I am trying to create a dictionary from a csv file. The first column of the csv file contains unique keys and the second column contains values. Each row of the csv file represents a unique key, value pair within the dictionary. I tried to use the csv.DictReader and csv.DictWriter classes, but I could only figure out how to generate a new dictionary for each row. I want one dictionary. Here is the code I am trying to use:

import csv

with open('coors.csv', mode='r') as infile:
    reader = csv.reader(infile)
    with open('coors_new.csv', mode='w') as outfile:
    writer = csv.writer(outfile)
    for rows in reader:
        k = rows[0]
        v = rows[1]
        mydict = {k:v for k, v in rows}

When I run the above code I get a ValueError: too many values to unpack (expected 2). How do I create one dictionary from a csv file? Thanks.

  • 3
    Can you give an example of an input file and the resulting data structure?
    – robert
    Commented Jul 19, 2011 at 0:13
  • 1
    When you iterate over csv.reader, you get single row, not rows. So, valid form is mydict = {k:v for k,v in reader} but if you are sure, that there are only two columns in the csv file, then mydict = dict(reader) is much faster. Commented Jul 19, 2011 at 0:47
  • Please be aware that storing dictionary / key-value data in CSV files is not without issues (such as dealing with mixed-types columns). JSON format could represent this type of data much better IMO.
    – mirekphd
    Commented Aug 12, 2022 at 8:38

19 Answers 19


I believe the syntax you were looking for is as follows:

import csv

with open('coors.csv', mode='r') as infile:
    reader = csv.reader(infile)
    with open('coors_new.csv', mode='w') as outfile:
        writer = csv.writer(outfile)
        mydict = {rows[0]:rows[1] for rows in reader}

Alternately, for python <= 2.7.1, you want:

mydict = dict((rows[0],rows[1]) for rows in reader)
  • 2
    Good to account for rows longer than expected; but shouldn't he be raising his own exception if there are too many items in a row? I would think that would mean there's an error with his input data. Commented Jul 19, 2011 at 1:22
  • 1
    And then he'd at least be able to narrow the exception down to faulty input Commented Jul 19, 2011 at 1:24
  • That has some merit, but I'm a firm believer that exceptions are there to tell you that you programmed something incorrectly - not for when the world gives you lemons. That's when you print a pretty error message and fail, or - more appropriate for this case - a pretty warning message and succeed.
    – Nate
    Commented Jul 19, 2011 at 1:25
  • Sorry, looked at op's code, hard to tell if he wanted only 2 items per line. I was wrong! Commented Jul 19, 2011 at 1:30
  • 3
    I had multiple lines in csv but it gave only 1 key:value pair Commented Jul 31, 2019 at 7:02

Open the file by calling open and then using csv.DictReader.

input_file = csv.DictReader(open("coors.csv"))

You may iterate over the rows of the csv file dict reader object by iterating over input_file.

for row in input_file:

OR To access first line only

dictobj = csv.DictReader(open('coors.csv')).next() 

UPDATE In python 3+ versions, this code would change a little:

