.. _dataset_snar: SnAr reaction ============= This dataset reports the e-factor for a nucleophilic aromatic substitution following the SnAr mechanism. Individual data points encode four process parameters for a flow reactor to run the reaction, along with the measured e-factor (defined as the ratio of the mass waste to the mass of product). [#f1]_ The dataset includes 67 samples with four parameters and one objective. =================== ========== ================ ==================================== Feature Kind Settings Description =================== ========== ================ ==================================== residence_time continuous [ 0.5, 2.0] residence time for flow apparatus [min] morpholine_equiv continuous [ 1.0, 5.0] morpholine equivalence concentration continuous [ 0.1, 0.5] concentration of reagents [M] temperature continuous [60.0, 140.0] temperature of the reactor [Celsius] =================== ========== ================ ==================================== ================= ========== ======== Objective Kind Goal ================= ========== ======== E-Factor continuous minimize ================= ========== ======== The dataset can be extracted from the supporting information of the publication: https://www.sciencedirect.com/science/article/pii/S1385894718312634 .. rubric:: Reference .. [#f1] A.M. Schweidtmann, A.D. Clayton, N. Holmes, E. Bradford, R.A. Bourne, A.A. Lapkin. Machine learning meets continuous flow chemistry: Automated optimization towards the Pareto front of multiple objectives. Chem. Eng. J. 352 (2018) 277-282.