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Multi-GPU Training 🌟
📚 This guide explains how to properly use multiple GPUs to train a dataset with YOLOv5 🚀 on single or multiple machine(s). UPDATED 25 December 2022.
Before You Start
Clone repo and install requirements.txt in a Python>=3.7.0 environment, including PyTorch>=1.7. Models and datasets download automatically from the latest YOLOv5 release.
git clone https://github.com/ultralytics/yolov5 # clone
cd yolov5
pip install -r requirements.txt # install
đź’ˇ ProTip! Docker Image is recommended for all Multi-GPU trainings. See Docker Quickstart Guide
đź’ˇ ProTip!
torch.distributed.run replaces torch.distributed.launch in PyTorch>=1.9. See docs for details.
Training
Select a pretrained model to start training from. Here we select YOLOv5s, the smallest and fastest model available. See our README table for a full comparison of all models. We will train this model with Multi-GPU on the COCO dataset.

Single GPU
$ python train.py --batch 64 --data coco.yaml --weights yolov5s.pt --device 0
Multi-GPU DataParallel Mode (⚠️ not recommended)
You can increase the device to use Multiple GPUs in DataParallel mode.
$ python train.py --batch 64 --data coco.yaml --weights yolov5s.pt --device 0,1
This method is slow and barely speeds up training compared to using just 1 GPU.
Multi-GPU DistributedDataParallel Mode (âś… recommended)
You will have to pass python -m torch.distributed.run --nproc_per_node, followed by the usual arguments.
$ python -m torch.distributed.run --nproc_per_node 2 train.py --batch 64 --data coco.yaml --weights yolov5s.pt --device 0,1
--nproc_per_node specifies how many GPUs you would like to use. In the example above, it is 2.
--batch is the total batch-size. It will be divided evenly to each GPU. In the example above, it is 64/2=32 per GPU.
The code above will use GPUs 0... (N-1).
Use specific GPUs (click to expand)
You can do so by simply passing --device followed by your specific GPUs. For example, in the code below, we will use GPUs 2,3.
$ python -m torch.distributed.run --nproc_per_node 2 train.py --batch 64 --data coco.yaml --cfg yolov5s.yaml --weights '' --device 2,3
Use SyncBatchNorm (click to expand)
SyncBatchNorm could increase accuracy for multiple gpu training, however, it will slow down training by a significant factor. It is only available for Multiple GPU DistributedDataParallel training.
It is best used when the batch-size on each GPU is small (<= 8).
To use SyncBatchNorm, simple pass --sync-bn to the command like below,
$ python -m torch.distributed.run --nproc_per_node 2 train.py --batch 64 --data coco.yaml --cfg yolov5s.yaml --weights '' --sync-bn
Use Multiple machines (click to expand)
This is only available for Multiple GPU DistributedDataParallel training.
Before we continue, make sure the files on all machines are the same, dataset, codebase, etc. Afterwards, make sure the machines can communicate to each other.
You will have to choose a master machine(the machine that the others will talk to). Note down its address(master_addr) and choose a port(master_port). I will use master_addr = 192.168.1.1 and master_port = 1234 for the example below.
To use it, you can do as the following,
# On master machine 0
$ python -m torch.distributed.run --nproc_per_node G --nnodes N --node_rank 0 --master_addr "192.168.1.1" --master_port 1234 train.py --batch 64 --data coco.yaml --cfg yolov5s.yaml --weights ''
# On machine R
$ python -m torch.distributed.run --nproc_per_node G --nnodes N --node_rank R --master_addr "192.168.1.1" --master_port 1234 train.py --batch 64 --data coco.yaml --cfg yolov5s.yaml --weights ''
where G is number of GPU per machine, N is the number of machines, and R is the machine number from 0...(N-1).
Let's say I have two machines with two GPUs each, it would be G = 2 , N = 2, and R = 1 for the above.
Training will not start until all N machines are connected. Output will only be shown on master machine!
Notes
- Windows support is untested, Linux is recommended.
