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))
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')