Quiq Unveils Agentic AI Analyst for Contact Center Quality

Quiq has introduced its newest innovation: the Conversation Analyst. This AI-powered platform is designed to improve quality management in contact centers. It supports voice, web chat, SMS and messaging channels. This system analyzes all interactions between humans and AI agents in real time. It offers valuable insights from a wealth of conversation data. It can also take set actions, like flagging policy violations or routing exceptions. This helps connect understanding with action.

What’s new & why it matters

Quiq describes the Conversation Analyst as a solution that replaces the traditional “sample 10 % of calls and hope you catch the problem” approach with full-coverage, AI-powered analytics. Custom prompts and metrics enable CX teams to track not only customer sentiment and compliance, but deeper issues such as agent empathy, accessibility-compliance, or brand-tone consistency. As one user at Spirit Airlines commented:

“It gives real-time visibility into how both our human and AI agents handle conversations… so we can take action before anything escalates.” This capability marks a shift in the Customer Experience (CX) landscape from reactive reporting to proactive orchestration of customer journeys.

Key features include:

  • Monitor interactions fully across all channels: voice, chat, SMS, WhatsApp, and Apple Messages. Don’t just sample; track everything.
  • Proactive AI actions help the system give insights and automate workflows. It can flag conversations, escalate issues to a supervisor, or start follow-ups.
  • Dynamic dashboards let CX leaders analyze data by agent, team, metric, or conversation group. They turn large amounts of data into useful insights.
  • Bias-minimized metrics use AI-generated KPIs. These include handle time, sentiment scores, and compliance flags. They can enhance or replace self-reported surveys.

Impact on the Customer-Experience industry

The Conversation Analyst announcement has several important implications for the CX industry:

1. Quality-management evolution to full-coverage intelligence

Traditionally, QA teams in contact centers listen to sampled calls. They then annotate issues by hand. This new wave of agentic AI makes every interaction analyzable. It clears blind spots and provides consistent insights for agents, channels, and regions.

2. From insight to automation

Many CX tools stop at dashboards. Quiq’s new offering takes insight and turns it into action. If a conversation signal indicates a policy violation or dissatisfaction, the system can quickly escalate the issue or start to resolve it. This reflects a broader trend in CX: automation paired with intelligence.

3. Multi-channel complexity managed

With customers engaging across voice, chat and messaging, CX operations must handle fragmented channels. Conversation Analyst’s unified approach supports omnichannel visibility and lets businesses manage quality consistently across digital and voice touchpoints.

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4. Elevating CX as a business metric

CX can now be measured and audited at scale. This ties it to real operational outcomes, not just customer feedback surveys. Organizations can connect agent performance, handle times, sentiment, and revenue more clearly.

5. Competitive differentiation

Brands that use these strengths may do better than others in customer experience, solving problems, and how they are viewed. As customer expectations grow, companies using smart CX quality-management tools gain an advantage.

Effects on businesses operating in the CX ecosystem

For enterprises, vendors, service-providers and contact-centre operations, the introduction of agentic AI for quality-management presents both opportunities and imperative considerations:

Operational opportunities:

  • QA teams can change from manual listening and annotation to monitoring workflows. They should prioritize flagged conversations and provide coaching for more valuable cases.

  • Contact centers can spot compliance, sentiment, and performance issues right away. This lowers risks, such as regulatory issues and brand reputation. It also helps solve problems more quickly.

  • Vendors and systems integrators with CX tools now have a benchmark for next-gen features. Partnering or creating similar agentic-AI capabilities may be key.

Strategic advantages:

  • Organizations using this intelligence-driven QA model might see better CSAT and NPS scores. They could also improve resolution metrics and lower costs.

  • CX connects insights from interactions to important business outcomes. These include customer churn, conversion rates, and agent attrition. This shift turns CX from a cost center into a strategic asset.

  • Service providers, such as BPOs and outsourcers, can stand out. They can highlight their top-notch operations that AI monitors. This can help them secure more contracts.

Challenges and Considerations:

  • Data governance, privacy, and compliance: Analyzing and automating actions in human-agent conversations means dealing with sensitive data. So, firms need strong controls, transparency, and consent.

  • Change management: Agents and supervisors need to move from manual QA sampling to real-time oversight. This will involve training and creating new workflows.

  • Integration complexity: Companies must link voice, messaging, chat platforms, CRM, and CX systems. Doing so ensures data flows well and AI actions are relevant.

  • ROI Measurement: Organizations should establish baseline metrics. These include escalation delays, sentiment score improvements, and reductions in handle time. Then, they can track the impact after deployment.

Looking Ahead: Strategic Actions for Businesses

To make the most of CX quality management improvements, businesses should follow these steps:

  • Audit your QA and monitoring workflow:

    • Check the percentage of interactions monitored.

    • Look at how many escalate.

    • Find gaps in voice, chat, and messaging coverage.

  • Define key triggers and metrics: Identify what you want the Conversation Analyst to flag. This could be policy violations, sentiment drops, agent tone issues, or churn risk. Next, set up custom prompts or workflows to match these triggers.

  • Ensure channel consolidation: Combine voice, chat, SMS, WhatsApp, Apple Messages, and other channels into one analytics layer. This way, you can gain valuable insights.

  • Train teams for agent-AI collaboration. Equip QA supervisors, coaches, and agents to use AI dashboards. Manage flagged conversations and move from reactive to proactive operations.

  • Measure and Iterate: Keep track of time-to-escalation, agent performance, sentiment metrics, first-contact resolution, and customer feedback. Adjust workflows and prompts as needed based on these results.

Conclusion

Quiq’s Conversation Analyst represents a significant advancement in the customer experience industry. AI-driven automation, comprehensive analytics, and omnichannel visibility change contact center quality management. They transform how we measure and manage customer experience (CX).

As customer expectations grow, companies need to focus on efficiency. Those that adopt smart, proactive QA platforms can offer better experiences. This approach helps manage costs and boosts customer satisfaction.

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