James Douglass 82ae3ca507 Cleaning up DBF documentation
Fixing indentation issues (off by one space), which caused problems
with the sphinx rendering of the DBF docstring and otherwise cleaning
up the sphinx docstring.
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Tablib: format-agnostic tabular dataset library
===============================================

.. image:: https://travis-ci.org/kennethreitz/tablib.svg?branch=develop
    :target: https://travis-ci.org/kennethreitz/tablib

::

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	__  /_______ ____  /_ ___  /___(_)___  /_
	_  __/_  __ `/__  __ \__  / __  / __  __ \
	/ /_  / /_/ / _  /_/ /_  /  _  /  _  /_/ /
	\__/  \__,_/  /_.___/ /_/   /_/   /_.___/



Tablib is a format-agnostic tabular dataset library, written in Python.

Output formats supported:

- Excel (Sets + Books)
- JSON (Sets + Books)
- YAML (Sets + Books)
- HTML (Sets)
- TSV (Sets)
- CSV (Sets)
- DBF (Sets)

Note that tablib *purposefully* excludes XML support. It always will. (Note: This is a joke. Pull requests are welcome.)

Overview
--------

`tablib.Dataset()`
	A Dataset is a table of tabular data. It may or may not have a header row. They can be build and manipulated as raw Python datatypes (Lists of tuples|dictionaries). Datasets can be imported from JSON, YAML, DBF, and CSV; they can be exported to XLSX, XLS, ODS, JSON, YAML, DBF, CSV, TSV, and HTML.

`tablib.Databook()`
	A Databook is a set of Datasets. The most common form of a Databook is an Excel file with multiple spreadsheets. Databooks can be imported from JSON and YAML; they can be exported to XLSX, XLS, ODS, JSON, and YAML.

Usage
-----


Populate fresh data files: ::

    headers = ('first_name', 'last_name')

    data = [
        ('John', 'Adams'),
        ('George', 'Washington')
    ]

    data = tablib.Dataset(*data, headers=headers)


Intelligently add new rows: ::

    >>> data.append(('Henry', 'Ford'))

Intelligently add new columns: ::

    >>> data.append_col((90, 67, 83), header='age')

Slice rows:  ::

    >>> print data[:2]
    [('John', 'Adams', 90), ('George', 'Washington', 67)]


Slice columns by header: ::

    >>> print data['first_name']
    ['John', 'George', 'Henry']

Easily delete rows: ::

    >>> del data[1]

Exports
-------

Drumroll please...........

JSON!
+++++
::

	>>> print data.json
	[
	  {
	    "last_name": "Adams",
	    "age": 90,
	    "first_name": "John"
	  },
	  {
	    "last_name": "Ford",
	    "age": 83,
	    "first_name": "Henry"
	  }
	]


YAML!
+++++
::

	>>> print data.yaml
	- {age: 90, first_name: John, last_name: Adams}
	- {age: 83, first_name: Henry, last_name: Ford}

CSV...
++++++
::

	>>> print data.csv
	first_name,last_name,age
	John,Adams,90
	Henry,Ford,83

EXCEL!
++++++
::

	>>> with open('people.xls', 'wb') as f:
	...     f.write(data.xls)

DBF!
++++
::

    >>> with open('people.dbf', 'wb') as f:
    ...     f.write(data.dbf)

It's that easy.


Installation
------------

To install tablib, simply: ::

	$ pip install tablib

Or, if you absolutely must: ::

	$ easy_install tablib

Contribute
----------

If you'd like to contribute, simply fork `the repository`_, commit your
changes to the **develop** branch (or branch off of it), and send a pull
request. Make sure you add yourself to AUTHORS_.




.. _`the repository`: http://github.com/kennethreitz/tablib
.. _AUTHORS: http://github.com/kennethreitz/tablib/blob/master/AUTHORS
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