Technical debt occurs when the rush to automate leads to suboptimal decisions, such as choosing the wrong technologies, ignoring underlying process issues, or failing to integrate automation solutions effectively. This can result in vendor lock-in, automation failures, and increased complexity.
In our latest webinar with renowned industry analyst Forrester, we explore the hidden costs and untapped potential of automation-driven technical debt. Discover how to navigate this complex issue and ensure your automation initiatives deliver maximum value.
Imagine you're building a house. You have a great blueprint, but you start rushing the construction process, cutting corners, and using subpar materials. While you might finish quickly, you'll soon discover that the house is structurally unsound, leaks, and requires expensive repairs.
Just as a hastily built house can lead to costly repairs, rushing automation initiatives without careful planning can result in significant technical debt. By rushing to automate without a solid foundation and careful planning, you risk creating a system that is inefficient, costly to maintain, and prone to breakdowns.
The rapid pace of digital transformation and the widespread adoption of automation technologies have brought about significant benefits for businesses. However, they have also given rise to a growing challenge: technical debt.
In our recent webinar, industry experts Dr. Bernhard Schaffrik and Vinay Mummigatti examined the complexities of automation-driven technical debt. Together, they offered valuable insights into the root causes, potential consequences, and effective strategies for mitigation.
Let's dive in.
Access the full webinar OnDemand.
Remember the early days of automation? Businesses often relied on assumptions and gut feelings to drive their initiatives. This approach, while seemingly efficient, often led to operational disasters. Dr. Bernhard Schaffrik, emphasizes the importance of data-driven decision-making in the modern age of automation.
Dr. Schaffrik began by tracing the history of business process management (BPM) and automation, highlighting the shift from manual, assumption-based approaches to data-driven methodologies. The emergence of technologies like process mining and robotic process automation (RPA) promised increased efficiency and productivity. However, the rush to automate without a clear understanding of underlying processes often led to automation disasters and the accumulation of technical debt.
According to Dr. Schaffrik, “Vendors realize that without process visibility on an operational level you cannot scale automation. You can use it for small-scale stuff, but not the more beneficial automation.” |
Vinay Mummigatti further emphasized the misalignment between business goals, technology roadmaps, and automation patterns as key contributors to technical debt. The pressure to deliver quick results often leads to tactical, short-term solutions that create long-term challenges. The lack of a holistic view of processes and the misapplication of automation technologies further exacerbate the problem.
So how can organizations approach automation differently to avoid these pitfalls?
Just as a hastily built house can lead to costly repairs, rushing automation initiatives without careful planning can result in significant technical debt. By rushing to automate without a solid foundation and careful planning, you risk creating a system that is inefficient, costly to maintain, and prone to breakdowns.
How can you avoid these pitfalls? The answer lies in Digital twins and Process Intelligence.
Think of a Digital Twin as a virtual representation of your operations, created through the data collected by Process Intelligence. It's like a detailed blueprint of your processes, highlighting potential issues and opportunities for improvement.
By leveraging this approach, you can build a solid foundation for your automation initiatives, ensuring that they are efficient, sustainable, and free from technical debt.
Leading organizations are already adapting this holistic approach to understand their operations accurately and at scale. Skan's AI-powered Process Intelligence platform has especially been impactful across:
The digital twin approach allows for continuous monitoring and improvement, ensuring that automation initiatives remain aligned with business goals and technology roadmaps. By leveraging data-driven insights, organizations can avoid the pitfalls of tactical automation and build a sustainable automation strategy.
As Vinay highlighted, “Digital twins bring together the observation from a process, people, and technology standpoint, converting them into metrics, bringing traceability across the time scale and aligning the problems to the outcomes on a continuous basis.” |
Think of your automation initiatives as a new addition to your home. To ensure it's structurally sound and adds value, you need a solid foundation. The following strategies can help you build that foundation:
If there’s one key takeaway from this webinar, it’s the crucial role of process intelligence in mitigating technical debt. By adopting a data-driven approach and aligning automation initiatives with business goals and technology roadmaps, organizations can achieve sustainable success in the age of automation.
As organizations continue to embrace automation and emerging technologies like generative AI, the importance of process intelligence will only grow. Skan's AI-powered platform offers a powerful solution for navigating the complexities of automation and ensuring that technology investments deliver long-term value.
To learn more about how Skan can help your organization mitigate technical debt and achieve automation success, request a demo today.
To learn more about the strategies discussed in this webinar and how process intelligence can help your organization mitigate technical debt, watch the full recording OnDemand now.