| import streamlit as st
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| import pandas as pd
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| import pickle
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| with open('C:/Users/Samridh Joshi/Downloads/EY_PROJECT_1/EY_PROJECT_1/best_model.pkl', 'rb') as model_file:
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| input_weight_model = pickle.load(model_file)
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| with open('C:/Users/Samridh Joshi/Downloads/EY_PROJECT_1/EY_PROJECT_1/inspection_model.pkl', 'rb') as model_file:
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| machining_model = pickle.load(model_file)
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| with open('C:/Users/Samridh Joshi/Downloads/EY_PROJECT_1/EY_PROJECT_1/machining_model.pkl', 'rb') as model_file:
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| inspection_model = pickle.load(model_file)
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| final_landed_cost = {
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| '1 MT XX (25-95 dia)': 103,
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| '1 MT XX (100-210 dia)': 113,
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| '1 MT YY (25-95 dia)': 160,
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| '1 MT YY (100-125 dia)': 173,
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| '1 MT XY (25-95 dia))': 106,
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| '1 MT 8319 (100-210 dia)':116,
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| '1 MT 8319':104
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| }
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| def calculate_raw_material_cost(process_type, input_weight, grade_type):
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| if process_type == 0:
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| return 0
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| elif process_type == 1:
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| return input_weight * final_landed_cost[grade_type]
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| def calculate_process_cost(process_type, input_weight):
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| if process_type == 0:
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| return (input_weight * (120.57788 / 1000)*1000)
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| elif process_type == 1:
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| return input_weight * 30
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| st.title("EX-Works Calculator")
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| with st.form("input_form"):
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| part_no = st.number_input("Part No", min_value=1, step=1)
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| process_type = st.selectbox("Process Type", options=[0,1])
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| part_od = st.number_input("Part Od", min_value=0.0, step=0.1)
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| part_id = st.number_input("Part ID", min_value=0.0, step=0.1)
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| part_width = st.number_input("Part Width", min_value=0, step=1)
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| finish_wt = st.number_input("Finish Wt", min_value=0.0, step=0.1)
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| grade_type = st.selectbox("Grade Type", options=list(final_landed_cost.keys()))
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| submitted = st.form_submit_button("Calculate")
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| if submitted:
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| input_data = pd.DataFrame({
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| 'Process type': [process_type],
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| 'Part Od': [part_od],
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| 'Part ID': [part_id],
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| 'Part Width': [part_width],
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| 'Finish Wt': [finish_wt]
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| })
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| predicted_input_weight = input_weight_model.predict(input_data)[0]
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| raw_material_cost = calculate_raw_material_cost(process_type, predicted_input_weight, grade_type)
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| process_cost = calculate_process_cost(process_type, predicted_input_weight)
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| machining_data = pd.DataFrame({
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| 'Process type': [process_type],
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| 'Part Od': [part_od],
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| 'Part ID': [part_id],
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| 'Part Width': [part_width],
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| 'Finish Wt': [finish_wt],
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| 'Input Weight': [predicted_input_weight],
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| 'Raw material cost': [raw_material_cost],
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| 'Process cost': [process_cost]
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| })
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| predicted_machining_time = machining_model.predict(machining_data)[0]
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| machining_cost = predicted_machining_time * 375.71
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| scrap_recovery = (predicted_input_weight - finish_wt) * 11.5
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| inspection_data = pd.DataFrame({
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| 'Process type': [process_type],
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| 'Part Od': [part_od],
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| 'Part ID': [part_id],
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| 'Part Width': [part_width],
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| 'Finish Wt': [finish_wt],
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| 'Input Weight': [predicted_input_weight],
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| 'Raw material cost': [raw_material_cost],
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| 'Process cost': [process_cost],
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| 'Machining Time': [predicted_machining_time],
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| 'Machining cost ': [machining_cost],
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| })
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| predicted_inspection_time = inspection_model.predict(inspection_data)[0]
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| inspection_cost = predicted_inspection_time * 435.43
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| total_mg_cost = raw_material_cost + process_cost + machining_cost + inspection_cost - scrap_recovery
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| rejection_on_manufacturing_cost = total_mg_cost * 0.003
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| oiling_inspection_cost = total_mg_cost * 0.005
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| transport_packing_cost = total_mg_cost * 0.01
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| overheads_profit_material = raw_material_cost * 0.003
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| overheads_profit_conversion = (total_mg_cost - raw_material_cost) * 0.07
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| icc = total_mg_cost * 0.01
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| ex_works = total_mg_cost + rejection_on_manufacturing_cost + oiling_inspection_cost + \
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| transport_packing_cost + overheads_profit_material + overheads_profit_conversion
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| data = {
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| 'Part No': [part_no],
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| 'Process type': ['casting' if process_type == 0 else 'forging'],
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| 'Part Od': [part_od],
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| 'Part ID': [part_id],
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| 'Part Width': [part_width],
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| 'Finish Wt': [finish_wt],
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| 'Predicted Input Weight': [predicted_input_weight],
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| 'Grade type': [grade_type],
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| 'Raw material cost': [raw_material_cost],
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| 'Process cost': [process_cost],
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| 'Predicted Machining Time': [predicted_machining_time],
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| 'Machining Cost': [machining_cost],
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| 'Scrap Recovery': [scrap_recovery],
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| 'Predicted Inspection Time': [predicted_inspection_time],
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| 'Inspection Cost': [inspection_cost],
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| 'Total Mg Cost': [total_mg_cost],
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| 'Rejection on Manufacturing cost': [rejection_on_manufacturing_cost],
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| 'Oiling, Inspectio': [oiling_inspection_cost],
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| 'Transport and packing( BIN + 80 micron bag)': [transport_packing_cost],
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| 'Overheads & Profit on Material': [overheads_profit_material],
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| 'Overheads & Profit on Conversion': [overheads_profit_conversion],
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| 'ICC': [icc],
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| 'Ex-works': [ex_works]
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| }
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| df = pd.DataFrame(data)
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| st.write("Input Data, Predicted Input Weight, and Calculated Costs:")
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| st.dataframe(df)
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