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      Automatic Differentiation in Quantum Chemistry with Applications to Fully Variational Hartree–Fock

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          Abstract

          Automatic differentiation (AD) is a powerful tool that allows calculating derivatives of implemented algorithms with respect to all of their parameters up to machine precision, without the need to explicitly add any additional functions. Thus, AD has great potential in quantum chemistry, where gradients are omnipresent but also difficult to obtain, and researchers typically spend a considerable amount of time finding suitable analytical forms when implementing derivatives. Here, we demonstrate that AD can be used to compute gradients with respect to any parameter throughout a complete quantum chemistry method. We present DiffiQult, a Hartree–Fock implementation, entirely differentiated with the use of AD tools. DiffiQult is a software package written in plain Python with minimal deviation from standard code which illustrates the capability of AD to save human effort and time in implementations of exact gradients in quantum chemistry. We leverage the obtained gradients to optimize the parameters of one-particle basis sets in the context of the floating Gaussian framework.

          Abstract

          DiffiQult is a Hartree−Fock plain Python implementation that computes exact gradients with respect to any input parameter using automatic differentiation, without any explicit analytical gradient.

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          Deep Learning in Neural Networks: An Overview

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          In recent years, deep artificial neural networks (including recurrent ones) have won numerous contests in pattern recognition and machine learning. This historical survey compactly summarises relevant work, much of it from the previous millennium. Shallow and deep learners are distinguished by the depth of their credit assignment paths, which are chains of possibly learnable, causal links between actions and effects. I review deep supervised learning (also recapitulating the history of backpropagation), unsupervised learning, reinforcement learning & evolutionary computation, and indirect search for short programs encoding deep and large networks.
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            Second‐order perturbation theory with a complete active space self‐consistent field reference function

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                Author and article information

                Journal
                ACS Cent Sci
                ACS Cent Sci
                oc
                acscii
                ACS Central Science
                American Chemical Society
                2374-7943
                2374-7951
                09 May 2018
                23 May 2018
                : 4
                : 5
                : 559-566
                Affiliations
                []Department of Chemistry and Chemical Biology, Harvard University , 12 Oxford Street, Cambridge, Massachusetts 02138, United States
                []Department of Chemistry-Ångström, The Theoretical Chemistry Programme, Uppsala Center for Computational Chemistry, UC3, Uppsala University , Box 518, 751 20, Uppsala, Sweden
                [§ ]Canadian Institute for Advanced Research , Toronto, Ontario M5G 1Z8, Canada
                Author notes
                Article
                10.1021/acscentsci.7b00586
                5968443
                29806002
                02475cdc-2274-4404-a4d7-57c4241ce08e
                Copyright © 2018 American Chemical Society

                This is an open access article published under an ACS AuthorChoice License, which permits copying and redistribution of the article or any adaptations for non-commercial purposes.

                History
                : 06 December 2017
                Categories
                Research Article
                Custom metadata
                oc7b00586
                oc-2017-00586m

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