jaleesahmed commited on
Commit
1693da5
1 Parent(s): 3c33efd
Files changed (2) hide show
  1. app.py +1 -5
  2. requirements.txt +2 -0
app.py CHANGED
@@ -20,15 +20,11 @@ def update(name):
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  data_selected = data_encoded[['EmployeeExperience', 'HealthBenefitsSatisfaction', 'SalarySatisfaction', 'Designation', 'HealthConscious',
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  'EmployeeFeedbackSentiments', 'Education', 'Gender', 'HoursOfTrainingAttendedLastYear', 'InternalJobMovement', 'Attrition']]
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- input_data = data_selected.drop(['Attrition'], axis=1)
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- target_data = data_selected[['Attrition']]
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- input_data = input_data[0:100]
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- validation_data = input_data[100:198]
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  validation_input_data = validation_data.drop(['Attrition'], axis=1)
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  validation_target_data = validation_data[['Attrition']]
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  reg = LinearRegression().fit(validation_input_data, validation_target_data)
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  prediction_value = reg.predict(np.array([[2,2,1,3,1,2,0,1,40,1]]))
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- print(prediction_value)
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  return f"Prediction : , {prediction_value}!"
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  with gr.Blocks() as demo:
 
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  data_selected = data_encoded[['EmployeeExperience', 'HealthBenefitsSatisfaction', 'SalarySatisfaction', 'Designation', 'HealthConscious',
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  'EmployeeFeedbackSentiments', 'Education', 'Gender', 'HoursOfTrainingAttendedLastYear', 'InternalJobMovement', 'Attrition']]
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+ validation_data = data_selected[100:198]
 
 
 
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  validation_input_data = validation_data.drop(['Attrition'], axis=1)
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  validation_target_data = validation_data[['Attrition']]
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  reg = LinearRegression().fit(validation_input_data, validation_target_data)
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  prediction_value = reg.predict(np.array([[2,2,1,3,1,2,0,1,40,1]]))
 
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  return f"Prediction : , {prediction_value}!"
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  with gr.Blocks() as demo:
requirements.txt ADDED
@@ -0,0 +1,2 @@
 
 
 
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+ cufflinks
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+ sklearn