Shalin Hai-Jew
Applied modeling understands, analyzes, and solves real-world problems across diverse domains like economics, engineering, public health, and environmental science. By transforming complex data into structured, quantitative representations, applied models enable decision-makers to test hypotheses, forecast outcomes, and evaluate the impacts of scenarios. These models integrate theory with empirical data to offer practical solutions. Whether through statistical tools, simulations, optimization techniques, or machine learning algorithms, applied models bridge the gap between abstract theory and actionable insight. In a data-driven world, building effective applied models is essential for innovation, strategic planning, and sustainable problem solving. Building Applied Models for Problem Solving explores how applied models are developed and utilized to address complex, real-world problems by translating theoretical frameworks into practical, data-driven solutions. It examines the methodologies, tools, and interdisciplinary approaches involved in constructing models that inform decision-making and optimize outcomes in various fields. This book covers topics such as data science, research methods, and software development, and is a useful resource for educators, business owners, engineers, academicians, researchers, and data scientists.