--batchmust be a multiple of the number of GPUs.- GPU 0 will take slightly more memory than the other GPUs as it maintains EMA and is responsible for checkpointing etc.
- If you get
RuntimeError: Address already in use, it could be because you are running multiple trainings at a time. To fix this, simply use a different port number by adding--master_portlike below,
$ python -m torch.distributed.run --master_port 1234 --nproc_per_node 2 ...
Results
DDP profiling results on an AWS EC2 P4d instance with 8x A100 SXM4-40GB for YOLOv5l for 1 COCO epoch.
Profiling code
# prepare
t=ultralytics/yolov5:latest && sudo docker pull $t && sudo docker run -it --ipc=host --gpus all -v "$(pwd)"/coco:/usr/src/coco $t
pip3 install torch==1.9.0+cu111 torchvision==0.10.0+cu111 -f https://download.pytorch.org/whl/torch_stable.html
cd .. && rm -rf app && git clone https://github.com/ultralytics/yolov5 -b master app && cd app
cp data/coco.yaml data/coco_profile.yaml
# profile
python train.py --batch-size 16 --data coco_profile.yaml --weights yolov5l.pt --epochs 1 --device 0
python -m torch.distributed.run --nproc_per_node 2 train.py --batch-size 32 --data coco_profile.yaml --weights yolov5l.pt --epochs 1 --device 0,1
python -m torch.distributed.run --nproc_per_node 4 train.py --batch-size 64 --data coco_profile.yaml --weights yolov5l.pt --epochs 1 --device 0,1,2,3
python -m torch.distributed.run --nproc_per_node 8 train.py --batch-size 128 --data coco_profile.yaml --weights yolov5l.pt --epochs 1 --device 0,1,2,3,4,5,6,7
| GPUs A100 |
batch-size | CUDA_mem device0 (G) |
COCO train |
COCO val |
|---|---|---|---|---|
| 1x | 16 | 26GB | 20:39 | 0:55 |
| 2x | 32 | 26GB | 11:43 | 0:57 |
| 4x | 64 | 26GB | 5:57 | 0:55 |
| 8x | 128 | 26GB | 3:09 | 0:57 |
FAQ
If an error occurs, please read the checklist below first! (It could save your time)
Checklist (click to expand)
- Have you properly read this post?
- Have you tried to reclone the codebase? The code changes daily.
- Have you tried to search for your error? Someone may have already encountered it in this repo or in another and have the solution.
- Have you installed all the requirements listed on top (including the correct Python and Pytorch versions)?
- Have you tried in other environments listed in the "Environments" section below?
- Have you tried with another dataset like coco128 or coco2017? It will make it easier to find the root cause.
If you went through all the above, feel free to raise an Issue by giving as much detail as possible following the template.
Environments
YOLOv5 may be run in any of the following up-to-date verified environments (with all dependencies including CUDA/CUDNN, Python and PyTorch preinstalled):
- Notebooks with free GPU:
- Google Cloud Deep Learning VM. See GCP Quickstart Guide
- Amazon Deep Learning AMI. See AWS Quickstart Guide
- Docker Image. See Docker Quickstart Guide
Status
If this badge is green, all YOLOv5 GitHub Actions Continuous Integration (CI) tests are currently passing. CI tests verify correct operation of YOLOv5 training, validation, inference, export and benchmarks on MacOS, Windows, and Ubuntu every 24 hours and on every commit.
Credits
I would like to thank @MagicFrogSJTU, who did all the heavy lifting, and @glenn-jocher for guiding us along the way.
There will be multiple/redundant outputs. It does not affect training. This is a WIP.
I suggest we use will be fixed in the future instead of WIP. Many probably don't know what is WIP.
By the way, explain all the abbreviations. We must assume Users know nothing!
Multiple GPUs DistributedDataParallel Mode (Recommended!!)
I suggest we should explictly make it clear that DDP is faster than DP. Use this title
Multiple GPUs DistributedDataParallel Mode (Faster than DP, Recommended!!)
