Machinet - System for Assisting Building of Machine Learning Model
DOI:
https://doi.org/10.32628/IJSRSET1229315Keywords:
Machinet, GUI, AutoML, MLAbstract
As the technology of Machine Learning and Artificial Intelligence are growing rapidly, problems associated with them are growing too. Although all research focuses on the AutoML which is basically a process automation technique for machine learning research. We are proposing a system named Machinet which assists machine learning practitioners(students, engineers, professors, etc) to find a suitable model in a bunch of available models, for their use case which gives them higher accuracy. Machinet is a software that facilitates the machine learning practitioners to test the accuracy of different machine learning models ( models selected based on their use case) on their dataset and build a selected model (based on test results) by tweaking different parameters according to their need to increase the accuracy or usability.
References
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