Description

The companion file is a Common Lisp demonstration file that generates knight-pin Chess end-game samples. Start up Lisp and load the file. It generates 100 end-games and writes them to a separate file. Look at the end of the file to see how to change it so that it will produce more end-games, or use the file for output that you wish. The code is released for experimental, confidential use only. See the end of the file for load-time commands that generate a file of examples in Quinlan's format. Note: this program generates duplicates. In one run, there were about 370 duplicates in the first 1000 instances (i.e., 630 distinct examples).

Related Papers

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