Releases: rusty1s/pytorch_cluster
Releases · rusty1s/pytorch_cluster
1.6.3
12 Oct 06:54
Compare
Sorry, something went wrong.
No results found
Fix backward compatibility issue with PyTorch < 1.12
Remove torch.jit.script conversion of functions on module import
1.6.2
06 Oct 08:34
Compare
Sorry, something went wrong.
No results found
What's Changed
Add batch_size argument for fps, knn, radius functions (#175 )
Extend FPS with an extra ptr argument #180 )
Add PyTorch 2.1.0 support (#191 )
New Contributors
Full Changelog : 1.6.1...1.6.2
1.6.1
16 Mar 18:03
Compare
Sorry, something went wrong.
No results found
Added support for PyTorch 2.0
Added support for return the indices of sampled edges in random_walk (#139 )
Added bf16 support for knn, radius and graclus (#144 )
Add safety checks on batch layout in nearest (#168 )
1.6.0
11 Mar 11:56
Compare
Sorry, something went wrong.
No results found
Improve calculation of num_nodes in random_walk (in case num_nodes=None) (#112 )
Fix knn/radius calculation for batches with zero-point examples
Heavily improved efficiency of knn/radius calculation
Half-precision support (#119 )
1.5.9
01 Mar 13:58
Compare
Sorry, something went wrong.
No results found
Reduced the size of shared library files
CUDA wheels can now also operate on CPU-only devices
Added parallelization strategies for CPU functionalities
fps can now take in different ratios across different batched point sets, i.e. ratio can now be a torch.Tensor
Fixed a bug in which radius computed slightly different results across CPU and CUDA versions
1.5.8
31 Oct 12:11
Compare
Sorry, something went wrong.
No results found
PyTorch 1.7 wheels
random_walk now supports q != 1 and p != 1 via rejection sampling
1.5.7
05 Aug 07:35
Compare
Sorry, something went wrong.
No results found
PyTorch 1.6.0 wheels
Fixed a bug in radius where the max_num_neighbors argument has been ignored
1.5.6
17 Jul 04:35
Compare
Sorry, something went wrong.
No results found
This release fixes some issues in the new knn and radius CPU implementations that have led to memory leaks. It is strongly recommended to update the package in case you are currently using torch-cluster==1.5.5.
1.5.5
22 Jun 20:33
Compare
Sorry, something went wrong.
No results found
torch-cluster is now fully-jittable thanks to new implementations for knn and radius based on nanoflann rather than scipy.
1.5.4
01 Apr 17:58
Compare
Sorry, something went wrong.
No results found
Fixed a bug in the CUDA version of fps.