In the Study, We Address the Errand of Polynomial Regression, I.E., Prompting Regression Models Dependent on Polynomial Equations, from Information. We Go For Enhancing and Stretching Out the Current Approaches to Learning Polynomial Regression Models In a Few Headings. First, We Enhance the Current Methods For Tending to the Issue of Over-Fitting and Enhance the Current Methods For Requesting the Hunt Space of Competitor Polynomial Equations. Second, We Expand the Extension of Existing Methods Towards Learning Piecewise, Multi-Target, and Classification Through Regression Polynomial Models. We Likewise Guess That Their Execution Will Be Equivalent to the Execution of Models Got With Other Best In Class Regression and Classification Approaches. to Achieve the Points and Test the Speculations, We Begin With Playing Out a Study of Existing Exploration on Learning Regression Models With Spotlight on Assessment Metrics Utilized For Regression. at That Point We Grow New Heuristics and Refinement Administrators, and Execute Them into the Algorithm Ciper For Prompting Polynomial Regression Models. the Algorithm Is Fit For Learning Piecewise and Multi-Target Polynomial Models and Polynomial Models For Classification By Means of Regression. at Long Last, We Perform Observational Assessment and Near Examination of the Execution of Polynomial Models Acquired With Ciper and the Execution of Models Got With Different Approaches. the Consequences of the Exact Assessment and the Relative In ...