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  1. Data Sources and Sinks

Zingg Pipes

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Last updated 5 months ago

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Zingg Pipes are an abstraction for a data source from which Zingg fetches data for matching or to which Zingg writes its output. This lets users connect to literally any datastore that has a Spark connector.

The pipe is an easy way to specify properties and formats for the Spark connector of the relevant data source. Zingg pipes can be configured through the config passed to the program by outlining the datastore connection properties.

Pipes can be configured for the data or the output attributes on the .

Each pipe has the following attributes:

name

A unique name to identify the data store.

format

One of the Spark-supported connector formats - jdbc/avro/parquet etc.

options

Properties to be passed to spark.read and spark.write.

Let us look at some common data sources and their configurations.

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