The block2 code provides an efficient highly scalable implementation of the Density Matrix Renormalization Group (DMRG) for quantum chemistry, based on Matrix Product Operator (MPO) formalism.
The block2 code is developed as an improved version of StackBlock, where the low-level structure of the code has been completely rewritten. The block2 code is developed and maintained in Garnet Chan group at Caltech.
Main contributors:
- Huanchen Zhai @hczhai: DMRG and parallelization
- Henrik R. Larsson @h-larsson: DMRG-MRCI/MRPT, large site, Green's function in frequency and time for finite temp.
- Seunghoon Lee @seunghoonlee89: Stochastic perturbative DMRG
- Zhi-Hao Cui @zhcui: User interface
If you find this package useful for your scientific research, please cite the work as:
- H. Zhai, H. R. Larsson, S. Lee, Z.-H. Cui, T. Zhu, C. Sun, L. Peng, R. Peng, K. Liao, J. Tölle, J. Yang, S. Li, and G. K.-L. Chan. Block2: A comprehensive open source framework to develop and apply state-of-the-art DMRG algorithms in electronic structure and beyond. The Journal of Chemical Physics 159, 234801 (2023). doi: 10.1063/5.0180424
For parallel ab initio DMRG, please cite
- H. Zhai, and G. K.-L. Chan. Low communication high performance ab initio density matrix renormalization group algorithms. The Journal of Chemical Physics 154, 224116 (2021). doi: 10.1063/5.0050902.
For large site DMRG-MRCI/MRPT, please cite
- H. R. Larsson, H. Zhai, K. Gunst, and G. K.-L. Chan. Matrix product states with large sites. Journal of Chemical Theory and Computation 18, 749-762 (2022). doi: 10.1021/acs.jctc.1c00957.
For DMRG with spin-orbit-coupling, please cite
- H. Zhai, and G. K.-L. Chan. A comparison between the one- and two-step spin-orbit coupling approaches based on the ab initio Density Matrix Renormalization Group. The Journal of Chemical Physics 157, 164108 (2022). doi: 10.1063/5.0107805.
You can find a bibtex file in CITATIONS.bib
.
One can install block2
using pip
(note: for very new Python versions, the --extra-index-url
option of pip
is required, see below for installing the developement version of block2
):
-
OpenMP-only version (no MPI dependence)
pip install block2
-
Hybrid openMP/MPI version (requiring openMPI 5.0.x for
block2-mpi >= 0.5.3
or 4.1.x forblock2-mpi <= 0.5.2
andblock2-mpi <= 0.5.3rc19
)pip install block2-mpi
-
Binary format is prepared via
pip
for python 3.8, 3.9, 3.10, 3.11, 3.12, and 3.13 with macOS (x86 and arm64, no-MPI), Linux (no-MPI/openMPI), or Windows (x86, no-MPI). If these binaries have some problems, you can use the--no-binary
option ofpip
to force building from source (for example,pip install block2 --no-binary block2
). -
One should only install one of
block2
andblock2-mpi
.block2-mpi
covers all features inblock2
, but its dependence on mpi library can sometimes be difficult to deal with. Some guidance for resolving environment problems can be found in issue #7 and here. -
To install the most recent development version, use:
pip install block2==<version> --extra-index-url=https://block-hczhai.github.io/block2-preview/pypi/ pip install block2-mpi==<version> --extra-index-url=https://block-hczhai.github.io/block2-preview/pypi/
where
<version>
can be some development version number like0.5.3rc20
(see https://github.com/block-hczhai/block2-preview/tags for a complete list of version numbers. The letterp
is not needed). To force reinstalling an updated version, you may considerpip
options--upgrade --force-reinstall --no-deps --no-cache-dir
.
The detailed instructions on manual installation can be found here.
To run a DMRG calculation using the command line interface, please use the following command:
block2main dmrg.conf > dmrg.out
where dmrg.conf
is the StackBlock
style input file and dmrg.out
contains the outputs.
Example input files can be found here.
For DMRGSCF calculation, please have a look at here.