reader = csv.DictReader(open('coors.csv'))
dictobj = next(reader) 
  • 13
    This makes DictReader object not a dictionary(and yes not a key value pair)
    – HN Singh
    Commented Nov 10, 2018 at 17:52
  • 3
    @HN Singh - Yeah, I know - intention was it will help some one else as well Commented Nov 14, 2018 at 6:34
  • 1
    'DictReader' object has no attribute 'next' Commented May 28, 2019 at 20:36
  • 3
    @Palak - it was answered for Python 2.7, try next(dictobj) instead of dictobj.next() in Python 3+ versions. Commented May 29, 2019 at 21:52
  • 1
    In Python 3+ this also works: dictobj = reader.__next__()
    – Jose R
    Commented Jun 8, 2022 at 3:27
import csv
reader = csv.reader(open('filename.csv', 'r'))
d = {}
for row in reader:
   k, v = row
   d[k] = v
  • 61
    @Alex Laskin: Really? It looks like some pretty readable python to me. What's your principle to back this statement up? You basically just called him "poopy head"... Commented Jul 19, 2011 at 1:17
  • 38
    @machine-yearning, no, I didn't say that his code is 'bad'. But there is no a single reason to write for row in reader: k, v = row if you can simply write for k, v in reader, for example. And if you expect, that reader is an iterable, producing two-element items, then you can simply pass it directly to dict for conversion. d = dict(reader) is much shorter and significantly faster on huge datasets. Commented Jul 19, 2011 at 1:44
  • 59
    @Alex Laskin: Thanks for the clarification. I personally agreed with you but I think that if you're gonna call someone's code "non-pythonic" you should accompany that comment with a justification. I'd say that "shorter" and "faster" are not necessarily equivalent to "more pythonic". Readability/reliability is a huge concern as well. If it's easier to work in some of our constraints into the above for row in reader paradigm, then it might (after longer-term development) be more practical. I agree with you short-term, but beware of premature optimization. Commented Jul 19, 2011 at 5:32
  • 2
    @robert : Thanks dude! Really helped. Other codes are too difficult to read.
    – Ash
    Commented Oct 22, 2020 at 17:13

This isn't elegant but a one line solution using pandas.

import pandas as pd
pd.read_csv('coors.csv', header=None, index_col=0, squeeze=True).to_dict()

If you want to specify dtype for your index (it can't be specified in read_csv if you use the index_col argument because of a bug):

import pandas as pd
pd.read_csv('coors.csv', header=None, dtype={0: str}).set_index(0).squeeze().to_dict()
  • 6
    in my book this is the best answer
    – boardtc
    Commented Apr 12, 2019 at 22:09
  • 1
    And if there is a header...?
    – ndtreviv
    Commented May 30, 2019 at 9:59
  • 2
    @ndtreviv you can use skiprows for ignoring headers. Commented Jun 12, 2019 at 7:30

You have to just convert csv.reader to dict:

~ >> cat > 1.csv
key1, value1
key2, value2
key2, value22
key3, value3

~ >> cat > d.py
import csv
with open('1.csv') as f:
    d = dict(filter(None, csv.reader(f)))


~ >> python d.py
{'key3': ' value3', 'key2': ' value22', 'key1': ' value1'}
  • 9
    that solution is tidy, and will work great if he can be sure that his inputs will never have three or more columns in some row. However, if that is ever encountered, an exception somewhat like this will be raised: ValueError: dictionary update sequence element #2 has length 3; 2 is required.
    – Nate
    Commented Jul 19, 2011 at 1:17
  • @machine, judging from the error in the question, the csv file has more than 2 columns Commented Jul 19, 2011 at 1:22
  • @gnibbler, no, error in the question is due to double unpacking of row. First he try to iterate over reader, obtaining rows which is actually single row. And when he try to iterate over this single row, he get two items, which can't be unpacked correctly. Commented Jul 19, 2011 at 1:51
  • A general comment: making objects held in memory from iterables can cause a memory problem. Suggest checking your memory space and the size of the iterable source file. A main advantage (the whole point?) of iterables is to not hold large things in memory. Commented Mar 4, 2016 at 19:29
  • @Nate: That can be fixed if necessary by wrapping the filter call with map(operator.itemgetter(slice(2)), ...), so it will only pull the first two iterms, making it: dict(map(operator.itemgetter(slice(2)), filter(None, csv.reader(f)))). If it's Python 2, make sure to do from future_builtins import map, filter, so the dict reads a generator directly, instead of producing multiple unnecessary temporary lists first). Commented Jun 8, 2016 at 19:55

Assuming you have a CSV of this structure:


And you want the output to be:

[{'a': '1', ' "b"': '2'}, {'a': '3', ' "b"': '4'}, {'a': '5', ' "b"': '6'}]

