radicalbit/radicalbit-ai-monitoring
A comprehensive solution for monitoring your AI models in production
This platform helps data scientists and ML engineers keep their AI models, including Machine Learning and Large Language Models, working correctly once they are deployed. It takes in your model's performance data and original training datasets, then flags issues like data quality problems, model performance drops, or 'drift' where the model's predictions become less accurate over time. The output is a clear overview of model health and alerts about potential problems.
Use this if you need to continuously track the performance and data integrity of your AI models in a production environment to prevent them from becoming ineffective.
Not ideal if you are only developing models and do not need to monitor their ongoing performance in a live system.
Stars
82
Forks
11
Language
Python
License
Apache-2.0
Category
Last pushed
Dec 16, 2025
Commits (30d)
0
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