I am trying to visualize some data using the Seaborn package in Python. In particular, I would like to use the `catplot(kind='bar')`

function (previously named as `factorplot()`

). My DataFrame looks like this (columns `'x'`

, `'col'`

, `'row'`

and `'hue'`

are categorical):

```
x y dy col row hue
0 4 9 0.766591 1 0 2
1 5 9 0.688683 0 1 0
2 0 7 0.707982 0 0 1
3 3 6 0.767210 2 1 0
4 3 8 0.287153 0 1 0
```

I would like to use the uncertainty column `'dy'`

to represent the error bars of `'y'`

. The default bootstrapping or standard deviation error bars performed by Seaborn catplots do not provide me with a satisfactory solution.

Here I provide the minimal-complete-verifiable example:

```
import pandas as pd
import numpy.random as npr
import seaborn as sns
npr.seed(seed=0)
my_sz = 1000
df_x = pd.DataFrame(npr.randint(0,7,size=(my_sz, 1)), columns=['x'])
df_y = pd.DataFrame(npr.randint(5,10,size=(my_sz, 1)), columns=['y'])
df_dy = pd.DataFrame(npr.random(size=(my_sz, 1)), columns=['dy'])
df_col = pd.DataFrame(npr.randint(0,3,size=(my_sz, 1)), columns=['col'])
df_row = pd.DataFrame(npr.randint(0,2,size=(my_sz, 1)), columns=['row'])
df_hue = pd.DataFrame(npr.randint(0,3,size=(my_sz, 1)), columns=['hue'])
df = pd.concat([df_x, df_y, df_dy, df_col, df_row, df_hue], axis=1)
df[['x', 'col', 'row', 'hue']] =df[['x', 'col', 'row', 'hue']].astype('category')
cat_plt = sns.catplot(x='x',
y='y',
hue='hue',
data=df,
row='row',
col='col',
kind='bar',
);
```

Seaborn categorical bar-plot with default error bars

I tried the following solution, but I think it does not work with multi-bar plots.

Thanks in advance for your time and your help.