I want to know more precisely about the use of the method cache for dataframe in pyspark
When I run
df.cache() it returns a dataframe.
Therefore, if I do
df2 = df.cache(), which dataframe is in cache ? Is it
df2, or both ?
I found the source code
def cache(self): """Persists the :class:`DataFrame` with the default storage level (`MEMORY_AND_DISK`). .. note:: The default storage level has changed to `MEMORY_AND_DISK` to match Scala in 2.0. """ self.is_cached = True self._jdf.cache() return self
Therefore, the answer is : both