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| # Model card - tox21_snn_classifier | |
| ### Model details | |
| - Model name: Self-Normalizing Neural Network Tox21 Baseline | |
| - Developer: JKU (Linz) | |
| - Paper URL: https://proceedings.neurips.cc/paper_files/paper/2017/hash/5d44ee6f2c3f71b73125876103c8f6c4-Abstract.html | |
| - Model type / architecture: | |
| - Self-Normalizing Neural Network implemented using PyTorch. | |
| - Hyperparameters: https://huggingface.co/spaces/ml-jku/tox21_snn_classifier/blob/main/config/config.json | |
| - A multitask network is trained for all Tox21 targets. | |
| - Inference: Access via FastAPI endpoint. Upon receiving a Tox21 prediction request, the model generates and returns predictions for all Tox21 targets simultaneously. | |
| - Model version: v0 | |
| - Model date: 14.10.2025 | |
| - Reproducibility: Code for full training is available and enables retraining from | |
| scratch. | |
| ### Intended use | |
| This model serves as a baseline benchmark for evaluating and comparing toxicity prediction methods across the 12 pathway assays of the Tox21 dataset. It is not intended for clinical decision-making without experimental validation. | |
| ### Metric | |
| Each Tox21 task is evaluated using the area under the receiver operating characteristic curve (AUC). Overall performance is reported as the mean AUC across all individual tasks. | |
| ### Training data | |
| Tox21 training and validation sets. | |
| ### Evaluation data | |
| Tox21 test set. | |