6 Generative AI Use Cases 2024: Real-World Industry Solutions

customer service use cases

Tesla’s AI-powered systems diligently monitor vehicle performance to anticipate maintenance needs, ensuring that potential issues are identified before they become significant problems. By providing timely alerts and automatic updates, Tesla has trained their customers to enjoy a smooth and uninterrupted driving experience. This dynamic guidance encourages agents to engage in more empathetic and productive interactions.

An effective knowledge management strategy can improve many business functions, especially customer service. There are also a number of third-party providers that help brands get chatbots up and running. Some of those services are free, such as HubSpot’s chatbot builder, while companies like Drift and Sprinklr offer paid chatbot tools as part of their software suites.

25 Use Cases for Generative AI In Customer Service – CX Today

25 Use Cases for Generative AI In Customer Service.

Posted: Wed, 28 Aug 2024 07:00:00 GMT [source]

It can, for example, incorporate market conditions and worker availability to determine the optimal time to perform maintenance. Powering predictive maintenance is another longstanding use of machine learning, Gross said. To support decision-making, ML algorithms are trained on historical and other relevant data sets, enabling them to then analyze new information and run through multiple possible scenarios at a scale and speed impossible for humans to match. Experts noted that a decision support system (DSS) can also help cut costs and enhance performance by ensuring workers make the best decisions. For its survey, Rackspace asked respondents what benefits they expect to see from their AI and ML initiatives.

Top Use Cases For Unlocking The Power Of Enterprise AI Agents

AI solutions can also support and guide employees throughout customer support tasks. They can use sentiment analysis to detect positive and negative feelings, and provide real-time insights to employees on how to de-escalate or improve a situation. They can even help with ensuring conversations are routed to the right employee, based on sentiment and intent analysis.

Conversational AI chatbots are transforming customer service by providing instant assistance to customers, enhancing customer satisfaction, and reducing operational costs for businesses. The tools are powered by advanced machine learning algorithms that enable them to handle a wide range of customer queries and offer personalized solutions, thus improving the overall customer experience. As more and more businesses adopt conversational AI chatbots, they are likely to become a key driver of customer engagement and loyalty in the future. Zendesk is an established leader in the field of customer support software, and it has added generative AI capabilities to its roster of services. It uses machine learning and natural language processing to understand customer sentiment and intent, automatically categorizing interactions and generating personalized responses.

customer service use cases

Yet, sometimes, there is no knowledge article for the solution to leverage as the basis of its response. Unfortunately, there are seemingly no purpose-built solutions for contact centers quite yet. Still, Google has pledged to make such a feature available on its Google Contact Center AI Platform soon. Because they leverage speech-to-text to create a transcript from the customer’s audio.

In her spare time, you can find her trying out foods or booking her next travel adventure. Implement a case management system with flexible workflow capabilities to organize your support process, improve team productivity and deliver consistently excellent service. The right social media customer service case management software solves these problems by streamlining workflow and centralizing customer information.

Its solution also detects dead airtime, uncovers cross-talking, and creates alerts and triggers so supervisors can gain even more insights and – crucially – act on them. So, if sentiment drops over the course of weeks, the supervisor can interact with the agent directly, uncover any teething issues, and work to resolve them. Doing so is excellent for agent mental health and decreases absence/attrition rates. Yet, perhaps most fascinating is how contact centers can look at correlations between sentiment and NPS (Net Promoter Score) as well as correlations with different customer outcomes. Sure, they could send out a post-contact survey, but what if the customer hasn’t yet realized that the solution the agent presented won’t work? Moreover, contact centers can run several other performance-improving initiatives with Auto-QA.

Chatbot web search experiences

However, thanks to agents manually logging these intents, without sufficient time or coaching, those strategies often fail to meet expectations. Almost half of the contact center agents don’t have the skills they need to deal with the current demands of their job – according to Calabrio’s recent State of the Contact Centre report. “As the market matures and contact centers gain a deeper understanding and confidence in the capabilities of AI, we’re expected to see an increase in external applications,” he predicts. “For companies in the primary stages of GenAI adoption, putting it directly in front of the end customers often sounds intimidating,” Caye explains. “Here, GenAI plays a crucial role in analyzing vast amounts of contact center data to proactively identify root causes of issues,” he explains.

