Releases
v0.20.0
beniz
released this
17 Dec 20:18
Features
feat: add elapsed time to training metrics (fe5fc41 )
feat: add onnx export for torchvision models (07f69b1 )
feat: add yolox export script for training and inference (0b2f20b )
feat: add yolox onnx export and trt support (80b7e6a )
api: chain uses dto end to end (5efbf28 )
ml: data augmentation for training segmentation models with torch backend (b55c218 )
ml: DETR export and inference with torch backend (1e4ea4e )
feat : full cuda pipeline for tensorrt (93815d7 )
ml: noise image data augmentation for training with torch backend (2d9757d )
ml: training segmentation models with torch backend (1e3ff16 )
ml: activate cutout for object detector training with torch backend (8a34aa1 )
ml: distortion noise for image training with torch backend (35a16df )
ml: dice loss https://arxiv.org/abs/1707.03237 (542bcb4 )
ml: manage models with multiple losses (bea7cb4 )
Bug Fixes
cpu: cudnn is now on by default, auto switch it to off in case of cpu_only (3770baf )
tensorrt: read onnx model to find topk (5cce134 )
simsearch ivf index craft after reload, disabling mmap (8a2e665 )
tensorrt: yolox postprocessing in C++ (1d781d2 )
torch: add include sometimes needed (74487dc )
add mltype in metrics.json even if training is not over (9bda7f7 )
clang formatting of mlmodel (130626b )
torch: avoid crashes caused by an exception in the training loop (667b264 )
torch: bad bbox rescaling on multiple uris (05451ed )
torch: correct output name for onnx classification model (a03eb87 )
torch: prevent crash during training if an exception is thrown (4ce7802 )
Docker images:
CPU version: docker pull jolibrain/deepdetect_cpu:v0.20.0
GPU (CUDA only): docker pull jolibrain/deepdetect_gpu:v0.20.0
GPU (CUDA and Tensorrt) :docker pull jolibrain/deepdetect_cpu_tensorrt:v0.20.0
GPU with torch backend: docker pull jolibrain/deepdetect_gpu_torch:v0.20.0
All images available on https://hub.docker.com/u/jolibrain
You can’t perform that action at this time.