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<h2>ParDo</h2>
<p>ParDo is a Beam transform for generic parallel processing. The ParDo processing paradigm is similar to the “Map” phase of a Map/Shuffle/Reduce-style algorithm: a ParDo transform considers each element in the input PCollection, performs some processing function (your user code) on that element, and emits zero, one, or multiple elements to an output PCollection.</p>
<p>For this task, please write a simple ParDo that maps the input element by multiplying it by 10.</p>
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<div class='hint'>Override <a href="https://beam.apache.org/releases/pydoc/2.11.0/apache_beam.transforms.core.html#apache_beam.transforms.core.DoFn.process">process</a> method</div>
<div class='hint'>Use <a href="https://beam.apache.org/releases/pydoc/2.11.0/apache_beam.transforms.core.html#apache_beam.transforms.core.ParDo">ParDo</a> with
<a href="https://beam.apache.org/releases/pydoc/2.11.0/apache_beam.transforms.core.html#apache_beam.transforms.core.DoFn">DoFn</a></div>
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