From the course: AWS Certified Machine Learning - Specialty (MLS-C01) Cert Prep: 3 Modeling

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Compare models using metrics

Compare models using metrics

- [Narrator] Here we have the SageMaker dashboard and I'm taking a look at training jobs here. And under these training jobs I can look at all the different jobs I've completed. And this is one of the key ideas behind experiment tracking is that I can go ahead and filter by certain status. For example, what were all the jobs that were actually completed, for example. And this would allow me to easily come in the next morning and see that the jobs were completed, or for example which ones have failed. Also, I could look at the name of the job, maybe I look for, you know, principle component analysis inside and I could filter by all the principle component analysis jobs. And then I could also dive into the details and look at some of the other metrics here. For example, how long it took to run something. What was the training image that was run? What was the instance type? Was it a CPU versus GPU? So this is the core idea…

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