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hello everyone in this video I am going to talk about chaining so chains are one of the fundamental blocks of length chain and you can understand chaining as similar to how multiple components are participating in any execution but in a particular order so there are multiple kinds of chain but in this video I am going to talk about llm chain which takes an user input then it passes to the first element in the chain which is none other than the prompt and then the formatted prompt is further passed to the final element in the chain so you will get to know more about it when I will start coding and the use case which I am going to take here is about how you can clean up your data before passing it to llm and this is particularly useful because we donamp;#39;t want to like get out of our limits because we do have constraint on the s how much we can pass it to our llm so definitely we do not want some junk input to go through the llm and it is like a normal or the very usual case wherein