JohnMcCarthy - Father Of Artificial Intelligence

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In this report we summarise the contributions of John McCarthy to Pc Science. He invented LISP (a programming language which has lived for more than fifty years) to resolve issues in Artificial Intelligence. If you have any sort of questions pertaining to where and how to utilize Pillow Slides Reviews, you can contact us at our page. The important contributions for which he is known is coining the term Artificial Intelligence to describe computer system programs which seemingly exhibit intelligence, that is, computers carry out tasks which when performed by humans require them to be intelligent. This logically led to the idea of time sharing of substantial computer systems by many customers and computing becoming a utility - a lot like a energy utility. Amongst his contributions are: suggesting that the most effective process of working with computer systems is in an interactive mode, a mode in which computer systems become partners of users enabling them to solve problems. He was a life-lengthy believer in working with mathematical logic to describe understanding, including commonsense expertise, which led to the development of the topic of information representation. Apart from his technical contributions he was a good teacher and was instrumental in generating two renowned schools in Artificial Intelligence: a single at MIT and the other at Stanford.

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