Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

Recently started working with the scrapy library. I am trying to scrape from a web site that has slightly different tables for each kind of product they sell. Eventually, I will use the data to populate object attributes. For now, I just need to extract it to JSON format.

Here is an example table:

<table id="table_1">
<tr id="row_1">
    <td>cell_1</td>
    <td>cell_2</td>
    <td>cell_3</td>
</tr>
<tr id="row_2">
    <td>cell_4</td>
    <td>cell_5</td>
    <td>cell_6</td>
</tr>
<tr id="row_n">
    <td>cell_x</td>
    <td>cell_y</td>
    <td>cell_z</td>
</tr>
</table>

Each column represents a different item, ie, small medium or large t-shirts. There would be 3 items in the table above, so the Items would look like:

Item 1 {
    row_1:cell_1
    row_2:cell_4
    row_n:cell_x
}
Item 2 {
    row_1:cell_2
    row_2:cell_5
    row_n:cell_y
}
Item 3 {
    row_1:cell_3
    row_2:cell_6
    row_n:cell_z
}

They are well-structured tables with no 'missing' or 'extra' cells, although the number of rows and columns is arbitrary.

The difficulty I had was in using the scrapy Item object, as this requires my Item class to define the number of Fields before scraping, instead of on a per-table basis. I have hundreds of tables I want to perform this process on.

Thanks for reading this far, any help is appreciated. :)

RESOLUTION: @warawuk Thanks for your help. I used your suggestion, and ended up with a triple-nested list. Perhaps not ideal, but it is trivial enough to extract the values as I continue working with them:

{"tRows": 
    [[["row1"], ["cell1", "cell2"]]
    [["row2"], ["cell3", "cell4"]]
    [["row3"], ["cell5", "cell6"]]
    [["row4"], ["cell7", "cell8"]]] x100s of tables
}

To deal with the arbitrary number of rows, I used a regular expression to extract the ids from each row and count them. A simple loop using range(len(rowNames)), plus some string concatenation finished the job.

share|improve this question

1 Answer 1

up vote 1 down vote accepted

You have too many questions here, imo.

First of all, looks like your question is not about scrapy at all. It's about organizing your data and xpath.

I think you must split your task in subtasks. First subtask is to actually extract the data into a python data structure and then try to process it. From your info, i think the data will like:

{
    'table_1': {
        'row_1': ['cell_1', 'cell_2'],
        'row_2': ['cell_1', 'cell_2'],
        ...
    },
    'table_2': {
        'row_1': ['cell_1', 'cell_2', 'cell_3'],
        'row_2': ['cell_1', 'cell_2', 'cell_3'],
        ...
    },
}

Is this correct?


UPDATE:

The difficulty I had was in using the scrapy Item object, as this requires my Item class to define the number of Fields before scraping, instead of on a per-table basis. I have hundreds of tables I want to perform this process on.

AFAIK, Item Fields can store any Python object. Scrapy Item class is just a place where you store Fields, but scrapy does not treat these fields in a special way. It's just you who takes these Fields in a pipeline and interprets data in them.

So choose any store format that suites you. For example:

class Shirt(Item):
    available_sizes = Field() # [(size1, amount1), (size2, amount2), ...] or {size1: amount1, size2: amount2, ...} if `size` is a hashable object
share|improve this answer
    
Yes, that is correct. Getting the data into this form is the primary hurdle. Let's define subtask 1 as scraping the arbitrary number of rows per table and getting it into a format like this. Based on my knowledge of scrapy Items, it seems that I need to define the number of fields and their names ahead of time, when in this case, I want to determine those during the scrape. –  A--- Mar 19 '12 at 6:48
    
what do you want in Item instance to contain? –  warvariuc Mar 19 '12 at 6:55
    
The key:value pairs in each item should look like 'row_1':'cell_1', 'row_2':'cell_1', etc, for every row in the table. Each row could represent a Field. –  A--- Mar 21 '12 at 20:31
    
And what about cell_2, cell_3, and others? –  warvariuc Mar 22 '12 at 6:50
    
Thanks for replying. I see that I was having trouble communicating everything clearly. I edited my original post to clarify and narrow the scope of the question. Please take another look. –  A--- Mar 22 '12 at 16:58

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.