Model Assertions for Monitoring and Improving ML Models
ML models are increasingly deployed in settings with real world interactions
such as vehicles, but unfortunately, these models can fail in systematic ways.
To prevent errors, ML engineering teams monitor and continuously improve these
models. We propose a new abstraction, model assertions, that adap…