While the solution is in beta, the contact center QA provider believes the results are “promising” when tested against real-life NPS data. The Net Promoter Score (NPS) is a common customer experience metric, typically tracked in the contact center. If a contact center can continuously feed such a solution with knowledge sources, contact centers can continually monitor customer complaints and act fast to foil emerging issues. From there, Sprinklr customers may harness the provider’s omnichannel capabilities to distribute these surveys, converge the data, and – again, using GenAI – analyze the feedback. By pairing this with the Cognigy Playbooks reporting platform, service teams can verify bot flows, validate outputs, and add assertions.

customer service use cases

Compared to peers, these organizations achieve 2.5x higher revenue growth, 2.4x greater productivity and 3.3x greater success at scaling generative AI use cases. Okoone deploys managed teams of experts ideating, building and managing world-class digital products. We aren’t finished with legal proceedings quite yet, as the next bad customer service installment concerns a court ordering Air Canada to reimburse a customer following some poor chatbot advice. From amusing to troubling, the next example of bad customer service comes from telecoms provider Eir.

Build a strategy to identify vulnerable customers and a specialized team to support them. Train that support team on how to handle customers with varying vulnerabilities and create a routing strategy, so when a vulnerable customer reaches out to the customer, they’re passed through to a specialist. But, before applying automation, contact centers should understand what’s driving customer demand and consider process fixes – both internal and external – to overcome the issue altogether, instead of leveraging AI as a sticky plaster solution. As customers came to the end of their broadband contracts with Virgin Media, many experienced significant price hikes of over 50 percent. Understandably, these customers looked to take their business elsewhere, but were stonewalled by an overly complicated and time-consuming cancellation process – resulting in an official Ofcom inquiry.

He has a bachelor’s degree in the Department of Business Administration and he has completed numerous executive leadership and sales management training/certification programs during his career. The company says the updated version responds to your emotions and tone of voice and allows you to interrupt it midsentence. You can foun additiona information about ai customer service and artificial intelligence and NLP. Vodafone Germany, HORISEN (a CPaaS enabler), ChatGPT and DIMOCO Payments (a billing company) have teamed up to introduce a new way to buy tickets for public transport in Germany. Indeed, rich communications offers the chance to reimagine customer communications, develop more compelling content, and streamline journeys. Then, there’s the possibility for GIFs, image carousels, and even direct booking links.

By offering quick access to essential, vendor-agnostic router commands for diagnostics and monitoring, the generative AI-powered chatbot significantly reduces network resolution times, enhancing overall customer support experiences. Telecommunications providers are challenged to address complex network issues while adhering to service-level agreements with end customers for network uptime. Maintaining network performance requires rapid troubleshooting of network devices, pinpointing root causes and resolving difficulties at network operations centers. To solidify understanding of ROI before scaling AI deployments, companies can consider a pilot period. For example, by redirecting 20% of call center traffic to AI solutions for one or two quarters and closely monitoring the outcomes, businesses can obtain concrete data on performance improvements and cost savings.

Now that GenAI bots are coming, which autonomously feed from the knowledge base – alongside product manuals and web content – this is becoming increasingly crucial. It’s just critical that agents receive uniform training on how to access this information and handle these interactions, with astute intent-level journey orchestration. The company was recently embroiled in a legal scandal that resulted in the judge labeling Eir a “disgrace” due to accusations that its employees were instructed to ignore statutory regulations on handling customer complaints. Having shared screenshots of the marathon encounter on Reddit, the customer confirmed that the interaction had led them to cancel all other AT&T services, switching to T-Mobile, and filing a complaint – after all, time is money. In the race to make the most of generative AI, some companies are leading the charge and are not just adopting this technology but defining its future. Three of the top generative AI companies that push the boundaries of AI transformation include OpenAI, Microsoft, and Google.

When all integrations can interact with each other, customers can sync their business data in one place. This enables different teams to have a comprehensive view of all data across platforms, facilitating the effective management of customer relationships and empowering CRM professionals to make the best business decisions. In businesses with high customer inquiry volumes, AI-powered chatbots can significantly reduce the time of response, boosting customer satisfaction. As a result, they may provide customers with the hyper-personalized experiences they seek, ultimately improving overall customer satisfaction.

customer service use cases

It enables users to explore unstructured data, discover patterns and gain actionable information that can lead to significant efficiency improvements and cost savings. Traditional methods of finding answers through manual and laborious data investigation often consume valuable time and resources. However, with Generative AI, customer service operations can be supported to deliver efficient and personalized service in a language the customer understands. The company launched Einstein GPT in 2023, introducing generative AI into its product set, with Einstein Copilot, a conversational AI assistant, following thereafter. While other CRM providers may offer AI integrations for sales and customer service, SAP is the only tech company that delivers true end-to-end solutions spanning ERP, demand management and planning, supply chain, and CX. Providing this level of tailored interaction requires enhanced data management, so implementing AI right into the heart of CRM capabilities ensures that customer service agents don’t need to manually sort and analyze data.