The tutorial is excellent! Good job!
Traceback (most recent call last):
File "train.py", line 482, in
Traceback (most recent call last):
File "train.py", line 468, in
store = TCPStore(master_addr, master_port, world_size, start_daemon, timeout)
RuntimeError: Address already in use
Hello @feizhouxiaozhu , I think this may be because you are running multiple trainings at a time, and they are communicating to the same port. To fix this, you can run in a different port.
Using the example from above, add --master_port ####, where #### is a random port number.
$ python -m torch.distributed.launch --master_port 42342 --nproc_per_node 2 ...
Please tell me if this fixed the problem. If it doesn't, can you tell us how to replicate this problem?
Hmm, I'm not sure why that is. @feizhouxiaozhu , could you try to re-clone the repo then try again?
If error still occurs, could you try to run on coco128? Run the code below in terminal.
cd yolov5
python3 -c "from utils.google_utils import *; gdrive_download('1n_oKgR81BJtqk75b00eAjdv03qVCQn2f', 'coco128.zip')" && mv -n ./coco128 ../
export PYTHONPATH="$PWD"
python -m torch.distributed.launch --master_port 9990 --nproc_per_node 2 train.py --weights yolov5s.pt --cfg yolov5s.yaml --epochs 1 --img 320
I'm currently running 8 GPU DDP custom data training, and there is no issue.
Edit: Reply was removed. @feizhouxiaozhu , is the problem solved?
Excellent guide guys, thank you so much! I was training on a DGX1 and was wondering why there wasn't much of a speed difference.
@cesarandreslopez oh wow, lucky you. Are you seeing faster speeds now with the updated multi gpu training?
@glenn-jocher in DataParallel model, every Epoch, with about 51000 images in yolov5l.yaml was taking on the DGX1 about 6 and a half minutes.
on DistributedDataParallel Mode with SyncBatchNorm I am seeing about 3 minutes and 10 seconds, so quite an improvement.
I've seen no improvement in Testing speed.
On @NanoCode012's guide there is this note:
--batch-size is now the Total batch-size. It will be divided evenly to each GPU. In the example above, it is 64/2=32 per GPU.
Based on that I assumed that batch size could be something like --batch 1024, (128 per GPU), but I kept getting Cuda out of memory after an epoch was completed and it started to test, so I eventually just went with --batch 128.
Apparent GPU use during training and testing.
During training, GPU 0 seems to have a considerably higher RAM use than other GPUS (which limits the batch size to be around the same that one GPU could handle). The processing itself seems distributed on all GPUs

GPU consumption during testing looks like this, where GPU 0 has very high memory use but it doesn't seem to process while the other 7 GPUS seem busy with the amount of memory expected for a batch of that size:

Our training size for this example is about 51000 images and our testing sample is about 5100. Testing takes about 4 minutes and a half, an epoch on training takes about 3 minutes and 10 seconds
Given the amount of time this spends on testing I am wondering if it is possible or even useful to set testing every n epochs. We are currently studying up on this repository and will understand it enough soon to be able to offer PRs.
@glenn-jocher Happy to provide you remote access to the machine for your tests and so on. It's the least we can do! Just PM me.
Hi @cesarandreslopez , nice numbers!
The reason GPU 0 has higher memory is because it has to communicate with other GPUs to coordinate. In my test however, I don’t see that vast of a difference in GPU memory like you do. The latest one is 31GB (GPU 0) and 20 GB (others). Maybe SynBN is increasing GPU load or dataloaders for testing(?).
Batch size is indeed divided evenly. Is it possible to run 128 batch size on your single GPU because that is quite large for yolov5l.
Testing is done on only 1 GPU(GPU0 tests , other gpu continue train) , so that may be why you experience slow testing times. It’s is currently being worked on to use multiple GPUs there.
It is an interesting concept to test every n epochs and can certainly be done. However, maybe randomness will cause you to miss the “best” epoch, so I’m not sure if it’s good.
