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 MoreCall center automation is a silver bullet solution to a lean cost structure and elevating your customer experience. In case you didn’t know, the average call center misses 200 calls per day , has a first contact resolution rate of 70–75%, and spends an average of 5 minutes and 2 seconds on one call.
These numbers may look different across industries and for a business that doesn’t have an automated system, but the narrative is likely the same: without automation, call centers bleed money. This is because automation makes your call center’s cost structure more attractive — even more so than virtual call centers .
While that’s a great reason to automate your call center, there’s a lot more you should know to build a competitive advantage with an automated call center. In this guide, we dive deep into call center automation technologies that can help you deliver an immersive and cutting-edge customer experience. Let’s get to it.
Call center automation is the use of software solutions like contact center as a service (CCaaS) to automate repetitive tasks. To automate a call center, you need technologies like voice AI, ACD (automatic call distribution) systems, and robotic process automation (RPA).
Most companies automate their call centers to lower costs, scale their support operations, and improve the customer experience. However, many companies end up deploying basic, built-in call center software features.
To truly differentiate your customer experience with automation, you need a cutting-edge tech stack that easily integrates with third-party services.
Call center software solutions use a combination of technologies to automate tasks. Here’s a brief overview.
You can think of machine learning as your call center software’s brain. It’s what helps software predict and make decisions, and that’s why almost every other technology on this list relies on AI and machine learning.
Machine learning analyzes customer interactions and other data to find patterns and predict customer behavior and preferences. It learns from every interaction and improves over time. Here are the types of machine learning used in call centers:
NLP, NLU, and NLG are like siblings. All of them use the same underlying technology — AI — but for different aspects of language processing. Here’s a quick overview:
Almost every automation tool you know uses robotic process automation (RPA). This technology automates repetitive and rule-based tasks like data entry. They’re essentially tireless employees, who perform basic tasks that don’t require intelligence. This frees up your humans to focus on more complex issues that involve strategy and creativity.
60% of consumers feel waiting on hold for just one minute is too long.
- Software Advice
Voice biometrics is your digital detective — a Sherlock Holmes built into your call center software. It analyzes speech patterns, nuances, and traits to identify a person without passwords or security questions. Industry leaders like TD Bank has used voice verification technology since as early as 2017. Here’s how it works:
We could go on and on here, but let’s cut to the chase: you can automate almost every part of the support process, and here’s how:
Your competitors are cutting costs and reinvesting that money towards transforming customer experience, so automating these tasks is crucial to staying competitive — but it doesn’t give you an edge over competitors.
97% of contact center and IT leaders are interested in using AI to automate customer self-service.
- 8x8
If you want to aim higher and lead the industry with top-notch customer experience, here are more advanced use cases to focus on.
Imagine having a conversation with an AI call agent that can comprehend your words and understand context, intent, and emotions — that’s the kind of experience your customers want.
You need an AI call agent to truly automate a call center. It’s available 24/7 to field customer queries, matching your customer’s need for speed. Access to help at all times acts as a key differentiator. Here’s why: 60% of consumers feel waiting on hold for just one minute is too long, but customers wait an average of 90 seconds when they call support.
Voice AI’s true brilliance lies in its ability to learn, adapt, and respond in natural language. It uses machine learning to learn accents, dialects, and even individual preferences. But a voice AI agent doesn’t just respond. It anticipates your customers’ needs and responds with the finesse of human understanding. Since voice AI is capable of infusing conversations with a human touch, it helps deliver personalized experiences at scale — no frustration or delays.
59% said businesses that don't implement voice technology can expect their CSAT scores to decline.
63% said NPS would decline without voice capabilities
- State of Voice 2023
Most built-in scripted chatbots perform poorly — they might misinterpret speech and generate out-of-context responses. To provide a better experience, use a powerful third-party AI call agent that integrates into your CCaaS for best results.
33% of customers have screamed or sworn at agents and 3% admit to threatening agents with physical assault. But what if agents could tell when a customer is in a bad mood and drive the conversation more strategically to achieve a more desirable outcome?
That’s where sentiment analysis helps. It helps a support agent personalize responses based on the caller’s mood, using NLP and machine learning to interpret sentiment, emotions, and tone. The process starts with the system collecting data when you’re on the phone with a customer. Here’s what happens next:
Suppose a customer is enraged over a service outage. They’re interacting with a AI call agent but request to speak to a support agent. Sentiment analysis springs into action and gives the agent a heads-up. The agent, armed with intel from sentiment analysis, is better prepared to deal with this enraged customer and turn their frown upside down, so to speak.
Let’s face it — no one likes playing button bingo with an IVR system to connect to an agent.
Predictive behavioral routing fast-tracks agent access — it uses machine learning algorithms to route customers to the most suited agent based on various factors, including customer preferences, personality, and emotional state.
"More than half of those interviewed believe that IVR makes for a poor customer experience, suggesting that most consumers do not enjoy interacting with automated systems."
- Vonage
Your customers will rarely need to speak to support if your system has the right voice AI agent. But some customers may request to speak to a support agent out of choice or because your agreement entitles them to priority support. When they do, you want to put them through straight to an agent without navigating an IVR menu. That’s when predictive behavior routing helps.
