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README

Optimized Einsum

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Optimized Einsum: A tensor contraction order optimizer

Optimized einsum can significantly reduce the overall execution time of einsum-like expressions (e.g., np.einsum, dask.array.einsum, pytorch.einsum, tensorflow.einsum, ) by optimizing the expression's contraction order and dispatching many operations to canonical BLAS, cuBLAS, or other specialized routines.

Optimized einsum is agnostic to the backend and can handle NumPy, Dask, PyTorch, Tensorflow, CuPy, Sparse, Theano, JAX, and Autograd arrays as well as potentially any library which conforms to a standard API. See the documentation for more information.

Example usage

The opt_einsum.contract function can often act as a drop-in replacement for einsum functions without further changes to the code while providing superior performance. Here, a tensor contraction is performed with and without optimization:

import numpy as np
from opt_einsum import contract

N = 10
C = np.random.rand(N, N)
I = np.random.rand(N, N, N, N)

%timeit np.einsum('pi,qj,ijkl,rk,sl->pqrs', C, C, I, C, C)
1 loops, best of 3: 934 ms per loop

%timeit contract('pi,qj,ijkl,rk,sl->pqrs', C, C, I, C, C)
1000 loops, best of 3: 324 us per loop

In this particular example, we see a ~3000x performance improvement which is not uncommon when compared against unoptimized contractions. See the backend examples for more information on using other backends.

Features

The algorithms found in this repository often power the einsum optimizations in many of the above projects. For example, the optimization of np.einsum has been passed upstream and most of the same features that can be found in this repository can be enabled with np.einsum(..., optimize=True). However, this repository often has more up to date algorithms for complex contractions.

The following capabilities are enabled by opt_einsum:

Please see the documentation for more features!

Installation

opt_einsum can either be installed via pip install opt_einsum or from conda conda install opt_einsum -c conda-forge. See the installation documentation for further methods.

Citation

If this code has benefited your research, please support us by citing:

Daniel G. A. Smith and Johnnie Gray, opt_einsum - A Python package for optimizing contraction order for einsum-like expressions. Journal of Open Source Software, 2018, 3(26), 753

DOI: https://doi.org/10.21105/joss.00753

Contributing

All contributions, bug reports, bug fixes, documentation improvements, enhancements, and ideas are welcome.

A detailed overview on how to contribute can be found in the contributing guide.

Core symbols most depended-on inside this repo

Shape

Function 242
Method 34
Class 9

Languages

Python100%

Modules by API surface

opt_einsum/paths.py46 symbols
opt_einsum/tests/test_paths.py36 symbols
opt_einsum/contract.py28 symbols
opt_einsum/tests/test_backends.py18 symbols
opt_einsum/tests/test_sharing.py17 symbols
opt_einsum/path_random.py17 symbols
opt_einsum/sharing.py16 symbols
opt_einsum/tests/test_contract.py14 symbols
opt_einsum/parser.py13 symbols
opt_einsum/tests/test_input.py11 symbols
opt_einsum/backends/tensorflow.py10 symbols
opt_einsum/tests/test_edge_cases.py8 symbols

For agents

$ claude mcp add opt_einsum \
  -- python -m otcore.mcp_server <graph>

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