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&gt;
&gt; But SQL tables can contain unstructured text. So you can actually combine text-to-SQL with retrieval augmentation for sophisticated LLM QA [src&#93;(https://twitter.com/jerryjliu0/status/1690389529897979904?s=20)		</description>		<dc:date>2023-08-13T09:24:29Z</dc:date>	</item>	<item rdf:about="https://tech.goibibo.com/key-topics-extraction-and-contextual-sentiment-of-users-reviews-20e63c0fd7ca">		<title>Key topics extraction and contextual sentiment of users’ reviews</title>		<link>https://tech.goibibo.com/key-topics-extraction-and-contextual-sentiment-of-users-reviews-20e63c0fd7ca</link>		<dc:date>2018-09-18T15:05:58Z</dc:date>	</item></rdf:RDF>