Groups | Search | Server Info | Keyboard shortcuts | Login | Register [http] [https] [nntp] [nntps]
Groups > comp.lang.python > #75349 > unrolled thread
| Started by | Ryan de Vera <ryan.devera.03@gmail.com> |
|---|---|
| First post | 2014-07-29 09:08 -0400 |
| Last post | 2014-07-30 10:16 +0200 |
| Articles | 3 — 3 participants |
Back to article view | Back to comp.lang.python
This discussion starts older than the indexed window; earlier articles aren't shown. The article labeled Started by
below is the oldest one visible, not the original post.
Re: Load a CSV with different row lengths Ryan de Vera <ryan.devera.03@gmail.com> - 2014-07-29 09:08 -0400
Re: Load a CSV with different row lengths Miki Tebeka <miki.tebeka@gmail.com> - 2014-07-29 22:00 -0700
Re: Load a CSV with different row lengths Peter Otten <__peter__@web.de> - 2014-07-30 10:16 +0200
| From | Ryan de Vera <ryan.devera.03@gmail.com> |
|---|---|
| Date | 2014-07-29 09:08 -0400 |
| Subject | Re: Load a CSV with different row lengths |
| Message-ID | <mailman.12416.1406639326.18130.python-list@python.org> |
[Multipart message — attachments visible in raw view] — view raw
Hey skip, I should've mentioned that I want to import my csv as a data frame or numpy array or as a table. Best regards, Ryan On Tue, Jul 29, 2014 at 6:29 AM, Skip Montanaro <skip@pobox.com> wrote: > > How can I load this into python? I tried using both NumPy and Pandas. > > To add to Peter's response, I would be very surprised if numpy or > Pandas couldn't be coaxed into loading your CSV file, but you didn't > provide any details about what you expected and what you got. I've > used Pandas to read CSV files a lot recently, and run into any > trouble. (I suspect all but a few have equal length rows, but in cases > where data are missing, I've found it generally inserts NaNs.) > > In general, you'll get more useful feedback with more complete > questions. I'm not saying you need to necessarily provide code, but a > traceback or unexpected output would be helpful. > > Skip >
[toc] | [next] | [standalone]
| From | Miki Tebeka <miki.tebeka@gmail.com> |
|---|---|
| Date | 2014-07-29 22:00 -0700 |
| Message-ID | <b0b596fc-1e4c-49da-80e6-7095edef9ceb@googlegroups.com> |
| In reply to | #75349 |
Greetings,
> I should've mentioned that I want to import my csv as a data frame or numpy array or as a table.
If you know the max length of a row, then you can do something like:
def gen_rows(stream, max_length):
for row in csv.reader(stream):
yield row + ([None] * (max_length - len(line))
max_length = 10
with open('data.csv') as fo:
df = pd.DataFrame.from_records(gen_rows(fo, max_length))
HTH,
Miki
[toc] | [prev] | [next] | [standalone]
| From | Peter Otten <__peter__@web.de> |
|---|---|
| Date | 2014-07-30 10:16 +0200 |
| Message-ID | <mailman.12424.1406708223.18130.python-list@python.org> |
| In reply to | #75358 |
Miki Tebeka wrote:
> Greetings,
>
>> I should've mentioned that I want to import my csv as a data frame or
>> numpy array or as a table.
> If you know the max length of a row, then you can do something like:
> def gen_rows(stream, max_length):
> for row in csv.reader(stream):
> yield row + ([None] * (max_length - len(line))
>
> max_length = 10
> with open('data.csv') as fo:
> df = pd.DataFrame.from_records(gen_rows(fo, max_length))
With the help of the search engine that must not be named and some trial and
error I also found a way to use pandas.read_csv():
$ cat data.csv
a,b
a,b,c,d
a,b,c
$ python3
Python 3.3.2+ (default, Feb 28 2014, 00:52:16)
[GCC 4.8.1] on linux
Type "help", "copyright", "credits" or "license" for more information.
>>> import pandas
>>> pandas.read_csv("data.csv", names=list(range(4)))
0 1 2 3
0 a b NaN NaN
1 a b c d
2 a b c NaN
And if the maximum row length is not known here's a modification of Miki's
recipe:
def gen_rows(stream, max_length=None):
rows = csv.reader(stream)
if max_length is None:
rows = list(rows)
max_length = max(len(row) for row in rows)
for row in rows:
yield row + [None] * (max_length - len(row))
with open('data.csv') as f:
df = pd.DataFrame.from_records(list(gen_rows(f))) # my version of pandas
# does not accept a
# generator
[toc] | [prev] | [standalone]
Back to top | Article view | comp.lang.python
csiph-web