Explore and visualize Google Professional Data Engineer GCP
- Involves data exploration and visualization
- to better understand the results of the processing and analysis.
- Insights gained to drive improvements
- Apply statistical methods and ML
Datalab
- An interactive web-based tool
- Used to explore, analyze and visualize data.
- Built on Jupyter notebooks earlier called IPython.
- Launch an interactive web-based notebook to write and execute Python programs to process and visualize data.
- The notebooks maintain their state and can be shared.
- Support popular data-science toolkits, like pandas, numpy, and scikit-learn
- Supports visualization packages, like matplotlib.
- Supports Tensorflow and Dataflow.
- Can load and cleanse data, build and verify models, and then visualize the results
Data science ecosystem
- Deploy data science tools on GCP
- Can deploy RStudio Server or Microsoft Machine Learning Server on a Compute Engine instance.
- Deploy Jupyter or JupyterHub on Compute Engine instances.
- Apache Zeppelin also supported
Visualizing business intelligence results
- Number of reporting and dashboarding tools in GCP
- Google Data Studio is a drag-and-drop report builder
- The charts and graphs in the reports can be shared and updated.
- Reports can contain interactive controls.
- Access data from data files, Google Sheets, Cloud SQL, and BigQuery.
- Visualize data in a spreadsheet, in Google Sheets
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