The Synergy of Data Science, GIS Spatial Analysis and Knowledge Management as a Path to Sustainability Insights
DOI:
https://doi.org/10.70705/ppp.dsei.2023.v01.i01.pp30-37Keywords:
Informatics, Data science, GIS-spatial analysis, KM, SustainabilityAbstract
This chapter focuses on data science, GIS-based spatial analysis, and knowledge management (KM) threesome and its potential
contributions to sustainability insights. Discussion commenced with tracing the historical evolution and essen- tiality of
geography for comprehending environmental and social dimensions of sustainability. Then, argumentation delved into the
interplay among the three- some’s domains and their contributions to sustainability achievement. A prolonged elaboration was
provided on geospatial data analytics, visualization, geospatial data mining, and predictive models and their significance for
extracting informative and meaningful insights. Since data science has transformed and enriched most scientific disciplines, its
empowering implications on GIS were explained. Spatial analysis, therefore, occupied a central position and enabled advanced
GIS technique utiliza- tion to reveal patterns, relationships, and trends in geospatial data. Furthermore, the chapter explained
the interdependent relationships between GIS and KM. Integrating GIS and KM techniques has revolutionized geospatial
data organization, visualization, and dissemination and enhanced applications of decision support, environmental planning,
and others. The Nexus of this threesome, therefore, serves as a roadmap for solving issues of intricate spatial problems via
modeling and informed decisions. The chapter stressed and concluded that the integrated fusion of data science, GIS, and KM
provides a robust framework and ideal tools supporting sustainability.

