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Automating IT Ticket Resolution with Akira AI’s Multi-Agent System

Written by Dr. Jagreet Kaur Gill | 15 September 2024

In the contemporary IT support environment, managing ticket resolution presents significant challenges for many organizations. Traditional methods, often reliant on manual processes and extensive human intervention, are increasingly proving to be inadequate and inefficient. With the advent of Agentic AI, these technologies are revolutionizing the way support tickets are handled. Akira AI’s Agentic Workflow solution utilizes multi-agent systems to streamline and optimize ticket resolution, significantly improving efficiency, accuracy, and overall support quality. 

This blog will explore how Akira AI transforms IT support operations, addressing common challenges and delivering enhanced outcomes for organizations and their users. 

 

How AI Agents Revolutionize  Autonomous Ticket Resolution System 

AI Agents 

AI agents are computer programs developed to perform their tasks by making self-guided decisions based on observations of their environment, input, and specific objectives. Unlike stiff automation systems, an AI agent thinks, adapts, and acts independently. They are designed to perceive their environment, learn from past experiences, and hence make decisions to attain certain objectives. In fact, everything from the execution of simple single-task programs to complex multi-process system execution is an AI agent. Particularly, they are good in dynamic and unpredictable environments; they can access the Internet, interact with applications, process large volumes of data, conduct transactions, and continually improve their methods based on feedback. 

 

AI Agents in Ticket Resolution 

AI agents are reshaping IT ticket resolution by introducing automation and efficiency into the process. They streamline various aspects of support, making the entire system faster and more effective. With their ability to handle routine tasks and provide valuable insights, AI agents enhance overall support quality and user satisfaction. Their integration helps modernize IT operations, offering a more responsive and adaptable approach to resolving issues. This leads to a more efficient support system and better outcomes for users and organizations alike. 

 

Key Challenges Faced In Autonomous Ticket Resolution

  1. Integration Complexity: Most conventional systems face the challenge of integrating different tools and platforms which results in fragmented workflow and inadequate data exchange between various segments of the IT infrastructure.

  2. Accuracy in Ticket Categorization: Manual ticket categorization can be prone to errors, resulting in misrouted tickets and delays in resolution. This inefficiency can overwhelm support teams and extend resolution times.

  3. Knowledge Base Management: Keeping a knowledge base current and comprehensive is difficult with traditional methods. Updating information and ensuring it is accurate requires significant manual effort, which can lead to outdated or incomplete resources.

  4. Handling Complex Issues: Complex IT issues often require extensive human intervention, as traditional systems may lack the capabilities to fully address intricate problems. This can lead to slower resolution times and increased workload on support staff.

  5. Data Privacy and Compliance: Traditional methods have a pretty slow pace in keeping up with changing regulations concerning data privacy and compliance requirements. It is quite challenging to keep sensitive information out of reach and ensure all regulatory standards are met.

  6. Training and Adaptation: Traditional systems may not adapt quickly to new types of issues or changes in the IT environment. Training staff to handle emerging challenges often involves extensive time and resources.


  • Addressing the challenges via AI agents 

AI agents address IT ticket resolution challenges with several key strategies. They integrate smoothly with existing systems using flexible APIs, enhancing accuracy in ticket categorization through advanced machine-learning algorithms. The RAG Agent maintains up-to-date knowledge bases, while the Copilot Agent aids complex issue resolution with context-sensitive suggestions.

Data privacy is ensured by robust compliance guardrails, and continuous training keeps the agents effective as ticket types evolve. User trust is built through a transparent interface, and despite initial costs, the system delivers significant efficiency gains. Scalability is managed through adaptable architecture, and ongoing error handling and feedback mechanisms improve accuracy and performance over time. 

 

Akira AI’s Multi-Agent Solution 

Akira AI's solution is a comprehensive system that automates the entire ticket resolution process.

