Key Questions to Anticipate from Stakeholders About the AI Impact on Business

As AI transforms business operations across industries, leadership teams face increasing pressure to make informed decisions about technology investments. According to McKinsey’s January 2025 report, Superagency in the workplace: Empowering people to unlock AI’s full potential, the “long-term AI opportunity” represents “$4.4 trillion in added productivity growth potential from corporate use cases.”

Yet, despite these compelling advantages and massive increases in AI investments from companies like yours, that same McKinsey report highlights that “only 1 percent of leaders call their companies ‘mature’ on the deployment spectrum, meaning that AI is fully integrated into workflows and drives substantial business outcomes.”

This implementation gap shows the crucial need for business leaders to address stakeholder concerns thoroughly and strategically when proposing AI initiatives. And a primary avenue through which to do so is by aligning on metrics early on.

When presenting the business impact of AI, stakeholders will likely have a range of questions based on their priorities and concerns. Preparing thoughtful responses to these inquiries will demonstrate your expertise and build trust in your proposed approach.

Here are some key questions to anticipate:

Revenue and Growth Projections

  • What specific assumptions are driving the revenue growth projections?
  • Are these growth metrics sustainable, or are they tied to short-term trends?
  • How does this initiative impact key revenue drivers like upsell, cross-sell, and average order value?

Customer Impact and Engagement

  • How will this solution improve the customer journey and address pain points?
  • What measures will ensure that the personalization efforts resonate with customers across diverse segments?
  • How will you address privacy concerns related to AI-driven personalization?

Competitive Positioning

  • How does this AI initiative position us against competitors adopting similar technologies?
  • What unique capabilities or differentiators does this solution bring to the market?

Scalability and Adaptability

  • How scalable is this solution as customer needs and expectations evolve?
  • Can the AI system adapt to support new products, markets, or customer demographics?

Risk and Contingency Planning

  • What risks could arise if the AI fails to meet customer expectations or delivers subpar results?
  • How will you manage potential reputational risks tied to AI missteps?

Customer Metrics and Validation

  • What customer feedback mechanisms will be in place to measure the impact of AI on loyalty and satisfaction?
  • How will improvements in metrics like CSAT, NPS, and retention directly link to financial outcomes?

Operational Feasibility

  • How will AI integrate with our existing systems and processes?
  • What level of disruption can we expect during implementation?
  • How will this impact current employee roles, and what retraining or re-skilling will be required?

Cost and ROI Clarity

  • How accurate are the projected cost savings, and what assumptions were used in the calculations?
  • What is the anticipated timeframe to achieve ROI?
  • Are there hidden costs or unexpected expenses we should anticipate?

Time to Value

  • How quickly will customers notice and benefit from these enhancements?
  • What is the expected timeline to achieve meaningful improvements in retention and loyalty?

Final Thoughts

Anticipating these stakeholder questions isn’t just about having ready answers—it’s about demonstrating comprehensive strategic thinking in your AI implementation approach. Gartner research demonstrates that “organizations where the AI team is involved in defining success metrics are 50% more likely to use AI strategically than organizations where the team is not involved.”

As we touch on in another recent article, the landscape of AI implementation is rapidly evolving. Organizations that proactively address stakeholder concerns while maintaining a clear vision of their AI strategy will be positioned for competitive advantage in the coming years.

The journey to successful AI implementation begins with honest assessment. Is your organization prepared to navigate these complex stakeholder conversations?

AI Change Management: A Guide to Successful Agentic AI Adoption in CX

It probably comes as no surprise that a recent study by PwC revealed that more than 60% of employees say they experienced more changes at work in the last year than the one prior. And now the rise of agentic AI is ushering in yet another wave of change for CX teams.

Unlike first-generation AI, agentic AI holds the potential to revolutionize the customer experience, enhancing agent efficiency, building customer trust and loyalty, and driving critical business outcomes. However, along with the promise of groundbreaking improvements in customer experience, integrating agentic AI into CX also presents significant change management challenges.

Whether you’re looking to upgrade an existing chatbot solution or implement an AI agent for the first time, adoption isn’t just about technology. It’s about people. The success of any agentic AI initiative depends on CX leaders’ ability to help their teams and all other stakeholders understand what’s at stake, why they should care, and what they can expect — both good and bad.

This guide explores common AI change management challenges and best practices to help set everyone in your CX organization up for agentic AI success. But first…

What is AI change management?

AI change management is the structured process of integrating AI-driven solutions into business operations while ensuring employees, customers, and other stakeholders are aligned and supported throughout the transition.

