Artificial intelligence software can enhance customer support operations, improve response times, and provide better experiences. 

Customer service teams face numerous challenges in their daily operations. Long wait times, inconsistent responses, and the inability to provide 24/7 support can lead to customer frustration and churn. 

Additionally, the increasing volume of inquiries and the complexity of customer service issues strain resources, making it difficult for businesses to maintain high-quality service. 

With the help of AI technologies, companies can provide support for their customers more efficiently and better than before. AI for customer service offers a range of capabilities that help businesses interact with their customers. Keep reading to learn how to meet growing consumer expectations by integrating AI into customer service. 

Understanding AI in customer service

Teams use AI in customer service to perform tasks typically requiring human intelligence. These AI systems are designed to understand, learn from, and respond to inquiries in a way that mimics human interaction. The core technologies driving AI customer service include natural language processing (NLP), machine learning algorithms, and data analytics.

Chatbots and virtual assistants are among the most visible applications of AI for customer service. These tools can manage a range of customer queries, from simple FAQs to more complex issues that may require routing to human agents. Using NLP, these systems can understand the intent behind customer messages and provide relevant responses or solutions.

AI tools work with customer service functions to improve efficiency and customer satisfaction. For instance, AI can:

  • Automate responses to common inquiries, freeing up human agents to handle more complex issues
  • Predict customer needs based on behavioral patterns
  • Help human agents by providing suggestions during customer interactions, helping them improve their decision-making processes when dealing with complex customer issues or unfamiliar scenarios

Examples of AI customer service

Many businesses have successfully combined AI and customer service operations, improving efficiency and customer satisfaction. For instance, major e-commerce companies use AI-powered chatbots to handle initial customer inquiries, automating responses to common questions about order status, returns, and product information. This implementation can result in faster response times and reduced workload for human agents.

Another example is telecommunications providers that use AI to analyze customer call logs and identify potential issues before they escalate. Proactively addressing these concerns, the company may see a reduction in customer churn and an increase in overall satisfaction scores.

Your business can use AI with Jira Service Management (JSM) to improve customer service. Here are a few AI productivity boosts you can use with JSM:

  • Automated ticket routing: AI algorithms can analyze incoming support tickets and automatically assign them to the appropriate team or service agent based on the content and urgency of the request.
  • Intelligent knowledge base suggestions: When agents work on tickets within JSM, AI can suggest relevant articles from the knowledge base, helping them resolve issues more quickly and consistently.
  • AI answers: This feature uses generative AI, powered by your knowledge base and Atlassian Intelligence, to respond to customer requests. With the information in your existing knowledge base, AI can provide accurate and contextually relevant responses to customer inquiries, improving response times and consistency in service delivery.

Benefits of AI in customer service

Integrating AI into customer service operations yields significant advantages for businesses and their customers. AI customer service solutions can transform support processes and improve the customer experience. Here are some benefits of using AI for customer service:

  • Faster response times: Are you looking for ways to streamline customer service management? AI chatbots can quickly answer customer questions, reducing waiting and improving customer satisfaction. Automating simple queries with chatbots frees up human agents to focus on more complex problems, leading to faster service across the board and often resulting in better experiences for customers seeking help.
  • Personalized interactions: AI can offer tailored recommendations and solutions by analyzing customer data and behavior, creating a more personalized support experience.
  • 24/7 availability: AI-driven support tools can operate around the clock, ensuring customers can get assistance anytime, even outside regular business hours.
  • Handling repetitive tasks: AI can automate routine inquiries and processes, allowing human customer support agents to focus on higher-value interactions.
  • Data insights: AI systems can analyze large volumes of customer data to identify trends and potential issues, helping businesses make informed decisions and improve their products or services.
  • Improved efficiency: AI can help businesses operate more efficiently and cost-effectively by streamlining support processes and reducing the workload on human agents.
  • Consistent service quality: AI-powered tools can deliver consistent responses and solutions, ensuring a uniform level of service across all customer interactions.

