What is text retrieval augmentation, and why is it important?
Answer / Abhishek Pandey
Text Retrieval Augmentation (TRA) is a technique used to improve the data efficiency of LLMs by augmenting training examples with relevant information extracted from external resources. TRA is significant as it allows models to learn from a wider range of data, potentially leading to improved performance on diverse tasks.
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