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safer package

Project description

SAFER

This guide provides SAFER model module

Baseline

  • Baseline
    • data_processing_m1
      • crf_data.py
      • location_data.py
      • sensor_data.py
    • data_processing_m2
      • crf_data.ppy
      • location_data.py
      • sensor_data.py
    • model1
      • dataloader.py
      • model.py
      • predictor.py
    • model2
      • dataloader.py
      • model.py
      • preictor.py
    • setup.py
    • README.md

How To Use

Start pip install

  • data processing

    1. location

      You can load location data from preprocess it as follows:

    
      from location_processor import LocationProcessor
    
      file_path = ''
      processed_location_data = LocationProcessor.load_data_from_csv(file_path)
    
      location_dict = {
          (37.7749, -122.4194): 'ward',
          (34.0522, -118.2437): 'hallway',
          (40.7128, -74.0060): 'other',
      }
    
      labeled_location_data = LocationProcessor.assign_location_labels(processed_data, location_dict)
    
    
      
    1. sensor

      you can load sensor data from preprocess it as follows :

      
       from sensor_processor import SensorDataProcessor
      
       file_path = ''
       sensing_data = SensorDataProcessor.load_sensing_data(file_path)
       sensing_data = SensorDataProcessor.process_sensing_data(sensing_data)
       sensing_data = SensorDataProcessor.aggregate_sensing_data(sensing_data)
       sensing_data = SensorDataProcessor.reorganize_column_names(sensing_data)
       
    2. patient data (2 type of data)

      you can load patient data from preprocess it as follows :

      
       from crf_data import DataProcessor
       status_file_path = ''
       trait_fiile_path = ''
          
       processor = DataProcessor()
      
       processor.load_data(
           location_file=labeled_location_data,
           sensor_file=sensing_data,
           crf_file= status_file_path ,
           trait_file= trait_fiile_path
       )
      
       processor.merge_location_and_sensor()
       processor.process_crf_data()
       processor.merge_trait_data()
      
      
      
       suicide_flags = [
           ('patient_key', pd.to_datetime('2023-12-02 00:00:00')),
           .
           .
       ]
      
      
      
       final_data = processor.clean_and_set_suicide_flag(suicide_flags)
       final_data = filter_data_for_self_harm_and_random(final_data, suicide_flags)
      
       
  • model

    you can predict m1 from preprocess it as follows :

    • m1
    
          from model1.model import TemporalFusionTransformer
          from model1.predictor import PredictionHandler
    
          data_paths = ['']
          predictor = PredictionHandler(data_paths, batch_size=16, device='cpu')
          predictions = predictor.predict()
    
       
    • m2
    
          from model2.predictor import Predictor
          import torch
          from model2.model import CNNGRUClassificationModel
    
          data_path = ''  
    
          device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
    
          predictor = Predictor(device=device)
    
          data_loader = predictor.preprocess_data(data_path)
    
          predictions = predictor.predict(data_loader)
    
          print(predictions)
    
      

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