You're dealing with sensitive data in AI algorithms. How do you spot and tackle bias effectively?
As you delve into the world of Artificial Intelligence (AI), you'll often encounter the term 'bias'. Bias in AI refers to systematic and repeatable errors in a computer system that create unfair outcomes, such as privileging one arbitrary group of users over others. It's crucial to understand that bias can stem from various sources, including the data used to train the model, the design of the algorithm itself, or societal biases reflected in the data. To ensure fairness and accuracy in your AI applications, especially when handling sensitive data, spotting and addressing bias is a fundamental step.
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?? Diego MayeCEO & Founder at C4B - lolos.ai | Experts in AI automation, dedicated to transforming and scaling businesses…
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Ajith Vallath PrabhakarTop Artificial Intelligence (AI) Voice | AI & ML Visionary | Generative AI Advocate | Strategic Technologist | Deloitte…
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Pavithra SJunior Machine learning Engineer | Content Creator |AI Tutor| YouTuber | Python | Machine Learning | Data Science| Deep…