The ALPS project release 2.0: Open source software for strongly correlated systems
B. Bauer, L. D. Carr, H.G. Evertz, A. Feiguin, J. Freire, S. Fuchs, L., Gamper, J. Gukelberger, E. Gull, S. Guertler, A. Hehn, R. Igarashi, S.V., Isakov, D. Koop, P.N. Ma, P. Mates, H. Matsuo, O. Parcollet, G. Pawlowski,, J.D. Picon, L. Pollet, E. Santos, V.W. Scarola

TL;DR
The ALPS 2.0 release provides an open source suite of libraries and tools for simulating strongly correlated quantum lattice models, supporting various algorithms and improving usability across platforms.
Contribution
This release introduces new data formats, evaluation tools, cross-platform support, and workflow integration, enhancing simulation capabilities and ease of use for researchers.
Findings
Supports classical and quantum Monte Carlo methods
Enables simulations on serial and parallel architectures
Includes tools for data evaluation and visualization
Abstract
We present release 2.0 of the ALPS (Algorithms and Libraries for Physics Simulations) project, an open source software project to develop libraries and application programs for the simulation of strongly correlated quantum lattice models such as quantum magnets, lattice bosons, and strongly correlated fermion systems. The code development is centered on common XML and HDF5 data formats, libraries to simplify and speed up code development, common evaluation and plotting tools, and simulation programs. The programs enable non-experts to start carrying out serial or parallel numerical simulations by providing basic implementations of the important algorithms for quantum lattice models: classical and quantum Monte Carlo (QMC) using non-local updates, extended ensemble simulations, exact and full diagonalization (ED), the density matrix renormalization group (DMRG) both in a static version…
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