ALGORITHMIC BIAS AND FAIRNESS IN AI SYSTEMS: CHALLENGES, IMPACTS, AND RESPONSIBLE AI SOLUTIONS
DOI:
https://doi.org/10.29121/shodhai.v3.i1.2026.89Keywords:
Artificial Intelligence, Algorithmic Bias, Ai Fairness, Explainable Ai, Ethical Ai GovernanceAbstract
Artificial intelligence (AI) technologies have become a significant technology shaping decision - making across various sectors, such as healthcare, finance, recruitment, education and public sector administration. The massive increase in AI use raises significant challenges related to the bias, fairness, transparency and accountability of algorithms. This paper analyzes the most frequent causes of algorithmic bias, its impacts on organizations and society and presents emergent technological, ethical and regulatory solutions that promote fairness in AI systems. This study adopts a qualitative literature review - based conceptual research design with secondary data collected from scholarly journal articles, conference papers, policy reports and institutional publications between 2020 and 2026. Following a thematic content analysis approach, we identified key themes representing the fairness challenges in AI, explainable AI (XAI), governance mechanisms and mitigation strategies. Findings show that biased historical data, lack of representative demographic diversity in datasets, the opaque "black - box" nature of algorithms and deficient governance are key factors in producing discriminatory outcomes. Additionally, the results indicate a detrimental effect of algorithmic bias on organizational trust, transparency, fairness and social inclusion. Nonetheless, developing a set of promising solutions, including explainable AI (XAI), fair - aware machine learning, robust ethical AI governance frameworks and governmental regulation of AI technologies, is making significant strides in promoting fairness and accountability in AI systems. This paper argues that achieving sustainable, ethical and trusted AI requires combining technological, ethical, organizational and regulatory actions throughout the AI lifecycle.
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Copyright (c) 2026 Gyani Ray, Dr. Nasiruddin Molla

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