- Lee, Kyu Hyun;
- Denovellis, Eric L;
- Ly, Ryan;
- Magland, Jeremy;
- Soules, Jeff;
- Comrie, Alison E;
- Gramling, Daniel P;
- Guidera, Jennifer A;
- Nevers, Rhino;
- Adenekan, Philip;
- Brozdowski, Chris;
- Bray, Samuel R;
- Monroe, Emily;
- Bak, Ji Hyun;
- Coulter, Michael E;
- Sun, Xulu;
- Broyles, Emrey;
- Shin, Donghoon;
- Chiang, Sharon;
- Holobetz, Cristofer;
- Tritt, Andrew;
- Rübel, Oliver;
- Nguyen, Thinh;
- Yatsenko, Dimitri;
- Chu, Joshua;
- Kemere, Caleb;
- Garcia, Samuel;
- Buccino, Alessio;
- Frank, Loren M
Scientific progress depends on reliable and reproducible results. Progress can also be accelerated when data are shared and re-analyzed to address new questions. Current approaches to storing and analyzing neural data typically involve bespoke formats and software that make replication, as well as the subsequent reuse of data, difficult if not impossible. To address these challenges, we created Spyglass , an open-source software framework that enables reproducible analyses and sharing of data and both intermediate and final results within and across labs. Spyglass uses the Neurodata Without Borders (NWB) standard and includes pipelines for several core analyses in neuroscience, including spectral filtering, spike sorting, pose tracking, and neural decoding. It can be easily extended to apply both existing and newly developed pipelines to datasets from multiple sources. We demonstrate these features in the context of a cross-laboratory replication by applying advanced state space decoding algorithms to publicly available data. New users can try out Spyglass on a Jupyter Hub hosted by HHMI and 2i2c: https://spyglass.hhmi.2i2c.cloud/ .