0

I have a dataframe that contains columns like this - ['labels', 'labels.1', 'labels.2'] this continues to some number labels.n

One of these columns contains a value I need. I want to grab that value and add it to df['final_label']. If the value is not in the labels columns, the new column should be blank.

The dataframe looks like this:

|  Age  |  City  | labels | labels.1 | labels.2 | labels.n |
| ----- | ------ | ------ | -------- | -------- | -------- |
|   27  | city A | value1 |  other   |  other   | other    |
|   45  | city B | other  |  other   |  value2  |          |
|   34  | city A | value2 |  other   |  other   | other    |
|   57  | city D | other  |  value2  |          |          |
|   30  | city E | other  |  other   |  other   |          |

I need the final dataframe to look like this:

|  Age  |  City  | labels |
| ----- | ------ | ------ |
|   27  | city A | value1 |
|   45  | city B | value2 |
|   34  | city A | value2 |
|   57  | city D | value2 |
|   30  | city E |        |

I realize a nested np.where() will have an unknown depth so not sure how to implement that in a simple way.

Here is what I have been trying to do:

labels_cols = [col for col in df.columns if "labels" in col]
        
values_list = ['value1', 'value2']
        
### I want to basically do this, but the depth is unknown
df['final_labels'] = np.where(df['labels'].isin(values_list), df['labels'],
                        np.where(df['labels.1'].isin(values_list), df['labels.1'],
                           np.where(df['labels.2'].isin(values_list), df['labels.2'],
                              np.where(df['labels.n'].isin(values_list), df['labels.n'],''))))

### Tried some things like this, but can't get the syntax right
df['final_label'] = df.loc[df.index(values_list), df.columns.str.contains('label')==True] 
2
  • Kindly share sample input dataframes with expected output
    – sammywemmy
    Feb 3 at 19:58
  • @sammywemmy thanks I just added
    – Joe
    Feb 3 at 20:09

2 Answers 2

1

You can use fillna with another series, wich uses that series to fill the null values. Assuming all columns used to fill the labels column contain "labels.":

values_list = ['value1', 'value2']
df.loc[~df["labels"].isin(values_list), "labels"] = np.nan
for c in df.columns:
    if "labels." in c:
        df.loc[~df[c].isin(values_list), c] = np.nan
        df["labels"] = df["labels"].fillna(df[c])
        del df[c]

Then df["labels"] contains the result. Updated to filter the values with "value list". This answer assumes you want to drop the columns, if not, you need to initialise df["final_labels"] first, remove the del df[c], and then use the columns that contain "labels".

5
  • Sorry I did not include this in my initial input df - but there are other values mixed in, not just nan's. Just updated question.
    – Joe
    Feb 3 at 20:20
  • I edited my post.
    – DeepKling
    Feb 3 at 20:28
  • Thanks @DeepKling! does this line df.loc[~df["labels"].isin(values_list), "labels"] = np.nan find all columns with substring 'labels' in column name?
    – Joe
    Feb 3 at 21:01
  • 1
    No, this uses loc to filter the column "labels" for values that are not (~) in values_list and then sets the column "labels" to np.nan. I filter the columns containing "labels." inside the for loop, you could also use a list comprehension like for c in [col for col in df.columns if col.startswith("labels.")]:
    – DeepKling
    Feb 3 at 21:11
  • Perfect thank you!
    – Joe
    Feb 3 at 22:00
0

Use filter to keep labels columns then replace unwanted values by nan before forward fill values until the last column:

pattern = r'^(?!value1|value2)$'
df['final_label'] = df.filter(like='labels').replace(pattern, np.nan, regex=True) \
                      .ffill(axis=1).iloc[:, -1].fillna('')
print(df)

# Output
   Age    City  labels labels.1 labels.2 labels.n final_label
0   27  city A  value1    other    other    other       other
1   45  city B   other    other   value2               value2
2   34  city A  value2    other    other    other       other
3   57  city D   other   value2                        value2
4   30  city E   other    other    other                other
4
  • sorry I did not include this in my initial input df - but there are other values mixed in, not just nan's. Just updated question.
    – Joe
    Feb 3 at 20:20
  • @Joe. See my update ;-) I had anticipated this case
    – Corralien
    Feb 3 at 20:20
  • Thank you @Corralien! I am getting this error though "IndexError: single positional indexer is out-of-bounds"
    – Joe
    Feb 3 at 20:28
  • Just try df.filter(like='labels').replace(pattern, np.nan, regex=True).ffill(axis=1). What is the output?
    – Corralien
    Feb 3 at 21:01

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.