98

I am asking Python to print the minimum number from a column of CSV data, but the top row is the column number, and I don't want Python to take the top row into account. How can I make sure Python ignores the first line?

This is the code so far:

import csv

with open('all16.csv', 'rb') as inf:
    incsv = csv.reader(inf)
    column = 1                
    datatype = float          
    data = (datatype(column) for row in incsv)   
    least_value = min(data)

print least_value

Could you also explain what you are doing, not just give the code? I am very very new to Python and would like to make sure I understand everything.

  • 5
    Are you aware that you're just creating a generator that returns a 1.0 for each line in your file and then taking the minimum, which is going to be 1.0? – Wooble Jul 5 '12 at 17:24
  • @Wooble Technically, it's a big generator of 1.0. :) – Dougal Jul 5 '12 at 17:26
  • @Dougal: comment fixed. – Wooble Jul 5 '12 at 17:27
  • @Wooble good catch - ...datatype(row[column]... is what I guess the OP is trying to achieve though – Jon Clements Jul 5 '12 at 17:36
  • i had someone write up that code for me and didnt catch that, so thanks haha! – user1496646 Jul 5 '12 at 18:41

14 Answers 14

99

You could use an instance of the csv module's Sniffer class to deduce the format of a CSV file and detect whether a header row is present along with the built-in next() function to skip over the first row only when necessary:

import csv

with open('all16.csv', 'r', newline='') as file:
    has_header = csv.Sniffer().has_header(file.read(1024))
    file.seek(0)  # Rewind.
    reader = csv.reader(file)
    if has_header:
        next(reader)  # Skip header row.
    column = 1
    datatype = float
    data = (datatype(row[column]) for row in reader)
    least_value = min(data)

    print(least_value)

Since datatype and column are hardcoded in your example, it would be slightly faster to process the row like this:

    data = (float(row[1]) for row in reader)

Note: the code above is for Python 3.x. For Python 2.x use the following line to open the file instead of what is shown:

with open('all16.csv', 'rb') as file:
  • 1
    Instead of has_header(file.read(1024)), does it make sense to write has_header(file.readline()) ? I see that a lot, but I don't understand how has_reader() could detect whether or not there's a header from a single line of the CSV file... – Anto Jan 12 '18 at 17:40
  • 1
    @Anto: The code in my answer is based on the "example for Sniffer use" in the documentation, so I assume it's the prescribed way to do it. I agree that doing it on the basis of one line of data doesn't seem like it would always be enough data to make such a determination—but I have no idea since how the Sniffer works isn't described. FWIW I've never seen has_header(file.readline()) being used and even if it worked most of time, I would be highly suspicious of the approach for the reasons stated. – martineau Jan 12 '18 at 18:40
  • Thanks for your input. Nevertheless it seems that using file.read(1024) generates errors in python's csv lib: . See also here for instance. – Anto Jan 15 '18 at 19:58
  • @Anto: I've never encountered such an error—1024 bytes is not a lot of memory after all—nor has it been a problem for many other folks based on the up-votes this answer has received (as well as the thousands of of people who have read and followed the documentation). For those reasons I strongly suspect something else is causing your issue. – martineau Jan 15 '18 at 20:03
  • I ran into this exact same error as soon as I switched from readline() to read(1024). So far I've only managed to find people who have switched to readline to solve the csv.dialect issue. – Anto Jan 15 '18 at 20:35
59

To skip the first line just call:

next(inf)

Files in Python are iterators over lines.

20

You would normally use next(incsv) which advances the iterator one row, so you skip the header. The other (say you wanted to skip 30 rows) would be:

from itertools import islice
for row in islice(incsv, 30, None):
    # process
19

In a similar use case I had to skip annoying lines before the line with my actual column names. This solution worked nicely. Read the file first, then pass the list to csv.DictReader.

with open('all16.csv') as tmp:
    # Skip first line (if any)
    next(tmp, None)

