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In Wikipedia, you can find some interesting data to be sorted, filtered, ...

Here is a sample of a wikitable

{| class="wikitable sortable"
|-
! Model !! Mhash/s !! Mhash/J !! Watts !! Clock !! SP !! Comment
|-
| ION || 1.8 || 0.067 || 27 ||  || 16 || poclbm;  power consumption incl. CPU
|-
| 8200 mGPU || 1.2 || || || 1200 || 16 || 128 MB shared memory, "poclbm -w 128 -f 0"
|-
| 8400 GS || 2.3 || || ||  ||  || "poclbm -w 128"
|-
|}

I'm looking for a way to import such data to a Python Pandas DataFrame

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According to this: pandas.pydata.org/pandas-docs/dev/dsintro.html#dataframe a DataFrame can be constructed from one of these: Dict of 1D ndarrays, lists, dicts, or Series; 2-D numpy.ndarray; Structured or record ndarray; A Series; Another DataFrame. The simplest is a dict of list/dict, but it is not apparent how your data can be coerced this way. What do you have in mind? –  hughdbrown Mar 30 '13 at 22:43

3 Answers 3

up vote 5 down vote accepted

Here's a solution using py-wikimarkup and PyQuery to extract all tables as pandas DataFrames from a wikimarkup string, ignoring non-table content.

import wikimarkup
import pandas as pd
from pyquery import PyQuery

def get_tables(wiki):
    html = PyQuery(wikimarkup.parse(wiki))
    frames = []
    for table in html('table'):
        data = [[x.text.strip() for x in row]
                for row in table.getchildren()]
        df = pd.DataFrame(data[1:], columns=data[0])
        frames.append(df)
    return frames

Given the following input,

wiki = """
=Title=

Description.

{| class="wikitable sortable"
|-
! Model !! Mhash/s !! Mhash/J !! Watts !! Clock !! SP !! Comment
|-
| ION || 1.8 || 0.067 || 27 ||  || 16 || poclbm;  power consumption incl. CPU
|-
| 8200 mGPU || 1.2 || || || 1200 || 16 || 128 MB shared memory, "poclbm -w 128 -f 0"
|-
| 8400 GS || 2.3 || || || || || "poclbm -w 128"
|-
|}

{| class="wikitable sortable"
|-
! A !! B !! C
|-
| 0
| 1
| 2
|-
| 3
| 4
| 5
|}
"""

get_tables returns the following DataFrames.

       Model Mhash/s Mhash/J Watts Clock  SP                                     Comment
0        ION     1.8   0.067    27        16        poclbm;  power consumption incl. CPU
1  8200 mGPU     1.2                1200  16  128 MB shared memory, "poclbm -w 128 -f 0"
2    8400 GS     2.3                                                     "poclbm -w 128"

 

   A  B  C
0  0  1  2
1  3  4  5
share|improve this answer

Edited - complete answer below. I don't have Panda installed, so let me know if this works for you.

from pandas import *

wikitable = '''
{| class="wikitable sortable"
|-
! Model !! Mhash/s !! Mhash/J !! Watts !! Clock !! SP !! Comment
|-
| ION || 1.8 || 0.067 || 27 ||  || 16 || poclbm;  power consumption incl. CPU
|-
| 8200 mGPU || 1.2 || || || 1200 || 16 || 128 MB shared memory, "poclbm -w 128 -f 0"
|-
| 8400 GS || 2.3 || || ||  ||  || "poclbm -w 128"
|-
|}'''
rows = wikitable.split('|-')
header = []
table = []
for i in rows:
     line = i.strip()
     if line.startswith('!'):
         header = line.split('!!')
     elif line.startswith('|') and line.strip() != '|}':
         table.append(line[2:].split('||'))

data = {}
for i in range(len(header) - 1):
    col = []
    for row in table:
        col.append(row[i])
    data[header[i]] = col

print(data)

df = DataFrame(data)
share|improve this answer
    
Ok, I just looked at the Panda docs (should have done that first), and I see exactly what you need now. Give me five minutes and I'll have a perfect example. –  pycoder112358 Mar 30 '13 at 23:27

Use re to do some preprocess, and then use read_csv to convert it to a DataFrame:

table = """{| class="wikitable sortable"
|-
! Model !! Mhash/s !! Mhash/J !! Watts !! Clock !! SP !! Comment
|-
| ION || 1.8 || 0.067 || 27 ||  || 16 || poclbm;  power consumption incl. CPU
|-
| 8200 mGPU || 1.2 || || || 1200 || 16 || 128 MB shared memory, "poclbm -w 128 -f 0"
|-
| 8400 GS || 2.3 || || ||  ||  || "poclbm -w 128"
|-
|}"""

data = StringIO(re.sub("^\|.|^!.", "", table.replace("|-\n", ""), flags=re.MULTILINE))
df = pd.read_csv(data, delimiter="\|\||!!", skiprows=1)

output:

       Model    Mhash/s   Mhash/J   Watts   Clock    SP                                       Comment
0        ION         1.8    0.067      27            16          poclbm;  power consumption incl. CPU
1  8200 mGPU         1.2                     1200    16    128 MB shared memory, "poclbm -w 128 -f 0"
2    8400 GS         2.3                                                              "poclbm -w 128"
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