experimentspårning
Experimentspårning, often translated as experiment tracking or experiment logging, refers to the systematic recording and management of information related to scientific or machine learning experiments. This practice is crucial for ensuring reproducibility, facilitating collaboration, and enabling efficient analysis of experimental outcomes. In scientific research, experiment tracking might involve documenting the setup, parameters, raw data, and results of a physical or chemical experiment. For machine learning, it typically involves logging model architectures, hyperparameters, datasets used, performance metrics, and trained model artifacts.
The primary goals of experiment tracking include ensuring that experiments can be recreated by oneself or