36

I have a pandas dataframe that has two columns.

I need the plot ordered by the "Count" Column.

dicti=({'37':99943,'25':47228,'36':16933,'40':14996,'35':11791,'34':8030,'24' : 6319 ,'2'  :5055 ,'39' :4758 ,'38' :4611  })
pd_df = pd.DataFrame(list(dicti.iteritems()))
pd_df.columns =["Dim","Count"]
plt.figure(figsize=(12,8))
ax = sns.barplot(x="Dim", y= "Count",data=pd_df )
ax.get_yaxis().set_major_formatter(plt.FuncFormatter(lambda x, loc: "
{:,}".format(int(x))))
ax.set(xlabel="Dim", ylabel='Count')
for item in ax.get_xticklabels():
    item.set_rotation(90)
for i, v in enumerate(pd_df["Count"].iteritems()):        
    ax.text(i ,v[1], "{:,}".format(v[1]), color='m', va ='bottom', 
    rotation=45)
plt.tight_layout()

Right now the plot is getting ordered by the "Dim" column, I need it ordered by the "Count" column,How can I do this?enter image description here

1
  • 1
    Did you read the documentation for barplot? It takes a parameter called order. So you could sort by your Count column, and pass the resulting Dim values to that.
    – Paul H
    May 3, 2017 at 21:48

6 Answers 6

49

you can use the order parameter for this.

sns.barplot(x='Id', y="Speed", data=df, order=result['Id'])

Credits to Wayne.

See the rest of his code.

This link is still working for me. But, for the sake of convenience, I'm pasting the author's code here.

result = df.groupby(["Id"])['Speed'].aggregate(np.median).reset_index().sort_values('Speed')
sns.barplot(x='Id', y="Speed", data=df, order=result['Id'])
plt.show()

df

   Id  Speed
0   1     30
1   1     35
2   1     31
3   2     20
4   2     25

result

   Id   Speed
1   2   22.5
0   1   31.0
2   3   80.0
4
  • 3
    but is it possible to sort by estimated value: sns.barplot(x='Id', y="Speed", data=df, estimator=np.mean, order=?)
    – vladkras
    Feb 15, 2019 at 16:32
  • There is likely a better way, but this works: grp_order = df.groupby('Id').Speed.agg('mean').sort_values().index and then sns.barplot(x='Id', y="Speed", data=df, estimator=np.mean, order=grp_order)
    – Jeremy
    Jun 3, 2020 at 16:27
  • 1
    I can't get this to work and the link doesn't show anything related to your solution. What is result supposed to be or return? A dict returning an int? That gives me an error
    – CGFoX
    Nov 19, 2020 at 16:20
  • 1
    Would be better if you showed how result was evaluated. As it stands, you just present a one-liner which does not work.
    – SO_tourist
    May 14, 2021 at 11:58
18

You have to sort your dataframe in desired way and the reindex it to make new ascending / descending index. After that you may plot bar graph with index as x values. Then set set labels by Dim column of your dataframe:

import matplotlib.pylab as plt
import pandas as pd
import seaborn as sns

dicti=({'37':99943,'25':47228,'36':16933,'40':14996,'35':11791,'34':8030,'24' : 6319 ,'2'  :5055 ,'39' :4758 ,'38' :4611  })
pd_df = pd.DataFrame(list(dicti.items()))
pd_df.columns =["Dim","Count"]
print (pd_df)
# sort df by Count column
pd_df = pd_df.sort_values(['Count']).reset_index(drop=True)
print (pd_df)

plt.figure(figsize=(12,8))
# plot barh chart with index as x values
ax = sns.barplot(pd_df.index, pd_df.Count)
ax.get_yaxis().set_major_formatter(plt.FuncFormatter(lambda x, loc: "{:,}".format(int(x))))
ax.set(xlabel="Dim", ylabel='Count')
# add proper Dim values as x labels
ax.set_xticklabels(pd_df.Dim)
for item in ax.get_xticklabels(): item.set_rotation(90)
for i, v in enumerate(pd_df["Count"].iteritems()):        
    ax.text(i ,v[1], "{:,}".format(v[1]), color='m', va ='bottom', rotation=45)
plt.tight_layout()
plt.show()

enter image description here

1
  • 2
    Do I understand it correctly -- even if I have sorted dataframe I have to first create it using indices as labels to make sure sns does not sort bars alphabetically based on label names (and there is no way to pass, for example, sorted = False, to avoid that) ?
    – Rotkiv
    Aug 31, 2017 at 16:43
10

Prepare the data frame such that it is ordered by the column that you want.

Now pass that as a parameter to function.

import pandas as pd
import seaborn as sns

dicti=({'37': 99943,'25': 47228,'36': 16933,'40': 14996,'35': 11791,'34': 8030,'24': 6319 ,'2': 5055 ,'39': 4758 ,'38' :4611})
pd_df = pd.DataFrame(list(dicti.items()))
pd_df.columns =["Dim", "Count"]

# Here the dataframe is already sorted if not use the below line
# pd_df = pd_df.sort_values('Count').reset_index()
# or 
# pd_df = pd_df.sort_values('Count',ascending=False).reset_index()

sns.barplot(x='Dim', y='Count', data=pd_df, order=pd_df['Dim'])`

enter image description here

0
8

To make a specific order, I recommend to create a list and then order by it:

order_list = ['first', 'second', 'third']
sns.barplot(x=df['x'], y=df['y'], order=order_list)
1

You can use the following code

import seaborn as sns

iris = sns.load_dataset("iris")
order = iris.groupby(["species"])["sepal_width"].mean().sort_values().index

sns.barplot(x="species", y="sepal_width", data=iris, order=order)

enter image description here

You specify ascending=False if you want to sort them from biggest to smallest.

order = iris.groupby(["species"])["sepal_width"].mean().sort_values(ascending=False).index
1
  • This is great for cases where you don't want to sort on the absolute values, but instead on some statistic like the mean. Super useful! Apr 27 at 4:24
1

Try using this. There is no need to sort the dataframe or create extra lists.

import pandas as pd
import seaborn as sns
import matplotlib.pyplot as plt

dicti=({'34':8030,'37':99943,'38':4611,'25':47228,'39':4758,'36':16933,'2':5055,'40':14996,'24':6319,'35':11791})
pd_df = pd.DataFrame(list(dicti.items()))
pd_df.columns =["Dim","Count"]
plt.figure(figsize=(12,8))
ax = sns.barplot(x="Dim", y= "Count",data=pd_df, order=pd_df.sort_values(by=['Count'], ascending=False).set_index('Dim').index)
ax.get_yaxis().set_major_formatter(plt.FuncFormatter(lambda x, loc: "{:,}".format(int(x))))
ax.set(xlabel="Dim", ylabel='Count')
for item in ax.get_xticklabels():
    item.set_rotation(90)
#for i, v in enumerate(pd_df["Count"].iteritems()):        
#    ax.text(i ,v[1], "{:,}".format(v[1]), color='m', va ='bottom', 
#    rotation=45)
plt.tight_layout()

output

Note: You may notice that there are 3 lines of code that were turned to comments. This is because @Tronald Dump asked about the Seaborn Bar Plot functionality specifically, but there was code to display custom magenta labels that doesn't account for the usage of the optional "order" parameter of the seaborn.barplot function. Therefore, this serves as a valid answer for the OP, but specially for future visitors.

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