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The ultimate guide to SaaS customer service automation

Mudit Bhasin
Manager, Professional Services

Modern customers demand instant, personalized responses across all channels.

Enter generative AI : the game-changer revolutionizing SaaS customer service . This powerful technology isn't just meeting expectations — it's shattering them. Imagine a world where your AI agent effortlessly handles everything from quick account upgrades to complex, personalized onboarding. It's not science fiction, it's happening now.

SaaS businesses are leveraging AI to deliver human-like interactions that solve problems faster and more efficiently than ever before. And in turn, it’s impacting their bottom line; over nine in 10 organizations with AI report cost and time savings.

That's not just an improvement; it's a seismic shift in operational efficiency.

The future of SaaS customer service isn't just automated, it's hyper-personalized, ultra-efficient, and powered by AI. And the best part? It achieves all this with zero operating leverage. Welcome to the new era of customer service, where AI doesn't just meet expectations, it exceeds them, reshaping the very landscape of customer interactions.

Ready to revolutionize your SaaS customer service? Let's dive into everything you need to know about harnessing the power of AI to deliver quality service at an unprecedented scale.

What is SaaS customer service automation?

SaaS customer service automation refers to using technology to automate customer service tasks for greater operational efficiency, and more importantly, to improve customer experience.

Customer service automation tools have been around since the ‘90s, but we’ve gone far beyond the basic technology that powers it. With AI, automation tools can now match the level of personalization that human agents offer and deliver real-time responses to customers.

Why SaaS companies need customer service automation

The same reason why we don’t use a rotary phone to order food. Manual customer service is outdated, inefficient, and bad for business. Here’s why:

  • Customers want instant responses — they’re willing to pay an average of 19% more for always immediate service.
  • 71% of customers expect companies to deliver personalized interactions and 76% get frustrated when that doesn’t happen.

If you’ve spent enough time observing support teams, it’s easy to see how a combination of speed and personalization demands can act as a bottleneck.

AI automation systems can respond to customer queries in real time, be available 24/7, and offer personalized and immersive experiences that customers crave.

This means automating customer service is mission-critical for SaaS companies that want to minimize churn, maximize Automated Resolution Rate (ARR), and meet customers’ need for instant responses while offering personalized experiences.

Take monday.com for example. Before Ada’s AI Agent, monday.com ’s CX team managed chat, email, and callbacks globally, with 76% of their conversation volume coming in from the chat channel. Unfortunately, their scripted chatbot was hard to maintain and required constant, manual updates. To solve this problem, the team wanted a more dynamic solution that could automatically resolve customer inquiries coming on their chat channel.

With Ada’s AI Agent, monday.com was able to resolve more inquiries and make their highest volume channel their most successful. And it wasn’t long until they promoted Ada’s AI Agent to email .

“The immediate improvements in performance and flexibility with an AI Agent were astonishing. Just turning it on was like 40-45% containment. Everyone was initially shocked and unsure how it could be that good. Through QA, and growing the confidence of the management and team, it’s now much easier for us to make changes and decisions and move forward and develop it.”

Tal Gust
Bot Manager

Clearly, AI customer service can go beyond increasing CSAT scores and containment — all you need is vivid imagination and Ada’s AI Agent.

3 things you can do with SaaS customer service automation

Let’s paint a picture of what you can achieve with an AI agent. Imagine this:

  • Make onboarding effortless: The AI agent can provide users with personalized, guided onboarding experiences and feature how-to’s that make product adoption a breeze. This leads to faster speed to value for your customers and increased percentage of power users leveraging your software for maximum ROI.
  • Offer seamless subscription management: With an AI agent, users can make immediate changes to their plans. They can do the basics, like renew, update, or upgrade, but you can also coach an AI agent to offer promotions that convert free users to paid subscribers and upsell paid users to more premium subscriptions.
  • Provide instant technical support: The AI agent can respond to technical questions and guide customers through solutions. Using up-to-the-minute product information ensures that support is always accurate and relevant. You can also use the AI agent to quickly alert customers to service interruptions.

