Evidently is an open-source ML and LLM observability framework. Evaluate, test, and monitor any AI-powered system or data pipeline. From tabular data to Gen AI. 100+ metrics.
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Updated
Dec 24, 2024 - Jupyter Notebook
Evidently is an open-source ML and LLM observability framework. Evaluate, test, and monitor any AI-powered system or data pipeline. From tabular data to Gen AI. 100+ metrics.
Deepchecks: Tests for Continuous Validation of ML Models & Data. Deepchecks is a holistic open-source solution for all of your AI & ML validation needs, enabling to thoroughly test your data and models from research to production.
Algorithms for outlier, adversarial and drift detection
nannyml: post-deployment data science in python
Curated list of open source tooling for data-centric AI on unstructured data.
⚓ Eurybia monitors model drift over time and securizes model deployment with data validation
Frouros: an open-source Python library for drift detection in machine learning systems.
Toolkit for evaluating and monitoring AI models in clinical settings
A comprehensive solution for monitoring your AI models in production
Free Open-source ML observability course for data scientists and ML engineers. Learn how to monitor and debug your ML models in production.
A curated list of awesome open source tools and commercial products for monitoring data quality, monitoring model performance, and profiling data 🚀
Online and batch-based concept and data drift detection algorithms to monitor and maintain ML performance.
AI-powered Autonomous Data System
Passively collect images for computer vision datasets on the edge.
Sales Conversion Optimization MLOps: Boost revenue with AI-powered insights. Features H2O AutoML, ZenML pipelines, Neptune.ai tracking, data validation, drift analysis, CI/CD, Streamlit app, Docker, and GitHub Actions. Includes e-mail alerts, Discord/Slack integration, and SHAP interpretability. Streamline ML workflow and enhance sales performance.
A tiny framework to perform adversarial validation of your training and test data.
In this repository, we will present techniques to detect covariate drift, and demonstrate how to incorporate your own custom drift detection algorithms and visualizations with SageMaker model monitor.
A ⚡️ Lightning.ai ⚡️ component for train and test data drift detection
Drift Lens Demo
Adversarial labeller is a sklearn compatible instance labelling tool for model selection under data drift.
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