“…Diversity in data ensures that AI algorithms are trained on a wide range of datasets to avoid bias and to perform effectively across different scenarios (Suresh & Guttag, 2021;Torralba & Efros, 2011); c) identification & depersonalizationidentification in AI involves recognizing and distinguishing individual entities, whereas depersonalization is the process of removing personally identifiable information from data sets, ensuring privacy and anonymity (Lison et al, 2021;Patsakis & Lykousas, 2023); d) explainable artificial intelligence (XAI)the field of AI that focuses on the creation of AI systems whose actions can be easily understood by humans. XAI aims to make AI decisions transparent, understandable, and interpretable (Barredo Arrieta et al, 2020;Molnar, 2019); e) human involvement (human-in-the-loop)a system design paradigm that incorporates human judgment into AI systems, allowing humans to provide feedback, make decisions, or adjust outputs in real-time, ensuring that the AI remains aligned with human values and goals (Mullainathan & Obermeyer, 2017;Shevlane et al, 2023); f) alternative energy sources / quantum computingthis refers to the exploration and use of renewable energy sources, like solar or wind power, to run AI computations, and the application of quantum computing to dramatically increase computational power for certain types of problems, potentially improving AI efficiency and capabilities (Ajagekar & You, 2019;Jaschke & Montangero, 2023;Li et al, 2022;McDonald et al, 2022); g) content moderation based on free choicen AI allows users to customize content filters to their ethical preferences and cultural norms, offering a personalized approach to blocking or allowing content instead of a universal moderation policy. This model promotes a balance between preventing harm and upholding diverse expressions (Bubeck et al, 2023;Open AI, 2023); h) monitoringthe continuous observation, checking, and tracking of AI systems' performance and activities.…”