autodistill
Model distiller
Automatically trains models from large foundation models to perform specific tasks with minimal human intervention.
Images to inference with no labeling (use foundation models to train supervised models).
2k stars
21 watching
161 forks
Language: Python
last commit: over 1 year ago
Linked from 1 awesome list
auto-labelingcomputer-visiondeep-learningfoundation-modelsgrounding-dinoimage-annotationimage-classificationinstance-segmentationlabeling-toolmachine-learningmodel-distillationmultimodalobject-detectionpytorchsegment-anythingyolov5yolov8
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