Edit: If you would like to do so, it’s on line 339 in Train.py, add a (epoch%interval==0) condition
Edit2: How is speed without SynBN? Since the individual batch size is around 128/8 > 8, I’m not sure if accuracy would be affected.
Edit3: If you have multiple machines you want to run this training on, there is an experimental PR you could try.
@cesarandreslopez ok got it, thanks for the feedback. I think I know why your testing is CUDA OOM. Before the DDP updates train and test.py shared the same batch-size (default 32), it seems likely this is still the case, except that test.py is inheriting global batch size instead of local batch size. So I suspect you should be able to train with much larger batch sizes once this bug is fixed. @NanoCode012 does that make sense about the global vs local batch sizes being passed to test.py?
Testing every n epochs is a good idea. You can currently use python test.py --notest to train without testing until the very final epoch, but we don't have a middle ground. Testing may not benefit as much from multi-gpu compared to training, because NMS ops run sequentially rather than in parallel, and tend to dominate testing time. An alternative to testing every n epochs is simply to supply a higher --conf-thres to test at. Default is 0.001, perhaps setting to 0.01 will halve your testing time.
That's a very generous offer! I'm pretty busy these days so I can't take you up on it immediately, but I'll keep that in mind in the future, thank you! It would definitely be nice to have access to something like that.
@glenn-jocher , I just noticed that! That may be why the memory is so different. But now it’s up to optimizations. For small “total batch size”, it makes sense to pass in the entire thing. For large “total”, it doesn’t make sense.
I think one easy solution is to let user pass in one argument “—test-total”, to test their total batch size vs their divided batchsize. But it can get confusing for newcomers.
Edit: What do you think?
@NanoCode012 if we replace total_batch_size with batch_size on L194:
https://github.com/ultralytics/yolov5/blob/fd532d9ce3b025c1040ed9c7c3cf80fd7b0c39ae/train.py#L191-L196
And L341 would that solve @cesarandreslopez issue about testing OOM? https://github.com/ultralytics/yolov5/blob/fd532d9ce3b025c1040ed9c7c3cf80fd7b0c39ae/train.py#L339-L348
If we do so, datasets for testing could take num_gpu times longer. (I remember training/testing with total batchsize 16 for coco taking 1h) .
I think giving user an option is good, but we should set test to use totalbatchsize to be on by default.. Only when user has OOM, should they configure it. “—notest—total” sounds good?
@NanoCode012 ok got it. I think the most common use case is for users to maximize training cuda mem, so since test.py is currently restricted to single-gpu it would make sense to default it to batch_size rather than total_batch_size. But I suppose we should wait for @MagicFrogSJTU work on test.py before really modifying, since it will get a makeover shortly here. I think it's best to try and simplify the options when possible so it 'just works' as steve jobs would say, so let's avoid adding extra arguments if possible.
@cesarandreslopez I think for the time being you could apply the L194 and L341 fix described above, we have a few more significant PRs due in the coming week, so a more permanent fix for this should be included in those.
@NanoCode012 does that make sense about the global vs local batch sizes being passed to test.py?
@glenn-jocher After my fix, the training.py would run parallel test and global_batch_size would be split into small local_batch_size in the test time just like the training time. Problem solved.
@glenn-jocher please note that when --notest is used on the current master branch it will crash after completing the first epoch.
Traceback (most recent call last):
File "train.py", line 469, in <module>
train(hyp, tb_writer, opt, device)
File "train.py", line 371, in train
with open(results_file, 'r') as f: # create checkpoint
FileNotFoundError: [Errno 2] No such file or directory: 'runs/exp0/results.txt'
I tried doing a touch results.txt under the /runs/expoN/ folder that will avoid the error above, but then a new one will appear:
Traceback (most recent call last):
File "train.py", line 469, in <module>
train(hyp, tb_writer, opt, device)
File "train.py", line 380, in train
if (best_fitness == fi) and not final_epoch:
UnboundLocalError: local variable 'fi' referenced before assignment
so adding --notest to the command above, in yolov5 will not work right now. (this does work on yolov3 on previous tests).