    # {line_num: row}
    data = dict(enumerate(csv.DictReader(tmp)))
  • Thanks Veedrac. Happy to learn here, can you suggest edits that would solve the problems you cite? My solution gets the job done, but it looks like it could be further improved? – Maarten May 27 '15 at 14:25
  • 1
    I gave you an edit that replaces the code with something that should be identical (untested). Feel free to revert if it's not in line with what you mean. I'm still not sure why you're making the data dictionary, nor does this answer really add anything over the accepted one. – Veedrac May 27 '15 at 14:42
  • Thanks Veedrac! That looks very efficient indeed. I posted my answer because the accepted one was not working for me (can't remember the reason now). What would be the problem with defining data = dict() and then immediately filling it (as compared to your suggestion)? – Maarten May 28 '15 at 18:33
  • 1
    It's not wrong to do data = dict() and fill it in, but it's inefficient and not idiomatic. Plus, one should use dict literals ({}) and enumerate even then. – Veedrac May 28 '15 at 19:46
  • 1
    FWIW, you should reply to my posts with @Veedrac if you want to be sure I'm notified, although Stack Overflow seems to be able to guess from the username along. (I don't write @Maarten because the answerer will be notified by default.) – Veedrac May 28 '15 at 19:46
13

Borrowed from python cookbook,
A more concise template code might look like this:

import csv
with open('stocks.csv') as f:
    f_csv = csv.reader(f) 
    headers = next(f_csv) 
    for row in f_csv:
        # Process row ...
6

use csv.DictReader instead of csv.Reader. If the fieldnames parameter is omitted, the values in the first row of the csvfile will be used as field names. you would then be able to access field values using row["1"] etc

2

The new 'pandas' package might be more relevant than 'csv'. The code below will read a CSV file, by default interpreting the first line as the column header and find the minimum across columns.

import pandas as pd

data = pd.read_csv('all16.csv')
data.min()
  • and you can write it in one line too: pd.read_csv('all16.csv').min() – Finn Årup Nielsen Aug 28 '14 at 15:46
1

Well, my mini wrapper library would do the job as well.

>>> import pyexcel as pe
>>> data = pe.load('all16.csv', name_columns_by_row=0)
>>> min(data.column[1])

Meanwhile, if you know what header column index one is, for example "Column 1", you can do this instead:

>>> min(data.column["Column 1"])
1

For me the easiest way to go is to use range.

import csv

with open('files/filename.csv') as I:
    reader = csv.reader(I)
    fulllist = list(reader)

# Starting with data skipping header
for item in range(1, len(fulllist)): 
    # Print each row using "item" as the index value
    print (fulllist[item])  
1

The documentation for the Python 3 CSV module provides this example:

with open('example.csv', newline='') as csvfile:
    dialect = csv.Sniffer().sniff(csvfile.read(1024))
    csvfile.seek(0)
    reader = csv.reader(csvfile, dialect)
    # ... process CSV file contents here ...

The Sniffer will try to auto-detect many things about the CSV file. You need to explicitly call its has_header() method to determine whether the file has a header line. If it does, then skip the first row when iterating the CSV rows. You can do it like this:

if sniffer.has_header():
    for header_row in reader:
        break
for data_row in reader:
    # do something with the row
0

I would use tail to get rid of the unwanted first line:

tail -n +2 $INFIL | whatever_script.py 
0

just add [1:]

example below:

data = pd.read_csv("/Users/xyz/Desktop/xyxData/xyz.csv", sep=',', header=None)**[1:]**

that works for me in iPython

0

Python 3.X

Handles UTF8 BOM + HEADER

It was quite frustrating that the csv module could not easily get the header, there is also a bug with the UTF-8 BOM (first char in file). This works for me using only the csv module:

import csv

def read_csv(self, csv_path, delimiter):
    with open(csv_path, newline='', encoding='utf-8') as f:
        # https://bugs.python.org/issue7185
        # Remove UTF8 BOM.
        txt = f.read()[1:]

    # Remove header line.
    header = txt.splitlines()[:1]
    lines = txt.splitlines()[1:]

    # Convert to list.
    csv_rows = list(csv.reader(lines, delimiter=delimiter))

    for row in csv_rows:
        value = row[INDEX_HERE]
0

Because this is related to something I was doing, I'll share here.

What if we're not sure if there's a header and you also don't feel like importing sniffer and other things?

If your task is basic, such as printing or appending to a list or array, you could just use an if statement:

# Let's say there's 4 columns
with open('file.csv') as csvfile:
     csvreader = csv.reader(csvfile)
# read first line
     first_line = next(csvreader)
# My headers were just text. You can use any suitable conditional here
     if len(first_line) == 4:
          array.append(first_line)
# Now we'll just iterate over everything else as usual:
     for row in csvreader:
          array.append(row)

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