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foreign [Music] language models you must have heard these words before they represent a specific type of machine learning algorithms that understand and can generate language a field often called natural language processing or NLP youve certainly heard of the most known and Powerful language models like gpt3 gpt3 as Ive described in the video covering it is able to take language understand it and generate language in return but be careful here it doesnt really understand it in fact its far from understanding gbd3 and other language-based models merely use what we call dictionaries of words to represent them as numbers remember their positions in the sentence and thats it using a few numbers and positional numbers called embeddings they are able to regroup similar sentences which also means that they are able to kind of understand sentences by comparing them to known sentences like our data set its the same process for image sentence models that take your sentence to generate an i