19

I'm looking to map the value in a dict to one column in a DataFrame where the key in the dict is equal to a second column in that DataFrame

For example:

If my dict is:

dict = {'abc':'1/2/2003', 'def':'1/5/2017', 'ghi':'4/10/2013'}

and my DataFrame is:

      Member    Group      Date
 0     xyz       A         np.Nan
 1     uvw       B         np.Nan
 2     abc       A         np.Nan
 3     def       B         np.Nan
 4     ghi       B         np.Nan

I want to get the following:

      Member    Group      Date
 0     xyz       A         np.Nan
 1     uvw       B         np.Nan
 2     abc       A         1/2/2003
 3     def       B         1/5/2017
 4     ghi       B         4/10/2013

Note: The dict doesn't have all the values under "Member" in the df. I don't want those values to be converted to np.Nan if I map. So I think I have to do a fillna(df['Member']) to keep them?


Unlike Remap values in pandas column with a dict, preserve NaNs which maps the values in the dict to replace a column containing the a value equivalent to the key in the dict. This is about adding the dict value to ANOTHER column in a DataFrame based on the key value.

2
  • 4
    simply df['Date'] = df.Member.map(d) Note, you shouldn't name a dictionary dict , since that has a special meaning in Python. See Pandas.Series.map
    – ALollz
    Aug 16, 2018 at 16:27
  • 1
    As per the Not a duplicate, there is functionally no difference. Your column seems to be entirely NaN so it essentially has no information. By default, .map returns NaN if for mappings where the key is not in the dictionary, so just map and completely overwrite your Date column. On the other hand, if you only wanted to replace values in Date for keys in the dictionary (say for instances where Date isn't always null, then you can just use .replace(d) instead of .map(d). Both are covered in that duplicate.
    – ALollz
    Aug 16, 2018 at 17:15

5 Answers 5

23

You can use df.apply to solve your problem, where d is your dictionary.

df["Date"] = df["Member"].apply(lambda x: d.get(x))

What this code does is takes every value in the Member column and will look for that value in your dictionary. If the value is found in the dictionary than the corresponding dictionary value will populate the column. If the value is not in the dictionary then None will be returned.

Also, make sure your dictionary contains valid data types. In your dictionary the keys (abc, def, ghi) should be represented as strings and your dates should be represented as either strings or date objects.

2
  • Thanks. Can you give a reference to read up on get? Not familiar with it. Aug 16, 2018 at 16:56
  • 2
    Method on the the dict data structure. Returns the value from the key passed in get or a None by default or passed value. In the core Python docs. Apr 25, 2019 at 8:11
5

I would just do a simple map to get the answer.

If we have a dictionary as

d = {abc:1/2/2003, def:1/5/2017, ghi:4/10/2013}

And a dataframe as:

      Member    Group      Date

 0     xyz       A         np.Nan
 1     uvw       B         np.Nan
 2     abc       A         np.Nan
 3     def       B         np.Nan
 4     ghi       B         np.Nan

Then a simple map will solve the problem.

df["Date"] = df["Member"].map(d)

map() will lookup the dictionary for value in df['Member'], and for each value in Member, it will get the Value from dictionary d and assign it back to Date. If the value does not exist, it will assign NaN.

We don't need to do loop or apply.

0

if Member is your index, you can assign a Series to the DataFrame:

df.set_index("Member", inplace=True)
df["Date"] = pd.Series(dict)

Pandas will match the index of the Series with the index of the DataFrame.

-1
for i in range(len(df)):
    if df['Member'][i] in d:
        df['Date'][i] = d[df['Member'][i]]

P.S. it's bad practise to name variables with reserved words (i.e. dict).

-1

Just create a new df then join them:

map_df = pd.DataFrame(list(zip(map_dict.items()))).set_index(0)
df.merge(map_df, how='left', left_on='Member', right_index=True)

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