Before today’s integrated, real-time analytics, gathering data was the real challenge. Contact centers struggled with fragmented systems, manual processes, and inconsistent data quality, limiting both operational efficiency and their ability to improve customer experience.
Today, that problem has flipped. Modern contact centers are flooded with data where every call, interaction, and customer signal is captured and analyzed in real time.
The core issue now is not knowing what to do with so much data.
Organizations are overwhelmed and paralyzed by choice, struggling to turn technology into meaningful business outcomes.
And it’s becoming one of the biggest barriers to improving customer experience.
What many organizations are actually experiencing is a widening disconnect between AI deployment and meaningful CX outcomes. This is known as The Strategic Gap, and it’s one of the biggest barriers to improving customer experience today.
So why does it exist? Because AI has been deployed as another layer of technology rather than a capability that reshapes how work gets done. Instead of being embedded into a unified strategy, AI is often implemented as a set of isolated tools, each solving a specific problem, but not working together to drive meaningful outcomes.
The result is more data, more dashboards, and more noise, but not more clarity.
To close this gap, organizations don’t need more tools. They need a way to turn all that data into clear, actionable insight that can be applied across the contact center in real time.
This is where AI Contact Analytics can change your business outcomes.
AI Contact Analytics from USAN uses Generative AI to analyze 100% of customer interactions, transforming raw conversations into clear, actionable insights. Instead of relying on small samples or predefined rules, it uncovers patterns, intent, and opportunities you might not otherwise notice across the entire contact center.
At its core, it helps organizations move from data overload to true understanding, improving both agent experience and customer experience. Here are some of its features:
Some of the results that Dominion Energy achieved after their implementation include:
By shifting from limited sampling to full visibility, Dominion Energy moved from reactive decision-making to proactive, data-driven action, improving both customer experience and operational efficiency.
What sets USAN’s AI Contact Analytics apart from the rest?
Unlike traditional post-contact analytics tools, AI Contact Analytics doesn’t require predefined categories or manual setup. It surfaces insights automatically and continuously.
AI Contact Analytics doesn’t just analyze conversations; it transforms how your contact center operates.
By automatically surfacing hidden trends, emerging customer intents, and root causes behind contacts, AI Contact Analytics can reduce the time spent sampling agent conversations manually. Instead of relying on limited samples or predefined categories, you gain a complete, real-time view of what’s happening across 100% of interactions.
This leads to faster issue resolution, reduced contact volume, and more informed business decisions across CX, operations, and product teams. Agents are better equipped with context, and because of it, you can reduce turnover. Leaders can act on insights instantly, and organizations can continuously optimize experiences without added manual effort, improving their NPS and CSAT scores.
The results: lower operational costs, improved customer and agent satisfaction, and a contact center that becomes a strategic driver of business growth, not just a support function.