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A flexible linear operator abstraction in pytorch.

Project description

torch-named-linops

A flexible linear operator abstraction implemented in PyTorch.

Heavily inspired by einops.

Unrelated to the (also good) torch_linops

Selected Feature List

  • Dedicated abstraction for naming linear operator dimensions.
  • A set of core linops, including:
    • Dense
    • Diagonal
    • FFT
    • ArrayToBlocks[^1] (similar to PyTorch's unfold but in 1D/2D/3D/arbitrary dimensions)
      • Useful for local patch extraction
    • Interpolate[^1] (similar to SigPy's interpolate/gridding)
      • Comes with kaiser_bessel and (1D) spline kernels.
  • .H and .N properties for adjoint $A^H$ and normal $A^HA$ linop creation.
  • Chain and Add for composing linops together.
  • Batch and MPBatch wrappers for splitting linops temporally on a single GPU, or across multiple GPUs (via torch.multiprocessing).
  • Full support for complex numbers. Adjoint takes the conjugate transpose.
  • Full support for autograd-based automatic differentiation.

[^1]: Includes a functional interface and triton backend for 1D/2D/3D.

Installation

Via pip

$ pip install torch-named-linops

From source (recommended for developers)

  1. Clone the repo with git clone
  2. Run pip install -e . from the root directory.
  • Or uv add path/to/cloned/repo
  1. Pull upstream changes as required.

Via pip's git integration (deprecated)

Run the following, replacing <TAG> with the appropriate version (e.g. `0.3.7``)

  • http version:
$ pip install git+https://github.com/nishi951/torch-named-linops.git@<TAG>
  • ssh version:
$ pip install git+ssh://git@github.com/nishi951/torch-named-linops.git@<TAG>

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