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| import streamlit as st | |
| import pandas as pd | |
| import io | |
| from pyomo.environ import ConcreteModel, Var, Objective, Constraint, SolverFactory, NonNegativeReals, RangeSet, Param, minimize, value, Reals,Set | |
| from pyomo.environ import * | |
| def get_output(df, df1, df2): | |
| df.fillna(0, inplace=True) | |
| df1.fillna(0, inplace=True) | |
| df2.fillna(0, inplace=True) | |
| n = df['ID projet'].nunique() | |
| task = df.groupby('ID projet').count()['Nom projet'] | |
| project = df.groupby('ID projet').count().index | |
| J_sizes = {i: task[i-1] for i in range(1, n+1)} | |
| Months = ['Janvier', 'Février', 'Mars', 'Avril', 'Mai', 'Juin', 'Juillet', 'Août', 'Septembre', 'Octobre', 'Novembre', 'Décembre'] | |
| months = 12 # Number of months in set M | |
| H_data = {(i, j, month): df.loc[df['ID projet'] == project[i-1]].loc[df.loc[df['ID projet'] == project[i-1]].index[j-1], Months[month-1]] for i in range(1, n + 1) for j in range(1, J_sizes[i] + 1) for month in range(1, months + 1)} | |
| df1.fillna(0, inplace=True) | |
| h = df1['Ressource'].nunique() | |
| A_data = {(i, j, k): int(df.loc[df['ID projet'] == project[i-1]].loc[df.loc[df['ID projet'] == project[i-1]].index[j-1], 'Equipe'] == df1.loc[df1.index[k-1], 'Equipe']) for i in range(1, n + 1) for j in range(1, J_sizes[i] + 1) for k in range(1, h + 1)} | |
| per = [0.08, 0.08, 0.09, 0.09, 0.08, 0.09, 0.07, 0.07, 0.09, 0.09, 0.09, 0.08] | |
| C_data = {(k, month): df1.loc[df1.index[k-1], 'Capacité'] * per[month-1] for k in range(1, h + 1) for month in range(1, months + 1)} | |
| p_data = {i: df2.loc[df2.index[i-1], 'Pond'] for i in range(1, n + 1)} | |
| # Define model | |
| model = ConcreteModel() | |
| # Sets | |
| model.I = RangeSet(1, n) | |
| model.M = RangeSet(1, months) | |
| model.K = RangeSet(1, h) | |
| model.J = Set(model.I, initialize=lambda model, i: RangeSet(1, J_sizes[i])) | |
| # Flatten J for use in parameter definition | |
| flat_J = [(i, j) for i in model.I for j in model.J[i]] | |
| # Parameters | |
| model.H = Param(flat_J, model.M, initialize=H_data) | |
| model.A = Param(flat_J, model.K, initialize=A_data) | |
| model.C = Param(model.K, model.M, initialize=C_data) | |
| model.p = Param(model.I, initialize=p_data) | |
| # Variables | |
| model.x = Var(flat_J, model.K, model.M, domain=NonNegativeReals) | |
| model.y = Var(flat_J, model.K, domain=Binary) | |
| model.s = Var(flat_J, domain=NonNegativeReals) | |
| # Objective function | |
| def objective_rule(model): | |
| return sum(model.p[i] * model.s[i, j] for i in model.I for j in model.J[i]) | |
| model.objective = Objective(rule=objective_rule, sense=minimize) | |
| # Capacity constraint | |
| def capacity_constraint(model, k, month): | |
| return sum(model.x[i, j, k, month] for (i, j) in flat_J) <= model.C[k, month] | |
| model.capacity_constraint = Constraint(model.K, model.M, rule=capacity_constraint) | |
| # Constraint to ensure each task is assigned to exactly one resource | |
| def single_resource_constraint(model, i, j): | |
| return sum(model.y[i, j, k] for k in model.K) == 1 | |
| model.single_resource_constraint = Constraint(flat_J, rule=single_resource_constraint) | |
| # Linking x and y | |
| def linking_constraint(model, i, j, k, month): | |
| return model.x[i, j, k, month] <= 1000 * model.y[i, j, k] | |
| model.linking_constraint = Constraint(flat_J, model.K, model.M, rule=linking_constraint) | |
| # Ensure glissement plus capacité allouée égale à planifiée | |
| def glissement_constraint(model, i, j): | |
| return model.s[i, j] >= sum(model.H[i, j, m] for m in model.M) - sum(model.x[i, j, k, m] * model.A[i, j, k] for k in model.K for m in model.M) | |
| model.glissement_constraint = Constraint(flat_J, rule=glissement_constraint) | |
| # Ensure glissement is non-negative | |
| def non_negative_glissement_constraint(model, i, j): | |
| return model.s[i, j] >= 0 | |
| model.non_negative_glissement_constraint = Constraint(flat_J, rule=non_negative_glissement_constraint) | |
| # Ensure x is less than or equal to H | |
| def x_less_than_H_constraint(model, i, j, k, m): | |
| return model.x[i, j, k, m] <= model.H[i, j, m] | |
| model.x_less_than_H_constraint = Constraint(flat_J, model.K, model.M, rule=x_less_than_H_constraint) | |
| # Solver | |
| solver = SolverFactory('glpk') | |
| result = solver.solve(model, tee=True) | |
| Months = ['Janvier', 'Février', 'Mars', 'Avril', 'Mai', 'Juin', 'Juillet', 'Août', 'Septembre', 'Octobre', 'Novembre', 'Décembre'] | |
| results = [] | |
| for (i, j) in flat_J: | |
| for k in model.K: | |
| result = {} | |
| result['i'] = project[i-1] | |
| result['j'] = j | |
| result['k'] = df1.loc[df1.index[k-1], 'Ressource'] | |
| for month in model.M: | |
| result[Months[month-1]] = value(model.x[i, j, k, month]) | |
| results.append(result) | |
| output_df = pd.DataFrame(results) | |
| df_finall = output_df.loc[output_df[Months].sum(axis=1) > 0] | |
| return df_finall | |
| def main(): | |
| st.title("XLSX Upload and Download") | |
| # File upload section | |
| uploaded_file = st.file_uploader("Choose an XLSX file to upload", type="xlsx") | |
| if uploaded_file is not None: | |
| # Load the uploaded file into a Pandas DataFrame | |
| df = pd.read_excel(uploaded_file, sheet_name='PMC1') | |
| df1 = pd.read_excel(uploaded_file, sheet_name ='Base de ressource1') | |
| df2 = pd.read_excel(uploaded_file, sheet_name ='Priorisation') | |
| df_out = get_output(df,df1,df2) | |
| # Display the uploaded DataFrame | |
| st.write("Estimation") | |
| st.dataframe(df_out) | |
| # Download section | |
| excel_file = io.BytesIO() | |
| df_out.to_excel(excel_file, index=False) | |
| st.download_button( | |
| label="Download XLSX", | |
| data=excel_file.getvalue(), | |
| file_name="downloaded_file.xlsx", | |
| mime="application/vnd.openxmlformats-officedocument.spreadsheetml.sheet", | |
| ) | |
| if __name__ == "__main__": | |
| main() |