The goal? Minimize disruption while maximizing value.

Prioritizing people-related AI change management prior to choosing a vendor makes every other step of the AI change management process significantly less stressful (and more successful). Organizations can strengthen customer trust, upskill their workforce, and innovate more quickly than their competitors — all without disrupting stakeholder morale, satisfaction, or alignment.

Why AI change management is critical for business success

It’s been reported that as many as 80% of companies worldwide now use AI-powered chat on their websites. However, the majority of these instances are “chatbots” that leverage first-generation AI, rather than AI agents that harness the latest large language models (LLMs) and generative AI (GenAI) capabilities to give AI agency — AKA agentic AI.

Here at Quiq, we define agentic AI as a type of AI designed to exhibit autonomous reasoning, proactive and goal-directed behavior, and a sense of self or agency, rather than simply following pre-programmed instructions or reacting to external stimuli. Agentic AI systems can interact with humans in a way that is similar to human-human interaction, such as through natural language processing (NLP) or other forms of communication.

Agentic AI clearly represents a major opportunity for CX leaders to finally deliver unprecedented customer experiences that previous generations of AI have been promising to power for years — one that improves agent productivity, enriches customer relationships, and delivers real results.

But implementing agentic AI without proper preparation can quickly lead to bottlenecks, resistance, and, ultimately, failure. Poor planning and misaligned strategies can lead to process disruption, human agent churn, broken customer trust, and negative ROI. In contrast, structured AI change management ensures smoother transitions. It anticipates risks, proactively addresses employee concerns about AI’s impact on their roles, and establishes clear expectations and goals.

The impact of agentic AI on business and the workforce

The role of AI in CX transformation

There are myriad ways to apply AI across the customer journey. For example, AI agents offer 24/7/365 multilingual support. This improves performance metrics and customer satisfaction while showcasing commitment to delivering personalized experiences — something that AI agents can provide by drawing on customer data from various enterprise systems.

GenAI can also automate content generation, saving time by crafting product information, summaries, and even articles. This not only reduces workloads, but also allows customer service teams to tackle more complex or sensitive tasks.

Successful AI change management in action

An established furniture brand was grappling with customer experience friction and missed sales opportunities in a fiercely competitive industry. To curb these challenges, the company partnered with Quiq to introduce a custom AI agent capable of transforming customer interactions across platforms. The successful implementation and integration of this AI agent enabled the company to drastically reduce customer support escalations to human agents by 33%. It also facilitated proactive customer engagement, leveraging a product recommendation engine that contributed to the largest sales day in the company’s history.

Similarly, a leading national office supply retailer utilized Quiq to build an AI-driven assistant for store associates in just 6 weeks. The ability to rapidly generate accurate information to help answer in-store customer queries has increased associate efficiency by 35%. The AI initiative simplified the store associate’s experience, streamlined access to information, improved customer service efficiency, and significantly boosted job satisfaction and productivity. Results include a self-service resolution rate of 68% and an associate AI satisfaction rating of 4.82 out of 5!

Roles usually involved in AI change management

Successfully integrating agentic AI into your customer experience requires AI change management across a number of key stakeholders, including:

  • Service and support agents: Your frontline service agents are the backbone of your CX strategy — and often the group most concerned about AI integration. Their core question? “Will this replace me?”
  • Marketers: Marketing teams are the storytellers of your brand. They are concerned about creating a singular brand voice and crafting messages that resonate with your audience at every touch point — especially touch points involving AI.
  • Sales representatives: Sales professionals rely on meaningful connections with prospects and customers. Their personal approach has always been a differentiator — which means change invites skepticism.
  • IT: From ensuring data privacy and security to integrating enterprise-grade solutions, IT must handle the back-end complexity of AI platforms. They’ll want assurance of reliability and room to customize configurations for ongoing scalability.
  • Executives: C-suite leaders are key decision-makers driving AI adoption from the top down. They see the bigger picture, but often want to know one thing upfront: “What’s the ROI?”

Common objections and challenges in AI change management

CX leaders encounter a number of challenges and objections when it comes to integrating and adopting agentic AI. Some of the most common that require immediate change management include:

“AI will take jobs away from human agents!”

The fear that AI will replace human agents is one of the most significant barriers to adoption. Employees may worry about their livelihoods, viewing AI as a competitor or threat, rather than a partner or resource.

“AI can’t deliver great customer service…”

Skepticism around AI often stems from previous experiences with underwhelming chatbots. Customers and team members alike may wonder if AI agents have the intelligence and nuance to handle real-world customer concerns.

