nikhil-xyz commited on
Commit
372f5f8
1 Parent(s): a090e73

relocate main.py

Browse files
Dockerfile CHANGED
@@ -15,5 +15,5 @@ RUN chown user:user -R $HOME/app
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  COPY ./requirements.txt /code/requirements.txt
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  RUN pip install --no-cache-dir --upgrade -r /code/requirements.txt
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-
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  CMD ["streamlit", "run", "app.py"]
 
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  COPY ./requirements.txt /code/requirements.txt
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  RUN pip install --no-cache-dir --upgrade -r /code/requirements.txt
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+ RUN python main.py
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  CMD ["streamlit", "run", "app.py"]
app.py CHANGED
@@ -8,15 +8,6 @@ import os
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  st.title('Insurance Premium Prediction')
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- # async def async_task():
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- # # executing main.py
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- # try:
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- # os.system("python main.py")
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- # logger.info("Training Successful!")
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- # except Exception as e:
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- # logger.info(f"Error occured {e}")
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-
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-
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  def main():
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@@ -99,7 +90,6 @@ def main():
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  if __name__ == '__main__':
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- os.system("python main.py")
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- logger.info("Training Successful!")
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- main()
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-
 
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  st.title('Insurance Premium Prediction')
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  def main():
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  if __name__ == '__main__':
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+ # os.system("python main.py")
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+ # logger.info("Training Successful!")
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+ main()
 
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catboost_info/learn/events.out.tfevents CHANGED
Binary files a/catboost_info/learn/events.out.tfevents and b/catboost_info/learn/events.out.tfevents differ
 
catboost_info/time_left.tsv CHANGED
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main.py CHANGED
@@ -11,6 +11,7 @@ try:
11
  data_ingestion_training_pipeline = DataIngestionTrainingPipeline()
12
  data_ingestion_training_pipeline.main()
13
  logger.info(f'>>>>> stage {STAGE_NAME} has completed <<<<<')
 
14
  except Exception as e:
15
  logger.error(f'>>>>> stage {STAGE_NAME} has failed <<<<<')
16
  raise e
@@ -21,6 +22,7 @@ try:
21
  data_validation_pipeline = DataValidationPipeline()
22
  data_validation_pipeline.main()
23
  logger.info(f'>>>>> stage {STAGE_NAME} has completed <<<<<')
 
24
  except Exception as e:
25
  logger.error(f'>>>>> stage {STAGE_NAME} has failed <<<<<')
26
  raise e
@@ -32,6 +34,7 @@ try:
32
  data_transformation_pipeline = DataTransformationPipeline()
33
  data_transformation_pipeline.main()
34
  logger.info(f'>>>>> stage {STAGE_NAME} has completed <<<<<')
 
35
  except Exception as e:
36
  logger.error(f'>>>>> stage {STAGE_NAME} has failed <<<<<')
37
  raise e
@@ -43,6 +46,7 @@ try:
43
  model_training_pipeline = ModelTrainingPipeline()
44
  model_training_pipeline.main()
45
  logger.info(f'>>>>> stage {STAGE_NAME} has completed <<<<<')
 
46
  except Exception as e:
47
  logger.error(f'>>>>> stage {STAGE_NAME} has failed <<<<<')
48
  raise e
 
11
  data_ingestion_training_pipeline = DataIngestionTrainingPipeline()
12
  data_ingestion_training_pipeline.main()
13
  logger.info(f'>>>>> stage {STAGE_NAME} has completed <<<<<')
14
+ logger.info('\n')
15
  except Exception as e:
16
  logger.error(f'>>>>> stage {STAGE_NAME} has failed <<<<<')
17
  raise e
 
22
  data_validation_pipeline = DataValidationPipeline()
23
  data_validation_pipeline.main()
24
  logger.info(f'>>>>> stage {STAGE_NAME} has completed <<<<<')
25
+ logger.info('\n')
26
  except Exception as e:
27
  logger.error(f'>>>>> stage {STAGE_NAME} has failed <<<<<')
28
  raise e
 
34
  data_transformation_pipeline = DataTransformationPipeline()
35
  data_transformation_pipeline.main()
36
  logger.info(f'>>>>> stage {STAGE_NAME} has completed <<<<<')
37
+ logger.info('\n')
38
  except Exception as e:
39
  logger.error(f'>>>>> stage {STAGE_NAME} has failed <<<<<')
40
  raise e
 
46
  model_training_pipeline = ModelTrainingPipeline()
47
  model_training_pipeline.main()
48
  logger.info(f'>>>>> stage {STAGE_NAME} has completed <<<<<')
49
+ logger.info('\n')
50
  except Exception as e:
51
  logger.error(f'>>>>> stage {STAGE_NAME} has failed <<<<<')
52
  raise e