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The basic question is: What is a learning algorithm? The definition of a learning algorithm varies widely from AI to AI. Here’s how I define an algorithmic algorithm for real experiments with ML: A program is a collection of instructions that fit into a set. When given a short string of characters or pieces of data (called a binary stream of