Skip to content

Latest commit

 

History

History
117 lines (81 loc) · 3.73 KB

README.md

File metadata and controls

117 lines (81 loc) · 3.73 KB

Einconv: Convolutions Through the Lens of Tensor Networks

This package offers einsum-based implementations of convolutions and related operations in PyTorch.

Its name is inspired by this Github repository which represented the starting point for our work.

Installation

Install from PyPI via pip

pip install einconv

Examples

Features & Usage

In general, einconv's goals are:

  • Full hyper-parameter support (stride, padding, dilation, groups, etc.)
  • Support for any dimension (e.g. 5d-convolution)
  • Optimizations via symbolic simplification

Modules

einconv provides einsum-based implementations of the following PyTorch modules:

torch module einconv module
nn.Conv{1,2,3}d modules.ConvNd
nn.Unfold modules.UnfoldNd

They work in exactly the same way as their PyTorch equivalents.

Functionals

einconv provides einsum-based implementations of the following PyTorch functionals:

torch functional einconv functional
nn.functional.conv{1,2,3}d functionals.convNd
nn.functional.unfold functionals.unfoldNd

They work in exactly the same way as their PyTorch equivalents.

Einsum Expressions

einconv can generate einsum expressions (equation, operands, and output shape) for the following operations:

  • Forward pass of N-dimensional convolution
  • Backward pass (input and weight VJPs) of N-dimensional convolution
  • Input unfolding (im2col/unfold) for inputs of N-dimensional convolution
  • Input-based Kronecker factors of Fisher approximations for convolutions (KFC and KFAC-reduce)

These can then be evaluated with einsum. For instance, the einsum expression for the forward pass of an N-dimensional convolution is

from torch import einsum
from einconv.expressions import convNd_forward

equation, operands, shape = convNd_forward.einsum_expression(...)
result = einsum(equation, *operands).reshape(shape)

All expressions follow this pattern.

Symbolic Simplification

Some operations (e.g. dense convolutions) can be optimized via symbolic simplifications. This is turned on by default as it generally improves performance. You can also generate a non-optimized expression and simplify it:

from einconv import simplify

equation, operands, shape = convNd_forward.einsum_expression(..., simplify=False)
equation, operands = simplify(equation, operands)
result = einsum(equation, *operands).reshape(shape)

Sometimes it might be better to inspect the non-simplified expression to see how indices relate to operands.

Citation

If you find the einconv package useful for your research, consider mentioning the accompanying article

@article{dangel2023convolutions,
  title =        {Convolutions Through the Lens of Tensor Networks},
  author =       {Dangel, Felix},
  year =         2023,
}

Limitations

  • Currently, none of the underlying operations (computation of index pattern tensors, generation of einsum equations and shapes, simplification) is cached. This consumes additional time, although it should usually take much less time than evaluating an expression via einsum.

  • At the moment, the code to perform expression simplifications is coupled with PyTorch. I am planning to address this in the future by switching the implementation to a symbolic approach which will also allow efficient caching.