Analytics That Work: 3 Approaches for the Future of Contact Centers

It happens all the time: your customer is shopping online — and a transaction fails.

Frustrated, the customer reaches out to your support team. The agent who takes the call tries to help but lacks context. There’s no insight into what the customer was trying to do or what went wrong.

That situation repeats dozens of times per day in most contact centers. And with 57% of customer care leaders expecting a rise in contact volumes in the coming years, disconnects are likely to happen more often.

The driver? Contact centers have a world of data available, but analytics and data platforms are stuck in the past.

The Customer Journey Is More Complex Than Ever

In the modern customer journey, your customer may start by researching on a mobile app, then make an attempted (but failed) purchase on a website. Next up, a click-to-chat interaction with an AI agent. Then finally — often reluctantly — a call for human support.

All the steps that occurred before the issue surfaced to the contact center? They’re invisible.

That means it’s hard to gain the end-to-end monitoring and cross-platform correlation needed to drill down to the root cause and respond quickly.

It’s time to break the mold. Imagine giving teams comprehensive insight into experiences that happen beyond the contact center. That empowers you to give your customers what they want, while bolstering loyalty and shrinking churn.

75% of customers want a seamless, omnichannel journey — yet only 25% are satisfied with the experience companies provide.

The Problem: Analytics Are Stuck in a Silo

Most enterprise contact center platforms focus intensively on metrics. But basic dashboards are often incomplete, vendor-locked, and have limited contextual support. Additionally, these platforms typically lack the capability to automate actions based on metric patterns, trends, and anomalies, which limits the ability to proactively respond to emerging issues or optimize performance without manual intervention.

While these tools are great for “what’s happening now” views, they lack the depth and historical view needed for strategic insight.

Enterprises frequently resort to extracting data into cloud warehouses or business intelligence (BI) tools — but this causes disconnects from operational actions.All too often, these approaches fall short:

What happens then? Many customer-impacting interactions remain hidden, leaving frontline representatives with only a limited view into what really matters.

The Solution: Unified, Real-Time Intelligence

To achieve customer experience breakthroughs, contact centers need more than fragmented metrics and static dashboards. The next generation of analytics is unified, contextual, and real-time.

1. Unified Data Ingestion

The foundation of advanced contact center intelligence is flexible, platform-agnostic data ingestion and optimization.

Instead of depending on preformatted inputs or rigid integration protocols, modern systems can ingest data on the fly — from CRMs and ticketing platforms to IVR logs, web events, and third-party APIs.

This approach allows contact centers to standardize and structure data in real time, making it immediately usable across departments and teams.

It also enables faster experimentation and iteration, unlocking agility without added overhead.

2. Cross-Domain Correlation

Data is only as powerful as the context it lives in. Leading contact centers correlate traditional call metrics with operational telemetry to paint a fuller picture of the customer journey.

This means going beyond “why did this call fail?” to ask: “What else happened during this customer’s journey that led them to call us?”

Maybe a network event degraded service. Maybe a failed API call disrupted a checkout flow.

By linking behavioral signals to technical logs, teams can identify root causes before they become repeat issues — and fix them proactively before customers notice something’s wrong.

3. Real-Time Actionable Customer Intelligence

The best systems aren’t just watching the queue — they’re directing intelligent responses in the moment. For example:

This is more than optimization — it’s orchestration. And it’s where data becomes an engine of better experiences. To bring this to life, read how Travelport achieved full visibility across its entire environment, gaining a comprehensive understanding of its critical apps and services, maximizing customer experience.

Where Others Stop at Data, You Can Go Further.

Today’s contact center-specific tools can’t combine operations, IT, and business data efficiently. As a result, teams rely on multiple disconnected systems and custom integration projects to gather data.

The future of customer care isn’t about more dashboards. It’s about smarter, connected insights that add context into every interaction.

With unified analytics, your agents stop firefighting — and start building trust. Your customers get answers faster, with less friction. And your business gains a loyalty advantage that helps you rise above the rest.

Share this industry brief with your peers and learn more about how Splunk’s approach can help you drive exceptional customer experiences.

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