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I have the following structure to my dataFrame:

Index: 1008 entries, Trial1.0 to Trial3.84
Data columns (total 5 columns):
CHUNK_NAME                    1008  non-null values
LAMBDA                        1008  non-null values
BETA                          1008  non-null values
HIT_RATE                      1008  non-null values
AVERAGE_RECIPROCAL_HITRATE    1008  non-null values

chunks=['300_321','322_343','344_365','366_387','388_408','366_408','344_408','322_408','300_408']
lam_beta=[(lambda1,beta1),(lambda1,beta2),(lambda1,beta3),...(lambda1,beta_n),(lambda2,beta1),(lambda2,beta2)...(lambda2,beta_n),........]

my_df.ix[my_df.CHUNK_NAME==chunks[0]&my_df.LAMBDA==lam_beta[0][0]]

I want to get the rows of the Dataframe for a particular chunk lets say chunks[0] and particular lambda value. So in this case the output should be all rows in the dataframe having CHUNK_NAME='300_321' and LAMBDA=lambda1. There would be n rows one for each beta value that would be returned. But instead I get the follwoing error. Any help in solving this problem would be appreciated.

TypeError: cannot compare a dtyped [float64] array with a scalar of type [bool]
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1 Answer 1

up vote 9 down vote accepted

& has higher precedence than ==. Write:

my_df.ix[(my_df.CHUNK_NAME==chunks[0])&(my_df.LAMBDA==lam_beta[0][0])]
         ^                           ^ ^                            ^
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This precedence has caused me a lot of anguish! Thanks :). Correct me if i'm wrong but I don't think this property is made very apparent in the documentation. It would be nice if someone could add this if not already. –  anonuser0428 Dec 2 '13 at 17:32
    
It is documented here: pandas.pydata.org/pandas-docs/stable/… "Another common operation is the use of boolean vectors to filter the data. The operators are: | for or, & for and, and ~ for not. These must be grouped by using parentheses." –  jsexauer Dec 2 '13 at 18:47

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