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Given a ML problem such as computer vision, or NLP, what is the computational complexity of those problems?

Can I think that using training model is an effective way to solve "hard" problems (intractable)??

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Natural Language Processing and Computer Vision are areas of Computer Science where thousands of algorithms exist. So it may not be possible to give the computational complexity for such broad areas in general. The complexity of algorithms range from sub linear to NP Hard. For example sub string search is having a complexity O(mn) where m is the size of the sub string and n is the size of the text to be searched. Where as Automatic summarization in NLP is an AI-Complete problem making it one of the most difficult in NLP.

For the second part of your question, the answer is No. Using training models will not reduce the complexity of solving Hard (Intractable) Problems.

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