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AI-Assisted Coding: Evaluating the Effectiveness of ML Model Development Using ChatGPT
0
Zitationen
2
Autoren
2025
Jahr
Abstract
This study compared manual and ChatGPT-assisted workflows in developing machine learning (ML) models to evaluate ChatGPT’s effectiveness. Two datasets were used for classification and regression. Also, two workflows, manual and ChatGPT-assisted with results showing identical performance, but less time taken for ChatGPT. These findings suggest that once human oversight is maintained, AI can be used to speed up machine learning model development and prototyping without a compromise to the accuracy of the models.
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