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Development Environment Support

Development Environment Support

Clear standards around the type of models and frameworks supported by the platform and how models are to be coded are expedient. Jupyter Notebook is ubiquitous among those with a data science orientation, but those with more of an engineering background may prefer standard code modules and development tools. Whatever the programming environment of choice, it is common to provide extensions to that environment to simplify tasks like data access and expose various features of the machine learning platform.

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