--- language: - en pipeline_tag: tabular-classification tags: - Computational Neuroscience license: mit --- ## Model description This model is part of the `UnitRefine` project. The model is trained on 11 mice in V1, SC, and ALM using Neuropixels on mice. Each recording was labeled by at least two people and in different combinations. The agreement amongst labelers is 80%. # Intended use Used to identify noise clusters automatically in SpikeInterface. # How to Get Started with the Model This can be used to automatically identify noise in spike-sorted outputs. If you have a sorting_analyzer, it can be used as follows: ``` python from spikeinterface.curation import auto_label_units labels = auto_label_units( sorting_analyzer=sorting_analyzer, repo_id="SpikeInterface/UnitRefine_noise_neural_classifier", trust_model=True ) ``` # Authors Anoushka Jain and Chris Halcrow