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I've create a tuple generator that extract information from a file filtering only the records of interest and converting it to a tuple that generator returns.

I've try to create a DataFrame from:

import pandas as pd
df = pd.DataFrame.from_records(tuple_generator, columns = tuple_fields_name_list)

but throws an error:

C:\Anaconda\envs\py33\lib\site-packages\pandas\core\ in from_records(cls, data, index, exclude, columns, coerce_float, nrows)
   1046                 values.append(row)
   1047                 i += 1
-> 1048                 if i >= nrows:
   1049                     break

TypeError: unorderable types: int() >= NoneType()

I managed it to work consuming the generator in a list, but uses twice memory:

df = pd.DataFrame.from_records(list(tuple_generator), columns = tuple_fields_name_list)

The files I want to load are big, and memory consumption matters. The last try my computer spends two hours trying to increment virtual memory :(

The question: Anyone knows a method to create a DataFrame from a record generator directly, without previously convert it to a list?

Note: I'm using python 3.3 and pandas 0.12 with Anaconda on Windows.


It's not problem of reading the file, my tuple generator do it well, it scan a text compressed file of intermixed records line by line and convert only the wanted data to the correct types, then it yields fields in a generator of tuples form. Some numbers, it scans 2111412 records on a 130MB gzip file, about 6.5GB uncompressed, in about a minute and with little memory used.

Pandas 0.12 does not allow generators, dev version allows it but put all the generator in a list and then convert to a frame. It's not efficient but it's something that have to deal internally pandas. Meanwhile I've must think about buy some more memory.

share|improve this question
The problem must be in tuple_generator, since the problem does not occur for simple generator expressions like tuple_generator = (item for item in [[1,2,3],[2,3,4,5]]). –  unutbu Sep 20 '13 at 11:58
@unutbu Not on pandas 0.12. On the development version it works correctly. –  Viktor Kerkez Sep 20 '13 at 12:02
@ViktorKerkez: Oh, I see. Thanks for the info. –  unutbu Sep 20 '13 at 12:05
It sounds like you might be experiencing thrashing, in which case you should consider adding more memory to your machine. –  Phillip Cloud Sep 20 '13 at 12:24

3 Answers 3

up vote 5 down vote accepted

You cannot create a DataFrame from a generator with the 0.12 version of pandas. You can either update yourself to the development version (get it from the github and compile it - which is a little bit painful on windows but I would prefer this option).

Or you can, since you said you are filtering the lines, first filter them, write them to a file and then load them using read_csv or something else...

If you want to get super complicated you can create a file like object that will return the lines:

def gen():
    lines = [
    for line in lines:
        yield line

class Reader(object):
    def __init__(self, g):
        self.g = g
    def read(self, n=0):
            return next(self.g)
        except StopIteration:
            return ''

And then use the read_csv:

>>> pd.read_csv(Reader(gen()))
  col1 col2
0  foo  bar
1  foo  baz
2  bar  baz
share|improve this answer
You are right, pandas 0.12 does not support generators. I've installed the dev version and DataFrame constructor allow generators but DataFrame.from_records() not. I've made a patch for it. –  tinproject Sep 21 '13 at 14:37
Latest developer builds: –  Paige Lo Oct 8 '13 at 17:29
@Viktor Kerkez : Quick question, if my generator function had list of lists in lines, but not consistently, say some objects could be lists-of-lists, and some could be simply lists,how would I gracefully change the "read" method, or should I handle it when I iterate over lines in gen() ? –  ekta Nov 10 '14 at 5:23
@Viktor kerkez : very basic question, but here's what I mean. If I define lines = [ ['col1,col2\n'], ['foo,bar\n'], ['foo,baz\n'], ['bar,baz\n'] ], then keeping the rest same, I see that the Python shell restarts. I also tried instantiating then object for Reader class as r=Reader(gen()) df=pd.read_csv(r) . This suggests to me that there's something very basic about the class(Object) type notation, that I don't understand. My assumption is that I should be allowed to create lists if I wanted so, inside of a df "column", but not shell-restart. –  ekta Nov 10 '14 at 5:43
@ekta read_csv function can parse only "pure" CSV files which cant contain lists. If you want lists in your data frame columns you'll have to use something else... Either parse json or do it manually. –  Viktor Kerkez Nov 10 '14 at 11:56

To get it to be memory efficient, read in chunks. Something like this, using Viktor's Reader class from above.

df = pd.concat(list(pd.read_csv(Reader(gen()),chunksize=10000)),axis=1)
share|improve this answer

You can also use something like (Python tested in 2.7.5)

from itertools import izip

def dataframe_from_row_iterator(row_iterator, colnames):
    col_iterator = izip(*row_iterator)
    return pd.DataFrame({cn: cv for (cn, cv) in izip(colnames, col_iterator)})

You can also adapt this to append rows to a DataFrame.

-- Edit, Dec 4th: s/row/rows in last line

share|improve this answer
This has the same problem as presented in the question, it is infeasible to materialize the whole of the data as anything other than a dataframe or numpy array or some other packed form. Here you materialize it as a dict. –  U2EF1 Nov 27 '13 at 21:55
Agreed, it does materialize the data as a dict. However, you don't have to materialize all of it at once; just consume part of the generator, then append the data to a DataFrame in chunks. Just use itertools.islice to get the chunks from the generator/row_iterator. –  Guilherme Freitas Dec 5 '13 at 0:06

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