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This lecture covers the concept of adjustment sets in causal inference, focusing on observational and interventional settings. It explains the conditions for valid adjustment sets and candidate adjustment sets, emphasizing the importance of parent adjustment. The instructor discusses the backdoor criterion and its application to identify valid adjustment sets.