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Releases: esa/torchquad

torchqad 0.4.1

25 Nov 17:22
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Changelog

Major

N/A

Minor

  • Fix compatibility with newer jax version (now requiring jax>=0.4.17)
  • Use tensorflows global precision setting and related bugfixes
  • Various CI fixes
  • Small doc fixes and formatting

Detailed changes

New Contributors

Full Changelog: v0.4.0...v0.4.1

torchquad v0.4.0

15 Jun 08:24
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Changelog

Major

  • Support for vectorized multiple integrand compute with one call
  • Better support for custom integrators
  • Added Gauss Legendre integration

Minor

  • Various changes to tests
  • Additional examples in docs and various docstring changes
  • Workflow improvements for repo
  • Added automatic test coverage investigation
  • Small bugfixes

Detailed changes

New Contributors

Full Changelog: v0.3.0...v0.4.0

torchquad v0.3.0

05 May 17:02
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Major

  • Added support for NumPy, JAX, Tensorflow via autoray for most integrators. Refer to docs for more details.
  • Support for (JIT) compilation of the integration, except VEGAS. Refer to docs for more details.
  • Huge performance improvements to VEGAS

Minor

  • More tests
  • New environment variable called TORCHQUAD_LOG_LEVEL to conveniently control loglevel, default changed to "warning"
  • More strict code linting with flake8 and a corresponding small code cleanup
  • Docs improvements
  • Custom RNG class
  • Refactoring of Newton-Cotes integrators

torchquad v0.2.4 - JOSS release

31 Aug 11:21
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Release for Zenodo archiving for the JOSS publication

torchquad v0.2.3

20 Aug 13:23
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Major

  • Added support and test for complex integrands (except in VEGAS, WIP)
  • Further vectorized VEGAS leading to significant performance improvements (still work to do though, currently VEGAS is faster on CPU)
  • Transitioned to PyTorch 1.9.0
  • Submitted paper to JOSS (currently in press)
  • Expanded docs (example for computing gradients, minimal working example)
  • Improved README

Minor

  • Added automated tests for computed gradients
  • Fixed gradient flow through all integrators (e.g. w.r.t domain)
  • Fixed setting loglevel
  • Switched to loguru as logger
  • Removed benchmark notebook (more extensive benchmarking will follow in the future)
  • Updated contribution guidelines
  • Several small fixes in the docs
  • Improved automated tests
  • Added some performance and convergence plots to README

JOSS Paper Version

13 Aug 08:21
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Tagged version for the JOSS proof. Based on torchquad 0.2.2 with some updates to documentations.

torchquad v0.2.1

04 Jun 14:59
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torchquad v0.2.1 Pre-release
Pre-release

Changelog

Major

Huge improvements to documentation
Added VEGAS Enhanced

Minor

Added Boole's rule
Migrated examples to docs
Updated requirements
Added option to set precision (float or double)
Improved comments
Added 10D unit test

torchquad v0.1.1-rc1

05 Feb 09:53
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torchquad v0.1.1-rc1 Pre-release
Pre-release
  • Fixes to workflows
  • Improved README
  • Fixes in requirements.txt
  • Fixes in setup.py
  • More verbose errors when calling integrators with incompatible inputs
  • Simpson's & Boole's Rule now automatically pick compatible numbers of points and will warn
  • Small improvements to unit tests

torchquad v0.1.0-rc1

21 Jan 11:01
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torchquad v0.1.0-rc1 Pre-release
Pre-release

First version of torchquad.

The first version of torchquad enables n-dimensional integrations using torch / CUDA utilizing several Newton-Cotes formulas or a simple Monte Carlo Integration. This should already enable huge speedups compared to CPU-only libraries. Also it should be differentiable using torch. Please feel free to test it and get back to us to help us improve it!