Abstract
This paper comprehensively analyzes Facebook data, a rich source of valuable information within big data. The study encompasses data collection, preprocessing, and exploratory analysis of a substantial dataset derived from Facebook interactions and activities. Through advanced data processing techniques and statistical methodologies, we unveil meaningful insights into user behavior, content engagement, and patterns on the platform. This analysis has significant implications for understanding user preferences, trends, and the dynamics of social networking in the digital age. The study revealed valuable trends, patterns, and metrics related to user interactions, posting habits, etc. Integrating Hive commands for data analysis and R programming for visualization offered a powerful synergy that made the findings accessible and visually compelling. The project underscores the importance of big data analytics in unraveling the hidden dimensions of social media and offers a practical demonstration of the power of data-driven decision-making. The findings and visualizations derived from this analysis shed light on the vast landscape of Facebook, enabling informed decisions and future research in social media analytics.