Google AI Platform (Formerly Cloud ML Engine) Google Professional Data Engineer GCP
- used to train machine learning models at scale,
- to host trained model in the cloud,
- to use model to make predictions about new data.
- Machine Learning services by Google are
- Machine Learning Engine
- Cloud Vision API
- Cloud Translation API
- Cloud AutoML
- BigQuery ML
services offered
- Prepare: use Cloud Storage or BigQuery to store data and use built-in data labeling service to label training data.
- Build and run: build ML applications on GCP with a managed Jupyter Notebook service providing fully configured environments
- Manage: can manage models, experiments, and end-to-end workflows using the AI Platform interface within the GCP console, or for on-premises using Kubeflow Pipelines.
- Share: discover ML pipelines, notebooks, and other AI content.
Google Professional Data Engineer (GCP) Free Practice TestTake a Quiz