Description: Transparency metrics in the explainable AI category are quantitative measures used to assess the clarity and comprehensibility of artificial intelligence systems and their decision-making processes. These metrics enable developers and users to understand how and why an AI system arrives at certain conclusions or recommendations. Transparency is fundamental in AI as it fosters trust in automated systems, especially in critical applications such as healthcare, justice, and finance. Transparency metrics can include aspects such as model interpretability, decision traceability, and ease of access to information about the system’s functioning. By providing a framework for measuring transparency, these metrics help identify areas for improvement and ensure that AI systems operate ethically and responsibly. In a world where AI is increasingly present, the implementation of transparency metrics becomes an essential component to ensure that users and stakeholders can trust automated decisions, thus promoting a safer and more effective use of technology.