oracle / macest
Model Agnostic Confidence Estimator (MACEST) - A Python library for calibrating Machine Learning models' confidence scores
β100Updated last year
Related projects β
Alternatives and complementary repositories for macest
- π Material for PyData Global 2021 Presentation: Effective Testing for Machine Learning Projectsβ81Updated 2 years ago
- Weakly Supervised End-to-End Learning (NeurIPS 2021)β153Updated last year
- β Eurybia monitors model drift over time and securizes model deployment with data validationβ205Updated 3 weeks ago
- Doubt your data, find bad labels.β503Updated 4 months ago
- π¦ Deployment tool for online machine learning modelsβ97Updated 2 years ago
- Drift Detection for your PyTorch Modelsβ312Updated 2 years ago
- CinnaMon is a Python library which offers a number of tools to detect, explain, and correct data drift in a machine learning systemβ76Updated last year
- Distributed skorch on Ray Trainβ57Updated 2 years ago
- SPEAR: Programmatically label and build training data quickly.β103Updated 4 months ago
- An open-source AutoML Library based on PyTorchβ306Updated last month
- NitroFE is a Python feature engineering engine which provides a variety of modules designed to internally save past dependent values for β¦β106Updated 2 years ago
- DataFrame support for scikit-learn.β63Updated last year
- Frouros: an open-source Python library for drift detection in machine learning systems.β194Updated this week
- Dvc + Streamlit = β€οΈβ40Updated last year
- Streamline scikit-learn model comparison.β146Updated last year
- just a bunch of useful embeddingsβ467Updated 2 months ago
- Tabular feature encoding pipelines for machine learning with options for string parsing, missing data infill, and stochastic perturbationβ¦β165Updated 2 months ago
- Data Analysis Baseline Libraryβ131Updated last month
- Measure and visualize machine learning model performance without the usual boilerplate.β96Updated 2 months ago
- Practical active learning in pythonβ189Updated 2 years ago
- Scikit-Learn compatible transformer that turns categorical variables into dense entity embeddings.β41Updated last year
- Train multi-task image, text, or ensemble (image + text) modelsβ45Updated last year
- π Stream inferences of real-time ML models in production to any data lake (Experimental)β78Updated 2 years ago
- Coarse-grained lineage and tracing for machine learning pipelines.β468Updated 2 years ago
- Fast SHAP value computation for interpreting tree-based modelsβ522Updated last year
- A library for preparing, training, and evaluating scalable deep learning hybrid recommender systems using PyTorch.β108Updated 9 months ago
- Super Simple Similarities Serviceβ142Updated last year
- β195Updated this week
- ForML - A development framework and MLOps platform for the lifecycle management of data science projectsβ104Updated last year