Abstract

Industrial internet of things (IIoT) and digital technologies have been evolving fast, leading to a challenge in the availability of skills and commotion in job profiles. While existing job profiles are changing, new job profiles are getting created. Professionals face the challenge of obsolescence and pressure for continuous reskilling and prepare for the future of work. The fast-changing innovations in digital technologies of IIoT like the internet of things, robotics, augmented reality, artificial intelligence, and big data analytics trigger in-depth analysis of professionals’ learning behavior. This study extends the individual’s ambidextrous learning theory and unified theory of acceptance and use of technology (UTAUT) to develop a quantitative behavioral model Learning Emerging Digital Skills (LEDS). LEDS model describes the antecedents of professionals’ learning behavior towards fast-changing emerging digital technologies involved in IIoT. A nation-wide structured survey of 685 professionals across 95 firms in India across industry sectors engaged in IIoT product and solution development in sectors like automotive, aerospace, healthcare, and energy were undertaken. Findings from structural equation modeling are validated via a qualitative study. Social influence and personal innovativeness, anxiety, long-term consequence, and job relevance affect behavioral intention to learn. Professionals’ performance level and technology preference moderate the relationship between antecedents and the intention to learn. For exceptional performers, personal innovativeness is the key driver in the intention to learn. For average performers, social influence and anxiety are additional significant factors towards intention to learn. Technology itself moderates the learning behavior, which indicates professionals’ preference to learn a technology over the other based on technology maturity and use potential. This study can help practitioners design ramp-up strategies to meet the current and future demand of emerging digital skills to meet their IIoT strategy. Policymakers can use antecedents of employees’ ambidextrous learning behavior to formulate policies to achieve ambidextrous organization’s goals.

Highlights

  • Industrial production is being transformed due to the integration between the physical world and the digital world

  • Ambidextrous learning behavior is extremely critical to cope with the fast-changing development in emerging digital technologies

  • 4) FINDINGS FROM QUALITATIVE STUDY The responses were categorized under themes job relevance, anxiety, innovativeness, social influence, and long-term impact, which influence the learning behavior

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Summary

Introduction

Industrial production is being transformed due to the integration between the physical world and the digital world. In Germany, this was termed Industry 4.0 and as industrial IoT (IIoT) in the USA. IIoT provides a fusion of intelligent, interconnected systems of IoT devices to provide a higher level of availability and scalability. In the last few years, IIoT or Industry 4.0 has drawn interest in both academic and industry. Studies have pointed out that this transformation. The transformation will be accompanied by a social change in staffing requirements, workload, competition for jobs, and job security [1]. Realization of IIoT solutions include advanced digital skills [2] like IoT, robotics, big data analytics, cybersecurity, augmented reality (AR), virtual reality (VR), artificial intelligence (AI), and machine learning (ML).

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