eurybia
Model Monitor
An open source Python library to monitor model drift and validate data before deployment.
⚓ Eurybia monitors model drift over time and securizes model deployment with data validation
205 stars
6 watching
25 forks
Language: Jupyter Notebook
last commit: 5 months ago
Linked from 1 awesome list
data-driftdata-validationdatadrift-classifierdomain-classifierdriftdrift-detectionhtml-reportmachine-learningmodel-driftmodel-monitoringproduction-machine-learningpython
Related projects:
Repository | Description | Stars |
---|---|---|
| An open-source Python library that enables post-deployment model performance estimation and monitoring without access to target labels. | 1,998 |
| A Python implementation of a method to explain the predictions of machine learning models | 42 |
| Simplifies deployment of machine learning models to production-ready endpoints with minimal configuration and cost. | 1,341 |
| A Python library that detects drifts in machine learning systems | 197 |
| A lightweight model framework for validating and serializing data. | 2 |
| A package providing tools and metrics for evaluating Earth system models | 104 |
| A Python library for defining and validating data structures with built-in support for complex data models and relationships. | 176 |
| A lightweight system monitoring tool that provides real-time information about a Linux server's status and performance | 170 |
| Evaluates and compares the performance of multimodal large language models on various tasks | 56 |
| A tool for monitoring data stability and detecting changes over time | 499 |
| A Python package to create and run MODFLOW-based models | 529 |
| Evaluates the capabilities of large multimodal models using a set of diverse tasks and metrics | 274 |
| An auditing toolbox to assess the fairness of black-box predictive models | 361 |
| Evaluates and visualizes the performance of machine learning models. | 1,258 |
| Provides tools and analysis for understanding the behavior of large-scale climate models like MPAS within the E3SM framework. | 55 |