I have an excel document which looks like this..

cluster load_date   budget  actual  fixed_price
A   1/1/2014    1000    4000    Y
A   2/1/2014    12000   10000   Y
A   3/1/2014    36000   2000    Y
B   4/1/2014    15000   10000   N
B   4/1/2014    12000   11500   N
B   4/1/2014    90000   11000   N
C   7/1/2014    22000   18000   N
C   8/1/2014    30000   28960   N
C   9/1/2014    53000   51200   N

I want to be able to return the contents of column 1 - cluster as a list, so I can run a for loop over it, and create an excel worksheet for every cluster.

Is it also possible, to return the contents of a whole row to a list? e.g.

list = [], list[column1] or list[df.ix(row1)]
  • 6
    Pandas dataframe columns are a pandas series when you pull them out, which you can then call .tolist() on to turn them into a python list – Ben Mar 12 '14 at 3:15
  • 2
    From v0.24 onwards, .values will NO LONGER BE the preferred method for accessing underlying numpy arrays. See this answer. – cs95 Jan 27 at 21:22

Pandas DataFrame columns are Pandas Series when you pull them out, which you can then call x.tolist() on to turn them into a Python list. Alternatively you cast it with list(x).

import pandas as pd

d = {'one' : pd.Series([1., 2., 3.],     index=['a', 'b', 'c']),
    'two' : pd.Series([1., 2., 3., 4.], index=['a', 'b', 'c', 'd'])}

df = pd.DataFrame(d)

print("Starting with this dataframe\n", df)

print("The first column is a", type(df['one']), "\nconsisting of\n", df['one'])

dfToList = df['one'].tolist()

dfList = list(df['one'])

dfValues = df['one'].values

print("dfToList is", dfToList, "and it's a", type(dfToList))
print("dfList is  ", dfList,   "and it's a", type(dfList))
print("dfValues is", dfValues, "and it's a", type(dfValues))

The last lines return:

dfToList is [1.0, 2.0, 3.0, nan] and it's a <class 'list'>
dfList is   [1.0, 2.0, 3.0, nan] and it's a <class 'list'>
dfValues is [ 1.  2.  3. nan] and it's a <class 'numpy.ndarray'>

This question might be helpful. And the Pandas docs are actually quite good once you get your head around their style.

So in your case you could:

my_list = df["cluster"].tolist()

and then go from there.

  • 20
    I can't get my head around the style of the docs, because it's almost always straight syntax, where as I need syntax and example. E.g. Syntax would be to create a set: use the set keyword, and a list: Accompanying example: alist = df.cluster.tolist(). Until pandas is written in this way I will struggle. it's getting there, there are some examples now, but not for every method. – yoshiserry Mar 12 '14 at 4:02
  • Thanks @Ben, great Answer! Can you tell me about the Dataframe method, Ive never seen that before... seems like you are converting a dinctionary to a df? df = DataFrame(d)? – yoshiserry Mar 12 '14 at 4:14
  • One of the default ways to make a dataframe is to pass it a list of dictionaries with matching keys. – Ben Mar 12 '14 at 4:15
  • Is it also possible to make the series into a list using the set command in one line? I've been able to do it with 4: c = data.cluster.tolist() u = set(c) for i in u: print i – yoshiserry Mar 12 '14 at 4:17
  • extending the example above you could add print(set(df['one'].tolist())) to give you the unique values. BUT you might be better off using the query type functions of the dataframe, e.g. filtered = df[df["one"] == 1] But this might be gatting to the point where it needs it's own question. – Ben Mar 12 '14 at 4:30

This returns a numpy array:

my_list = df["cluster"].values

This returns a numpy array for unique values:

my_list = df["cluster"].values
uniqueVals = np.unique(my_list)

Or alternatively:

uniqueVals = df["cluster"].unique()
  • 1
    You save my day. :)) – toantruong Feb 25 at 7:22

Example conversion:

Numpy Array -> Panda Data Frame -> List from one Panda Column

Numpy Array

data = np.array([[10,20,30], [20,30,60], [30,60,90]])

Convert numpy array into Panda frame

data = np.array([[10,20,30], [20,30,60], [30,60,90]])
dataPd = pd.DataFrame(data = data)

    0   1   2
0  10  20  30
1  20  30  60
2  30  60  90

Convert one Panda Frame to list

pdToList = list(dataPd['2'])

Iterate over list as a proof

 for counter, value in enumerate(pdToList):
        print(counter, value)
    0 90
    1 60
    2 30

there is another example.combine with some refs from web:

import pandas as pd
def readcolumn(filename,column):
    #select sheet name and selct column as index,index_col=0
    df = pd.read_excel(filename,sheetname =0)
    headername = list(df)
    column_data =df[list(df)[column]].tolist()
    return  column_data

Assuming the name of the dataframe after reading the excel sheet is df, take an empty list (e.g. dataList), iterate through the dataframe row by row and append to your empty list like-

dataList = [] #empty list
for index, row in df.iterrows(): 
    mylist = [row.cluster, row.load_date, row.budget, row.actual, row.fixed_price]


dataList = [] #empty list
for row in df.itertuples(): 
    mylist = [row.cluster, row.load_date, row.budget, row.actual, row.fixed_price]

No, if you print the dataList, you will get each rows as a list in the dataList.

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