Manifold is a model-agnostic visual debugging tool for machine learning. Understanding ML model performance and behavior is a non-trivial process, given the intrisic opacity of ML algorithms. Performance summary statistics such as AUC, RMSE, and others are not instructive enough to identify what went wrong with a model or how to improve it. As a visual analytics tool, Manifold allows ML practitioners to look beyond overall summary metrics to detect which subset of data a model is inaccurately predicting. Manifold also explains the potential cause of poor model performance by surfacing the feature distribution difference between better and worse-performing subsets of data.
Features
- Convert data programatically
- Documentation available
- Interpret visualizations
- Performance Comparison View
- Examples available
- Feature Attribution View
Categories
Machine LearningLicense
Apache License V2.0Follow Manifold ML
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