How do you balance transparency and performance in Generative AI systems?
Answer Posted / Ritesh Kumar Jaiswal
"Balancing transparency and performance in Generative AI systems can be challenging. Techniques for improving transparency, such as explainability methods, may reduce the performance of the model, while optimizing for performance may make it more difficult to understand how decisions are being made. One approach is to use interpretable models that offer insights into their decision-making process, or to provide explanations alongside the generated outputs of complex models."n
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