python pandas 处理相同标题的csv文件,Python Pandas:读取具有多个表的CSV重复的序言...

Is there a pythonic way to figure out which rows in a CSV file contain headers and values and which rows contain trash and then get the headers/values rows into data frames?

I'm relatively new to python and have been using it to read multiple CSVs exported from a scientific instrument's datalog, and when dealing with CSVs so far for other tasks I've always defaulted to using the pandas library. However, these CSV exports can vary depending on the number of "tests" logged on each instrument.

The column headers and data structure are the same between instruments, but there is a "preamble" separating each test that can change. So I end up with backups that look something like this (for this example there are two tests, but there could be potentially any number of tests):

blah blah here's a test and

here's some information

you don't care about

even a little bit

header1, header2, header3

1, 2, 3

4, 5, 6

oh you have another test

here's some more garbage

that's different than the last one

this should make

life interesting

header1, header2, header3

7, 8, 9

10, 11, 12

13, 14, 15

If it was a fixed length preamble each time I'd just use the skiprow parameter, but the preamble is variable length and the number of rows in each test is of variable length.

My end goal is to be able to merge all the tests and end up with something like:

header1, header2, header3

1, 2, 3

4, 5, 6

7, 8, 9

10, 11, 12

13, 14, 15

Which I can then manipulate with pandas as usual.

I've tried the following to find the first row with my expected headers:

import csv

import pandas as pd

with open('my_file.csv', 'rb') as input_file:

for row_num, row in enumerate(csv.reader(input_file, delimiter=',')):

# The CSV module will return a blank list []

# so added the len(row)>0 so it doesn't error out

# later when searching for a string

if len(row) > 0:

# There's probably a better way to find it, but I just convert

# the list to a string then search for the expected header

if "['header1', 'header2', 'header3']" in str(row):

header_row = row_num

df = pd.read_csv('my_file.csv', skiprows = header_row, header=0)

print df

This works if I only have one test because it finds the first row that has the headers, but of course the header_row variable is getting updated each additional time it finds the header, so in the example above I end up with output:

header1 header2 header3

0 7 8 9

1 10 11 12

2 13 14 15

I'm getting lost figuring out how to append each instance of the header/dataset to a dataframe before continuing on to searching for the next instance of the header/dataset.

And it's probably not super efficient when dealing with a large number of files to have to open it once with the csv module then again with pandas.

解决方案

This program might help. It is essentially a wrapper around the csv.reader() object, which wrapper greps the good data out.

import pandas as pd

import csv

import sys

def ignore_comments(fp, start_fn, end_fn, keep_initial):

state = 'keep' if keep_initial else 'start'

for line in fp:

if state == 'start' and start_fn(line):

state = 'keep'

yield line

elif state == 'keep':

if end_fn(line):

state = 'drop'

else:

yield line

elif state == 'drop':

if start_fn(line):

state = 'keep'

if __name__ == "__main__":

df = open('x.in')

df = csv.reader(df, skipinitialspace=True)

df = ignore_comments(

df,

lambda x: x == ['header1', 'header2', 'header3'],

lambda x: x == [],

False)

df = pd.read_csv(df, engine='python')

print df

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