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Best practice for operations on streams of text

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James

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May 7, 2009, 3:59:50 PM5/7/09
to
Hello all,
I'm working on some NLP code - what I'm doing is passing a large
number of tokens through a number of filtering / processing steps.

The filters take a token as input, and may or may not yield a token as
a result. For example, I might have filters which lowercases the
input, filter out boring words and filter out duplicates chained
together.

I originally had code like this:
for t0 in token_stream:
for t1 in lowercase_token(t0):
for t2 in remove_boring(t1):
for t3 in remove_dupes(t2):
yield t3

Apart from being ugly as sin, I only get one token out as
StopIteration is raised before the whole token stream is consumed.

Any suggestions on an elegant way to chain together a bunch of
generators, with processing steps in between?

Thanks,
James

J Kenneth King

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May 7, 2009, 4:06:43 PM5/7/09
to
James <rent.lu...@gmail.com> writes:

Co-routines my friends. Google will help you greatly in discovering
this processing wonder.

Gary Herron

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May 7, 2009, 4:23:57 PM5/7/09
to James, pytho...@python.org
> --
> http://mail.python.org/mailman/listinfo/python-list
>

David Beazly has a very interesting talk on using generators for
building and linking together individual stream filters. Its very cool
and surprisingly eye-opening.

See "Generator Tricks for Systems Programmers" at
http://www.dabeaz.com/generators/

Gary Herron


MRAB

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May 7, 2009, 5:07:42 PM5/7/09
to pytho...@python.org
What you should be doing is letting the filters accept an iterator and
yield values on demand:

def lowercase_token(stream):
for t in stream:
yield t.lower()

def remove_boring(stream):
for t in stream:
if t not in boring:
yield t

def remove_dupes(stream):
seen = set()
for t in stream:
if t not in seen:
yield t
seen.add(t)

def compound_filter(token_stream):
stream = lowercase_token(token_stream)
stream = remove_boring(stream)
stream = remove_dupes(stream)
for t in stream(t):
yield t

Terry Reedy

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May 7, 2009, 6:32:25 PM5/7/09
to pytho...@python.org
MRAB wrote:

> James wrote:
>> Hello all,
>> I'm working on some NLP code - what I'm doing is passing a large
>> number of tokens through a number of filtering / processing steps.
>>
>> The filters take a token as input, and may or may not yield a token as
>> a result. For example, I might have filters which lowercases the
>> input, filter out boring words and filter out duplicates chained
>> together.
>>
>> I originally had code like this:
>> for t0 in token_stream:
>> for t1 in lowercase_token(t0):
>> for t2 in remove_boring(t1):
>> for t3 in remove_dupes(t2):
>> yield t3

For that to work at all, the three functions would have to turn each
token into an iterable of 0 or 1 tokens. Hence the inner 'loops' would
execute 0 or 1 times. Better to return a token or None, and replace the
three inner 'loops' with three conditional statements (ugly too) or less
efficiently (due to lack of short circuiting),

t = remove_dupes(remove_boring(lowercase_token(t0)))
if t is not None: yield t

>> Apart from being ugly as sin, I only get one token out as
>> StopIteration is raised before the whole token stream is consumed.

That puzzles me. Your actual code must be slightly different from the
above and what I imagine the functions to be. But nevermind, because

>> Any suggestions on an elegant way to chain together a bunch of
>> generators, with processing steps in between?

MRAB's suggestion is the way to go. Your automatically get
short-circuiting because each generator only gets what is passed on.
And resuming a generator is much faster that re-calling a function.

> What you should be doing is letting the filters accept an iterator and
> yield values on demand:
>
> def lowercase_token(stream):
> for t in stream:
> yield t.lower()
>
> def remove_boring(stream):
> for t in stream:
> if t not in boring:
> yield t
>
> def remove_dupes(stream):
> seen = set()
> for t in stream:
> if t not in seen:
> yield t
> seen.add(t)
>
> def compound_filter(token_stream):
> stream = lowercase_token(token_stream)
> stream = remove_boring(stream)
> stream = remove_dupes(stream)
> for t in stream(t):
> yield t

I also recommend the Beazly reference Herron gave.

tjr

Beni Cherniavsky

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May 17, 2009, 6:59:00 AM5/17/09
to
On May 8, 12:07 am, MRAB <goo...@mrabarnett.plus.com> wrote:
> def compound_filter(token_stream):
>      stream = lowercase_token(token_stream)
>      stream = remove_boring(stream)
>      stream = remove_dupes(stream)
>      for t in stream(t):
>          yield t

The last loop is superfluous. You can just do::

def compound_filter(token_stream):
stream = lowercase_token(token_stream)
stream = remove_boring(stream)
stream = remove_dupes(stream)

return stream

which is simpler and slightly more efficient. This works because from
the caller's perspective, a generator is just a function that returns
an iterator. It doesn't matter whether it implements the iterator
itself by containing ``yield`` statements, or shamelessly passes on an
iterator implemented elsewhere.

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