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Traffic4Cast2021-SwinUNet3D (AI4EX Team)

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General Info

This resipository contains our code submitted to Traffic4cast2021 competition (https://www.iarai.ac.at/traffic4cast/2021-competition/challenge/#challenge) This work is made available under the attached license

Requirements

This resipository depends on the following packages availability

  • Pytorch Lightning
  • timm
  • torch_optimizer
  • pytorch_model_summary
  • einops

Installation:

unzip folder.zip
cd folder
conda create --name swinencoder_env python=3.6
conda activate swinunet3d_env
conda install pytorch=1.9.0 cudatoolkit=10.2 -c pytorch
pip install -r requirements.txt

Usage

  • a.1)train from scratch (together with inference predictions)
    python Traffic4Cast2021/main1.py --nodes 1 --gpus 4 --precision 16 --batch-size 5 --epochs 100 --mlp_ratio 1 --stages 4 --patch_size 4 --dropout 0.0 --start_filters 192 --sampling-step 1 --decode_depth 1 --use_neck --lr 1e-4 --optimizer lamb --merge_type both --mix_features --city_category TEMPORAL --memory_efficient
    
  • a.2) fine tune a model from a checkpoint
    python main.py --gpus 1 --city_category TEMPORAL --mode train --name TEMPORAL_real_swinunet3d_141848694 --time-code 20210913T135845 --initial-epoch 36```
    
    
  • b) evaluate a trained model from a checkpoint (submitted inference)
    python main.py --gpus 1 --city_category TEMPORAL --mode test --name TEMPORAL_real_swinunet3d_141848694 --time-code 20210913T135845 --initial-epoch 36
    

Inference

  • a) To generate predictions using our trained model
python main.py --gpus 1 --city_category TEMPORAL --mode test --name TEMPORAL_real_swinunet3d_141848694 --time-code 20210913T135845 --initial-epoch 36
  • b) To create submission in form of a zipped file from files generater in (a)
python create_submission.py --name TEMPORAL_real_swinunet3d_141848694 --time-code 20210913T135845 --epoch 36

Accessing the trained checkpoint

Our trained model can be downloaded from https://drive.google.com/file/d/10zM-oiEjRD1rDlDw1bnx06Dl8Z3K3tNQ/view?usp=sharing

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