Don’t jump between multiple apps. Query data directly from your PostgreSQL instance. Switch between SQL and Python in order to transform, clean, and export your data.Trusted by data scientists at
PostgreSQL is an open-source relational database.
When connected to a Deepnote notebook, you can read, update or delete any data directly with SQL queries. The query result can be saved as a dataframe and later analyzed or transformed in Python, or plotted with Deepnote's visualization cells without writing any code.
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Connect to your BigQuery warehouse and query the data using Deepnote SQL blocks.
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Attach a bucket to your project and read, edit or upload files to the bucket.
Connect to a Postgres instance and use SQL directly from a notebook interface.