A zip function (not yet mentioned) is simple and quite helpful.

def read_csv(filename):
    with open(filename) as f:
        return [dict(zip(headers,i)) for i in file_data]

If you prefer pandas, it can also do this quite nicely:

import pandas as pd
def read_csv(filename):
    return pd.read_csv(filename).to_dict('records')
  • 2
    It worked for my use-case. Commented Nov 28, 2022 at 18:17
  • Good example and solution. The panada solution is also easy to read in this case.
    – zalsaeed
    Commented Sep 18, 2023 at 12:45

You can also use numpy for this.

from numpy import loadtxt
key_value = loadtxt("filename.csv", delimiter=",")
mydict = { k:v for k,v in key_value }
  • 1
    Note this would work only for numerical columns. For non-numerical you get ValueError: could not convert string to float: 'Name'.
    – mirekphd
    Commented Mar 18, 2022 at 9:47

One-liner solution

import pandas as pd

dict = {row[0] : row[1] for _, row in pd.read_csv("file.csv").iterrows()}
  • Caution: this overshadows the built-in dict object (you won't be able to use it anymore:)
    – mirekphd
    Commented Mar 18, 2022 at 9:53

For simple csv files, such as the following


You can convert it to a Python dictionary using only built-ins

with open(csv_file) as f:
    csv_list = [[val.strip() for val in r.split(",")] for r in f.readlines()]

(_, *header), *data = csv_list
csv_dict = {}
for row in data:
    key, *values = row   
    csv_dict[key] = {key: value for key, value in zip(header, values)}

This should yield the following dictionary

{'row1': {'col1': 'r1c1', 'col2': 'r1c2', 'col3': 'r1c3'},
 'row2': {'col1': 'r2c1', 'col2': 'r2c2', 'col3': 'r2c3'},
 'row3': {'col1': 'r3c1', 'col2': 'r3c2', 'col3': 'r3c3'},
 'row4': {'col1': 'r4c1', 'col2': 'r4c2', 'col3': 'r4c3'}}

Note: Python dictionaries have unique keys, so if your csv file has duplicate ids you should append each row to a list.

for row in data:
    key, *values = row

    if key not in csv_dict:
            csv_dict[key] = []

    csv_dict[key].append({key: value for key, value in zip(header, values)})
  • n.b. this can all be shortened to using set_default: csv_dict.set_default(key, []).append({key: value for key, value in zip(header, values)}))
    – mdmjsh
    Commented Nov 29, 2019 at 13:46
  • 1
    The ({key: value}) syntax in your .append command was very useful. I ended up using the same syntax in a row.update when iterating over and adding to a DictReaderobject that was made from a CSV file.
    – Shrout1
    Commented Jun 12, 2020 at 12:53
  • @mdmjsh What is this? Also, no such command as set_default.
    – flywire
    Commented Aug 19, 2023 at 22:26
  • that was a typo, it should have been setdefault - it doesn't change the above correct answer, it just means that the 'if key not in csv_dict...' logic can be excluded. I use setdefault a lot when dynamically building dicts.
    – mdmjsh
    Commented Aug 24, 2023 at 16:00

I'd suggest adding if rows in case there is an empty line at the end of the file

import csv
with open('coors.csv', mode='r') as infile:
    reader = csv.reader(infile)
    with open('coors_new.csv', mode='w') as outfile:
        writer = csv.writer(outfile)
        mydict = dict(row[:2] for row in reader if row)
  • Both well-done and well-thought-out. But like I said above, should he really be ignoring the fact that his input line is longer than he expected? I'd say he should raise his own exception (with a custom message) if he gets a line with more than two items. Commented Jul 19, 2011 at 1:27
  • Or rather, as stated above by @Nate, at least print a warning message. This just doesn't seem like something you'd want to ignore. Commented Jul 19, 2011 at 1:29
  • your answer (vs. mine) made ponder something - is there an efficiency difference between slicing and indexing in this case?
    – Nate
    Commented Jul 19, 2011 at 1:29
  • 1
    @machine, no idea. Perhaps it's a dump of a user table from a database, and he just wants a dict of userid:username or something for example Commented Jul 19, 2011 at 1:30
  • 1
    Hey guys, thanks for the comments. Your discussion really helped me out with my problem. I like the idea about about raising a flag if the input is longer than expected. My data is a database dump and I do have more than two columns of data.
    – drbunsen
    Commented Jul 19, 2011 at 1:48

