Data-Driven Decision Making: Statistical Insights into Geology and Business Sustainability
Abstract
Abstract
With growing concerns for the environment and diminishing resources, decision-making based on statistics has evolved as a key strategy integrating geology with sustainable business. This paper attempts to show statistical insight into the room decision-making in both fields with a focused optimization in the management of natural resources, risk mitigation, and long-term sustainability. When integrated with statistical techniques like geospatial analysis, predictive modeling, machine learning, etc, geological data provides good insights regarding resource availability, environmental impacts, and performance in business. As a result of these techniques, firms will understand where they should mine, the trends that can occur at a particular time, and how they can influence the risk of geotectonic change like earthquakes or soil loss. Moreover, these statistical models can be used to incorporate sustainability measurements by calculating carbon footprint and energy consumption and enable organizations to operate in line with global sustainable goals. However, a few remain such as limited availability, integration, and quality data that hold back the far wider adoption of much more advanced analytics. These are the barriers discussed in this paper with proposed solutions: better data infrastructure and expertise are needed. Ultimately, the study becomes an overarching framework for businesses seeking data-driven ways to achieve sustainable growth, suggesting practical implications and avenues for further research where geology, business, and sustainability intersect.