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@@ -18,8 +18,8 @@ To quickly learn the basics of running cleanlab on your own data, we recommend f
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| 8 |[fasttext_amazon_reviews](fasttext_amazon_reviews/fasttext_amazon_reviews.ipynb)| Finding label errors in Amazon Reviews text dataset using a cleanlab-compatible [FastText model](https://github.com/cleanlab/cleanlab/blob/master/cleanlab/experimental/fasttext.py)|
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| 9 |[multiannotator_cifar10](multiannotator_cifar10/multiannotator_cifar10.ipynb)| Iteratively improve consensus labels and trained classifier from data labeled by mulitple annotators. |
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| 10 |[outlier_detection_cifar10](outlier_detection_cifar10/outlier_detection_cifar10.ipynb)| Train AutoML for image classification and use it to detect out-of-distribution images. |
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| 11 |[entity_recognition](entity_recognition/entity_recognition_training.ipynb)| Train Transformer model for Named Entity Recognition and produce out-of-sample `pred_probs` for cleanlab.token_classification. |
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| 12 |[multilabel_classification](multilabel_classification/image_tagging.ipynb)| Find label errors in an image tagging dataset ([CelebA](https://mmlab.ie.cuhk.edu.hk/projects/CelebA.html)) using a [Pytorch model](multilabel_classification/pytorch_network_training.ipynb) you can easily train for multi-label classification.|
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| 11 |[multilabel_classification](multilabel_classification/image_tagging.ipynb)| Find label errors in an image tagging dataset ([CelebA](https://mmlab.ie.cuhk.edu.hk/projects/CelebA.html)) using a [Pytorch model](multilabel_classification/pytorch_network_training.ipynb) you can easily train for multi-label classification.|
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| 12 |[entity_recognition](entity_recognition/entity_recognition_training.ipynb)| Train Transformer model for Named Entity Recognition and produce out-of-sample `pred_probs` for cleanlab.token_classification. |
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| 13 |[cnn_coteaching_cifar10](cnn_coteaching_cifar10)| Train a [Convolutional Neural Network](https://github.com/cleanlab/cleanlab/blob/master/cleanlab/experimental/cifar_cnn.py) on noisily labeled Cifar10 image data using cleanlab with [coteaching](https://github.com/cleanlab/cleanlab/blob/master/cleanlab/experimental/coteaching.py). |
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