Automating IT Service Management in Manufacturing: A Deep Learning Approach to Predict Incident Resolution Time and Optimize Workflow

Authors

  • Mahadu Vinayak Kurkute Stanley Black & Decker Inc, USA Author
  • Priya Ranjan Parida Universal Music Group, USA Author
  • Dharmeesh Kondaveeti Conglomerate IT Services Inc, USA Author

Keywords:

IT Service Management, deep learning, incident resolution time, workflow optimization

Abstract

The increasing complexity of IT Service Management (ITSM) within the manufacturing industry presents significant challenges, including lengthy incident resolution times, inefficient workflows, and a growing reliance on manual interventions. As manufacturing firms strive to meet operational efficiency and maintain system reliability, there is a critical need to adopt advanced technologies that can streamline ITSM processes. This research paper presents a comprehensive study on the application of deep learning techniques to automate the prediction of incident resolution times and optimize workflows within ITSM environments specifically tailored to manufacturing operations. The adoption of deep learning models in this context offers an opportunity to transform how IT incidents are managed by providing accurate, data-driven predictions, which subsequently enable automated adjustments in workflow prioritization and resource allocation. This, in turn, improves overall response times and operational continuity, allowing IT teams to address critical incidents faster and with greater precision.

The focus of this paper is twofold: first, to develop a deep learning framework capable of accurately predicting the resolution times for IT incidents in the manufacturing sector, and second, to integrate these predictions into existing ITSM workflows to optimize their efficiency. The research methodology involves the collection and analysis of historical IT incident data from a variety of manufacturing companies, which are used to train several deep learning models, including recurrent neural networks (RNNs) and long short-term memory (LSTM) networks. These models are chosen for their ability to model sequential data, which is crucial in understanding the timeline of incidents and predicting future trends. The accuracy of these models is validated using cross-validation techniques, and their performance is compared with traditional machine learning models such as decision trees and random forests, which are typically used in predictive ITSM analytics.

The integration of the deep learning predictions into ITSM workflows introduces a new dimension of process optimization. By accurately forecasting incident resolution times, workflows can be automatically adjusted in real time, with higher priority incidents receiving more immediate attention. This reduces delays in handling critical incidents, thereby minimizing downtime, which is particularly important in the manufacturing industry where system outages can lead to significant production losses. Furthermore, by optimizing workflows based on predictive insights, the overall workload distribution for IT personnel can be balanced more effectively, reducing stress and improving team performance. In this context, the paper discusses the design and implementation of an automated workflow management system that dynamically adjusts task allocations based on predicted resolution times. The system uses a reinforcement learning (RL) component to continuously learn and adapt workflow rules to changing conditions in real time, ensuring that it remains effective even as the nature of incidents evolves.

The study also addresses the challenges associated with the deployment of deep learning models in ITSM environments. One of the primary concerns is the quality and quantity of data available for model training. In many manufacturing firms, incident data is incomplete, inconsistent, or insufficiently labeled, which can degrade the performance of predictive models. To overcome these limitations, the paper explores advanced data preprocessing techniques, including data augmentation and imputation methods, to enhance the dataset quality. Additionally, the paper discusses the importance of model interpretability, given that many deep learning models function as black boxes, providing predictions without explanations. This lack of transparency can hinder the adoption of such models by ITSM teams, who require actionable insights to justify decision-making processes. The research thus introduces explainable AI (XAI) techniques to improve the interpretability of the deep learning models used in this study. These techniques allow IT personnel to understand why certain resolution times are predicted, thereby fostering greater trust in the system’s outputs.

The practical implications of this research are significant, as the manufacturing industry increasingly adopts IT systems to manage critical operational tasks. By improving the speed and accuracy of incident resolution, the deep learning approach presented in this paper contributes directly to reducing production delays and avoiding costly downtime. Moreover, the automation of ITSM workflows reduces the reliance on manual intervention, freeing up IT personnel to focus on more strategic tasks, such as proactive system maintenance and process improvement initiatives. The paper provides a detailed discussion on the potential return on investment (ROI) of implementing deep learning models for ITSM automation, drawing on case studies from the manufacturing sector to illustrate the potential gains in efficiency, cost savings, and productivity. It also addresses the scalability of the proposed solution, ensuring that it can be applied not only in large-scale manufacturing operations but also in smaller companies with limited IT resources.

Future research directions are also explored in this paper, particularly in the context of expanding the applicability of deep learning in ITSM beyond incident resolution time prediction. The potential for deep learning models to assist in root cause analysis of incidents, predictive maintenance of IT systems, and anomaly detection is examined, with the goal of creating a fully automated ITSM framework capable of handling a broader range of operational challenges. Additionally, the role of emerging technologies such as edge computing and the Internet of Things (IoT) in enhancing data collection and processing capabilities for ITSM systems is discussed. These technologies, when integrated with deep learning, could provide real-time insights into system performance and incident trends, further enhancing the responsiveness and efficiency of IT service management in manufacturing.

This research demonstrates the transformative potential of deep learning in automating ITSM processes within the manufacturing industry. By accurately predicting incident resolution times and optimizing workflows, deep learning models can significantly reduce operational inefficiencies, minimize system downtime, and improve overall productivity. The successful implementation of these models, as outlined in this paper, represents a significant step toward the future of fully automated IT service management in manufacturing, where manual interventions are minimized, and predictive insights drive more intelligent, data-driven decision-making. The research also highlights the technical challenges that need to be addressed, such as data quality, model interpretability, and system scalability, while offering practical solutions to overcome these obstacles. As the manufacturing industry continues to evolve, the adoption of deep learning-based ITSM solutions will play a critical role in maintaining the competitiveness and operational efficiency of firms worldwide.

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Published

22-01-2024

How to Cite

[1]
M. V. Kurkute, P. R. Parida, and D. Kondaveeti, “Automating IT Service Management in Manufacturing: A Deep Learning Approach to Predict Incident Resolution Time and Optimize Workflow”, J. of Artificial Int. Research and App., vol. 4, no. 1, pp. 690–731, Jan. 2024, Accessed: Nov. 15, 2024. [Online]. Available: https://aimlstudies.co.uk/index.php/jaira/article/view/287

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