Here’s how it works:
Suppose you’re an FP&A SaaS catering to industries like private equity and investment banking. A customer, let’s call them “savvy Susan,” usually contacts the support team whenever you add a new feature. Time is a precious commodity for her, so she likes to directly use priority support. When Susan calls after you introduce a new feature, predictive behavioral routing predicts Susan’s interest. It wastes no time and connects her to a specialist on your team.
A dynamic knowledge base is an intelligent repository of information that empowers agents with up-to-date and contextually relevant insights.
Think of the last time you heard the words “Can I put your call on hold for a moment?" That happens because agents often don’t have the information ready to deliver to callers.
In fact, 61% of people can’t find the information needed to do their job effectively and spend the equivalent of a month each year looking for that information. At the same time, 67% of customers say speed is as important as price — your customers don’t want to wait while the agent looks for information. The result? Slow resolution rates and unhappy customers.
Dynamic knowledge bases address that concern with real-time agent assistance. These intelligent information repositories use AI algorithms and NLP to absorb information from multiple sources — troubleshooting guides, FAQs, and industry publications — and learn from them.
Picture this. Russell calls your support team because when he tries to make a payment on your ecommerce store, he sees an error. When the support agent picks up the call, the dynamic knowledge base transforms into a real-time assistant. It gathers details about the customer’s current session (so it knows the item Russell wants to purchase). It listens to the customer’s problem, scans its knowledge resources, and delivers troubleshooting steps in real-time on the agent’s screen.
Needless to say, Russell loves the quick resolution and appreciates the zero minutes he spent on hold.
Don’t implement voice AI because everyone else is doing it. Use it to redefine the very fabric of customer interactions with your brand and inject a potent dose of agility into your operations. Now, you’re probably wondering, “Great, but how do I do that?”
Here’s the short answer: Pivot from mere automation to true personalization .
Instead of viewing voice AI as a technology that solves problems. Think of it as a technology that anticipates them, empathizes with customers, and helps customers like it's an expert, but caring human. If you’re laying the groundwork to lead your industry with top-notch customer experience using a voice AI agent, here are two strategies:
Think of predictive analytics as a psychic that helps voice AI predict a customer’s needs before they explicitly mention them.
"Companies without advanced analytics are leaving significant customer service improvements on the table."
- McKinsey & CO
Suppose you want to go on a family vacation next month. You call your travel booking partner and a voice AI agent greets you and asks how it can help you today. You don’t have a place in mind so you ask for suggestions. At this point, the voice AI agent taps into predictive analytics. It looks at previous bookings and finds that the customer likes adventure sports, budget hotels, and warm weather.
The AI call agent suggests a few places where you can go river rafting or paragliding and currently has pleasant, slightly warm weather. It also suggests the best budget hotels in that town and family-friendly activities you might like. Within seconds, you get vacation options tailored to your preferences. That type of personalized experience differentiates a brand.
The world is racing toward more intelligent, seamless customer interactions. Researchers and developers are working on groundbreaking advancements that promise the next decade will revolutionize how customers get support. Let’s talk about some areas of ongoing research that will shape the future of call center automation.
AI-powered emotion recognition systems have achieved remarkable accuracy so far. But these systems are most accurate when identifying basic emotions like happiness, sadness, and surprise. There’s still work to be done when it comes to identifying complex emotions like sarcasm and mixed feelings, and factoring in the variation in emotional expressions across cultures.
Researchers are trying to process these multimodal inputs to categorize emotions using advanced machine learning techniques like convolutional neural networks (CNNs) and recurrent neural networks (RNNs).
There’s also great interest in generating empathetic responses. Researchers are using reinforcement learning frameworks and exploring methods to train models using massive datasets that capture the nuances of human emotion, implied meanings, and emotional undertones — one of the biggest NLP challenges.
Emotionally intelligent AI will transform customer experiences across industries. Along with delivering fast and accurate responses, voice AI will factor in the caller’s emotional state and generate responses that connect with customers on a deeper level. Mind you, we’re talking about a level of emotional connection that even human agents find difficult to develop with customers.
Multimodal interactions is an exciting new frontier. Researchers are working on multiple technologies to enable immersive and interconnected customer experiences. Let’s talk about two key areas researchers are working on:
Multimodal interactions will allow your customers to use speech and gestures to manipulate their artificial or virtual reality. For example, your customers will be able to interact with your product first-hand and ask questions to a voice AI agent that will provide accurate information in real time.
Before you jump in and set up your automated call center, consider the following best practices:
Looking for more insights? Read our extensive guide on voice automation best practices .
You’re doing it wrong if your plan is to buy call center software and call it a day. Call center software is great for automating basic tasks like data entry and appointment reminders, but that doesn’t impress your customers.
Give yourself a competitive advantage by partnering with specialists who can help you leverage advanced technologies — transform customer experiences starting tomorrow with Ada’s AI agent. Give yourself the AI edge with Ada and your customers the experience they deserve.
Power 24/7, personalized experiences with Ada’s award-winning AI-powered automation. Increase agent efficiency, decrease wait times, and resolve more phone inquiries at a lower cost.
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