"Data ethics in data science refers to the responsible and principled handling of data, ensuring fairness, transparency, and respect for individual rights. As data science often deals with vast amounts of personal and sensitive information, it's imperative to consider the implications of data collection, storage, analysis, and dissemination. Ethical considerations include obtaining informed consent, ensuring data privacy, avoiding biases in algorithms and models, and being transparent about data usage and intentions. Adhering to data ethics not only protects individuals' rights but also fosters trust in data-driven solutions and upholds the integrity of the data science profession." From Data Science Guide (American University - DC)
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