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Customer Service AI 7 min read

How to Classify Support Tickets with AI

Support Ticket Classification with AI

Classifying support tickets effectively is crucial for delivering timely and accurate customer service. Artificial Intelligence (AI) can streamline this process by automating ticket classification based on various criteria, reducing manual effort and enabling faster issue resolution. In this article, we'll break down the key aspects of classifying support tickets using AI, from determining the purpose and criteria to automating the process with Bazinga AI.

1. Determine the Classification Purpose

The first step in setting up an AI-driven classification system is understanding why you need to classify tickets. There are different purposes that will drive the way tickets are categorized:

  • Reporting: If the goal is to gather insights on customer interactions, trends, or areas that need improvement, ticket classification can be used to generate detailed reports. For example, classifying tickets by type (problem vs. question), product, or issue frequency can help companies optimize their services.
  • Automating Assignments: AI can classify tickets based on criteria like urgency, product type, or expertise required. The system can then automatically route tickets to the right department or agent, ensuring faster response times and more efficient workflows.
  • Prioritization: Some tickets may need to be classified based on urgency or importance. For instance, issues marked as critical need to be prioritized over low-impact queries, and AI can help rank these tickets for quicker attention.
    By defining the purpose of classification upfront, companies can build a more targeted and effective AI system tailored to their specific needs.

2. Determine the Classification Criteria

Once the purpose of classification is clear, the next step is identifying the right criteria. In most cases, support tickets need to be classified along multiple dimensions, rather than using a single classification. Here are some common criteria:

  • Type of Issue: Is the ticket a question, a problem, a request for new features, or feedback? Distinguishing between these types helps the support team address issues more effectively. For example, questions might go to a FAQ bot, while problems require a hands-on technical agent.
  • Product or Service: AI can classify tickets based on which product or service the issue relates to. This is particularly useful for companies offering multiple products or services. For instance, a software company may need to categorize tickets by application version or feature set.
  • Urgency Level: Urgency is another crucial classification criterion. Some tickets may require immediate attention, such as security breaches or system outages, while others (like general inquiries) can be handled at a slower pace.
  • Area of the Product or Service: This involves categorizing tickets based on specific product areas or components (e.g., login issues, payment problems, user interface bugs). By doing so, tickets can be routed to specialists within the team who are most capable of addressing the particular area of concern.
  • Sentiment Analysis: AI can evaluate the tone of customer messages to classify them by sentiment. Negative or frustrated tones can be flagged for higher priority, allowing agents to de-escalate situations quickly.

By incorporating these multiple criteria, companies can create a robust classification system that allows for more precise ticket handling and reporting.

3. Automating the Classification Process with Bazinga AI

Once your classification criteria are defined, you can automate the process using AI. With Bazinga AI, companies can set up APIs that classify support tickets in real-time, across various stages of the ticket lifecycle. Here's how Bazinga AI simplifies ticket classification:

Bazinga AI offers APIs that can classify tickets at different events in the support process. For example:

  • When the Ticket is First Created: The API automatically categorizes the ticket based on the customer's initial input, determining its type, urgency, product, and other relevant criteria.
  • When the Ticket is Marked as Done: After a ticket is resolved, it may be necessary to reclassify it based on how it was resolved (e.g., whether the solution required escalation or if it was solved within a single interaction).
  • On Every Ticket Interaction: Sometimes classification needs to evolve as the conversation progresses. Bazinga AI can reclassify tickets with each interaction, adjusting the urgency or routing them to different teams if the issue escalates.

By integrating these events into your workflow, ticket classification becomes dynamic and more accurate throughout the entire support process.

4. Leveraging Bazinga AI’s Assistant for Enhanced Classification

Bazinga AI’s Assistant, powered by machine learning, handles complex classifications with ease. It learns from previous ticket data to make more accurate decisions over time. For example, if the AI notices that similar types of tickets are often escalated to a particular team, it can start automatically routing future tickets with similar patterns to that team, improving workflow efficiency.

Bazinga AI’s Assistant also excels in sentiment analysis, urgency detection, and identifying complex multi-category issues, further enhancing ticket classification precision.

5. Bazinga AI for Stand-Alone Support Desk Solutions

In addition to offering API-driven classification, Bazinga AI can build the UI and workflows for a complete support desk solution. This can be particularly beneficial for companies looking to implement a fully integrated ticket management system. With Bazinga AI’s customizable UI and workflow automation features, companies can create a seamless support desk experience:

  • Custom Workflows: Design workflows that automatically route tickets based on AI-driven classification criteria. For instance, urgent tickets are sent to the front of the queue, while less critical ones are assigned to lower-priority agents.
  • User Interface Integration: Bazinga AI’s intuitive UI allows support agents to see all classifications and related details in real-time. This provides clarity on ticket urgency, type, and routing decisions, helping agents manage their workload efficiently.

Conclusion

Classifying support tickets with AI has the power to transform customer service operations. By first determining the classification purpose and criteria, companies can implement a sophisticated AI-driven classification system tailored to their unique needs.

With Bazinga AI’s API, support tickets can be automatically categorized, reclassified as needed, and intelligently routed throughout their lifecycle. Additionally, Bazinga offers a fully integrated support desk solution, providing a complete package for companies looking to streamline their support operations and improve customer satisfaction.

Leveraging AI for ticket classification not only speeds up resolution times but also enhances the overall efficiency of support teams, resulting in a more satisfying customer experience.