These are efforts all SaaS companies need to differentiate CX, make their support team more efficient, and boost their topline figure. The problem? Scaling these efforts requires an army of agents or a powerful AI agent. Take your pick.

Tools to include in your customer service automation toolkit

Let’s lay some groundwork before we dive into how you can automate customer service. Here are some tools you might need:

  • AI agent: Think of an AI agent as a virtual support agent that’s more efficient, can multitask, and doesn’t feel the need to spend time by the water cooler. An AI agent is a customer-facing system that fields customer queries, generates personalized responses, and performs tasks on behalf of a user.
  • CRM: CRM is home to your customer data. When the AI needs to pull customer information, it will fetch it from your CRM. Top CRMs can also initiate actions. For example, if a customer hasn’t logged into your SaaS in 30 days, it can prompt the AI agent to write a follow-up email or offer proactive support.
  • Feedback and survey tools: The Ada AI Agent has built-in analytics. But if you want to ask questions directly to customers, you’ll need a feedback and survey tool. You can configure the tool to automatically collect feedback periodically or initiate a feedback or survey request as needed.

These are the essentials, but you may choose to include more tools based on your needs in your toolkit. For example, you may include in your toolkit, such as a ticketing system, helpdesk software, and screen-sharing tools.

How to automate SaaS customer service with an AI agent

The AI agent is your primary automation tool. It’s where a customer’s interaction starts, and if you choose the right AI agent, ends. Let’s look at how you can use the AI agent to automate customer service.

Step 1: Build a knowledge base

A knowledge base is the backbone of an automated customer service system. It’s your AI agent’s go-to source for queries like “How do I reset my password?” or “How do I get a copy of my last invoice?”

Consider investing in knowledge base software — they’ll make it easier to build and manage your knowledge. Check out our guide on building a knowledge base for customer service for a step-by-step guide.

A knowledge base isn’t just an information database for your AI agent, it’s also a way for customers to self-serve. When building a knowledge base for your AI agent as well as customers who want to self-serve, be mindful of the following basics:

  • Clarity is king: No one likes reading long-winded essays about how to update their billing info. Keep the content in the knowledge base crisp and clear so the AI agent doesn’t write 10-paragraph responses. Bullet points, short paragraphs, and simple language are your best friends.
  • Organize the content: Well-organized content helps AI agents and humans find the information they’re looking for faster. Organize content with categories, tags, and a logical hierarchy.
  • Be thorough: Look at your support tickets over the past six months and make sure you’ve covered everything your customers want to know, including the weird questions.
  • Keep it fresh: A knowledge base should be dynamic. Update it every time you introduce a new feature or customers complain that a piece of content is confusing.

Step 2: Pick the right AI agent

There are dozens of AI agents on the market, but most aren’t worth your while. While most AI agents take a hybrid approach, combining generative AI and traditional workflows, Ada’s AI Agent is the only fully generative, omnichannel customer automation platform. To choose the right agent, here’s what you should look for:

Omnichannel support

An omnichannel AI agent allows you to automate customer service across all channels. It makes sense to use just one tool to manage customer interactions on every channel to prevent app sprawl. Ada’s AI Agent can automate all service channels , including chat, phone, and email.

Integrations

An AI agent should integrate with other tools in your tech stack so it can easily exchange information. For example, when a customer references a previously resolved ticket, your AI agent should be able to look up your ticketing system to get the right information. If the AI agent doesn’t offer an out-of-the-box integrations , make sure it offers APIs so you can build a bespoke solution.

Ability to troubleshoot complex problems

AI agents don’t just need to fetch invoices and answer subscription-related questions. Customers might have more complex questions. For example, they might have questions about a new feature you recently introduced. Your AI agent should be able to answer these questions accurately and hand-hold the customer through the solution. To enable an AI agent to answer complex queries, it needs to be able to look up your knowledge base or have the ability to learn to solve problems based on multi-step instructions provided during training.