Steps to using AI in customer service

Ready to start using AI in your customer service operations? Follow these steps to get started: 

Assess business needs

Identify which areas of your support operations will benefit most from AI integration. This means analyzing your current processes, customer pain points, and support team challenges.

By doing so, you can set clear objectives for what you hope to achieve with AI, such as reducing response times, improving first contact resolution rates, or enhancing overall customer satisfaction.

Choose the right AI tools

Once you’ve identified your needs and objectives, research various AI tools and platforms to find those that best suit your business requirements. Consider integration capabilities, scalability, and user reviews when evaluating different options.

Looking for an AI tool for customer service? Try Jira Service Management. JSM offers robust ITSM features and customer service software that can integrate with other communication and project management systems to build a comprehensive support solution.

Develop a plan

Your plan should include timelines, budget allocations, and resource requirements. Outline the steps for integrating AI into your existing systems, considering factors like data migration, system configurations, and potential disruptions to your current workflows.

Integrate AI with existing solutions

Ensure your AI tools work well with your current customer service systems. This may involve API integrations, data syncing, or other technical configurations. 

Conduct pilot tests to address any integration issues before full deployment, allowing you to identify and resolve potential problems early in the process.

Train your team

Provide comprehensive training for your customer service representatives on how to use the new AI tools effectively. This training should cover the more technical aspects of using the systems and how to work alongside AI to provide the best possible customer experience. 

Offer ongoing training, support, and resources to assist your team with the transition and encourage them to provide feedback on the new processes.

Monitor and optimize

Once your AI customer service solutions are in place, track their performance using relevant metrics, such as response times, customer satisfaction scores, and resolution rates.

Gather customer and support agent feedback to understand how AI tools impact the support experience. Use this data to adjust and improve your AI systems and processes to meet your business needs and customer expectations.

Best practices for AI customer service

When implementing AI in customer service, it’s crucial to maintain a balance between automation and human interaction. While AI excels at handling routine inquiries and initial customer interactions, complex issues often require the nuanced understanding and problem-solving skills that human agents provide. 

Many customers also appreciate human interaction’s empathy and emotional connection, especially when dealing with sensitive matters. 

To strike the right balance between a human and AI approach, consider using AI as a first line of response for customer inquiries. However, program your system to recognize complex issues or detect when a customer is becoming frustrated. Create seamless pathways for these interactions to transfer to human agents, and offer customers the choice to speak with a human representative from the outset. By blending AI efficiency with human empathy, you can create a customer service experience that’s both fast and personalized.

Remember, implementing AI in customer service isn’t a one-and-done process; it requires ongoing attention and refinement. Regularly update your AI with the latest information about your products, services, and policies to maintain accurate and relevant responses to customer inquiries. 

Monitor AI performance by tracking key metrics like response accuracy, customer satisfaction scores, and resolution times. This data provides valuable insights into how well your AI serves your customers and where improvements might be needed. 

Set a regular schedule for updating your AI’s knowledge base and reviewing its performance metrics. Engage your customer service team and customers by providing feedback on their interactions with the AI. 

By keeping your AI system updated and closely monitoring its effectiveness, you can address emerging challenges and adapt to changing customer needs.

Enhance customer service with Jira Service Management

Integrating AI with Jira Service Management (JSM) can significantly streamline customer service operations and improve efficiency. For those familiar with Jira Service Desk, it’s now part of JSM — with more robust features. 

JSM’s ITSM and customer service management combine a robust ticketing system, knowledge base, automation features, and AI technologies to create a comprehensive and intelligent support ecosystem.

For example, when agents work on tickets within JSM, AI can suggest relevant articles from the knowledge base, helping them resolve issues more quickly and consistently. 

Additionally, AI answers can use generative AI, powered by your knowledge base and Atlassian Intelligence, to respond to customer requests with accurate and contextually relevant information. 

These AI-enhanced capabilities enable businesses to create a more responsive, efficient, and data-driven support experience that meets the changing needs of customers and support teams. 

Ready to see it in action? Try Jira Service Management and get started with customer service AI.

How to implement AI in customer service