Machine intelligence

As computers continue to increase in speed, the advantages that machine learning can offer will likewise increase. Computational intelligence methods, such as neural, evolutionary, and fuzzy computing, will continue to be applied to diverse problems in instrumentation and measurement as well as other fields. As with all machine learning methods, these approaches require a data structure to represent solutions, a performance index to evaluate solutions, and some method to generate new solutions from old solutions, and select which solutions to favor.

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