Abstract
Digital transformation emerged as a strategic imperative for organizations in the era of Industry 4.0. As disruptive technologies reshape industries and business models, organizations must navigate this evolving landscape to remain competitive and relevant. Maturity models directed to Industry 4.0 offer a valuable framework to assess an organization’s current state, identify gaps, and develop a strategic roadmap for successful digital transformation. Digital transformation is a complex and multifaceted journey that requires a well-defined roadmap to guide organizations through leveraging digital technologies and capabilities. Therefore, a practical and sound approach to developing a roadmap is the basis for achieving a successful digital transformation strategy. A structured approach, based on building blocks, can lead to a systematic plan to implement digital initiatives. In this article, we will explore creating a roadmap to digital transformation using building blocks.
Supported by University of São Paulo and Federal University of Amazonas.
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Special thanks to University of São Paulo and Federal University of Amazonas.
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Santiago, S.B., Silva, J.R. (2023). Strategic Roadmap for Digital Transformation Based on Measuring Industry 4.0 Maturity and Readiness. In: Terzi, S., Madani, K., Gusikhin, O., Panetto, H. (eds) Innovative Intelligent Industrial Production and Logistics. IN4PL 2023. Communications in Computer and Information Science, vol 1886. Springer, Cham. https://doi.org/10.1007/978-3-031-49339-3_21
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