IIC Journal of Innovation 11th Edition | Page 28

Bridging the Artificial Intelligence Skills Gap in the Machine Manufacturing Industry I NTRODUCTION Artificial Intelligence (AI) talent is nowadays hard to find, and no company today has enough in-house AI talent. AI will transform many different jobs, and companies should give every employee the knowledge they will need to adapt to their new roles in the AI era. It is important to keep in mind that AI is much more than just a technology. It is a resource to implement new business models and better services. User acceptance is the prerequisite for solution implementation. During the last decade, there has been an explosion in the design, development and implementation of AI in many sectors. However, little attention has been given to AI as a societal phenomenon and to the broader implications of the different approaches taken as we move rapidly toward an AI age. Organizations do not see AI technologies or its availability as a challenge. Instead, organizations are currently struggling with AI business potential understanding and with finding AI talent. A growing number of countries have recognized the opportunities provided by artificial intelligence and have prepared a national artificial intelligence strategy. In 2017, Finland was among the first countries to launch an artificial intelligence program. The objective of the program was to make Finland a leader in the application of artificial intelligence. 1 The Finnish Artificial Intelligence Programme 1 identified a small portion of companies as forerunners in AI implementation, with the majority of companies still being at the early stages of utilizing data and AI in their operations. One of the ways, and an important starting point, to address the AI skills gap is to increase resources for digital, math and technical education in general. In addition, the current education system in Finland does not yet pay enough attention to applying AI in different fields. Academic and training programs are just not able to keep up with the rapid pace of innovation with AI. AI education should start early and take place for every education stage. Academia, companies and public sector officials must work together and ensure that comprehensive AI curriculums will be available. MOOCs (Massive Open Online Courses) show the way and are a good example of a modern way to educate masses with basic AI knowledge. However, deeper understanding of how to apply AI in company and industry contexts typically requires tailored education modules. The manufacturing sector is currently lagging behind in AI and Machine Learning (ML) utilization compared to many other industries (Figure 1). Adopting new technologies especially in process industries requires pedantic planning which is time consuming. Companies have long histories in optimizing their production, and as the life span of investments can last for decades, changes unfortunately cannot be made rapidly. In https://www.tekoalyaika.fi/en/ IIC Journal of Innovation - 24 -