ccm/2025-24679-image-autogluon-predictor
Image Classification
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0recycling
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0recycling
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1trash
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1trash
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ccm/2025-24679-image-dataset
This dataset consists of images labeled as recycling (0) or trash (1). It was created as part of a classroom exercise in supervised learning and data augmentation, with the goal of giving students practice in building and evaluating image classification pipelines.
The dataset includes two splits:
Each row includes:
image: an image file (e.g., JPEG/PNG). label: integer class label (0 = recycling, 1 = trash).The dataset was curated to provide a simple, hands-on dataset for practicing image classification methods in an educational setting. Recycling/trash was chosen because it is easy to photograph and conceptually straightforward.
Christopher McComb (Carnegie Mellon University) — [email protected]