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What is Cebra AI?

Discover CEBRA, a unique machine-learning method built to compress time series data, uncovering hidden structures in neural and behavioural data. It is specifically designed to ensure accuracy and consistency in joint behavioural and neural datasets, both simple or complex, across various species. Primary applications include mapping of space, elucidating complex kinematic features, and high-accuracy decoding of natural movies from visual cortex.

Features

  • Joint Analysis of Behavioural and Neural Data: CEBRA can process behavioural and neural data simultaneously, enabling a comprehensive understanding of the association between neural activity and behaviour.
  • Uncover Hidden Structures in Data: Its capacity to compress time series data helps reveal hidden structures in data variation, which might otherwise remain unnoticed.
  • Highly Versatile: CEBRA is versatile enough to aid in mapping space, identifying complex kinematic features, and decoding visual stimuli with high accuracy.
  • Consistent and High-Performance: CEBRA produces consistent, high-performance latent spaces, maintaining consistent results across various datasets and tests.

Use Cases:

  • Mapping Space: CEBRA can be applied to map various spaces, providing valuable insights into their structure and interaction.
  • Decoding Visual Stimuli: It can accurately decode visual cortex activities and successfully reconstruct visual stimuli, such as a video the subject watched.
  • Uncovering Complex Kinematic Features: CEBRA can be used to examine and uncover complex kinematic features in the observed data.
  • Behaviour and Neural Data Analysis: By jointly processing behavioural and neural data, CEBRA can deliver a holistic understanding of both.

CEBRA represents a groundbreaking leap in the field of neuroscience, offering an effective way to conduct joint behavioural and neural analysis. Its various features and broad range of application bestow an unparalleled advantage in understanding complex datasets and potentially open new doors for future studies.