Guide to building vs. buying an AI Agent for customer service
This guide will help you assess the build vs buy question from 5 main angles so you can make a confident, informed decision.
Learn MoreHow do you know if your customers will stick around? Hard truth: you don’t. Humans are incredibly emotional and intuition-led. However, as a group, our actions can be predicted through our social influences and feedback loops.
That’s great news for customer service teams.
Tell-tale signs of action rear their heads across customer service metrics like CSAT scores and Automated Resolution (AR). Naturally, these are the metrics customer service teams should be monitoring. But, very often teams get weighed down by indicative (not holistic) metrics like call handling times and ticket closure rates, which prioritize speed over solutions.
Thankfully, AI can now dig deep into your very best (and very worst) customer databases to surface gaps between what customers need and get. With machine learning, customer support teams will soon be able to predict what customers need, even before they know it themselves.
Balancing age-old strategies with new-age trends can be daunting. We’re here to help.
In this guide, we’ll discuss traditional versus AI-led customer service metrics and why AR is the customer service metric of the future. As an added bonus, we’ll share a customer metrics toolkit on how to integrate AI metrics with traditional customer service KPIs. You’re welcome.
The traditional customer service performance metrics are CSAT, NPS, and CES. Let’s wade through the alphabet soup, and explore these metrics’ pros, cons, and implementation methods in detail.
While CSAT, NPS, and CES are good measures of tracking customer service, they can’t capture the depth of human-human interactions. They suffer from:
AI-first metrics do more than counteract the pitfalls of traditional customer service metrics; they open up a world of possibilities for companies to innovate and optimize their customer service. They aren’t just a resource-saving technique, but a reflection of customer expectations in 2024 and beyond.
73% of customers anticipate more AI interactions in daily life.
74% believe AI will enhance customer service efficiency.
- Zendesk
AI-first metrics offer previously unattainable use cases such as:
Some commonly used generative AI metrics across the customer service industry include:
While indicative of AI integration, these customer service metrics don’t offer insights for optimizing customer experience. In the end, all a CX leader needs to know is “How effective is our team in understanding and resolving customer needs?"
How can businesses analyze their customer satisfaction score alongside other data to win customers over repeatedly and reliably?
Start by looking at CSAT as just one piece of the customer service puzzle.
While other measures of customer satisfaction, like NPS and CES scores tend to follow the same structure, there’s no single benchmark for a CSAT. A good rule of thumb is to measure your customer support KPIs (key performance indicators) regularly and compare your results over time. All three scores should be improving. If the scores are already strong, then they should be staying there. This indicates top-quality customer service operations.
If your KPIs drop, quickly identify the problem. Compare success metrics across channels, products, and services to understand what’s working and what’s not, and adjust your strategy accordingly.
Your goal here is continuous improvement and a focus on high customer service quality.
Together, these three metrics help you take the temperature of your overall customer service experience and continually improve your customer relationships.
An easy way to boost all your customer service KPIs is to implement personalized, self-service on your customer service channels. AI agents, for example, make it easy for customers to find information or resolve issues quickly, with minimal effort, in a single, seamless interaction. AI agents also personalize interactions at scale, driving customer satisfaction and loyalty while helping you lower customer service costs. Plus, with an AI chatbot, you can easily add the customer surveys you need to collect feedback, measure these customer service KPIs, and continually improve your customer experience.
Integrating AI-first metrics with traditional customer service KPIs like a CSAT score is the bridge between reactive and proactive customer service. Together, these metrics analyze data in real-time to help businesses predict customer needs.
For instance, a high CSAT score might indicate satisfaction, but when combined with AI-driven insights, a company understands the “why” (like efficient issue-resolution).
Automated Resolution (AR) is a generative AI-driven metric that shows how effectively a chatbot resolves customer issues without needing a human. AR measures successful conversations that are accurate, relevant, and safe.
AR directly answers this critical question for CX leaders by quantifying the success rate of chatbot interactions.
If your AI system doesn’t do this automatically, you can manually assess AR by following these steps::
If you want to supercharge your entire business , you need to take a deliberate and structured approach. Here’s how you can go about it:
Predictive analytics, machine learning, and natural language processing are setting the stage for a more proactive and personalized approach to customer service.
In the near future, we can expect AI to respond to and anticipate customer needs — offering solutions before the customer even identifies an issue. AI solutions will achieve this by analyzing large datasets, including past interactions, purchasing history, and even social media behavior.
Voice and emotional analytics are also on the horizon, with AI being able to understand not just what’s being said, but how it's being said, recognizing customer emotions and adjusting responses accordingly.
As AI technology evolves, businesses will meet customer expectations in real-time, creating a more dynamic and satisfying customer experience. Those that follow these trends and incorporate AI into their customer service will see loyal, satisfied, and happy customers.
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