# solvers.ResponsibleEngineeringModel { #mlsysim.solvers.ResponsibleEngineeringModel } ```python solvers.ResponsibleEngineeringModel() ``` Models the computational cost of responsible AI practices (Wall 20: Safety). This model quantifies the 'Safety Tax' — the additional compute and data required for differential privacy or fairness guarantees. Literature Source: 1. Abadi et al. (2016), "Deep Learning with Differential Privacy." 2. Anil et al. (2022), "Large-Scale Differentially Private BERT." ## Methods | Name | Description | | --- | --- | | [solve](#mlsysim.solvers.ResponsibleEngineeringModel.solve) | Calculates the overhead of responsible engineering practices. | ### solve { #mlsysim.solvers.ResponsibleEngineeringModel.solve } ```python solvers.ResponsibleEngineeringModel.solve( base_training_time, epsilon=1.0, delta=1e-05, min_subgroup_prevalence=0.01, ) ``` Calculates the overhead of responsible engineering practices.