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Advancing Artificial Intelligence and Machine Learning: Frameworks, Techniques, and Applicatio
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2026
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Abstract
Artificial intelligence (AI) and machine learning (ML) have transformed industries by enabling data-driven decision-making and automation. This paper delves into contemporary AI and ML advancements, focusing on emerging techniques, scalable frameworks, and their real-world applications. A critical review of state-of-the-art algorithms highlights their capabilities and limitations. Reinforcement learning (RL) and federated learning (FL) are examined for their impact on decentralized and autonomous systems. Additionally, ethical considerations, model interpretability, and the integration of explainable AI (XAI) are explored. By analyzing diverse datasets, this study underscores the need for robust validation techniques to ensure model reliability. Applications in healthcare, autonomous systems, and natural language processing (NLP) demonstrate the versatility of AI/ML technologies. For instance, AI-driven diagnostics achieve precision in medical imaging, while ML-powered NLP models enhance human-machine communication. However, challenges persist, including data privacy, algorithmic bias, and computational scalability. This paper proposes novel hybrid approaches combining neural networks with traditional algorithms to mitigate these challenges. Furthermore, open-source tools and frameworks are reviewed to identify best practices in model deployment and performance optimization. In conclusion, this research outlines actionable recommendations for leveraging AI/ML to address contemporary societal needs while ensuring ethical standards. By bridging the gap between theory and application, the findings contribute to the sustainable growth of AI/ML technologies. DOI - https://doi.org/10.65525/SVUP.9788199651517.2026.121-125.
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