Exploring the Ethical Dimensions of Artificial Intelligence Development Creating Transparent and Responsible AI Systems for Global Impact
Keywords:
Artificial Intelligence, Ethical AI, Transparency, Responsibility, Governance, Algorithmic Bias, Global Impact, Socioeconomic EquityAbstract
The rapid proliferation of artificial intelligence (AI) systems has sparked global debates surrounding the ethical dimensions of their development and deployment. This research examines the principles of transparency and responsibility in AI design, aiming to foster systems that prioritize ethical considerations alongside technological advancements. Through a comprehensive review of existing literature, we analyze key challenges, including algorithmic bias, governance gaps, and stakeholder exclusion. Furthermore, the study explores strategies for creating responsible AI frameworks that promote global socioeconomic equity while addressing pressing challenges such as climate change and healthcare disparities. The findings underscore the necessity of harmonized international collaboration and robust policy interventions to ensure AI serves as a force for global good. The paper concludes with actionable recommendations and highlights emerging trends in ethical AI research.
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Copyright (c) 2024 Kartika Shania Hasanah (Author)
This work is licensed under a Creative Commons Attribution-NonCommercial 4.0 International License.