Edit 1: @NanoCode012 if I follow your suggestion:
Edit: If you would like to do so, it’s on line 339 in Train.py, add a (epoch%interval==0) condition
The same error describe here as --notest will appear.
@cesarandreslopez should be fixed following PR https://github.com/ultralytics/yolov5/pull/518. Tested on single-GPU and CPU.
hi! @glenn-jocher for multi-gpu training, if using smaller batch size than 64, could you suggest the hyperparameter to adjust like the learning rate?
hi! @glenn-jocher for multi-gpu training, if using smaller batch size than 64, could you suggest the hyperparameter to adjust like the learning rate?
Internally, batch size is kept at least 64. Gradient accumulation will be used if a batch size smaller than 64 is given. Therefore, no adjust is needed if you use a smaller batch size.
Hello, I have the following problem when using multi-GPU training, which is done according to your command line.

#not working on multi-GPU training.
Hello @liumingjune, could you provide us the exact line you used?
EDIT: Also, did you use the latest repo? I think this can be the reason.
Hello @liumingjune, could you provide us the exact line you used? Looking at the screenshot, did you pass in
--local_rankargument?
Thank you for your reply. My command line is
python -m torch.distributed.launch --nproc_per_node 4 train. py --device 0,1,2,3 I have 4 GPUs totally.
Hi @liumingjune , could you try to pull or clone the repo again? I saw that your hyp values are old, and train function is missing some arguments.
I ran
git clone https://github.com/ultralytics/yolov5.git && cd yolov5
python -m torch.distributed.launch --nproc_per_node 4 train.py --device 0,1,2,3
and there were no problems.
Hi @liumingjune , could you try to
pullorclonethe repo again? I saw that yourhypvalues are old, andtrainfunction is missing some arguments.I ran
git clone https://github.com/ultralytics/yolov5.git && cd yolov5 python -m torch.distributed.launch --nproc_per_node 4 train.py --device 0,1,2,3and there were no problems.
OK. I will try. Maybe that's the reason. I will try. My version is a clone of Yolov5 when it first appeared.Thanks a lot!
Hello, I want to know the difference between the current version and the version just released before, because I find that the form of data set preparation is different. The previous one is to prepare the data set path and the training file, verify the file. I need to manually separate out the training data and the validation data. This is not friendly to large data volumes.
@liumingjune I don't know exactly what you're referring to, but the full change history is available here https://github.com/ultralytics/yolov5/commits/master
well, i got the same problem with @feizhouxiaozhu if I set `--nproc_per_node 6 or 8 ', 2 or 4 is OK.
python3 -m torch.distributed.launch --master_port 9999 --nproc_per_node 8 train.py --batch-size 256 --data data/shape.yaml --cfg models/yolov5x.yaml --weights ' '
subprocess.CalledProcessError: Command '['/usr/bin/python3', '-u', 'train.py', '--local_rank=7', '--batch-size', '256', '--data', 'data/shape.yaml', '--cfg', 'models/yolov5x.yaml', '--weights', '']' returned non-zero exit status 1.
well, i got the same problem with @feizhouxiaozhu if I set `--nproc_per_node 6 or 8 ', 2 or 4 is OK.
python3 -m torch.distributed.launch --master_port 9999 --nproc_per_node 8 train.py --batch-size 256 --data data/shape.yaml --cfg models/yolov5x.yaml --weights ' '
subprocess.CalledProcessError: Command '['/usr/bin/python3', '-u', 'train.py', '--local_rank=7', '--batch-size', '256', '--data', 'data/shape.yaml', '--cfg', 'models/yolov5x.yaml', '--weights', '']' returned non-zero exit status 1.
Hi @Frank1126lin , could you tell me where/when that error occured?