Security

Check the level of security your AI agent can deliver . Most vendors worth considering lay down their data practices in detail on their website, including information about their servers, data flow, application security, and privacy compliance. Look for tools compliant with regulations like CCPA, GDPR, and HIPAA and have a SOC 2 certification, penetration test reports, a data flow diagram, and a vulnerability disclosure program.

Step 3: Coach your AI agent

Your AI agent is like a high-IQ child with zero life experience. It can respond to customer queries only once you coach it.

Feed quality data

The better the data, the sharper your AI agent will be. Using large datasets to train your AI agent is a great idea, but make sure the data is junk-free, diverse, and well-structured to minimize bias and generative AI hallucinations and improve the model’s understanding of tasks.

Consider training the AI agent with real feedback, up-to-date information about your SaaS, and information-rich interactions with actual customers. Include everything from simple questions to highly technical questions that aren’t asked as frequently in your training data. Detox your dataset once it's ready — remove duplicates and outdated, half-baked, or irrelevant information.

Dry-run complex and bizarre scenarios

No AI training is complete until you’ve put it through the winger with the weirdest and most complex scenarios.

For example, if your product is an IoT SaaS, your AI agent should be able to respond to everything from “Can your software communicate with my refrigerator?” to “I’m having trouble getting an automation workflow to trigger when I use an external API call through my backend system. What should I look for in the logs?”

When stress testing the AI agent:

  • Dig into customer service history: If you dig into your customer history, you’ll probably find some wild and head-scratching queries buried in there. Most SaaS companies have a backlog of the most complex tickets. They reflect the messy, unpredictable nature of real customer interactions. Find them and use them for dry runs.
  • Create hypothetical curveballs: Once you’ve mined the archives, get creative. Ask your customer service team about the weirdest questions they’ve answered and feed it to the AI agent for training.

Simulate stress scenarios: Finally, dry-run your AI agent under stress — throw a couple of complex scenarios at it simultaneously. Customers aren’t always patient. When they bombard your AI agent with questions, it needs to be able to provide thorough and accurate responses.

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Step 4: Integrate the systems

Your AI agent is one cog in a bigger machine. Integrating your AI agent with other tools in your tech stack enables them to exchange data. Here are some examples of tools you can integrate the AI agent with:

  • CRM: Integrating the AI agent with your CRM gives it access to customer data, including names, purchase history, and previous interactions. The AI agent can use information in your CRM to personalize responses based on multiple factors, such as the last login date, support priority level, and customer segment.
  • Helpdesk and ticketing system: AI agents can pull information from previous service tickets when helping customers. If a customer with an open service ticket reaches out to the AI agent, it can jump straight to asking if they need help with the open support ticket and skip pleasantries like “How can I help you today?” If the AI agent manages to solve the issue, it can mark the support ticket as closed without manual intervention.
  • Knowledge base software: Knowledge base software typically organizes content using JSON or XML, making it easier for the AI agent to search, retrieve, and present relevant information. Once integrated, the AI agent can run search queries using well-optimized algorithms such as TF-IDF ( Term Frequency-Inverse Document Frequency or BERT embeddings to rank and retrieve the best articles.

Social media tools: Need your AI agent to be your social media rep? Integrate it with social media management tools like Hootsuite and Sprout Social. The AI agent will take care of support inquiries, complaints, and feedback you receive on your social media handles so your customers never have to wait hours before a support agent gets to their case.

Step 5: Monitor, learn, adapt

AI agents are self-learners. Every interaction makes them sharper, but don’t just let it learn on autopilot. Monitor how it interacts with customers to identify friction points and recurring issues and iron them out.

And remember, your AI agent is a data goldmine. Monitoring its interactions with customers can give you a wealth of insightful information about Automated Resolution , resolution times, customer satisfaction scores (CSAT) , and escalation rates. Use this information to optimize the AI agent’s performance when needed.

Benefits of automating SaaS customer service

What’s the ROI on customer service AI? While the numbers look different for every SaaS company, we explain the benefits you can expect from automating customer service for your SaaS below.

