cyclops
ML health kit
A toolkit for facilitating research and deployment of machine learning models in healthcare
Toolkit for evaluating and monitoring AI models in clinical settings
77 stars
8 watching
12 forks
Language: Python
last commit: 2 months ago
Linked from 1 awesome list
clinical-dataclinical-decision-supportclinical-researchdata-driftdeep-learningdrift-detectioneicu-crdelectronic-health-recordelectronic-medical-recordevaluationhealthcaremachine-learningmimic-iiimimic-ivmodel-monitoringomop-cdmphysionet
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