with pandas, it is much easier, for example. assuming you have the following data as CSV and let's call it test.txt / test.csv (you know CSV is a sort of text file )


now using pandas

import pandas as pd
df = pd.read_csv("./text.txt")
df_to_doct = df.to_dict()

for each row, it would be


and that's it.


If you are OK with using the numpy package, then you can do something like the following:

import numpy as np

lines = np.genfromtxt("coors.csv", delimiter=",", dtype=None)
my_dict = dict()
for i in range(len(lines)):
   my_dict[lines[i][0]] = lines[i][1]
  • I think you should change dtype=str because for None one gets bytes in as both keys and values.
    – mirekphd
    Commented Mar 18, 2022 at 9:51

You can use this, it is pretty cool:

import dataconverters.commas as commas
filename = 'test.csv'
with open(filename) as f:
      records, metadata = commas.parse(f)
      for row in records:
            print 'this is row in dictionary:'+rowenter code here

Many solutions have been posted and I'd like to contribute with mine, which works for a different number of columns in the CSV file. It creates a dictionary with one key per column, and the value for each key is a list with the elements in such column.

    input_file = csv.DictReader(open(path_to_csv_file))
    csv_dict = {elem: [] for elem in input_file.fieldnames}
    for row in input_file:
        for key in csv_dict.keys():

Try to use a defaultdict and DictReader.

import csv
from collections import defaultdict
my_dict = defaultdict(list)

with open('filename.csv', 'r') as csv_file:
    csv_reader = csv.DictReader(csv_file)
    for line in csv_reader:
        for key, value in line.items():

It returns:

{'key1':[value_1, value_2, value_3], 'key2': [value_a, value_b, value_c], 'Key3':[value_x, Value_y, Value_z]}

A simple function that take as filename and returns an OrderedDict:

def csv_to_dict(filename):
    import csv
    with open(filename, mode='r') as infile:
        reader = csv.DictReader(infile)
        data = [row for row in reader]
    return data

If you have:

  1. Only 1 key and 1 value as key,value in your csv
  2. Do not want to import other packages
  3. Want to create a dict in one shot

Do this:

mydict = {y[0]: y[1] for y in [x.split(",") for x in open('file.csv').read().split('\n') if x]}

What does it do?

It uses list comprehension to split lines and the last "if x" is used to ignore blank line (usually at the end) which is then unpacked into a dict using dictionary comprehension.


here is an approach for CSV to Dict:

import pandas

data = pandas.read_csv('coors.csv')

the_dictionary_name = {row.k: row.v for (index, row) in data.iterrows()}

Probably not the most efficient method but this is my preferred method as it's pretty flexible because you can select which column of data will be the keys and which will be the values.

import pandas as pd

df = pd.read_csv('coors.csv')

mydict = dict(zip(df['col1'],df['col2']))

replacing 'col1' and 'col2' with the column you want the keys to be and col2 with the column you want the values to be

  • Hi @Rob! Welcom to SO and thank you for contributing! However there is already an answer using the pandas library here: stackoverflow.com/a/47668182/311288 . Can you clarify whether your answer actually provide another solution?
    – Thomas BDX
    Commented Sep 12, 2023 at 7:53
  • Keep in mind that for this solution you must install pandas and all the modules that pandas needs to work. If the .csv is "small" try to avoid this answer. There is no reason to install things to apply a solution.
    – Franco Gil
    Commented Jun 18 at 13:57

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