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I have a dictionary of dataframes:

list_of_dfs={'df1':'Dataframe','df2':'Dataframe','df3':'Dataframe','df4':'Dataframe'}

Each data frame contains the same variables (price, volume). I want to get the average of volume for each price observation that is repeated in every dataframe. To be more precise if we look just at one of the dataframes contained in the dictonary:

df = pd.DataFrame({
'Price': [-3000, -262, 150, -3000, -262, 150, -3000, -262, 150],
'Volume': [8133, 28287, 19289, 20242, 19428, 28322, 18147, 17234, 12133]})

# I can use the groupby object on price, to calculate average of volume

df_groupby_mean = df_filtered.groupby('Price')['Volume'].mean()
print(df_groupby_mean)

I apply the following code to do the loop for all dataframes contained on my dictonary

promedios={k: df[df.groupby('Price')['Volume'].mean()] for k, df in list_of_dfs.items()}

However it appears the following error:

KeyError: "None of [ ] are in the [columns]"

Does anyone know why and how can I solve this problem? Thank you!

  • Can you concat into a single DataFrame? It's unclear why these would be stored separately if you need to do operations that combine all of them... – ALollz Oct 17 '19 at 16:05
  • This statement doesn't make sense: df[df.groupby('Price')['Volume'].mean()]. – Alexander Oct 17 '19 at 16:06
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You had an extra df[] in your code:

promedios={k: df.groupby('Price')['Volume'].mean() for k, df in list_of_dfs.items()}

This will get you the average Volume for each different price on each dataframe, though. It isn't clear if that's what you're actually looking for.

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