I have sample work history data data where history of pieces of work moving through the system are recorded. To do so, I selected rows based on error status which is end with '1'. Now, I tried to find error percentage from it but the output doesn't make sense to me.
Essentially, what I want to do is, I want to answer the question like what percentage of pieces in this data set end up in an error status (error status is status end with digit 1) at least twice. Can anyone suggest possible approach to find error percentage in pandas? Thanks
my current attempt
import pandas
url = "https://gist.githubusercontent.com/adamFlyn/35def5060276a88ec5be30fe58f951c2/raw/e12b2b3b4da9988ae6c192e71546db58679d1f6a/work_flow_data.csv"
df = pd.read_csv(url)
err_status = [col for col in df['status'] if col[-1] in '1']
dff = df.loc[df['status'].isin(err_status)]
P = q4_df.groupby('piece_id')['status'].size().reset_index()
P['Percentage'] = 100 * P['status'] / P['status'].sum()
above attempt didn't give me right answer because I want to know the percentage of pieces which is in error status at least twice more. How should I correct my attempt above? any idea?
dff = df[df['error']==3]
.