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I have a file in .ttl form. It has 4 attributes/columns containing quadruples of the following form:

 1. (id, student_name, student_address, student_phoneno). 
 2. (id, faculty_name, faculty_address, faculty_phoneno).

I know how to parse .n3 form triples with RDFLib. But I am not sure as to how to parse these quadruples.
My intent is to parse and extract all the information pertaining to a particular id. (The id can be same for both student and faculty).
Can anyone guide if there is any library similar to RDFLib which I can use to process these quadruples and use it for aggregation based on id...

Example Snippet from .ttl file:

#@ <id1>
<Alice> <USA> <12345>

#@ <id1>
<Jane> <France> <78900>
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Is the ttl referenced in the question the same as the one referenced by the tag? –  Snakes and Coffee Mar 2 '13 at 7:20
What is TTL form? –  Andreas Jung Mar 2 '13 at 7:20
I think its Turtle - Terse RDF Triple Language –  Abhijit Mar 2 '13 at 7:20
@Abhijit Yes you are correct. Turtle-Terse RDF Triple Language –  Keira Shaw Mar 2 '13 at 7:24
@KeiraShaw why not just regex? –  Snakes and Coffee Mar 2 '13 at 7:24

3 Answers 3

Turtle is a subset of Notation 3 syntax so rdflib should be able to parse it using format='n3'. Check whether rdflib preserves comments (ids are specified in the comments (#...) in your sample). If not and the input format is as simple as shown in your example then you could parse it manually:

import re
from collections import namedtuple
from itertools import takewhile

Entry = namedtuple('Entry', 'id name address phone')

def get_entries(path):
    with open(path) as file:
        # an entry starts with `#@` line and ends with a blank line
        for line in file:
            if line.startswith('#@'):
                buf = [line]
                buf.extend(takewhile(str.strip, file)) # read until blank line
                yield Entry(*re.findall(r'<([^>]+)>', ''.join(buf)))

print("\n".join(map(str, get_entries('example.ttl'))))


Entry(id='id1', name='Alice', address='USA', phone='12345')
Entry(id='id1', name='Jane', address='France', phone='78900')

To save entries to a db:

import sqlite3

with sqlite3.connect('example.db') as conn:
    conn.execute('''CREATE TABLE IF NOT EXISTS entries
             (id text, name text, address text, phone text)''')
    conn.executemany('INSERT INTO entries VALUES (?,?,?,?)',

To group by id if you need some postprocessing in Python:

import sqlite3
from itertools import groupby
from operator import itemgetter

with sqlite3.connect('example.db') as c:
    rows = c.execute('SELECT * FROM entries ORDER BY id LIMIT ?', (10,))
    for id, group in groupby(rows, key=itemgetter(0)):
        print("%s:\n\t%s" % (id, "\n\t".join(map(str, group))))


    ('id1', 'Alice', 'USA', '12345')
    ('id1', 'Jane', 'France', '78900')
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It seems there is currently no such library present to parse the Turtle - Terse RDF Triple Language

As you already know the grammar , your best bet is to use PyParsing to first create a grammar and then parse the file.

I would also suggest to adapt the following EBNF implementation for your need

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You can do as Snakes and Coffee suggests, only wrap that function (or its code) in a loop with yield statements. This creates a generator, which can be called iteratively to create the next line's dicts on the fly. Assuming you were going to write these to a csv, for instance, using Snakes' parse_to_dict:

import re
import csv

writer = csv.DictWriter(open(outfile, "wb"), fieldnames=["id", "name", "address", "phone"])
# or whatever

You can create a generator as a function or with an inline comprehension:

def dict_generator(lines): 
    for line in lines: 
        yield parse_to_dict(line)


dict_generator = (parse_to_dict(line) for line in lines)

These are pretty much equivalent. At this point you can get a dict-parsed line by calling dict_generator.next(), and you'll magically get one at a time- no additional RAM thrashing involved.

If you have 16 gigs of raw data, you might consider making a generator to pull the lines in, too. They're really useful.

More info on generators from SO and some docs: What can you use Python generator functions for? http://wiki.python.org/moin/Generators

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Snakes and coffee..parse_to_dict line is not there and I forgot what did that line intend to do –  Keira Shaw Mar 2 '13 at 8:09

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