Figure: Technical Architecture of Autonomous IT Ticket Resolutions

Process flow

  1. Ticket Submission: The process begins when users submit tickets through various channels such as email, IT portals, or assistants. Once submitted, the system logs the ticket and prepares it for categorization and triaging.
  2. Instant Ticket Categorization: The system immediately analyzes the incoming ticket to determine the nature of the issue. It identifies key information such as the type of request, urgency, and any associated metadata. Based on the analysis, tickets are categorized into predefined classes like routine technical problems, critical outages, or specialized requests.
  3. Routing to the Correct Process: After categorization, tickets are automatically routed to the most appropriate handling process or team. For simple, routine tickets (like password resets or system updates), the system redirects them to an automated handling process for quick resolution. Complex issues that require specialized expertise are sent to appropriate teams for further analysis.
  4. Knowledge Retrieval for Context: For any issue requiring background information, the system instantly retrieves relevant data from internal databases and knowledge repositories.
  5. Autonomous Resolution for Routine Tasks: For routine tickets, such as account lockouts or routine system updates, the system takes full control. Predefined workflows are triggered, automatically resolving these issues without any manual intervention.
  6. Escalation of Complex Issues: If the system detects that a ticket is too complex for an automated resolution, it escalates the case. While the case is escalated, the system may also provide suggested solutions based on its data or prompt human agents with recommendations.
  7. Suggesting Solutions for Complex Problems: For escalated tickets, the system works along with human agents by providing suggested solutions. These suggestions are generated based on the system’s knowledge base, previous successful resolutions, and the specifics of the current issue. Human agents can then evaluate the system's suggestions to make faster decisions, improving the speed and accuracy of the resolution process.
  8. Ensuring Data Privacy and Compliance: During the entire ticket resolution process, the system adheres to strict data privacy guidelines and compliance standards.
  9. Feedback Collection: After a ticket is resolved, the system collects feedback from the user or internal agents to assess the quality of the This feedback is analyzed to refine and improve the system's future responses and to identify any potential gaps in its knowledge or processes.

 

Technological Backbone of Autonomous Ticket Resolution

Our composite AI framework utilizes the components from traditional Machine learning to advance Multi-agent systems:

Layer 

Component 

Stack 

Multi-Agent Layer 

Master Orchestrator 

LangChain,  Custom LLM Orchestration Models 

Agents 

Langchain, Autogen, and Langraph for multiagent framework 

RAG (Retrieve-Augmented Generation) Agent 

LangChain, Llama Index, GPT-based LLMs, FAISS 

Automated Resolution Agent 

Rule-Based Systems, Custom Scripts (Python), FastAPI 

Copilot Agent 

LLMs (GPT-4, GPT-3.5), LangChain, TensorFlow, sci-kit-learn 

Data & Embedding Layer 

Data Pipelines 

Apache Kafka, AWS Glue, Airflow 

Embedding Models 

OpenAI’s GPT Embedding Models, FAISS 

Vector Database 

Pinecone, Qdrant 

RAG Layer 

RAG (Retrieval-Augmented Generation) 

LangChain, GPT-based LLMs, Llama Index 

Integration Layer 

Data Ingestion 

REST APIs, AWS Lambda, API Gateway 

Knowledge Base 

Neo4j, Elasticsearch 

Backend Layer 

Backend Pipelines 

FastAPI, Flask, Django: For API development 

Frontend Layer 

User Interface 

React, Vue.js, Angular: For creating an intuitive user interface 

Infrastructure Layer 

Infrastructure 

AWS, GCP, Kubernetes 

Authentication & Authorization 

OAuth 2.0, JWT 

Monitoring & Logging 

Prometheus, Grafana 

 

Multi-Agent System Overview

Our multiagent solution comprises various domain-specialized agents that work together to achieve a particular goal.

  1. Master Orchestrator Agent: The central command unit directs the overall automation of the resolution process. It then accords with agentic workflow by delegating the tasks to other agents so that at every stage in the process, each step is free of errors.  
    It relies on an LLM for higher-order decision-making. The knowledge graph captures the routes, rules, and relationships related to this domain and integrates the results into the Master Orchestrator Agent. This agent ensures that all the subprocesses are executed in a fashion that is compliant with regulations.
  2. Ticket Triage Agent: The Ticket Triage Agent is responsible for the initial assessment of all incoming tickets. As soon as a ticket is submitted, this agent swiftly analyzes its content to determine the nature of the issue, categorizing it into predefined types such as routine tasks, complex problems, or urgent issues. The primary goal of this agent is to ensure that tickets are accurately classified and directed toward the right resolution path without delay.
  3. RAG (Retrieve-Augmented Generation) Agent: The RAG Agent plays a pivotal role in speeding up the resolution process by providing contextual knowledge. It acts as an intelligent knowledge retrieval system that searches internal databases, past resolutions, and relevant documentation to extract the information needed for resolving a specific ticket. Whether the issue is routine or complex, the RAG Agent ensures that the system or human agents working on the ticket have access to all necessary information to make informed decisions.
  4. Automated Resolution Agent: The Automated Resolution Agent is responsible for handling straightforward, routine tasks that can be resolved without human intervention. These tasks typically include issues like password resets, software updates, or basic troubleshooting that follow a predictable workflow. Once a ticket is categorized as routine, this agent autonomously executes the necessary actions to resolve the issue. By automating the handling of routine tasks, the Automated Resolution Agent relieves IT support teams from performing repetitive, time-consuming activities, enabling them to focus on more critical and complex problems.
  5. Copilot Agent: The Copilot Agent deals with complex tickets in the presence of human agents. For these complex cases where escalation is required, the Copilot Agent would analyze issues, suggesting or recommending a solution based on previous similar cases and the knowledge base within the system. The Copilot agents speed up the decision-making process by pushing forward the relevant insights, along with possible solutions.
  6. Final Processing: After the issue is resolved, the ticket is updated with the final solution. This includes documenting the steps taken, any decisions made, and the resolution provided. The ticket is then marked as closed, indicating that the issue has been successfully addressed. 
    The Feedback Agent is then responsible for collecting, analyzing, and integrating feedback from both the system and users . This agent monitors user satisfaction and evaluates the effectiveness of the resolution process to ensure continuous improvement. It identifies areas where the system can be optimized and where additional training or adjustments to the knowledge base may be needed. 

