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[00:00:00] All right. In this video Im gonna be going through how you can use LangChain to talk and extract information from CSV files and Excel files just by using natural language to query them. So in this case, were gonna be going back to the open ai language models. So you will need an open AI key here. You can see the latest version of LangChain that Im using. And the data set that Im gonna be using is the Black Friday Sales Data set. So this is available from Kaggle. Ive put a link to it here if you want to go and find out more information about it. Really, were just using it. As a simple way to bring in a CSV file and test some things out. In this case, Im bringing in the trained csv. Theres both a trained CSV and a test csv. It really doesnt matter here because we are not training a model. Were not doing anything like that. Were just using another model to query the CSV file. To just get a sanity check of whats here, what [00:01:00] Ive done is basically set up pan