1

I have been looking around the net for hours now, and have not been able to solve this problem, and hope some of you can help.

plt.bar(att_new['player'], att_new['shots'].groupby(att_new['player']).transform('sum'))
plt.axhline(y=att_shots_leauge_average, color='r')
plt.xticks(rotation=90)
plt.figure(figsize=(10,30))

enter image description here

my dataframe looks like this:

att_new = att[['id','player','date','team_name','fixture_name','position_new', 'goals','shots', 
                       'shots_on_target', 'xg', 'attacking_pen_area_touches', 
                       'aerials_won', 'final_third_entry_passes', 'dribbles_completed']]

I have been going over: https://datavizpyr.com/sort-bars-in-barplot-using-seaborn-in-python/, but for me, it seems like the groupby I am doing, is making quite some problems but I need it to get the sum value.

Hope you can help! Thanks!

------EDITED CODE------

import pandas as pd
import seaborn as sns

# groupby and sort
dfg = att_new.groupby('player', as_index=False).shots.sum().sort_values('shots', ascending=False)

# get the mean value for everything
mean = att_shots_leauge_average

# plot
ax = dfg.plot.bar('player', 'shots', figsize=(9, 7), legend=False)
ax.axhline(y=mean, color='gray', lw=3)
ax.text(1.5, mean + 0.2, f'mean{mean:0.2f}', weight='bold')

enter image description here

0

1 Answer 1

2
  • You must sort the values with .sort_values()
  • plt.bar(att_new['player'], att_new['shots'].groupby(att_new['player']).transform('sum')) is convoluted, do the .groupby separately, and then plot the result, as shown below.
import pandas as pd
import seaborn as sns  # only used for importing the data

# sample data
tips = sns.load_dataset('tips')

# groupby and sort
dfg = tips.groupby('day', as_index=False).total_bill.sum().sort_values('total_bill', ascending=False)

# get the mean value for everything
mean_tips = tips.total_bill.mean()

# plot
ax = dfg.plot.bar('day', 'total_bill', figsize=(9, 7), legend=False)
ax.axhline(y=mean_tips, color='gray', lw=3)
ax.text(1.5, mean_tips + 0.2, f'Mean Tips: ${mean_tips:0.2f}', weight='bold')

enter image description here

1
  • 1
    ... I think it is getting late for me. There was.. 4. Thank you for your solution. It is just what I was looking for!
    – Kasper
    Jan 30, 2021 at 19:18

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service and acknowledge you have read our privacy policy.

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