Paper Title
Data-Driven Digital Transformation: A Comprehensive Analysis and Future Outlook
Abstract
In the era of digitalization, where data is the linchpin for organizational transformation, this paper systematically
examines the intricate relationship between data science and digital transformation. It delves into the underlying principles
and practical applications, shedding light on their profound impact on diverse sectors. The optimization of business
processes, the role of data in fostering innovation, and the challenges faced during the integration of data science into digital
transformation strategies are thoroughly investigated. The article not only identifies challenges but also proposes practical
solutions. Additionally, the paper offers a forward-looking perspective, exploring future trends and prospects in the everevolving
field, and providing a roadmap for organizations seeking to navigate the dynamic landscape of digital
transformation guided by data science.
The comprehensive analysis spans various sectors, showcasing the transformative potential of data science through case
studies in manufacturing, healthcare, finance, urban planning, e-commerce, agriculture, energy, transportation, and customer
support. Ethical considerations are explored, emphasizing the need for transparent algorithms, responsible data use, and
societal impact awareness. The challenges of cybersecurity, data integrity, and scalability are addressed.
Looking into the future, the article explores emerging trends like edge computing, advancements in NLP and computer
vision, quantum computing, and the convergence of data science with IoT and blockchain. These trends collectively form a
roadmap for organizations to navigate the dynamic landscape ahead, emphasizing that those embracing these trends are not
merely adapting to change but architecting a future where data-driven innovation propels them into new realms of efficiency,
connectivity, and transformative growth. The conclusion highlights the ongoing narrative of digital transformation,
continually evolving and shaping the future of organizational landscapes worldwide, with the power of data science as the
guiding force.
Keywords - Digital transformation, Data Science, Machine learning, Business processes, Data-driven innovation,
Challenges, Future trends, Edge computing, Natural language processing (NLP), Computer vision, Quantum computing,
Internet of Things (IoT), Blockchain, Cybersecurity, Data literacy, Ethical considerations, Best practices.
Author - Undie Franka Anyama, Kruglova Larisa Vladimirovna
Published : Volume-11,Issue-1 ( Jan, 2024 )
DOIONLINE Number - IJAECS-IRAJ-DOIONLINE-20493
View Here
|
|
| |
|
PDF |
| |
Viewed - 21 |
| |
Published on 2024-03-30 |
|