Cebra

Natural Language Processing

Cebra

Consistent EmBeddings for Biological Recording Analysis with CEBRA

Average rated: 0.00/5 with 0 ratings

Favorited 1 times

Rate this tool

About Cebra

Here is an image of the product called Cebra. Focus on the value to user.

Key Features

  • Consistent embeddings of high-dimensional recordings
  • Self-supervised learning algorithms in PyTorch
  • Integration with popular data analysis libraries
  • Support for a variety of biology and neuroscience datasets
  • Multiple installation options (conda, pip, docker)
  • Open source under Apache 2.0 license
  • Active development and community contributions
  • High accuracy and performance in latent space modeling
  • Comprehensive documentation and usage guides
  • Support for analyzing both single and multi-session data

Tags

CEBRAlibraryself-supervised learningPyTorchbiologyneurosciencetime seriesbehavioural dataneural datadata analysis

FAQs

What is CEBRA?
CEBRA is a library for estimating Consistent EmBeddings of high-dimensional Recordings using Auxiliary variables, primarily for biology and neuroscience datasets.
Which programming language is CEBRA implemented in?
CEBRA is implemented in Python, utilizing self-supervised learning algorithms in PyTorch.
What are the main applications of CEBRA?
CEBRA is used for analyzing high-dimensional biological and neural recordings, including compressing time series data to reveal hidden structures in data variability.
How can I install CEBRA?
CEBRA can be installed using conda, pip, or docker. Please refer to the dedicated Installation Guide on the CEBRA documentation site.
Is CEBRA open source?
Yes, CEBRA is open source software available under the Apache 2.0 license since version 0.4.0.
Can CEBRA integrate with other data analysis libraries?
Yes, CEBRA offers integrations for libraries like scikit-learn and matplotlib, and supports computing embeddings on DeepLabCut outputs.
Who developed CEBRA?
CEBRA was initially developed by Steffen Schneider, Jin H. Lee, and Mackenzie Mathis. It is currently maintained by Steffen Schneider, Célia Benquet, and Mackenzie Mathis.
Where can I find usage instructions for CEBRA?
Step-by-step usage instructions for CEBRA are available under the Usage tab on the CEBRA documentation site.
How can I contribute to CEBRA's development?
Guidelines for contributing to CEBRA can be found under the Contributing tab on the CEBRA documentation site.
What datasets are compatible with CEBRA?
CEBRA supports a variety of datasets commonly used in biological and neuroscience research, including those from the mouse visual cortex and rat hippocampus.