 

Traditional AI vs Akira AI Multi-Agent solution

Aspect 

Traditional Ticket Resolution 

Akira AI Multi-Agent Solution 

Ticket Categorization 

Manual categorization by IT teams, leading to delays and human error. 

Automatic, instant categorization based on AI models, reducing delays and errors. 

Knowledge Base Access 

Agents manually search for relevant information, which can be time-consuming. 

RAG agent instantly retrieves contextual data from internal knowledge bases for faster resolutions. 

Resolution of Routine Tasks 

Routine tasks (e.g., password resets) handled manually, clogging the system. 

Automated Resolution Agent handles routine tasks autonomously, freeing up resources. 

Handling Complex Tickets 

Manual escalation; often results in bottlenecks and delays in complex problem-solving. 

Co-pilot Agent assists human agents with suggestions, expediting complex ticket resolution. 

Response Time 

Often delayed due to manual triaging and searching for solutions. 

Immediate responses via Ticket Triage and Automated Resolution Agents, reducing overall resolution time. 

Data Privacy & Compliance 

Manual oversight; risk of errors in compliance and data privacy protection. 

Embedded Data Privacy and Compliance Guardrails ensure automated adherence to privacy regulations. 

Ticket Volume Handling 

Struggles with high ticket volumes, leading to backlogs and slower resolutions. 

Capable of handling high ticket volumes through automation, avoiding backlogs. 

User Satisfaction 

User satisfaction varies depending on resolution speed and accuracy. 

Improved user satisfaction due to faster, accurate resolutions with less human delay. 

 

Key Benefits of Autonomous Ticket Resolution 

  • 1.Efficient Ticket Management: In the multi-agent system, categorization and triaging are done automatically, whereby tickets get routed to the respective agent. This minimizes manual handling of requests, hence decreases the response time to deliver promptly. 

  • 2.Rapid Knowledge Retrieval: The RAG efficiently retrieves and provides relevant information from knowledge bases. This accelerates problem resolution by offering quick access to contextual insights and solutions, improving overall accuracy. 

  • 3.Automated Routine Resolutions: The agent autonomously resolves routine tasks like password resets, among other highly frequent technical occurrences. The agent will relieve the workload from human agents so that they can focus on more complex issues. 

  • 4.Enhanced Complex Issue Support: The Copilot Agent assists human agents with complex problems by suggesting potential solutions and providing contextual advice. This collaborative approach improves decision-making and speeds up the resolution of intricate issues. 

  • 5.Compliance and Data Privacy: Guardrails ensure that sensitive information is protected and that all regulatory requirements are met. This lowers the probabilities of a data breach and help in winning the trust of your users. 

  • 6.User Satisfaction: Faster ticket resolution and improved accuracy lead to higher user satisfaction. The system's ability to quickly address issues and provide reliable support enhances the overall user experience. 

  •  

Conclusion 

In conclusion, Akira AI is a game-changer for IT ticket resolution. By automating routine tasks and streamlining processes, it makes support systems faster and more efficient. Akira AI’s smart multi-agent approach not only speeds up ticket handling but also enhances accuracy and boosts user satisfaction. As IT environments grow and evolve, Akira AI adapts seamlessly to new challenges, ensuring your support framework remains effective and responsive. Embracing Akira AI means investing in a solution that makes IT support more agile and effective, ultimately benefiting both your organization and its users.