Jupyter is a powerful tool for data science, machine learning, and deep learning, integrating coding, visualization, documentation, and more to make scientific computing intuitive and efficient. Jupyter is an open-source web application that can be used to create and share code and documentation. It provides an environment where you can write your code, run code, view output, visualize data, and view results. Therefore, it is a convenient tool for executable end-to-end data science workflows for scientific computing tasks including data cleaning, statistical modeling, building and training machine learning models, visualizing data, and more.
With the continuous development of data science and artificial intelligence, Jupyter is constantly updating and refining its features and performance. In the future, we can expect to see more innovative features and tools added to Jupyter to further advance scientific computing and data analytics. As a scientific researcher, you should keep an eye on new technologies and new tools, and constantly improve your skills and competitiveness.
Currently, the system provides the following three kernels for running. In the future, the public kernel and the default class libraries in the kernel will be added according to the requirements.
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