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scrapy_model 0.1.4

Scrapy helper to create scrapers from models

Latest Version: 0.1.5

Create scraper using Scrapy Selectors


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## What is Scrapy?

Scrapy is a fast high-level screen scraping and web crawling framework, used to crawl websites and extract structured data from their pages. It can be used for a wide range of purposes, from data mining to monitoring and automated testing.

## What is scrapy_model ?

It is just a helper to create scrapers using the Scrapy Selectors allowing you to select elements by CSS or by XPATH and structuring your scraper via Models (just like an ORM model) and plugable to an ORM model via ``populate`` method.

Import the BaseFetcherModel, CSSField or XPathField (you can use both)

from scrapy_model import BaseFetcherModel, CSSField

Go to a webpage you want to scrap and use chrome dev tools or firebug to figure out the css paths then considering you want to get the following fragment from some page.

<span id="person">Bruno Rocha <a href="">website</a></span>

class MyFetcher(BaseFetcherModel):
name = CSSField('span#person')
website = CSSField('span#person a')
# XPathField('//xpath_selector_here')

Fields can receive ``auto_extract=True`` parameter which auto extracts values from selector before calling the parse or processors. Also you can pass the ``takes_first=True`` which will for auto_extract and also tries to get the first element of the result, because scrapy selectors returns a list of matched elements.

Every method named ``parse_<field>`` will run after all the fields are fetched for each field.

def parse_name(self, selector):
# here selector is the scrapy selector for 'span#person'
name = selector.css('::text').extract()
return name

def parse_website(self, selector):
# here selector is the scrapy selector for 'span#person a'
website_url = selector.css('::attr(href)').extract()
return website_url


after defined need to run the scraper


fetcher = Myfetcher(url='http://.....') # optionally you can use cached_fetch=True to cache requests on redis

Now you can iterate ``_data``, ``_raw_data`` and atributes in fetcher

<cssfield -="" name="" -="" bruno="" rocha="">
Bruno Rocha
>>> fetcher._data
{"name": "Bruno Rocha", "website": ""}

You can populate some object

>>> obj = MyObject()
>>> fetcher.populate(obj) # fields optional

Bruno Rocha

If you do not want to define each field explicitly in the class, you can use a json file to automate the process

class MyFetcher(BaseFetcherModel):
""" will load from json """

fetcher = MyFetcher(url='http://.....')

In that case file.json should be

"name": {"css", "span#person"},
"website": {"css": "span#person a"}

You can use ``{"xpath": "..."}`` in case you prefer select by xpath

### parse and processor

There are 2 ways of transforming or normalizing the data for each field

#### Processors

A processor is a function, or a list of functions which will be called in the given sequence against the field value, it receives the raw_selector or the value depending on auto_extract and takes_first arguments.

It can be used for Normalization, Clean, Transformation etc..



def normalize_state(state_name):
# query my database and return the first instance of state object
return MyDatabase.State.Search(name=state_name).first()

def text_cleanup(state_name):
return state_name.strip().replace('-', '').lower()

class MyFetcher(BaseFetcherModel):
state = CSSField(
processor=[text_cleanup, normalize_state]

fetcher = MyFetcher(url="http://....")

<orm instance="" -="" state="" -="" são="" paulo="">

#### Parse methods

any method called ``parse_<field_name>`` will run after all the process of selecting and parsing, it receives the selector or the value depending on auto_extract and takes_first argument in that field.


def parse_name(self, selector):
return selector.css('::text').extract()[0].upper()

In the above case, the name field returns the raw_selector and in the parse method we can build extra queries using ``css`` or ``xpath`` and also we need to extract() the values from the selector and optionally select the first element and apply any transformation we need.

### Caching the html fetch

In order to cache the html returned by the url fetching for future parsing and tests you specify a cache model, by default there is no cache but you can use the built in RedisCache passing

from scrapy_model import RedisCache
fetcher = TestFetcher(cache_fetch=True,

or specifying arguments to the Redis client.

> it is a general Redis connection from python ``redis`` module

fetcher = TestFetcher(cache_fetch=True,

You can create your own caching structure, e.g: to cache htmls in memcached or s3

the cache class just need to implement ``get`` and ``set`` methods.

from boto import connect_s3

class S3Cache(object):
def __init__(self, *args, **kwargs):
connection = connect_s3(ACCESS_KEY, SECRET_KEY)
self.bucket = connection.get_bucket(BUCKET_ID)

def get(self, key):
value = self.bucket.get_key(key)
return value.get_contents_as_string() if key else None

def set(self, key, value, expire=None):
self.bucket.set_contents(key, value, expire=expire)

fetcher = MyFetcher(url="http://...",


### Instalation

easy to install

If running ubuntu maybe you need to run:

sudo apt-get install python-scrapy
sudo apt-get install libffi-dev
sudo apt-get install python-dev


pip install scrapy_model


git clone
cd scrapy_model
pip install -r requirements.txt
python install

Example code to fetch the url

#coding: utf-8

from scrapy_model import BaseFetcherModel, CSSField, XPathField

class TestFetcher(BaseFetcherModel):
photo_url = XPathField('//*[@id="content"]/div[1]/table/tr[2]/td/a')

nationality = CSSField(
'#content > div:nth-child(1) > table > tr:nth-child(4) > td > a',

links = CSSField(
'#content > div:nth-child(11) > ul > li > a.external::attr(href)',

def parse_photo_url(self, selector):
return "{}".format(

def parse_nationality(self, selector):
return selector.css("::text").extract()[0]

def parse_name(self, selector):
return selector.extract()[0]

def post_parse(self):
# executed after all parsers
# you can load any data on to self._data
# access self._data and self._fields for current data
# self.selector contains original page
# self.fetch() returns original html
self._data.url = self.url

class DummyModel(object):
For tests only, it can be a model in your database ORM

if __name__ == "__main__":
from pprint import pprint

fetcher = TestFetcher(cache_fetch=True)
fetcher.url = ""

# Mappings can be loaded from a json file
# fetcher.load_mappings_from_file('path/to/file')
fetcher.mappings['name'] = {
"css": ("#section_0::text")


print "Fetcher holds the data"
print fetcher._data

# How to populate an object
print "Populating an object"
dummy = DummyModel()

fetcher.populate(dummy, fields=["name", "nationality"])
# fields attr is optional
print dummy.nationality


# outputs

Fetcher holds the data
Guido van Rossum
{'links': [u''
'name': u'Guido van Rossum',
'nationality': u'Dutch',
'photo_url': ''
'url': ''}
Populating an object
{'name': u'Guido van Rossum', 'nationality': u'Dutch'}
File Type Py Version Uploaded on Size
scrapy_model-0.1.4-py2.py3-none-any.whl (md5) Python Wheel 2.7 2014-05-23 11KB
scrapy_model-0.1.4.tar.gz (md5) Source 2014-05-23 9KB