A Review of De Novo Programming
DOI:
https://doi.org/10.59535/jece.v1i2.114Keywords:
De Novo Programming Multi Objective Optimization, Goal ProgrammingAbstract
The article explores some of the developments in de novo programming. The research that has been chosen for discussion may be obtained on Google Scholar by searching for "De Novo Optimalization"; it is not a case study. Integrating uncertainty into De Novo programming through the addition of fuzzy functions and strategies for its resolution is one of the primary research development goals for the discipline.
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