I ran the below(your code but on coco2017) on a new clone, and there were no issues till training epoch 1. Did you try to reclone?
python3 -m torch.distributed.launch --master_port 9999 --nproc_per_node 8 train.py --batch-size 256 --data data/coco.yaml --cfg models/yolov5x.yaml --weights ' '
@feizhouxiaozhu 's error is most likely due to an old clone as stated. Proper DDP training was added not too long ago.
OK. I will try. Maybe that's the reason. I will try. My version is a clone of Yolov5 when it first appeared.Thanks a lot!
well, i got the same problem with @feizhouxiaozhu if I set
--nproc_per_node 6 or 8 ', 2 or 4 is OK.python3 -m torch.distributed.launch --master_port 9999 --nproc_per_node 8 train.py --batch-size 256 --data data/shape.yaml --cfg models/yolov5x.yaml --weights ' 'subprocess.CalledProcessError: Command '['/usr/bin/python3', '-u', 'train.py', '--local_rank=7', '--batch-size', '256', '--data', 'data/shape.yaml', '--cfg', 'models/yolov5x.yaml', '--weights', '']' returned non-zero exit status 1.`Hi @Frank1126lin , could you tell me where/when that error occured?
I ran the below(your code but on coco2017) on a new clone, and there were no issues till training epoch 1. Did you try to reclone?
python3 -m torch.distributed.launch --master_port 9999 --nproc_per_node 8 train.py --batch-size 256 --data data/coco.yaml --cfg models/yolov5x.yaml --weights ' '@feizhouxiaozhu 's error is most likely due to an old clone as stated. Proper DDP training was added not too long ago.
OK. I will try. Maybe that's the reason. I will try. My version is a clone of Yolov5 when it first appeared.Thanks a lot!
OK,thank you so much for your ans. I will try to reclone this repo and try it again.
and annother question, when I use --nproc_per_node 4, it seems takes almost same time compare with single GPU training. just like code below.
python3 -m torch.distributed.launch --nproc_per_node 4 train.py --batch-size 256 --data data/shape.yaml --cfg yolov5x.yaml --weights '' --epochs 2400
Optimizer stripped from runs/exp2/weights/last.pt, 177.4MB Optimizer stripped from runs/exp2/weights/best.pt, 177.4MB 2400 epochs completed in 2.726 hours.
I got the same problem as below:
root@:~/ai/yolov5-0818# python3 -m torch.distributed.launch --master_port 9999 --nproc_per_node 8 train.py --batch-size 128 --data shape.yaml --cfg yolov5l.yaml --weights '' --device 0,1,2,3,4,5,6,7
*****************************************
Setting OMP_NUM_THREADS environment variable for each process to be 1 in default, to avoid your system being overloaded, please further tune the variable for optimal performance in your application as needed.
*****************************************
Using CUDA device0 _CudaDeviceProperties(name='Tesla V100-PCIE-32GB', total_memory=32510MB)
device1 _CudaDeviceProperties(name='Tesla V100-PCIE-32GB', total_memory=32510MB)
device2 _CudaDeviceProperties(name='Tesla V100-PCIE-32GB', total_memory=32510MB)
device3 _CudaDeviceProperties(name='Tesla V100-PCIE-32GB', total_memory=32510MB)
device4 _CudaDeviceProperties(name='Tesla V100-PCIE-32GB', total_memory=32510MB)
device5 _CudaDeviceProperties(name='Tesla V100-PCIE-32GB', total_memory=32510MB)
device6 _CudaDeviceProperties(name='Tesla V100-PCIE-32GB', total_memory=32510MB)
device7 _CudaDeviceProperties(name='Tesla V100-PCIE-32GB', total_memory=32510MB)
