TY - BOOK AU - Sangarsu Raghavendra* TI - Scalability of data science algorithms; Empowering big data analytics KW - Scalable Algorithms KW - Big Data Analytics KW - Exponential Data Growth KW - Large Dataset KW - Machine Learning Methods KW - Case Studies KW - Business Strategies N2 - Scalable data science algorithms are required in the dynamic eld of big data analytics due to the exponential growth of data, in order to eciently extract valuable insights. In order to overcome the di culties presented by large datasets, this research investigates the critical role that scalable algorithms play. e study explores machine learning methods designed forlarge data analytics, distributed computing, and parallelization strategies. It starts with the constraints of standard algorithms and ends with the revolutionary inuence of scalability on practical applications. e actual use of scalable techniques is demonstrated through case studies from prominent industry players, including Google, Facebook, and Amazon.ese case studies highlight improved decision-making and superior business strategies. cWith an eye toward the the article looks at new developments in algorithm design, hardware, and soware, making sure scalability is still crucial fort ackling issues with even bigger datasets ER -