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I'm trying to read lines from an HTML input file and prepare Series / DataFrames so I can eventually create graphs. I'm using lxml's objectify to take lines of HTML data and convert them to a list. Whenever I try to take the list data and make a Series or DataFrame, I get a Series (or DataFrame) containing a number of elements equal to the number of items in my list, but the data for the elements is my list itself.

The easiest way I can show my problem is:

from lxml import etree
from lxml import objectify
from pandas import Series
line='<tr class="alt"><td>192.168.1.0</td><td>XXDHCP</td><td>Y</td><td>255</td><td>0</td><td>YYDHCP</td><td>Y</td><td>250</td><td>0</td><td>0%</td><td>505</td><td>505</td><td>0</td><td></td></tr>'
htmldata=(objectify.fromstring(line)).getchildren()
htmlseries=Series(htmldata)

htmlseries ends up looking like:

0     [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
1     [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
2     [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
3     [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
4     [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
5     [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
6     [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
7     [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
8     [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
9     [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
10    [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
11    [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
12    [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...
13    [[[192.168.1.0, XXDHCP, Y, 255, 0, YYDHCP, Y, ...

type(htmldata[0]) is: lxml.objectify.StringElement
type(htmldata[3]) is: lxml.objectify.IntElement

While I'm looking for something like:

0     192.168.1.0
1          XXDHCP
2               Y
3             255
4               0
5          YYDHCP
6               Y
7             250
8               0
9              0%
10            505
11            505
12              0
13               

What am I doing wrong? I'm kind of mystified as to what's going on. When I try reading each column into a list:

data=objectify.fromstring(line).getchildren()
labdata[ip]['Scope'].append(data[0])
labdata[ip]['Cluster1'].append(data[1])
labdata[ip]['Active1'].append(data[2])
...etc...

My list ends up looking like:

labdata['192.168.1.0']['Utilization']
['100%',
 '96%',
 '96%',
 '90%',
 '81%',
 '96%',
 '90%',
 '97%',
 '98%',
 '92%',
 '99%',
 ...etc...
 ]

But for some reason:

Series(labdata['192.168.1.0']['Utilization'])
0     [[[192.168.1.0, XXDHCP, Y, 0, 383, YYDHCP, Y...
1     [[[192.168.1.0, XXDHCP, Y, 28, 355, YYDHCP, ...
2     [[[192.168.1.0, XXDHCP, Y, 28, 355, YYDHCP, ...
3     [[[192.168.1.0, XXDHCP, Y, 76, 307, YYDHCP, ...
4     [[[192.168.1.0, XXDHCP, Y, 104, 279, YYDHCP,...
5     [[[192.168.1.0, XXDHCP, Y, 27, 356, YYDHCP, ...
6     [[[192.168.1.0, XXDHCP, Y, 66, 317, YYDHCP, ...
7     [[[192.168.1.0, XXDHCP, Y, 15, 368, YYDHCP, ...
8     [[[192.168.1.0, XXDHCP, Y, 15, 368, YYDHCP, ...
9     [[[192.168.1.0, XXDHCP, Y, 54, 329, YYDHCP, ...
...etc...

type(labdata['192.168.1.0']['Utilization'][0]) is lxml.objectify.StringElement

Do I need to cast these elements to normal strings and ints?

share|improve this question
    
make sure that the type of labdata['192.168.1.0']['Utilization'] is actually a list, e.g. put list() around it, it might be list-like but not actually a list, also show the type of the first element of the series, e.g. type(s[0]) – Jeff Apr 2 '13 at 16:53
    
Why was this downvoted? The question is comprehensible and provides a working SSCCE, which already ranks it pretty highly. The only thing missing is a description of the desired output, but in context I think it's pretty clear. – DSM Apr 2 '13 at 16:53
2  
@dooz: as a workaround you can use Series(obj.pyval for obj in htmldata). I can't immediately see why, but something about the lxml.objectify.*Element objects isn't playing nicely with Series construction. – DSM Apr 2 '13 at 17:04
    
Right, my (now deleted) answer was basically DSM's comment. – Dan Allan Apr 2 '13 at 17:07
up vote 7 down vote accepted

The problem is the elements in htmldata are not simple types, and np.isscalar is fooled here (as this is how its determined whether we have list-of-lists or a list of scalars just stringify the elements are this will work

In [23]: print [ type(x) for x in htmldata ]
[<type 'lxml.objectify.StringElement'>, <type 'lxml.objectify.StringElement'>, <type 'lxml.objectify.StringElement'>, <type 'lxml.objectify.IntElement'>, <type 'lxml.objectify.IntElement'>, <type 'lxml.objectify.StringElement'>, <type 'lxml.objectify.StringElement'>, <type 'lxml.objectify.IntElement'>, <type 'lxml.objectify.IntElement'>, <type 'lxml.objectify.StringElement'>, <type 'lxml.objectify.IntElement'>, <type 'lxml.objectify.IntElement'>, <type 'lxml.objectify.IntElement'>, <type 'lxml.objectify.StringElement'>]

In [24]: Series([ str(x) for x in htmldata ])
Out[24]: 
0     192.168.1.0
1          XXDHCP
2               Y
3             255
4               0
5          YYDHCP
6               Y
7             250
8               0
9              0%
10            505
11            505
12              0
13               
share|improve this answer
    
Ah, +1. I remember isscalar causing problems with Sage, too -- numpy doesn't recognize Sage integers as scalars, so indexing of arrays doesn't work quite right. I think I prefer the pyval approach though as it preserves more type information. – DSM Apr 2 '13 at 17:11
    
agreed....not much else I think can do on pandas end because pretty intensive to determine if the user REALLY is passing a list as a series element and means it – Jeff Apr 2 '13 at 17:15

Nice question! This is weird behaviour.

The problem occurs because you're passing Series a list lxml.objectify.StringElements. pandas is backed by np.arrays and therefore prefers to have its data stored in uniform arrays. It's therefore abstracting everything into an np.object so that it can shove them into an array. Indeed, if you look at the underlying array (Series.values) of your data, you'll see that it's been created fine, although it's a numpy array of lxml.objectify.StringElements which is probably not what you want.

The easy solution is of course to cast everything to string, which is probably what you want to do in this case.


But why is it printing funny, you ask? Well, if you drill through the code in pandas, you end up at the following function in pandas.core.common:

def _is_sequence(x):
    try:
        iter(x)
        len(x) # it has a length
        return not isinstance(x, basestring) and True
    except Exception:
        return False

In other words, pandas sees that the lxml objects are not basestrings, and hence assumes they're sequences. Pandas should probably check isinstance(x, collections.Sequence)...

share|improve this answer
    
that's a good idea! – Jeff Apr 2 '13 at 17:20

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