This comprehensive course explores the intersection of social media platforms and network science, providing students with essential skills for analysing digital social interactions. Beginning with graph theory fundamentals, students learn to model social media data as networks and apply mathematical frameworks to extract meaningful insights.

Introduction to Social Media Analytics

Introduction to Social Media Analytics


Instructors: Professor Aneesh S Chivukula
Access provided by Gympass LDA
Recommended experience
What you'll learn
Apply graph theory, centrality measures, and community detection to model and understand social media platforms as complex networks.
Develop recommender systems, predict information diffusion patterns, and create viral marketing strategies using network science principles.
Apply machine learning, data stream mining, and predictive modelling for large-scale social media analysis and harmful content detection.
Apply responsible data collection practices, evaluate algorithmic bias, and assess societal implications of social media technologies.
Details to know

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73 assignments
November 2025
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There are 10 modules in this course
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