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# Title
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# [Low code/No code] The Heart Failure Prediction Project
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## Instructions
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We saw how to use the Azure ML platform to train, deploy and consume a model in a Low code/No code fashion. Now look around for some data that you could use to train an other model, deploy it and consume it. You can look for datasets on [Kaggle](https://kaggle.com) and [Azure Open Datasets](https://azure.microsoft.com/en-us/services/open-datasets/catalog/?WT.mc_id=academic-15963-cxa).
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## Rubric
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Exemplary | Adequate | Needs Improvement
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--- | --- | -- |
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| Exemplary | Adequate | Needs Improvement |
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|-----------|----------|-------------------|
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|When uploading the data you took care of changing the feature's type if necessary. You also cleaned the data if needed. You ran a training on a dataset through AutoML, and you checked the model explanations. You deployed the best model and you were able to consume it. | When uploading the data you took care of changing the feature's type if necessary. You ran a training on a dataset through AutoML, you deployed the best model and you were able to consume it. | You have deployed the best model trained by AutoML and you were able to consume it. |
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