This paper presents an introduction to intelligence modelling that start with the differences of hard computing and soft computing. It describes the need to the fusion of interdisciplinary solving techniques to engineering problems in a complementary manner. It also focuses on various computational engineering methods involved in solving imprecise and uncertain problem domains. All these computations need to be made practical with the help of some tools. In this paper we explored the use of three tools MATLAB, R Tool and DTREG as they are a few ingenious modelling tools of soft computing that are widely used and are good at capabilities that meet the engineering design are listed. Also some application areas related to their wide usage are also focused. Finally, observations of the study were mentioned that are key to identify which tool is good for what kind of work. Also we have given only a list of other tools that are available as open-source or related to business investments.
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