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Apr
27
revised Create (efficiently) fake truth/predicted values from a confusion matrix
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Apr
27
comment Create (efficiently) fake truth/predicted values from a confusion matrix
That error is due to the comment I made above that the index of the dataframe you create in the binary case is made of boolean values rather than strings. Is it necessary to have an index or column names with non-string keys?
Apr
27
comment Create (efficiently) fake truth/predicted values from a confusion matrix
@scls I'm confused...I wrote the function above to create both arrays using pretty much only stdlib which is fast?
Apr
27
comment Create (efficiently) fake truth/predicted values from a confusion matrix
@scls From above it does work? Are you passing True and False as booleans and not strings? If so that would cause it to fail.
Apr
27
answered Create (efficiently) fake truth/predicted values from a confusion matrix
Apr
17
awarded  Caucus
Mar
10
answered scikit-learn - vectorizing both integer and string features at the same time
Feb
18
comment Join multiple grouped dataframes by key in Pandas
Looks like you could also achieve the desired result by concatenating two pivots rather than 8 groupbys. Might save a bit of work.
Feb
18
answered How can I normalize the data in a range of columns in my pandas dataframe
Feb
11
revised Splitting a List inside a Pandas DataFrame
added 301 characters in body
Feb
11
revised Splitting a List inside a Pandas DataFrame
added 1209 characters in body
Feb
11
answered Splitting a List inside a Pandas DataFrame
Jan
26
comment Trying to get the desired DataFrames from optimized groupby methods
Or, for speed you can simply act on the only column you wish to have in the result: df_max = pd.DataFrame(df.groupby('build_number').cycles.max()
Jan
10
awarded  Yearling
Jan
7
answered Counting frequency of values by date using pandas
Dec
5
comment pandas: sample groups after groupby
there's no need for a groupby if that is your desired output. Simply do: selected_names = np.random.choice(df.name.unique(),2,replace = False) followed by df[df.name.isin(selected_names)]
Dec
4
answered pandas: sample groups after groupby
Oct
27
answered how to store duration in a pandas column in minutes:second format that allows arithemtic?
Oct
20
answered Complex dataframe plotting with Pandas / Matplotlib
Oct
18
answered Pandas Dataframe reindexing issue