What are the best practices for ensuring machine learning models are transparent and explainable?
Machine learning models are powerful tools for solving complex problems, but they also pose challenges for ensuring transparency and explainability. Transparency means that the model's inputs, outputs, and processes are clear and understandable, while explainability means that the model's decisions and predictions can be justified and interpreted by humans. These qualities are important for building trust, accountability, and fairness in machine learning applications, especially when they affect people's lives, rights, and values. In this article, you will learn some of the best practices for ensuring machine learning models are transparent and explainable.
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Basit khanGeneral Manager @ AAI | AI, Agile Methodologies
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Muhammad EhsanFounder @Indollar | Data Scientist | AI | GenAI | Machine Learning | Deep Learning | NLP | LLMs | AGI | Quantum AI |…
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Ron SchmelzerLinkedIn Top AI Voice | #AI Best Practices | #CPMAI Certified | Champion of innovation in the private and public sector