NGC-Learn: Neurobiological Learning and Biomimetic Systems Simulation in Python
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Updated
Jun 5, 2024 - Python
NGC-Learn: Neurobiological Learning and Biomimetic Systems Simulation in Python
Platform-independent lightweight Python library for designing and conducting timing-critical behavioural and neuroimaging experiments
Python package for extracting representations from state-of-the-art computer vision models
A block modeling system for cognitive neuroscience
A framework for boosting the implementation of stimulus-response research code in the field of cognitive science and neuroscience
Python implemention of the (slightly modified) Attention Network Test (ANT)
Library to conduct experiments in population dynamics.
Build, fit, and sample from cognitive models with JAX + NumPyro.
Python implemention of the (slightly modified) Attention Network Test (ANT)
Language, Knowledge, Cognition
Lab experiment to study the impact of time perception on route choices in public transit. It presents choice scenarios using animations or numerical attributes. It is implemented with PyQT and conducted with participants from Santiago, Chile and London, UK.
NGC-Learn: Predictive Coding and Neurobiologically-Motivated Learning in Python
Implementation/simulation of active neural generative coding (ANGC) for training neurobiologically-plausible active inference agent models.
Implementation of the Semantic Pointer Architecture for Nengo
We introduce Local recurrent Predictive coding model termed as Parallel temporal Neural Coding Network. Unlike classical RNNs, our model is pure local and doesn't require computing gradients backward in time; thus computationally more efficient compared to BPTT and can be used for online learning
GitHub repository for our work "Interpretable Machine Learning for Precision Aging"
Analyze cognitive shifts with a web-based Stroop Test, pre- and post-Instagram reel engagement to understand the influence of social media on concentration.
Generation of novel shapes based on fourier descriptors for category learning experiments.
A Python implementation of the ACT-R cognitive Architecture
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