For a list of DMRG references for methods implemented in block2
, see: https://block2.readthedocs.io/en/latest/user/references.html
Documentation: https://block2.readthedocs.io/en/latest/
Tutorial (python interface): https://block2.readthedocs.io/en/latest/tutorial/qc-hamiltonians.html
Example script for models: Fermi-Hubbard, Bose-Hubbard, Hubbard-Holstein, SU(2) Heisenberg, SU(3) Heisenberg, t-J.
Source code: https://github.com/block-hczhai/block2-preview
For a simplified implementation of ab initio DMRG, see pyblock3. Data can be imported and exported between block2
and pyblock3
, see #35.
- State symmetry
- U(1) particle number symmetry
- SU(2) or U(1) spin symmetry (spatial orbital)
- No spin symmetry (general spin orbital)
- Abelian point group symmetry
- Translational (K point) / Lz symmetry
- Sweep algorithms (1-site / 2-site / 2-site to 1-site transition)
- Ground-State DMRG
- Decomposition types: density matrix / SVD
- Noise types: wavefunction / density matrix / perturbative
- Multi-Target Excited-State DMRG
- State-averaged / state-specific
- MPS compression / addition
- Expectation
- Imaginary / real time evolution
- Hermitian / non-Hermitian Hamiltonian
- Time-step targeting method
- Time dependent variational principle method
- Green's function
- Ground-State DMRG
- Finite-Temperature DMRG (ancilla approach)
- Green's function
- Time evolution
- Low-Temperature DMRG (partition function approach)
- Particle Density Matrix (1-site / 2-site)
- 1PDM / 2PDM / 3PDM / 4PDM
- Transition 1PDM / 2PDM / 3PDM / 4PDM
- Spin / charge correlation
- Quantum Chemistry MPO
- Normal-Complementary (NC) partition
- Complementary-Normal (CN) partition
- Conventional scheme (switch between NC and CN near the middle site)
- Symbolic MPO simplification
- MPS initialization using occupation number
- Supported matrix representation of site operators
- Block-sparse (outer) / dense (inner)
- Block-sparse (outer) / elementwise-sparse (CSR, inner)
- Fermionic MPS algebra (non-spin-adapted only)
- Determinant/CSF coefficients of MPS
- Extracting Determinant/CSF coefficients from MPS
- Constructing MPS from Determinant/CSF coefficients
- Multi-level parallel DMRG
- Parallelism over sites (2-site only)
- Parallelism over sum of MPOs (distributed)
- Parallelism over operators (distributed/shared memory)
- Parallelism over symmetry sectors (shared memory)
- Parallelism within dense matrix multiplications (MKL)
- DMRG-CASSCF and contracted dynamic correlation
- DMRG-CASSCF (pyscf / openMOLCAS / forte interface)
- DMRG-CASSCF nuclear gradients and geometry optimization (pyscf interface, RHF reference only)
- DMRG-sc-NEVPT2 (pyscf interface, classical approach)
- DMRG-sc-MPS-NEVPT2 (pyscf interface, MPS compression approximation)
- DMRG-CASPT2 (openMOLCAS interface)
- DMRG-cu-CASPT2 (openMOLCAS interface)
- DMRG-MRDSRG (forte interface)
- Stochastic perturbative DMRG
- DMRG with Spin-Orbit Coupling (SOC)
- 1-step approach (full complex one-MPO and hybrid real/complex two-MPO schemes)
- 2-step approach
- Uncontracted dynamic correlation
- DMRG Multi-Reference Configuration Interaction (MRCI) of arbitrary order
- DMRG Multi-Reference Averaged Quadratic Coupled Cluster (AQCC)/ Coupled Pair Functional (ACPF)
- DMRG NEVPT2/3/..., REPT2/3/..., MR-LCC, ...
- Orbital Reordering
- Fiedler
- Genetic algorithm
- MPS Transformation
- SU2 to SZ mapping
- Point group mapping
- Orbital basis rotation
A StackBlock 1.5 compatible user interface can be found at pyblock2/driver/block2main
.
This script can work as a replacement of the StackBlock binary, with a few limitations and some extensions.
The format of the input file dmrg.conf
is identical to that of StackBlock 1.5.
See docs/driver.md
and docs/source/user/basic.rst
for detailed documentations for this interface.
Examples using this interface can be found at tests/driver
.
Instuctions for installing the StackBlock code can be found in here. A list of precompiled binaries of StackBlock can be found in here.