# Modeling a Mixture in Traditional Representation When modeling mixtures, we are often faced with a large set of ingredients to choose from. A common way to formalize this type of selection problem is to assign each ingredient its own numerical parameter representing the amount of the ingredient in the mixture. A sum constraint imposed on all parameters then ensures that the total amount of ingredients in the mix is always 100%. In addition, there could be other constraints, for instance, to impose further restrictions on individual subgroups of ingredients. In BayBE's language, we call this the *traditional mixture representation*. In this example, we demonstrate how to create a search space in this representation, using a simple mixture of up to six components, which are divided into three subgroups: solvents, bases and phase agents. ```{admonition} Slot-based Representation :class: seealso For an alternative way to describe mixtures, see our [slot-based representation](/examples/Mixtures/slot_based.md). ``` ## Imports ```python import numpy as np import pandas as pd ``` ```python from baybe.constraints import ContinuousLinearConstraint from baybe.parameters import NumericalContinuousParameter from baybe.recommenders import RandomRecommender from baybe.searchspace import SearchSpace ``` ## Parameter Setup We start by creating lists containing our substance labels according to their subgroups: ```python g1 = ["Solvent1", "Solvent2"] g2 = ["Base1", "Base2"] g3 = ["PhaseAgent1", "PhaseAgent2"] ``` Next, we create continuous parameters describing the substance amounts for each group. Here, the maximum amount for each substance depends on its group, i.e. we allow adding more of a solvent compared to a base or a phase agent: ```python p_g1_amounts = [ NumericalContinuousParameter(name=f"{name}", bounds=(0, 80)) for name in g1 ] p_g2_amounts = [ NumericalContinuousParameter(name=f"{name}", bounds=(0, 20)) for name in g2 ] p_g3_amounts = [ NumericalContinuousParameter(name=f"{name}", bounds=(0, 5)) for name in g3 ] ``` ## Constraints Setup Now, we set up our constraints. We start with the overall mixture constraint, ensuring the total of all ingredients is 100%: ```python c_total_sum = ContinuousLinearConstraint( parameters=g1 + g2 + g3, operator="=", coefficients=(1,) * len(g1 + g2 + g3), rhs=100, ) ``` Additionally, we require bases make up at least 10% of the mixture: ```python c_g2_min = ContinuousLinearConstraint( parameters=g2, operator=">=", coefficients=(1,) * len(g2), rhs=10, ) ``` By contrast, phase agents should make up no more than 5%: ```python c_g3_max = ContinuousLinearConstraint( parameters=g3, operator="<=", coefficients=(1,) * len(g3), rhs=5, ) ``` ## Search Space Creation Having both parameter and constraint definitions at hand, we can create our search space: ```python searchspace = SearchSpace.from_product( parameters=[*p_g1_amounts, *p_g2_amounts, *p_g3_amounts], constraints=[c_total_sum, c_g2_min, c_g3_max], ) ``` ## Verification of Constraints To verify that the constraints imposed above are fulfilled, let us draw some random points from the search space: ```python recommendations = RandomRecommender().recommend(batch_size=10, searchspace=searchspace) print(recommendations) ``` Base1 Base2 PhaseAgent1 PhaseAgent2 Solvent1 Solvent2 0 19.519367 18.167171 3.119076 0.612163 12.889691 45.692532 1 15.373142 17.833152 0.924135 2.594667 15.547199 47.727703 2 18.930910 13.045246 1.350305 0.423609 29.981793 36.268137 3 17.751128 4.136225 2.683412 0.503768 47.428024 27.497443 4 15.885320 13.701218 1.664423 1.208445 46.798699 20.741895 5 12.096205 14.626686 0.589949 0.039018 49.700376 22.947766 6 11.095543 3.943714 1.458548 2.090948 24.352448 57.058799 7 17.687504 6.485020 1.663079 1.243006 11.631593 61.289796 8 17.407053 16.847375 0.638465 1.921541 57.871391 5.314174 9 11.705085 7.910250 1.858054 2.913744 70.460786 5.152081 Computing the respective row sums reveals the expected result: ```python stats = pd.DataFrame( { "Total": recommendations.sum(axis=1), "Total_Bases": recommendations[g2].sum(axis=1), "Total_Phase_Agents": recommendations[g3].sum(axis=1), } ) print(stats) ``` Total Total_Bases Total_Phase_Agents 0 100.0 37.686538 3.731239 1 100.0 33.206295 3.518803 2 100.0 31.976156 1.773915 3 100.0 21.887353 3.187179 4 100.0 29.586538 2.872869 5 100.0 26.722891 0.628967 6 100.0 15.039257 3.549496 7 100.0 24.172525 2.906086 8 100.0 34.254428 2.560007 9 100.0 19.615336 4.771797 ```python assert np.allclose(stats["Total"], 100) assert (stats["Total_Bases"] >= 10).all() assert (stats["Total_Phase_Agents"] <= 5).all() ```