Learning Outcomes
Students will acquire a comprehensive understanding of fundamental graph theory concepts, network metrics, and advanced algorithms applied to real-world scenarios. By delving into topics such as degree centrality, eigenvector centrality, and community detection, students will develop a robust skill set in graph analysis and visualization. The course not only equips students with the ability to represent complex systems as graphs but also enables them to utilize cutting-edge tools and methodologies for problem-solving. Furthermore, the exploration of applications, including social networks and pharmacology, ensures that students gain practical insights into diverse fields. Upon completion, graduates will possess a refined capacity to analyze, model, and interpret intricate relationships within networks, fostering their competence in research, industry, and various interdisciplinary domains. The profound impact of this course is expected to extend beyond academic realms, empowering students with a skill set highly sought after in today's data-driven and interconnected world.
Course Content