Numerical Linear Algebra
liament], ’Pray, Mr. Babbage, if you put into the ma-chine wrong gures, will the right answers come out?’ I am not able rightly to apprehend the kind of confusion of ideas that could provoke such a question. - Babbage, Charles (1792-1871) Numerical linear …
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