Scan AI models for problems
Project description
daisybell
A scanner that will scan your AI models for problems. Currently it focuses on bias testing. It is currently pre-alpha.
How to Use
First install it:
pip install daisybell
Run it in this manner (currently supports models from HuggingFace’s repository):
daisybell --huggingface roberta-base --task fill-mask
The scan can output files for further analysis:
daisybell --huggingface roberta-base --task fill-mask --output results/roberta-base
Here is another example with a different bias task.
daisybell --huggingface cross-encoder/nli-distilroberta-base --task zero-shot-classification
That’s it for now. More will come.
Future Work
More bias tests. More metrics for bias testing based on the research in the field.
Integration with other types of testing (eg. adversarial robustness)
More kinds of models besides HuggingFace models. We are especially interested in MLFlow integration.
Documentation.
Please contribute if you can. Help is always helpful.
License
Apache
Credit
A project of IQT Labs.
Project details
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