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Added RTDETR model to inference #558

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Bhavay-2001
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Description

PR for #546

Type of change

Please delete options that are not relevant.

  • Bug fix (non-breaking change which fixes an issue)
  • New feature (non-breaking change which adds functionality)
  • This change requires a documentation update

How has this change been tested, please provide a testcase or example of how you tested the change?

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  • Docs updated? What were the changes:

@grzegorz-roboflow
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Hi @Bhavay-2001, thank you for providing this PR! I'd love to test it, can you share python code with inference performed using this model?

@Bhavay-2001
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Hi @grzegorz-roboflow, I haven't tested it myself. I got the code from here. I have created the notebook that test this code.

I have just tried to convert that code to a file.

@Bhavay-2001
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Hi @grzegorz-roboflow, pls let me know what changes needs to be done.


DEVICE = "cuda:0" if torch.cuda.is_available() else "cpu"

class RTDETR(RoboflowCoreModel):
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This should subclass RoboflowInferenceModelor even more ideally TransformerModel after a light refactor

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Done

@Bhavay-2001
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Hi @probicheaux, can you pls provide a detailed review?
Thanks

@Bhavay-2001 Bhavay-2001 marked this pull request as ready for review August 9, 2024 06:29
@Bhavay-2001
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Hi @grzegorz-roboflow, PR is ready for review. Can you please check this.
Thanks

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@probicheaux probicheaux left a comment

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Thanks for your contribution, we will upload some weights and test this out. Some unit tests/integration tests will also need to be added

from inference.models.transformers.transformers import TransformerModel
from inference.core.utils.image_utils import load_image_rgb

DEVICE = "cuda:0" if torch.cuda.is_available() else "cpu"
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Not needed, self.device should be set on the TransformerModel

self.api_key = API_KEY
self.dataset_id, self.version_id = model_id.split("/")
self.cache_dir = os.path.join(MODEL_CACHE_DIR, self.endpoint + "/") # "PekingU/rtdetr_r50vd"
dtype = torch.bfloat16
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bfloat16 shouldn't be hardcoded here, bfloat16 is only supported on gpus with compute capability >= 8.0

Comment on lines +20 to +22
self.model_id = model_id
self.endpoint = model_id
self.api_key = API_KEY
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I don't think these 3 lines are needed, this is set on RoboflowInferenceModel

self.cache_dir,
torch_dtype=dtype,
device_map=DEVICE,
revision="bfloat16",
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We can upload float16 weights to a Roboflow project and load from there

self.dataset_id, self.version_id = model_id.split("/")
self.cache_dir = os.path.join(MODEL_CACHE_DIR, self.endpoint + "/") # "PekingU/rtdetr_r50vd"
dtype = torch.bfloat16
self.model = RTDetrForObjectDetection.from_pretrained(
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revision="bfloat16",
).eval()

self.processor = RTDetrImageProcessor.from_pretrained(
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Same comment for class property

@yeldarby
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Hey @Bhavay-2001! We greatly appreciate your contribution and thank you so much for submitting this PR.

I talked with the team and we are planning on incorporating fine-tuning of RT-DETR more tightly into Roboflow shortly so we need to adapt the inference integration to be compatible with the output of our training process.

This PR is a great start & we’ll likely continue working from it towards a release but we won’t be able to do that for a little while until the backend is more concrete. Best path forward in the meantime would be to use it via a plugin or fork. (Apologies for the inconvenience; we’ll update you when we have more to share on our end!)

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5 participants