Is there an easy way to check whether two data frames are different copies or views of the same underlying data that doesn't involve manipulations? I'm trying to get a grip on when each is generated, and given how idiosyncratic the rules seem to be, I'd like an easy way to test.
For example, I thought "id(df.values)" would be stable across views, but they don't seem to be:
# Make two data frames that are views of same data. df = pd.DataFrame([[1,2,3,4],[5,6,7,8]], index = ['row1','row2'], columns = ['a','b','c','d']) df2 = df.iloc[0:2,:] # Demonstrate they are views: df.iloc[0,0] = 99 df2.iloc[0,0] Out: 99 # Now try and compare the id on values attribute # Different despite being views! id(df.values) Out: 4753564496 id(df2.values) Out: 4753603728 # And we can of course compare df and df2 df is df2 Out: False
Other answers I've looked up that try to give rules, but don't seem consistent, and also don't answer this question of how to test:
UPDATE: Comments below seem to answer the question -- looking at the
df.values.base attribute rather than
df.values attribute does it, as does a reference to the
df._is_copy attribute (though the latter is probably very bad form since it's an internal).