Assisting Agents as They Type

As technology evolves and generative AI (genAI) takes on a bigger role in retail, teams are facing unprecedented demand to satisfy shoppers’ high expectations for customer service. GenAI could be used to automate some interactions, boosting efficiency while also improving the customer experience. But to make the most of the technology, retailers and brands need to understand the key use cases in a customer service setting—and stay mindful of the risks.

Generative AI is revolutionizing experience design, but must be adopted with proper vision, strategy and guardrails. See how genAI impacts how organizations design and implement experiences for their users. Deliver smarter experiences across your customer journey and drive transformation across the customer lifecycle. AI is likely to play a bigger role in customer experience as more advancements arise. AI Expert Assist also stands out by pairing with the Zoom Contact Center, which supports a robust suite of channels, including voice and video. Indeed, while its standard turnkey offers are based on a single LLM, Avaya can enable customers to bring their own LLM via its API-first approach, with transcriptions done by either the customer or Avaya.

This process involves a combination of linguistic rules, pattern recognition, and sometimes even sentiment analysis to better address users’ needs and provide helpful, accurate responses. Cognigy is a generative AI platform designed to help businesses automate customer service voice and chat channels. Rather than simply reading answers from a FAQ or similar document, it delivers personalized, context-sensitive answers in multiple languages and focuses on creating human-like interactions. Along with fully automated customer assistance, its AI Copilot features are designed to augment human contact center workers, providing them with real-time AI assistance during their customer interactions. Today’s customer service agents face increasing pressure to deliver expert support across multiple channels, at speed.

Such actions may include improving agent support content, solving upstream issues, or adding conversational AI. VR in customer support, though less common than AR, offers a fully immersive environment where customers customer service use cases can interact with products or learn about services in a controlled virtual space. This can be particularly useful for product demonstrations, training or providing customers with a feel of a product before purchase.

A dynamic capability introduced to amplify self-service functionalities, Conversational AI+ allows enterprises to tailor solutions to their business’s AI maturity level. The third pillar is agent interactions – cases where a real human being is still required. It searches through customer accounts to see recent impacts, saving time on monitoring and creating update reports. By estimating potential savings on noncompliance issues and time saved on compliance reporting, you can demonstrate the agent’s value. AI agents represent the next major wave of transformation that will reshape industries by automating complex workflows, optimizing decision-making and unlocking new levels of efficiency. While ensuring that responses are free of bias and brand safety are essential, chatbots still struggle with delivering accurate information and are prone to “hallucinate,” making up answers that are patently false.

If the user submits a query outside the scope of the rule-based chatbot’s conversation flow, the business can have the chatbot connect the user to a human agent. Companies can use both conversational AI and rule-based chatbots to resolve customer requests efficiently and streamline the customer service experience. Now that we have a better understanding of rule-based chatbots and conversational AI-powered chatbots, let’s take a look at a few product examples to further clarify the nuances between these types of technology.

For example, after integrating Pipedrive, Leadspicker – the AI-driven lead-generation platform – saw hours spent on administrative tasks reduced by 40 percent, and website automation led to a 15 percent increase in new inbound leads. Tools like these allow them to execute all tasks as efficiently as possible, with enough supporting information to ensure they hit their goals and help customers succeed. Its CRM fuses AI, data, and applications to empower companies to capture key data at mission-critical customer touchpoints.

Calabrio offers the conversational intelligence platform for contact center leaders to run all these initiatives and many more. With that information, contact centers can work backward, dive into the customer journey, and amend the broken processes they’ve grudgingly learned to live with. Other businesses have tried to track repeat contacts by identifying when an identical number makes contact multiple times Yet, this isn’t a true indicator of FCR either, as the customer may reach out about different issues. As such, contact centers can understand where improvements can be made, with metadata attached for further analysis. Such strategies include implementations of self-service, conversational AI, and automation to address common demand drivers and drive the anticipated ROI. The following five use cases showcase their versatility and emphasize how service leaders can leverage the tech to bolster crucial customer, agent, and business outcomes.

By using the power of generative AI models together with high-quality data, businesses can create innovative solutions, streamline processes, and drive business value. The platform also provides businesses with deep insights into customer data, market trends, and business performance, offering new ways to unlock employee productivity and efficiency and drive business growth. This can improve productivity for customer service teams by streamlining repetitive tasks and increasing resources spent on high-quality service. Telecom companies can use data to predict and proactively address service issues, thereby improving customer satisfaction. For instance, identifying customers likely to experience service problems and addressing these proactively can significantly reduce service costs and enhance the customer experience.

As such, the service team generates more insight into customer satisfaction than ever before. While automating high-touch, high-volume customer-facing tasks is appealing, it comes with more risk, especially if an agent is interacting directly with customers. Starting with an inside-out perspective and focusing on internal operations such as finance, HR, sales and marketing is less risky because internal employees can be first trained to work with an agent. Tacit knowledge might include a customer service agent’s tips on how to empathize with irate customers. ChatGPT’s user growth follows an equally rapid evolution of the platform since its debut. Its most recent release, GPT-4o or GPT-4 Omni, is already far more powerful than the GPT-3.5 model it launched with features such as handling multiple tasks like generating text, images, and audio at the same time.

