Automatically import the current conda env in Jupyter notebooks
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Updated
Dec 4, 2017 - Python
Automatically import the current conda env in Jupyter notebooks
Creating docker containers for Python usage with Jupyter notebooks
Introduction to machine learning, conda environment, Jupyter Notebook, Pandas, NumPy and Matplotlib.
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An innovative and collaborative solution for setting up and executing Jupyter Notebooks on High-Performance Computing (HPC) clusters, tailored for neuroscience data processing workflows.
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