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The Integration of Artificial Intelligence and Machine Learning in Performance Evaluation
Abstract
This chapter investigates the transformative potential of Artificial Intelligence (AI) and Machine Learning (ML) in performance evaluation, emphasizing their ability to improve scalability, objectivity, and accuracy. In the dynamic environments of today, conventional evaluation systems are inadequate due to their subjectivity and inefficiency. Nevertheless, AI and ML facilitate data-driven, real-time evaluations, which minimize bias and ensure that performance is in accordance with strategic objectives. The chapter delves into the practical applications of AI, including sentiment analysis, predictive analytics, and automated monitoring. It provides case studies that illustrate the benefits and obstacles of these applications in real-world scenarios. The chapter also predicts future trends, positing that AI-driven evaluations will influence nimble, resilient talent management in contemporary organizations, while also addressing ethical considerations such as data privacy and model fairness.
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