Namespace(adam=False, batch_size=16, bucket='', cache_images=False, cfg='./models/yolov5l.yaml', data='./data/shape.yaml', device='0,1,2,3,4,5,6,7', epochs=300, evolve=False, global_rank=0, hyp='data/hyp.scratch.yaml', img_size=[640, 640], local_rank=0, logdir='runs/', multi_scale=False, name='', noautoanchor=False, nosave=False, notest=False, rect=False, resume=False, single_cls=False, sync_bn=False, total_batch_size=128, weights='', workers=8, world_size=8)
Start Tensorboard with "tensorboard --logdir runs/", view at http://localhost:6006/
Hyperparameters {'lr0': 0.01, 'momentum': 0.937, 'weight_decay': 0.0005, 'giou': 0.05, 'cls': 0.5, 'cls_pw': 1.0, 'obj': 1.0, 'obj_pw': 1.0, 'iou_t': 0.2, 'anchor_t': 4.0, 'fl_gamma': 0.0, 'hsv_h': 0.015, 'hsv_s': 0.7, 'hsv_v': 0.4, 'degrees': 0.0, 'translate': 0.1, 'scale': 0.5, 'shear': 0.0, 'perspective': 0.0, 'flipud': 0.0, 'fliplr': 0.5, 'mixup': 0.0}
from n params module arguments
0 -1 1 7040 models.common.Focus [3, 64, 3]
1 -1 1 73984 models.common.Conv [64, 128, 3, 2]
2 -1 1 161152 models.common.BottleneckCSP [128, 128, 3]
3 -1 1 295424 models.common.Conv [128, 256, 3, 2]
4 -1 1 1627904 models.common.BottleneckCSP [256, 256, 9]
5 -1 1 1180672 models.common.Conv [256, 512, 3, 2]
6 -1 1 6499840 models.common.BottleneckCSP [512, 512, 9]
7 -1 1 4720640 models.common.Conv [512, 1024, 3, 2]
8 -1 1 2624512 models.common.SPP [1024, 1024, [5, 9, 13]]
9 -1 1 10234880 models.common.BottleneckCSP [1024, 1024, 3, False]
10 -1 1 525312 models.common.Conv [1024, 512, 1, 1]
11 -1 1 0 torch.nn.modules.upsampling.Upsample [None, 2, 'nearest']
12 [-1, 6] 1 0 models.common.Concat [1]
13 -1 1 2823680 models.common.BottleneckCSP [1024, 512, 3, False]
14 -1 1 131584 models.common.Conv [512, 256, 1, 1]
15 -1 1 0 torch.nn.modules.upsampling.Upsample [None, 2, 'nearest']
16 [-1, 4] 1 0 models.common.Concat [1]
17 -1 1 707328 models.common.BottleneckCSP [512, 256, 3, False]
18 -1 1 590336 models.common.Conv [256, 256, 3, 2]
19 [-1, 14] 1 0 models.common.Concat [1]
20 -1 1 2561536 models.common.BottleneckCSP [512, 512, 3, False]
21 -1 1 2360320 models.common.Conv [512, 512, 3, 2]
22 [-1, 10] 1 0 models.common.Concat [1]
23 -1 1 10234880 models.common.BottleneckCSP [1024, 1024, 3, False]
24 [17, 20, 23] 1 37695 models.yolo.Detect [2, [[10, 13, 16, 30, 33, 23], [30, 61, 62, 45, 59, 119], [116, 90, 156, 198, 373, 326]], [256, 512, 1024]]
Model Summary: 335 layers, 4.73987e+07 parameters, 4.73987e+07 gradients
Optimizer groups: 110 .bias, 118 conv.weight, 107 other
Scanning labels ../shape/labels/train.cache (3 found, 0 missing, 0 empty, 0 duplicate, for 3 images): 3it [00:00, 5409.68it/s]
Scanning labels ../shape/labels/train.cache (3 found, 0 missing, 0 empty, 0 duplicate, for 3 images): 3it [00:00, 7362.73it/s]
Traceback (most recent call last):
File "train.py", line 458, in <module>
Traceback (most recent call last):
File "train.py", line 458, in <module>
train(hyp, opt, device, tb_writer)
File "train.py", line 167, in train
Traceback (most recent call last):
File "train.py", line 458, in <module>
ema.updates = start_epoch * nb // accumulate # set EMA updates
AttributeError: 'NoneType' object has no attribute 'updates'
Traceback (most recent call last):
Traceback (most recent call last):
File "train.py", line 458, in <module>
File "train.py", line 458, in <module>
train(hyp, opt, device, tb_writer)
File "train.py", line 167, in train
train(hyp, opt, device, tb_writer)
