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On the surface, it seems odd to assume that a model designed to make accurate predictions about words and sentences without actually understanding their meanings can understand expected gain. But there is an enormous body of research showing that language and cognition are intertwined. An excellent example is seminal research done by scientists Edward Sapir and Benjamin Lee Whorf in the early 20th century. Their work suggested that one’s native language and vocabulary can shape the way a person thinks.
 
On the surface, it seems odd to assume that a model designed to make accurate predictions about words and sentences without actually understanding their meanings can understand expected gain. But there is an enormous body of research showing that language and cognition are intertwined. An excellent example is seminal research done by scientists Edward Sapir and Benjamin Lee Whorf in the early 20th century. Their work suggested that one’s native language and vocabulary can shape the way a person thinks.
Which is the overall best native language to make it easiest to learn math and programming is what I'd like to know. :D

It clearly can't be portuguese haha
 
Betrand Meyer's views



AI in its modern form, however, does not generate correct programs: it generates programs inferred from many earlier programs it has seen. These programs look correct but have no guarantee of correctness. (I am talking about "modern" AI to distinguish it from the earlier kind—largely considered to have failed—which tried to reproduce human logical thinking, for example through expert systems. Today's AI works by statistical inference.)
 
rng.jpg
 
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