| import tensorflow as tf |
| from tensorflow import keras |
| import numpy as np |
| import matplotlib.pyplot as plt |
| import pandas as pd |
| from sklearn.model_selection import train_test_split |
| from sklearn import preprocessing |
| import seaborn as sns |
| from sklearn.preprocessing import LabelEncoder |
| import streamlit as st |
|
|
| st.title("Rouge Component Prediction") |
| |
| df = pd.read_csv('identify_rogue_50K_ALL.csv') |
| print("Dataset Size:",df.shape) |
| st.sidebar.header('Enter the Components Details here') |
| |
| df.drop(['SRU serial number','Date of Manufacture','Last Maintenance Date','date of last failure'], axis = 1, inplace=True) |
|
|
| |
| def user_report(): |
| manufacturer = st.sidebar.selectbox("Manufacturer", |
| ("JKL Company", "GHI Company","AGS Company","ABC Company","XYZ Company" )) |
| if manufacturer=='JKL Company': |
| manufacturer=3 |
| elif manufacturer=="GHI Company": |
| manufacturer=2 |
| elif manufacturer=="AGS Company": |
| manufacturer=1 |
| elif manufacturer=="ABC Company": |
| manufacturer =0 |
| else: |
| manufacturer=4 |
| component_age = st.sidebar.slider('Component Age (in hours)', 500,2000, 600 ) |
| total_operating_hours = st.sidebar.slider('Total Operating Hours)', 50,2000, 500 ) |
| usage_intensity = st.sidebar.slider('Usage Intensity hours/day', 0,9, 5 ) |
| last_maintance_type = st.sidebar.selectbox('Last Mantainence Type', ("Preventive","Corrective") ) |
| if last_maintance_type=="Preventive": |
| last_maintance_type=1 |
| else: |
| last_maintance_type=0 |
| previous_number_of_repairs = st.sidebar.number_input('Enter the Previous Number of Repairs Undergone 0 to 5 )',min_value=0,max_value=5,step=1) |
| operating_temperature = st.sidebar.slider('Operating Temperature', 10,25, 15 ) |
| humidity = st.sidebar.slider('Humidity', 20,105, 25 ) |
| Vibration_Level = st.sidebar.slider('Vibration Level', 2,7, 2 ) |
| Pressure = st.sidebar.slider('Pressure', 200,550, 250 ) |
| Power_Input_Voltage= st.sidebar.slider('Power Input Voltage (V)',100,133,115) |
| repair_type = st.sidebar.selectbox('Repair Type', ("Hardware","Software") ) |
| if repair_type=='Hardware': |
| repair_type=0 |
| else: |
| repair_type=1 |
| number_of_inspection = st.sidebar.selectbox('Number of Inspections',('1','2')) |
| if number_of_inspection=='1': |
| number_of_inspection=1 |
| else: |
| number_of_inspection=2 |
| number_of_inspection_6months = st.sidebar.selectbox('Number of Inspections in last 6 Months',('0','1')) |
| if number_of_inspection_6months=='0': |
| number_of_inspection_6months=0 |
| else: |
| number_of_inspection_6months=1 |
| prior_maintainence = st.sidebar.selectbox('Prior Maintainence',("Regular","Irregular")) |
| if prior_maintainence =='Regular': |
| prior_maintainence=1 |
| else: |
| prior_maintainence=0 |
|
|
| user_report_data = { |
| 'Manufacturer':manufacturer, |
| 'Component_Age':component_age, |
| 'Total Operating Hours':total_operating_hours, |
| 'Usage Intensity (hours/day)':usage_intensity, |
| 'Last Maintenance Type': last_maintance_type, |
| 'Previous number of repairs':previous_number_of_repairs, |
| 'Operating Temperature':operating_temperature, |
| 'Humidity': humidity, |
| 'Vibration Level':Vibration_Level, |
| 'Pressure':Pressure, |
| 'Power Input Voltage (V)':Power_Input_Voltage, |
| 'repair type':repair_type , |
| 'total number of inspection':number_of_inspection, |
| 'No. of Inspections in Last 6 Months':number_of_inspection_6months, |
| 'Prior Maintenance':prior_maintainence |
| |
| } |
| report_data = pd.DataFrame(user_report_data, index=[0]) |
| return report_data |
| |
| |
| user_data = user_report() |
| st.header("Component Details") |
| st.write(user_data) |
|
|
| def label_encoder(df): |
| le = LabelEncoder() |
| cat = df.select_dtypes(include='O').keys() |
| categ = list(cat) |
| df[categ] = df[categ].apply(le.fit_transform) |
| return df |
|
|
| def preprocess_dataset(X): |
| x = X.values |
| min_max_scaler = preprocessing.MinMaxScaler() |
| x_scaled = min_max_scaler.fit_transform(x) |
| X_df = pd.DataFrame(x_scaled) |
| return X_df |
|
|
| def prediction(df): |
| |
| |
| |
| |
| |
| X_test_encoded = label_encoder(df) |
| X_test_df = preprocess_dataset(X_test_encoded) |
| |
| |
| try: |
| x_model = tf.keras.models.load_model('my_model.h5') |
| except (OSError, ValueError): |
| |
| tfs_layer = tf.keras.layers.TFSMLayer('my_model', call_endpoint='serving_default') |
| |
| inputs = tf.keras.Input(shape=(X_test_df.shape[1],)) |
| outputs = tfs_layer(inputs) |
| x_model = tf.keras.Model(inputs=inputs, outputs=outputs) |
| y_pred = x_model.predict(X_test_df) |
| |
| |
| if y_pred ==0: |
| return 'Component is Good' |
| else: |
| return 'Component is not Good' |
| |
| |
| |
| |
|
|
| y_pred = prediction(user_data) |
|
|
| if st.button("Predict"): |
| st.subheader(y_pred) |