“…To achieve this, the following content structure is proposed: in the first section, the concept of algorithmic discrimination will be introduced from a multidisciplinary perspective; in the second section, the main results of the quantitative and qualitative systematic review of the approach to the issue of discriminatory bias in the main European regulatory instruments and recommendations related to the design, development, implementation and use of AI systems will be presented; and finally, a third section will aim at systematising the recommendations to minimise and mitigate this risk. In short, this proposal makes it possible 2 The AI risks that have raised the most concern include the following: 1) AI algorithms can perpetuate and amplify existing biases in the data, leading to discriminatory outcomes (bias and discrimination) (Mayson, S, 2019); 2) many AI models, especially the more advanced ones, are 'black boxes' that provide little or no insight into how they reach their conclusions (lack of transparency) (Molnar, 2022;Ribeiro et al, 2016); 3) the use of personal data in AI raises concerns about privacy and consent (ethical and privacy issues) (Richards, 2021;Véliz, 2021); 4) data quality is critical to AI performance, and faulty data can lead to erroneous results (data quality dependency) (Byabazaire et al, 2020); 5) AI-driven automation can displace human jobs, creating economic and social challenges (unemployment and job displacement) (Acemoglu, et al, 2022;Acemoglu & Restrepo, 2019;Frey & Osborne, 2017) 6) AI can be used for harmful purposes, and AI systems are vulnerable to attack and manipulation (security and misuse) (Brundage et al, 2018) .…”