6

I know there are tons of posts about this warning, but I couldn't find a solution to my situation. Here's my code:

df.loc[:, 'my_col'] = df.loc[:, 'my_col'].astype(int)
#df.loc[:, 'my_col'] = df.loc[:, 'my_col'].astype(int).copy()
#df.loc[:, 'my_col'] = df['my_col'].astype(int)

It produces the warning:

SettingWithCopyWarning: A value is trying to be set on a copy of a slice from a DataFrame. Try using .loc[row_indexer,col_indexer] = value instead

Even though I changed the code as suggested, I still get this warning? All I need to do is to convert the data type of one column.

**Remark: ** Originally the column is of type float having one decimal (example: 4711.0). Therefore I change it to integer (4711) and then to string ('4711') - just to remove the decimal.

Appreciate your help!

Update: The warning was a side effect on a filtering of the original data that was done just before. I was missing the DataFrame.copy(). Using the copy instead, solved the problem!

df = df[df['my_col'].notnull()].copy()
df.loc[:, 'my_col'] = df['my_col'].astype(int).astype(str)
#df['my_col'] = df['my_col'].astype(int).astype(str) # works too!
  • This error is a bit confused, obviously problem is code line before df.loc[:, 'my_col'] = df.loc[:, 'my_col'].astype(int) – jezrael Apr 9 '18 at 8:22
  • The line before is from my question from last week: df = df[df['my_col'].notnull()] – Matthias Apr 9 '18 at 8:24
  • Obviously problem is with filtering, need df = df[df['col'] > 10].copy() – jezrael Apr 9 '18 at 8:24
  • 1
    So how working df = df[df['my_col'].notnull()].copy() ? – jezrael Apr 9 '18 at 8:25
  • @jezrael you're my hero of the day. That's it! – Matthias Apr 9 '18 at 8:26
9

I think need copy and omit loc for select columns:

df = df[df['my_col'].notnull()].copy()
df['my_col'] = df['my_col'].astype(int).astype(str)

Explanation:

If you modify values in df later you will find that the modifications do not propagate back to the original data (df), and that Pandas does warning.

6

another way is to disable chained assignments, which works on your code without the need to create a copy:

# disable chained assignments
pd.options.mode.chained_assignment = None 
2

If you need to change the data type of a single column, it's easier to address that column directly:

df['my_col'] = df['my_col'].astype(int)

Or using .assign:

df = df.assign(my_col=lambda d: d['my_col'].astype(int))

The .assign is useful if you only need the conversion once, and don't want to alter your df outside of that scope.

  • Nope, I got the same warning when using your first line of code. See commented line in my original posting. The second one is not usable since the name of the column is a static variable that can not be used in an assign statement. – Matthias Apr 9 '18 at 8:25
  • Sorry, you are right. First line works. The problem for my warning was a filtering of the original data. Updated my posting! – Matthias Apr 9 '18 at 8:29
  • You can use a dynamic variable name in an assign statement by passing a dictionary and using ** on it: df.assign(**{x: 1}) for example, assuming the content of x is a valid Python identifier. – Guybrush Apr 9 '18 at 8:35

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