“What about data privacy and security?”

AI systems require large volumes of data to function effectively, which can raise concerns about privacy, security, and compliance. Some teams may even push for custom solutions built in-house to maintain control.

“What if it damages our brand’s reputation?”

The potential for AI-related issues — misunderstood responses, hallucinations, or off-brand messaging — can trigger anxiety among stakeholders tasked with protecting the company’s public image and perception.

“AI will solve all our problems instantly!”

On the flip side, some stakeholders might naively believe AI to be a magic wand that will instantly resolve all inefficiencies and elevate CX metrics overnight. This unrealistic expectation can lead to disappointment when results are not immediate.

Best practices for AI change management

AI change management isn’t just about removing barriers — it’s about creating advocates. By understanding stakeholders’ concerns and aligning solutions with their priorities, you can demystify AI and build trust in its transformational potential.

AI isn’t a standalone fix; it’s part of a collaborative vision. Focus on education, transparency, and actionable results to align teams and embed confidence in AI’s role. Ultimately, a well-managed transition will enrich not just your CX strategy — but the experience of everyone involved.

Here are a few key best practices for getting folks on board before taking the plunge:

Highlight AI’s role in upskilling human agents

Your team needs clarity on how AI will enhance their roles, not erase them. AI is exceptionally good at automating repetitive, low-value tasks like data entry or providing scripted customer responses. AI also presents agents an opportunity to grow and develop new skills, like interpreting AI insights or managing tech-enabled workflows.

Plus, AI can make those same agents significantly more productive. How? With the automation of simple, routine tasks, combined with AI assistants helping your agents respond faster and more accurately to higher-value conversations.

Engage skeptics in the vendor selection process

Even within forward-thinking teams, some employees will approach AI with hesitation — or outright skepticism. Their reservations often stem from perceptions of over-hyped technology or negative past experiences (hello, ineffective chatbots). Turn skeptics into allies by giving them a seat at the table. Specifically, involve them in identifying and evaluating AI for CX use cases and solutions. This inclusion doesn’t just smooth over resistance, it also helps teams get excited about potential solutions.

Explore “buy-to-build” agentic AI solutions

If technical stakeholders show resistance to off-the-shelf platforms, offer a middle ground. Buy-to-build platforms offer technical teams the flexibility, visibility, and control they crave to build secure, custom experiences that satisfy business needs. At the same time, they save time, money, and resources by handling the maintenance, scalability, and ecosystem required for CX leaders to deliver impactful AI-powered customer interactions.

Invite brand experts to help build and test

Help teams understand that, contrary to popular belief, hallucinations are preventable using a combination of the latest AI technology, retrieval augmented generation (RAG), and sophisticated business logic that runs pre- and post-response generation checks. Then, involve them in the knowledge preparation and testing processes to reassure them that the AI agent is responding to customers in your unique brand voice.

Establish clearly defined objectives and KPIs

AI projects succeed (or fail) based on realistic and measurable outcomes. Clear, incremental goals ensure alignment at every level of the organization and prevent optimistic executives from expecting too much, too soon. Define objectives and KPIs, such as increased first-contact resolution (FCR) rates, improved CSAT or lower customer effort score (CES), that align with broader business goals, and establish timelines that make sense for hitting each one.

Trends in AI change management: Using AI to streamline adoption

Interestingly, AI itself can accelerate change management initiatives in several key ways. AI proves instrumental in making data-driven decisions that propel positive change, like analyzing in-depth employee surveys to identify patterns and trends that can then be proactively addressed. This allows businesses to effectively gauge employee sentiment toward change, helping to drive strategies that are tailored, engaging, and transformative.

AI platforms can sync various communication channels, automate reminders, and even draft communications based on contextual understanding. This creates a more open, transparent, and inclusive environment for all employees, making organizational change more scalable and effective. It also helps bridge any potential communication gaps, ensuring that stakeholders at all levels are aligned with the strategic vision and the change management process.

Preparing for AI-driven change

As Founder & Principal Analyst of esteemed customer experience research and advisory firm Metric Sherpa, Justin Robbins, recently said, “While AI adoption is surging, only a fraction of organizations report tangible success. Why? It’s not because the technology doesn’t work. It’s because too many organizations approach it with unrealistic expectations, incomplete strategies, or resistance rooted in fear.”

These are all issues that must be addressed before signing on the dotted line. Nobody said it was easy — we humans are complex creatures notoriously opposed to change. But there’s more that unites us than divides us, as the saying goes, which is why we were able to successfully classify your change-resistant colleagues into seven common personas.