The article discusses the importance of representation fine-tuning in machine learning models. It explains that fine-tuning pre-trained models on specific tasks is more efficient than training models from scratch. This approach allows for faster convergence and better performance on tasks that require specialized knowledge. The article also highlights the benefits of using pre-trained models, such as saving time and resources. Overall, representation fine-tuning is considered the most efficient approach in machine learning today.
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Source link: https://towardsdatascience.com/why-representation-finetuning-is-the-most-efficient-approach-today-d589c2535c77
Most efficient approach today: Representation finetuning for data science. #Efficiency
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