What is the role of a Data Scientist in a Machine Learning project?
The question is about Data Science .
In a Machine Learning project, Data Scientists choose and clean the data, select the appropriate algorithms, and train the models. They assess how well the models perform using accuracy and other metrics, optimise the models, and assist engineers in deploying them into production.
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