Efficient workflow management orchestrates your entire support process, cutting manual labor and human errors while freeing agents to tackle high-value tasks. The ticketing system enhances team productivity by offering a clear, organized view of all ongoing cases, leading to faster response times and increased customer satisfaction. This way, omnichannel support capabilities deliver a consistent, personalized experience that customers will notice and appreciate. A complete picture of customer information enables support teams to handle more cases in less time. Your support staff is then free to tackle the tough stuff while automation handles the rest.

Make sure you also have a plan in place for how you’re going to consistently monitor and optimize your AI solutions. A well-developed AI customer support plan should include a process for consistently fine-tuning chatbots, voicebots, and other AI solutions, based on feedback and insights. While the benefits of AI customer support solutions are far-reaching, there are still issues that companies need to overcome. The fact that AI solutions rely on large amounts of data means that businesses need to take a proactive approach to using that data, and their tools ethically, and securely. Customer service case management software automates these processes by letting you track, manage and resolve customer interactions from initiation to completion. With AI tools supporting network administrators, IT teams and customer service agents, telecom providers can more efficiently identify and resolve network issues.

We leverage industry-leading tools and technologies to build custom solutions that are tailored to each business’s specific needs. It uses Process Intelligence to provide a 360-degree view of the end-to-end customer service process and offers actionable insights on important CX metrics. Using the app, teams can identify improvement opportunities in real time, enabling them to continuously optimize service delivery and provide exceptional customer experiences. Self-service options typically include knowledge bases, FAQs, instructional videos, forums and automated chatbots. These resources allow customers to access information and perform certain actions on their own, such as tracking orders, managing accounts, or troubleshooting common problems.

3 Ways to Build Better Relationships with AI in Customer Experience – CMSWire

3 Ways to Build Better Relationships with AI in Customer Experience.

Posted: Tue, 05 Nov 2024 12:05:44 GMT [source]

Here, algorithms process data — such as a customer’s past purchases along with data about a company’s current inventory and other customers’ buying history — to determine what products or services to recommend to customers. Early generations of chatbots followed scripted rules that told the bots what actions to take based ChatGPT App on keywords. However, ML enables chatbots to be more interactive and productive, and thereby more responsive to a user’s needs, more accurate with its responses and ultimately more humanlike in its conversation. GenAI also gives account managers the ability to send personalized messages to customers and prospects.

  • A modern AI and machine learning driven security ecosystem enables the monitoring of complex, multi-stage attacks and the creation of an incident timeline by aggregating various attack stages and events.
  • GenAI tools can produce professional-grade visuals from text prompts, enabling marketers to build a promotional image or video with AI voiceovers, ready for social media or online ads.
  • Yet, businesses should consider a CRM platform that connects customer conversations to relevant enterprise data.
  • With cost-efficient, customized AI solutions, businesses are automating management of help-desk support tickets, creating more effective self-service tools and supporting their customer service agents with AI assistants.
  • By providing timely alerts and automatic updates, Tesla has trained their customers to enjoy a smooth and uninterrupted driving experience.

From there, they can use the conversational intelligence platform to spot pain points and address them via technology, process, or coaching changes. By doing so, service leaders can isolate the specific queries customers often have to recontact customer service regarding. First contact resolution (FCR) and short wait times are the two “most important factors” for customers when contacting customer service – according to ContactBabel. Visibility is the answer, and conversational intelligence solutions are the knights in shining armor, spotlighting critical areas for agent development. By leveraging data analytics, businesses can pinpoint underlying issues and take proactive measures to address them, enhancing overall customer satisfaction.

With this insight, brands can deep dive into how their agents evoke all sorts of emotions and uncover new best practices to coach across the agent population. The Forrester Wave CCaaS leader then applies GenAI to monitor the trend in sentiment and alert the supervisor when it drops significantly. When a contact escalates, the customer must often repeat their problem and the information they shared with the first agent – which is a common source of customer frustration.

We combine our strength in technology and leadership in cloud, data and AI with unmatched industry experience, functional expertise and global delivery capability. We measure our success by the 360° value we create for our clients, each other, our shareholders, partners and communities. Generative AI has opened up new possibilities for creating media content in marketing and entertainment sectors, empowering businesses to make visually-appealing content without large production teams. GenAI tools can produce professional-grade visuals from text prompts, enabling marketers to build a promotional image or video with AI voiceovers, ready for social media or online ads.