Задача скрипта подтягивающего модель машинного обучения, приведенного в листинге ниже - принимать на вход из командной строки аргументы.
Сам скрипт:
import sys
import argparse
import pandas as pd
import math
import numpy as np
import pickle
import re
from sklearn.neighbors import KNeighborsRegressor
if __name__ == '__main__':
columnsList = ['OGRN',
'cases_0_sum',
'cases_1_sum',
'cases_2_sum',
'cases_3_sum',
'cases_4_sum',
'cases_5_sum',
'cases_6_sum',
'cases_7_sum',
'cases_8_sum',
'cases_9_sum',
'blocks_0_count'
'blocks_0_sum',
'Balance_values_12003',
'Balance_values_12004',
'Balance_values_12303',
'Balance_values_12304',
'Balance_values_13103',
'Balance_values_14003',
'Balance_values_15003',
'Balance_values_15203',
'profit_class',
'executions_0_sum',
'executions_1_sum']
df_in = pd.DataFrame([sys.argv[1:]], index=columnsList).T
df_in[['num_successful_executions','num_successful_executions_sum']] = df_in['executions_0_sum'].str.split('\s*на сумму\s*', expand=True)
df_in.drop(columns='executions_0_sum', inplace=True)
df_in[['num_continuing_executions','num_continuing_executions_sum']] = df_in['executions_1_sum'].str.split('\s*на сумму\s*', expand=True)
df_in.drop(columns='executions_1_sum', inplace=True)
df_in['num_continuing_executions'].fillna('0', inplace=True)
df_in['num_successful_executions'].fillna('0', inplace=True)
df_in['num_continuing_executions']=pd.to_numeric(df_in['num_continuing_executions'],errors='coerce')
df_in['num_successful_executions']=pd.to_numeric(df_in['num_successful_executions'],errors='coerce')
df_in['num_continuing_executions'].fillna(0, inplace=True)
df_in['num_successful_executions'].fillna(0, inplace=True)
for n in ['num_continuing_executions_sum','num_successful_executions_sum']:
df_in[n]=df_in[n].str.replace('руб', '')
df_in[n]=df_in[n].str.replace('млн', '00000')
df_in[n]=df_in[n].str.replace('млрд', '00000000')
df_in[n]=df_in[n].str.replace('Нет', '0')
df_in[n].fillna('0', inplace=True)
df_in[n]=df_in[n].str.replace('.', '')
df_in[n]=df_in[n].str.replace(',', '')
df_in[n]=df_in[n].str.replace(' ', '')
df_in[n]=pd.to_numeric(df_in[n], errors='coerce')
for n in df_in.columns:
df_in[n]=pd.to_numeric(df_in[n], errors='coerce')
df_in['OGRN'] = df_in['OGRN'].map(lambda x: str(x)[3:5])
df_in['OGRN']=pd.to_numeric(df_in['OGRN'])
for n in [ 'Balance_values_12003',
'Balance_values_12004',
'Balance_values_12303',
'Balance_values_12304',
'Balance_values_13103',
'Balance_values_14003',
'Balance_values_15003',
'Balance_values_15203']:
df_in[n+'_no_data_flag']=np.where(df_in[n]==np.nan,1,0)
# load the model from disk
filename1 = 'D:\knn.pickle'
loaded_model = pickle.load(open(filename1, 'rb'))
y2_pred = loaded_model.predict(df_in)
wished_sum =float(input())
prob = 95*float(y2_pred)/float(wished_sum)
if prob>=95:
prob = 95
print("{:.1f} ".format(y2_pred),'\n',wished_sum, '{:.1f} %'.format(prob))
Аргументы на вход: 107705 0 0 0 0 0 0 0 0 0 0 0 0 150000 120000 100000 90000 10000 200000 200000 170000 -1 "80 на сумму 939 836 руб." "3 на сумму 252 500 руб."
что соответствует входу (24 аргумента) и модели.
Однако скрипт выдает ошибку:
Traceback (most recent call last):
File "D:\1\Execution_prediction.py", line 94, in <module>
y2_pred = loaded_model.predict(df_in)
File "C:\anaconda\lib\site-packages\sklearn\neighbors\regression.py", line 142, in predict
X = check_array(X, accept_sparse='csr')
File "C:\anaconda\lib\site-packages\sklearn\utils\validation.py", line 453, in check_array
_assert_all_finite(array)
File "C:\anaconda\lib\site-packages\sklearn\utils\validation.py", line 44, in _assert_all_finite
" or a value too large for %r." % X.dtype)
ValueError: Input contains NaN, infinity or a value too large for dtype('float64').
В чем смысл такой ошибки, когда обученная без проблем модель получает на ввод ровно столько сколько нужно?
knn.pickle
чтобы можно было воспроизвести ошибку?df_in[['num_successful_executions','num_successful_executions_sum']] = df_in['executions_0_sum'].str.split('\s*на сумму\s*', expand=True)
с ошибкойValueError: Columns must be same length as key