conflict between their strategic vision for AI and their personal concerns about job security.
The relationship between artificial intelligence and the professionals evaluating its potential reveals a striking paradox: those positioned to benefit most from AI are simultaneously the most concerned about its implications. This tension between opportunity and anxiety intensifies as we move up both the organizational hierarchy and income spectrum.
Higher earners show significantly more confidence in AI's financial impact.
This income-based confidence likely reflects several factors: higher earners typically occupy strategic roles with greater visibility into AI's potential applications, possess more resources to experiment with AI tools, and have decision-making authority over AI implementations. Their elevated optimism may also stem from their ability to invest in AI education and early adoption, positioning them to capture first-mover advantages.
Executive-level professionals present the most striking paradox: 79% believe AI will significantly help them make money, yet 71% also believe AI poses a substantial threat to their jobs. This apparent contradiction reflects the sophisticated understanding that comes with strategic responsibility, executives recognize both AI's transformative potential and its disruptive capacity.
Senior executives feel most threatened, while individual contributors are more confident
Budget growth is happening, but it's concentrated at the top. The under-$20k crowd is shrinking (-5.5 percentage points), while the $120k+ segment is expanding (+4.1 percentage points). The middle tiers are mostly flat.
Forget the layoff narrative. Only 13.1% of companies funded AI through workforce reductions. The real funding sources tell a different story:
The Real Story: Most AI funding comes from operational efficiency, not job cuts. Companies are consolidating their bloated tool stacks (51.3%) and redirecting money from unfilled positions (42.2%). It's budget reallocation, not budget expansion.
This makes sense. AI is being positioned as a way to do more with the same resources, not as a replacement strategy requiring dramatic headcount cuts.
The numbers reveal three key insights about AI GTM funding:
Over half of companies (51.3%) are funding AI by eliminating redundant tools. The average GTM stack has 120+ tools, AI is the excuse to finally clean house.
42.2% are using unfilled position budgets for AI tools. This is the "AI instead of people" play, but through open positions, not layoffs.
Only 13.1% tied AI spending to workforce reductions. Despite all the job displacement fears, companies aren't using AI as a layoff funding mechanism, at least not yet.
The 2025 AI GTM landscape reveals an industry caught between ambition and execution, aware of AI's potential but struggling to systematically capture it. Based on our analysis of 499 professionals across diverse company sizes and industries, the data paints a picture of cautious progression rather than revolutionary transformation.
The most striking finding is that 60% of organizations remain in the experimental phases (32% Explorers) or observational stages (23% Observers). Only 7.6% have achieved full AI integration as "Architects," while 28% have moved to operational deployment. This suggests that despite the AI hype, most GTM teams are still figuring out how to systematically leverage AI rather than executing mature strategies.
Key Insight: The "messy middle" represents the current center of gravity - companies that understand AI's importance but lack clear frameworks for systematic adoption.
Company size emerges as the strongest predictor of AI maturity. Small companies (under 50 employees) are predominantly skeptical or passive, with 55% remaining in the early stages and just 1.6% achieving full integration. Conversely, mid-size organizations (501-1,000 employees) lead in experimentation, with 38% actively piloting AI initiatives, suggesting this segment has the resources to experiment but hasn't yet scaled to operational complexity.
The emotional landscape around AI is complex. While 40% believe AI will significantly boost revenue generation, nearly 30% harbor substantial fears about AI's impact, and 29% worry about job displacement. This psychological tension, simultaneously viewing AI as opportunity and threat, likely contributes to the hesitant adoption patterns we observe.
Investment patterns reveal pragmatic rather than transformational spending. Despite AI's strategic importance, 44% of organizations spent less than $40,000 on AI GTM technology in 2024. While 22% plan to invest $100,000+ in 2025, this increase appears to represent budget reallocation rather than net new investment, as most funding comes from tool consolidation and redirected headcount budgets rather than fresh budget lines.
Perhaps most concerning is the awareness gap: 41% of respondents have minimal visibility into their company's AI initiatives, while only 34% demonstrate deep familiarity with their organization's AI strategy. This suggests that AI deployment is often occurring in silos, without the cross-functional alignment necessary for systematic GTM transformation.
The data suggests we're in a prolonged transition period rather than approaching an AI tipping point. Organizations are not racing toward AI transformation but are instead methodically evaluating, testing, and gradually implementing AI capabilities.
Moving beyond experimental pilots toward operational excellence. Most organizations are stuck in the evaluation and testing phases.
True AI mastery remains rare, meaning organizations that can execute systematic AI integration maintain a significant competitive advantage.
The 2025 reality is neither the AI revolution predicted by optimists nor the slow adoption feared by skeptics. Instead, it's a measured evolution where success depends less on AI sophistication and more on organizational readiness to systematically capture AI's incremental advantages across the entire go-to-market engine.