24/7 availability

24/7 availability is non-negotiable if you have clients in other time zones. But it’s also necessary because a customer in your timezone might decide to troubleshoot at 3 AM on a Saturday. Meeting a customer’s need for instant access to help builds trust and makes your customers feel valued. The result? Better retention rates and higher satisfaction.

Thankfully, AI agents don’t need sleep or coffee breaks. It’s like having an all-star customer service on call, 24/7, without having to pay overtime or worry about someone actually wanting to work at those ungodly hours.

Fast and personalized customer service at scale

You’ve probably heard this a million times — customers want faster responses from brands. But how fast exactly? Let’s put this need for speed in context with numbers. Here’s how fast you need to respond over different channels to stay ahead of your competitors:

Can your current customer service team respond consistently at this speed? Mind you, the responses need to be personalized, which means the support agent might have to sift through customer data before responding.

Delivering fast and personalized service at scale round the clock is practically impossible unless you hire hundreds of support agents and pay tons in overtime. An AI agent, on the other hand, can single-handedly take care of all customer demands.

Imagine designing a personalized onboarding experience for new users that includes product walkthroughs based on user behavior and preferences. Once the customer is onboard, you can monitor user activity and offer tailored discounts to users at risk of churning via your AI agent.

Lower customer service costs

The median spend of a SaaS company on customer support and customer success is 8.5% of their ARR . That’s a massive number — for every $100,000 in revenue, SaaS companies spend $8,500 on customer support and customer success.

Can you reduce this cost and boost your bottom line? Yes, according to McKinsey . Using technology, like AI and automation, to revamp CX can reduce costs by 20% to 40%. And it’s easy to see why:

  • Fewer agents: The average salary of a customer service representative in the US is roughly $40,000 per year , and that’s just the base pay. Even if you can reduce your customer service headcount by two agents, you end up with over $80,000 in savings. While you still need support agents for the strategic areas of customer service, you don’t need nearly as many reps as you would without an AI agent. Do the math for your company and see what the numbers tell you.
  • No overtime or night shifts: Your AI agent doesn’t care if it's two hours past their working hours or 4 in the morning. That means you don’t pay extra for overtime or night shifts, even if you have clients overseas or want to be able to serve personalized responses to customers while your team gets a good night’s sleep.
  • Low training costs: The fewer reps you have, the fewer you spend on training. You still need to train the handful of customer service agents you’ve hired for strategic work and to manage the AI agent, but the total training costs are significantly lower when you use an AI agent.

Multilingual support

Most SaaS companies have users outside their home country. If the primary language in these countries is not English, multilingual support is critical. Clients in countries like Hungary, Germany, or France might prefer to communicate in their native language.

65% of buyers prefer content in their language, even if it’s poor quality, and 40% won’t buy from companies that don’t use their native language.

- CSA Research

Here’s a wild guess: You probably don’t want to hire a customer service rep for every language your clients prefer to communicate in.

If that’s how you feel, an AI agent can take care of this problem for you. Conversational AI can respond to customers in their preferred language (provided the AI agent supports it) while still delivering the same level of personalization and instant responses it does in English.

Some customer service teams use manual translations to deliver multilingual support via email. But lacking a thorough understanding of the language comes with barriers you can’t overcome. For example, the AI agent can identify opportunities to upsell users on add-ons or a higher tier based on product usage patterns. However, support agents who don’t understand the language are likely to fail to effectively communicate when upselling.

Boost your bottom line with AI customer service automation for SaaS

Delivering exceptional service is about more than just real-time responses. Most customer service automation can do that. If you’re looking to deliver experiences that become a competitive advantage, you need a powerful AI agent and a partner that can help you realize its full potential.

At Ada, our mission is to revolutionize CX with AI. Our fully generative, omnichannel AI Agent automates customer service via chat, emails, and calls. If you’re exploring the idea of using AI for your SaaS, get in touch to learn how Ada’s AI Agent can help.

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