Why is data quality critical in Generative AI projects?
Answer / Shumaila Haque
Data quality is critical in Generative AI projects because the performance of the model relies heavily on the quality and quantity of the input data. Poor-quality data can lead to inaccurate results, biased outputs, and reduced model performance.
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