spyglass
is a data analysis framework that facilitates the storage, analysis, visualization, and sharing of neuroscience data to support reproducible research. It is designed to be interoperable with the NWB format and integrates open-source tools into a coherent framework.
Documentation can be found at - https://lorenfranklab.github.io/spyglass/
For installation instructions see - https://lorenfranklab.github.io/spyglass/type/html/installation.html
The tutorials for spyglass
is currently in the form of Jupyter Notebooks and can be found in the notebooks directory. We strongly recommend opening them in the context of jupyterlab
.
See the Developer's Note for contributing instructions found at - https://lorenfranklab.github.io/spyglass/type/html/how_to_contribute.html
License and Copyright notice can be found at https://lorenfranklab.github.io/spyglass/type/html/copyright.html
Kyu Hyun Lee, Eric Denovellis, Ryan Ly, Jeremy Magland, Jeff Soules, Alison Comrie, Jennifer Guidera, Rhino Nevers, Daniel Gramling, Philip Adenekan, Ji Hyun Bak, Emily Monroe, Andrew Tritt, Oliver Rübel, Thinh Nguyen, Dimitri Yatsenko, Joshua Chu, Caleb Kemere, Samuel Garcia, Alessio Buccino, Emily Aery Jones, Lisa Giocomo, and Loren Frank. Spyglass: A Data Analysis Framework for Reproducible and Shareable Neuroscience Research. Neuroscience Meeting Planner. San Diego, CA: Society for Neuroscience, 2022.