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I am attempting to left merge two dataframes, but I am running into an issue. I get only NaN's in columns that are in the right dataframe.

This is what I did:

X = read_csv('fileA.txt',sep=',',header=0);
print "-----FILE DATA-----"
print X;
X = X.astype(object); # convert every column to string type? does it do it?
print "-----INTERNALS-----"
pprint(vars(X));

Y = file_to_dataframe('fileB.txt',',',0); 
print "-----FILE DATA-----"
print Y;
print "-----INTERNALS-----"
pprint(vars(Y));

Z = merge(X,Y,how='left');
print Z;
sys.exit(); 

Y = file_to_dataframe('tmp.chr20.thresh.frq.count','\t',0);
print Y.dtypes;

def file_to_dataframe(filename,sep,header): # list of dict's
    i = 0; k = 0;
    cols = list();
    colNames = list();
    for line in fileinput.input([filename]):
        line = line.rstrip('\n');
        lst = line.split(sep);
        if i == header: #  row number to use as the column names
            for colName in lst:
                colNames.append(colName);
        elif i > header:
            j = 0;
            record = dict();
            for j in range(0,len(lst)): # iterate over all tokens in the current line
                if j >= len(colNames):
                    colNames.append('#Auto_Generated_Label_'+ str(k));
                    k += 1;
                record[colNames[j]] = lst[j];
            cols.append(record); # push the record onto stack
        i += 1;
    return DataFrame.from_records(cols);

Here's the output:

-----FILE DATA-----

   Chrom      Gene  Position


0     20    DZANK1  18446022


1     20      TGM6   2380332


2     20  C20orf96    271226

-----INTERNALS-----

{'_data': BlockManager


Items: array([Chrom, Gene, Position], dtype=object)


Axis 1: array([0, 1, 2])


ObjectBlock: array([Chrom, Gene, Position], dtype=object), 3 x 3, dtype object,


 '_item_cache': {}}

-----FILE DATA-----

  Chrom  Position Random


0    20  18446022    ABC


1    20   2380332    XYZ


2    20    271226    PQR

-----INTERNALS-----

{'_data': BlockManager


Items: array([Chrom, Position, Random], dtype=object)


Axis 1: array([0, 1, 2])


ObjectBlock: array([Chrom, Position, Random], dtype=object), 3 x 3, dtype object,


 '_item_cache': {}}



  Chrom      Gene  Position Random

0    20  C20orf96    271226    NaN

1    20      TGM6   2380332    NaN

2    20    DZANK1  18446022    NaN

As you see, there's a column of NaN's there where there should be values from Random column in Y. Any ideas on how to debug this?

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2  
You'll need to show actual code that demonstrates the problem. –  BrenBarn Dec 3 '12 at 20:56
    
Sorry. Edited. Thx. –  user1867185 Dec 3 '12 at 22:16
    
This question's code could be much shorter to emphasize your problem. See ssecc.org. –  Andy Hayden Dec 3 '12 at 22:37
    
In python normally you don't need and you shouldn't use a semicolon at the end of the line. –  bmu Dec 6 '12 at 13:51

1 Answer 1

Working for me (v0.10.0b1, though I am somewhat confident--but haven't checked-- this would also work in 0.9.1):

In [7]: x
Out[7]: 
   Chrom      Gene  Position
0     20    DZANK1  18446022
1     20      TGM6   2380332
2     20  C20orf96    271226

In [8]: y
Out[8]: 
   Chrom  Position Random
0     20  18446022    ABC
1     20   2380332    XYZ
2     20    271226    PQR

In [9]: pd.merge(x, y, how='left')
Out[9]: 
   Chrom      Gene  Position Random
0     20    DZANK1  18446022    ABC
1     20      TGM6   2380332    XYZ
2     20  C20orf96    271226    PQR

I'm very surprised that all the columns are object dtype. There must be some kind of parsing problem with your data-- examine the values in each column (not what they look like, but what they actually are, strings, ints, what?)

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