SLEAP v1.2.0a4
Pre-releasePre-release of SLEAP v1.2.0.
This includes updates to core libraries used in SLEAP, including TensorFlow to enable support for newer NVIDIA GPUs.
Warning: This is a pre-release! Expect bugs and strange behavior when testing.
Quick install
conda
(Windows/Linux/GPU):
conda create -y -n sleap -c sleap -c sleap/label/dev -c nvidia -c conda-forge sleap=1.2.0a4
pip
(any OS):
pip install sleap==1.2.0a4
Full changelog
-
Update Python, TensorFlow and others (#609): enables GPU support for Ampere and newer cards, e.g., 3080, A100, etc.
- Fixes #454
- Version changes:
python=3.6
→python=3.7
tensorflow=2.3.1
→tensorflow=2.7.0
(2.6.2 should also work)cudatoolkit=10.1
→cudatoolkit=11.3.1
cudnn=7.6
→cudnn=8.2.1
h5py=2.10.0
→h5py=3.1.0
(up to 3.6.0 should also work)numpy=1.18.1
→numpy=1.19.5
(up to 1.21.2 should also work)imgaug=0.3.0
→imgaug=0.4.0
attrs=19.3
→attrs=21.2.0
cattrs=1.0.0rc
→cattrs=1.1.1
rich=9.10.0
→rich=10.16.1
scipy=1.4.1
→scipy=1.7.1
(1.4.1 should also work)
-
Conda packages and environments now require
nvidia::cuda-nvcc=11.3
to enable platform specific optimizations (#623).- Note: This now requires the
-c nvidia
channel addition to conda commands.
- Note: This now requires the
-
Clean up CI/CD pipelines (#618):
- Now building on release or when build version is bumped
environment.yml
is not usingsleap::
channel packages and instead relies onpip
for flexibilityenvironment_no_cuda.yml
is not usingsleap::
packages and is now the default for CIenvironment_build.yml
DOES usesleap::
packages so we don't have to include tensorflow and pyside2 in the conda package for sleap
-
GUI enhancements (#618)
-
Labeling GUI node visibility fixes (#619)
- Add option for toggling display of non-visible user nodes to View menu.
- Deal with empty instances correctly. They are now not plotted at all, rather than plotted and then hidden.
- Fixes "ValueError: min() arg is an empty sequence" error
- Fixes "RuntimeWarning: All-NaN axis encountered" error
-
Additional numpy conversion and label manipulation functionality (#621)
- Add
LabeledFrame
convenience properties:user_instances
,n_user_instances
,has_user_instances
predicted_instances
,n_predicted_instances
,has_predicted_instances
tracked_instances
,n_tracked_instances
,has_tracked_instances
- Fix
LabeledFrame.numpy()
when there are no instances in the frame Labels.numpy()
revamp- Works with untracked and single instance data
- Allow for specifying video as integer
- Add
-
Training profile tweaks (#622)
- Standardize profiles and delete old ones
- Sigma defaults to 2.5 for all profiles
- Learning rate scheduler and early stopping now use threshold of 1e-8
- Rotation augmentation defaults to [-15, 15] so front facing videos work by default
- Change default inference target behavior (selected clip → current frame → none)
- Hardcode order for built-in profiles (Defaults are now the smaller models)
- Auto-detect single vs multi-instance model type for default tab from data
- Standardize profiles and delete old ones
-
Fix centroid model evaluation when GT instances have NaNs (#618)
-
Fix PAF instance assembly when skeleton is not topologically sorted (#618)
- Thanks E. Mae Guthman for the report!
-
Fix single instance model visualization during training (#620) (Fixes #604)
-
Drag and drop support for videos and projects (#632)
-
Fix failing grayscale conversion at inference time on GPU (#639) (Fixes #638)
-
Training job generation tweaks (#642)
- Training job package exports a
jobs.yaml
that describes the training/inference tasks. - Training CLI no longer specifies all video paths when building command. Fixes issue where paths are too long or there are too many videos.
- Training job package exports a
-
Fix path resolution in training & inference (#643) (Fixes #634)
-
Bump minor versions and relax some constraints (#647)
-
Use rich to print inference CLI inputs and provenance (#651)
-
Make PAF distance penalty more usable (#650)
- Adds CLI args:
--max_edge_length_ratio MAX_EDGE_LENGTH_RATIO
The maximum expected length of a connected pair of
points as a fraction of the image size. Candidate
connections longer than this length will be penalized
during matching. Only applies to bottom-up (PAF)
models.
--dist_penalty_weight DIST_PENALTY_WEIGHT
A coefficient to scale weight of the distance penalty.
Set to values greater than 1.0 to enforce the distance
penalty more strictly. Only applies to bottom-up (PAF)
models.
- Fix multi-video inference through the GUI (#655)
Installing
We recommend using Miniconda to install and manage your Python environments. This will also make GPU support work transparently without installing additional dependencies.
See the Installation page in the docs for more info.
Using Conda (Windows/Linux)
- Delete any existing environment and start fresh (recommended):
conda env remove -n sleap
- Create new environment called
sleap
(recommended):
conda create -y -n sleap -c sleap -c sleap/label/dev -c nvidia -c conda-forge sleap=1.2.0a4
Using PyPI (Windows/Linux/Mac)
- Create a new conda environment called
sleap
(recommended):
conda create -n sleap python=3.7
conda activate sleap
- Install from PyPI:
pip install sleap==1.2.0a4