File "train.py", line 167, in train
ema.updates = start_epoch * nb // accumulate # set EMA updates
AttributeError: 'NoneType' object has no attribute 'updates'
ema.updates = start_epoch * nb // accumulate # set EMA updates
AttributeError: 'NoneType' object has no attribute 'updates'
train(hyp, opt, device, tb_writer)
train(hyp, opt, device, tb_writer)
File "train.py", line 167, in train
File "train.py", line 167, in train
ema.updates = start_epoch * nb // accumulate # set EMA updates
ema.updates = start_epoch * nb // accumulate # set EMA updates
AttributeError: 'NoneType' object has no attribute 'updates'
AttributeError: 'NoneType' object has no attribute 'updates'
Traceback (most recent call last):
File "train.py", line 458, in <module>
train(hyp, opt, device, tb_writer)
File "train.py", line 167, in train
Traceback (most recent call last):
File "train.py", line 458, in <module>
ema.updates = start_epoch * nb // accumulate # set EMA updates
AttributeError: 'NoneType' object has no attribute 'updates'
train(hyp, opt, device, tb_writer)
File "train.py", line 167, in train
ema.updates = start_epoch * nb // accumulate # set EMA updates
AttributeError: 'NoneType' object has no attribute 'updates'
Analyzing anchors... anchors/target = 6.32, Best Possible Recall (BPR) = 1.0000
Image sizes 640 train, 640 test
Using 3 dataloader workers
Starting training for 300 epochs...
Traceback (most recent call last):
File "train.py", line 458, in <module>
train(hyp, opt, device, tb_writer)
File "train.py", line 238, in train
pbar = enumerate(dataloader)
File "/usr/local/lib/python3.6/dist-packages/torch/utils/data/dataloader.py", line 291, in __iter__
return _MultiProcessingDataLoaderIter(self)
File "/usr/local/lib/python3.6/dist-packages/torch/utils/data/dataloader.py", line 764, in __init__
self._try_put_index()
File "/usr/local/lib/python3.6/dist-packages/torch/utils/data/dataloader.py", line 994, in _try_put_index
index = self._next_index()
File "/usr/local/lib/python3.6/dist-packages/torch/utils/data/dataloader.py", line 357, in _next_index
return next(self._sampler_iter) # may raise StopIteration
File "/usr/local/lib/python3.6/dist-packages/torch/utils/data/sampler.py", line 208, in __iter__
for idx in self.sampler:
File "/usr/local/lib/python3.6/dist-packages/torch/utils/data/distributed.py", line 80, in __iter__
assert len(indices) == self.total_size
AssertionError
Traceback (most recent call last):
File "/usr/lib/python3.6/runpy.py", line 193, in _run_module_as_main
"__main__", mod_spec)
File "/usr/lib/python3.6/runpy.py", line 85, in _run_code
exec(code, run_globals)
File "/usr/local/lib/python3.6/dist-packages/torch/distributed/launch.py", line 261, in <module>
main()
File "/usr/local/lib/python3.6/dist-packages/torch/distributed/launch.py", line 257, in main
cmd=cmd)
subprocess.CalledProcessError: Command '['/usr/bin/python3', '-u', 'train.py', '--local_rank=7', '--batch-size', '128', '--data', 'shape.yaml', '--cfg', 'yolov5l.yaml', '--weights', '', '--device', '0,1,2,3,4,5,6,7']' returned non-zero exit status 1.
Hi @Frank1126lin , regarding the ema error, I just created a fix for this at #775 and waiting for review. I am not as sure about the second error. Can you replicate this on coco dataset?
Edit: Also are there any errors in Single GPU mode?
For training time, I haven't done any test in a while, so I cannot say.