Download PDFOpen PDF in browserMachine Learning: Transforming Data into Actionable IntelligenceEasyChair Preprint 157229 pages•Date: January 15, 2025AbstractMachine learning (ML) has emerged as a pivotal technology that is transforming industries and reshaping the way problems are approached in science and business. By enabling systems to learn from data and improve their performance without explicit programming, ML has become a cornerstone for innovation in domains ranging from healthcare and finance to natural language processing and autonomous systems. This paper delves into the fundamental concepts, key algorithms, and real-world applications of ML, highlighting its ability to uncover patterns, make predictions, and automate decision-making. Additionally, the challenges associated with data quality, algorithmic bias, interpretability, and computational scalability are discussed in depth. Special emphasis is placed on the ethical considerations surrounding data privacy and the potential societal impacts of ML technologies. Finally, emerging trends such as federated learning, explainable AI, and quantum machine learning are explored, showcasing the future potential of this ever-evolving field. This comprehensive overview aims to provide a balanced perspective on both the promises and limitations of machine learning, encouraging responsible and innovative adoption of this transformative technology. Keyphrases: AI, Algorithms, Technology, machine learning
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