4min chapter

Machine Learning Street Talk (MLST) cover image

Francois Chollet - On the Measure of Intelligence

Machine Learning Street Talk (MLST)

CHAPTER

Deep Learning Models Can't Represent Most Computer Programms

Chalet argues that deep learning algorithms learn short cuts. He is advocating strongly for programm synthesis, some kind of a meta learning agrythm. This would produce a skill programme which could generalize to a far greater number of examples. Generalization strength annonjusta skill at a specific task given sufficient trained data. Chalet cites the example of assorting agarithm - with a few lines of code you can writeAssorting agrithm: which would generalize analytically to any permutation of numbers. For a deep learning model to do the same thing, it would need to have a dense sampling,. arguably, of every single permutation of

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