Artificial Intelligence (AI) is fundamentally changing how organisations listen to, understand, and act on customer feedback. Moving beyond the limitations of traditional, structured surveys (like NPS or CSAT scores), modern AI solutions are capable of analysing vast amounts of real-time, unstructured data. To fully grasp the success of AI, organisations must be able to understand and measure the hard revenue metrics it influences.
Sid Banerjee, Chief Strategy Officer for Medallia ,comments, “Modern AI solutions can now analyse unstructured data from phone calls, chats, online interactions, and social media to understand customer experiences qualitatively. Large language models are particularly powerful at identifying whether customers are having positive or negative experiences, detecting high-effort interactions, and recognising behavioural patterns that indicate potential churn versus loyalty—all without explicitly asking customers through post-interaction surveys”.
“What makes this particularly valuable is that AI can analyse ongoing conversations as they happen and extract the same insights that would traditionally require lengthy follow-up surveys. This means companies can understand customer sentiment, effort levels, and satisfaction in real-time during phone calls, chats, or even chatbot interactions”, adds Banerjee.
The technology is becoming sophisticated enough to go beyond simple data analysis. It can generate intelligent, prescriptive recommendations for immediate action, providing tactical solutions for frontline employees and informing strategic initiatives for leadership.
Collecting, collating, and analysing customer data with AI
The power of AI, particularly Large Language Models (LLMs) and Natural Language Processing (NLP), lies in its ability to transform messy, conversational data into clear, actionable intelligence. It allows for real-time, qualitative understanding and customer insights. Instead of waiting for a post-interaction survey, AI can analyse ongoing conversations to understand customer sentiment, identify signs of high-effort interactions, and detect behavioural patterns indicative of potential churn or loyalty. This provides a rich, contextual understanding of the experience as it happens.
According to Banerjee, “Customer retention improvements come from AI’s ability to provide much deeper context about negative experiences. Instead of just knowing that a customer had a ‘bad experience’ and is likely to churn, AI can identify whether the problem was related to a specific product, a recurring service issue, or a resolution process that repeatedly fails to actually solve the underlying problem. This level of detail enables companies to address the root causes of churn rather than just trying to patch over surface-level complaints.
AI systems can automatically extract the same insights that would traditionally require time-consuming, manual follow-up surveys. This accelerates the feedback loop and provides a richer, more authentic view of customer experiences based on natural interactions, not prompted responses.
Beyond just analysis, sophisticated AI platforms generate specific, intelligent recommendations. These can range from tactical solutions for frontline agents (e.g., how to resolve a specific issue) to strategic initiatives for leadership teams (e.g., identifying a systemic product defect). Banerjee says, “Medallia’s approach centres on making AI accessible to frontline employees rather than confining it to data science teams. While many companies struggle to make AI useful beyond analyst roles, Medallia has developed what we call Frontline-Ready AI™ specifically designed for contact centre agents, store employees, bank branch staff, and product managers who work directly with customers but aren’t professional data scientists.
Growth and productivity
The transformation driven by AI promises substantial benefits across the business, impacting both top-line growth and operational efficiency. It’s reducing reliance on lengthy, costly surveys, while simultaneously delivering richer insights. It allows for the automation of empathetic, context-aware customer responses and triggers automated actions across different operational systems (e.g., issuing a credit for a poor experience). This streamlines processes and delivers faster response times.
“The productivity benefits are substantial because companies can reduce their reliance on lengthy surveys while gaining much richer insights from natural customer interactions. AI can also automate customer responses in a more empathetic and contextually appropriate way than traditional templated responses, and it can trigger automated actions across different systems, such as offering credits”, says Banerjee.
It can also provide predictive capabilities for churn prevention by identifying root causes rather than surface-level complaints. It also uncovers which specific interactions correlate with a higher Customer Lifetime Value (CLV) and increased revenue, enabling targeted investments in CX.
Companies can build a far more accurate picture of the true cost drivers of customer service interactions, analysing touchpoints, time spent across channels, and channel switching behaviour. This allows companies to focus on making the most expensive and lengthy interactions more efficient.
Key metrics and business performance
AI solutions are delivering measurable improvements across operational efficiency, revenue growth, and customer retention, largely because the measurement approach has become far more sophisticated than relying on traditional metrics alone.
“For operational cost reduction, says Banerjee, “AI helps companies understand the true cost drivers of customer interactions by analysing how many touchpoints are required to resolve issues, how long interactions take across different channels, and where customers move between channels like online, contact center, and retail locations. When you can identify which types of interactions tend to be long versus short, you can focus on making the expensive, lengthy interactions more efficient while maintaining or improving customer satisfaction”.
“On the revenue side, AI allows companies to move past proxy metrics like NPS (Net Promoter Score) to understand the concrete relationship between experience quality and spending behavior. The technology can precisely analyse which specific interactions correlate with a higher Customer Lifetime Value (CLV) and increased revenue generation”, adds Banerjee.
Improvements in customer retention stem from AI’s ability to provide a much deeper context regarding negative experiences. Rather than simply alerting that a customer had a “bad experience” and is likely to churn, AI isolates the underlying cause. It can identify if the problem was tied to a specific product defect, a recurring service issue, or a resolution process that failed to solve the core problem. This level of granular detail allows companies to address the root causes of churn, moving beyond simply patching surface-level complaints.
Ultimately, advises Banerjee, the most successful companies are those that prioritise a holistic approach by integrating multiple data sources. By combining customer feedback, operational performance data, and hard revenue metrics, AI can surface complex patterns and opportunities that are completely invisible to conventional, siloed analysis. This comprehensive methodology enables far more targeted and effective improvements across all three key areas of business performance.