Release Announcement Click here to read the announcement in HTML (with hyperlinks): https://einsteintoolkit.org/about/releases/ET_2020_05_announcement.html We are pleased to announce the twentieth release (code name "Turing") of the Einstein Toolkit, an open, community developed software infrastructure for relativistic astrophysics. The highlights of this release are: Cactus now supports tracking of data dependencies at runtime using schedule annotations. These can be used to check correctness of a schedule and also to automate data synchronizations between MPI ranks. Two new thorns have been added: * Baikal, a spacetime evolution code using NRPy+ for code generation * BaikalVacuum, a version of Baikal optimized for vacuum only simulations In addition, bug fixes accumulated since the previous release in October 2019 have been included. The Einstein Toolkit is a collection of software components and tools for simulating and analyzing general relativistic astrophysical systems that builds on numerous software efforts in the numerical relativity community including the spacetime evolution codes Baikal, lean_public, and McLachlan, analysis codes to compute horizon characteristics and gravitational waves, the Carpet AMR infrastructure, and the relativistic magneto-hydrodynamics codes GRHydro and IllinoisGRMHD. The Einstein Toolkit also contains a 1D self-force code. For parts of the toolkit, the Cactus Framework is used as the underlying computational infrastructure providing large-scale parallelization, general computational components, and a model for collaborative, portable code development. The Einstein Toolkit uses a distributed software model and its different modules are developed, distributed, and supported either by the core team of Einstein Toolkit Maintainers, or by individual groups. Where modules are provided by external groups, the Einstein Toolkit Maintainers provide quality control for modules for inclusion in the toolkit and help coordinate support. The Einstein Toolkit Maintainers currently involve staff and faculty from five different institutions, and host weekly meetings that are open for anyone to join in. Guiding principles for the design and implementation of the toolkit include: open, community-driven software development; well thought-out and stable interfaces; separation of physics software from computational science infrastructure; provision of complete working production code; training and education for a new generation of researchers. For more information about using or contributing to the Einstein Toolkit, or to join the Einstein Toolkit Consortium, please visit our web pages at http://einsteintoolkit.org, or contact the users mailing list users@einsteintoolkit.org. The Einstein Toolkit is primarily supported by NSF 1550551/1550461/1550436/1550514 (Einstein Toolkit Community Integration and Data Exploration). The Einstein Toolkit contains about 300 regression test cases. On a large portion of the tested machines, almost all of these tests pass, using both MPI and OpenMP parallelization. The changes between this and the previous release include: Larger changes since last release * Automatic synchronization and correctness checking: For some time, Cactus has supported READS/WRITES declarations in the schedule. These declarations named grid functions and/or groups as well as the relevant region a function was reading and writing, e.g. "interior," "boundary," etc. In this release, we make it (1) possible to check the correctness of these declarations (both compile time and run time checks are implemented); and (2) we make it possible to automatically synchronize ghost zones and apply boundary conditions to grid functions when that is needed. By default, this functionality is off but can be enabled by setting the Cactus parameter "presync_mode." Please see the documentation for details. * Baikal - new thorn that solves Einstein's equations, using the BSSN 3+1 formalism, in Cartesian coordinates. + extensively documented in pedagogical Jupyter notebooks + borrows extensively from lean_public - makes extensive use of the Python and SymPy-based NRPy+ code generation infrastructure available on GitHub, which aims to provide a completely free, open-source means for converting expressions in Einstein-like tensorial notation into highly optimized C-code kernels. - implements most common (highly robust) options for numerical relativity GRHD and GRMHD simulations + moving-puncture gauge conditions (1+log lapse and Gamma-driving shift condition) enabled by default. + options of 2nd or 4th order finite-difference kernels, Kreiss-Oliger dissipation enabled by default via tunable parameter - validated to agree with ML_BSSN in case of BNS evolutions * BaikalVacuum - version of Baikal optimized for vacuum (e.g., black hole and binary black hole) spacetimes * ExternalLibraries - the HDF5 tarball included in the EinsteinToolkit has been updated to 1.10.5, which changed the hid_t types to 64bit integers - the hwloc tarball included in the EinsteinToolkit has been updated to 2.0.1, which is incompatible with version 1.X * new features and enhancements - thorn Vectors now supports vectorization on IBM POWER9 cpus used in Summit - Carpet will allocate less memory if `enable_no_storage = yes`, which is useful when testing parameter files using `cactus_sim -P parfile.par` - CarpetLib speedup during regridding by removing expensive debug checks - temperature finding for tabulated EOS in EOS_Omni become more robust for situations of almost degenerate internal energy functions - the MakeThornList utility was updated to support more use cases * important bugfixes - Carpet fix bug when using "along-z", "along-dir" and "manual" processor decomposition - AHFinderDirect has been fixed to avoid a long-standing issue where the number of metric timelevels needed to be set to 3 to avoid errors during recovery from a checkpoint - the parameter file for the Kasner example in Class. Quantum Grav. 29 115001 (2012) was corrected to produce the results shown in the paper - bug was found in Multipole's default "midpoint" integration scheme, lowering its integration order, the released version changes the default method as a workaround and a full fix will be backported after the release * Cactus - Cactus documentation now contains information on the git revisions used to produce documentation - a long standing bug in CCTK_TraverseString when traversing "all" groups was fixed - the testsuite mechanism provides options to run only some tests - the testsuite mechanism provides options to postprocess data before comparison, for example to compare HDF5 files - the testsuite mechanism will run all tests that request less than the available number of processes, running more tests - Cactus option lists can now refer to environment variables using ${ENV-VAR-NAME} - cross compiling support in Cactus has been improved - Cactus now supports building on Raspberry Pi out of the box * more thorn documentation available online * machine definition files were updated Deprecated functionality The following features are being marked as deprecated in this release and will be removed in the next release * the non-Piraha parser in CST, available only by modifying the CST source code, will be removed since it fails to correctly parse READS / WRITES clauses * READS / WRITES statements that refer to non-existing variables will cause compile time errors and no longer be ignored at runtime even if `presync_mode = off` * the fourth order accurate second derivative operators in SummationByParts will default to use the "Minimal Bandwidth" version, as already is the case for the other second derivatives Contributors This release includes contributions by Eloisa Bentivegna, Erik Schnetter, Federico Cipolletta, Frank Loeffler, Giuseppe Ficarra, Ian Hinder, Jascha Schewtschenko, Ken Sible, Lorenzo Sala, Miguel Zilhao, Philipp Moesta, Roland Haas, Samuel Cupp, Steven R. Brandt, and Zachariah Etienne. How to upgrade from Mayer (ET_2019_10) To upgrade from the previous release, use GetComponents with the new thornlist to check out the new version. See the Download page (http://einsteintoolkit.org/download.html) on the Einstein Toolkit website for download instructions. The SelfForce-1D code uses a single git repository, thus using `git pull ; git checkout ET_2020_05` will update the code. Machine notes Supported (tested) machines include: * Default Debian, Ubuntu, Fedora, CentOS 7, Mint, OpenSUSE and MacOS Mojave (MacPorts) installations * Bluewaters * Comet * Cori * Queen Bee 2 * Stampede 2 * Mike / Shelob * SuperMUC-NG * Wheeler Note for individual machines: * TACC machines: defs.local.ini needs to have `sourcebasedir = $WORK` and `basedir = $SCRATCH/simulations` configured for this machine. You need to determine $WORK and $SCRATCH by logging in to the machine. * SuperMUC-NG: defs.local.ini needs to have `sourcebasedir = $HOME` and `basedir = $SCRATCH/simulations` configured for this machine. You need to determine $HOME and $SCRATCH by logging in to the machine. * compiling with the gcc compiler version 9.3.0 or later can be very slow. A workaround is to replace -O2 in the option list by the individual optimization flags reported by `gcc -O2 --help=optimizers` All repositories participating in this release carry a branch ET_2020_05 marking this release. These release branches will be updated if severe errors are found. The "Turing" Release Team on behalf of the Einstein Toolkit Consortium (2020-05-31) * Roland Haas * Brockton Brendal * William E. Gabella * Beyhan Karakas * Atul Kedia * Shawn G. Rosofsky * Steven R. Brandt * Alois Peter Schaffarczyk * Helvi Witek May, 2020