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--- |
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library_name: pytorch |
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license: apache-2.0 |
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pipeline_tag: unconditional-image-generation |
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tags: |
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- generative_ai |
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- quantized |
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- android |
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--- |
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![](https://qaihub-public-assets.s3.us-west-2.amazonaws.com/qai-hub-models/models/controlnet_quantized/web-assets/model_demo.png) |
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# ControlNet: Optimized for Mobile Deployment |
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## Generating visual arts from text prompt and input guiding image |
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On-device, high-resolution image synthesis from text and image prompts. ControlNet guides Stable-diffusion with provided input image to generate accurate images from given input prompt. |
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This model is an implementation of ControlNet found [here](https://github.com/lllyasviel/ControlNet). |
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This repository provides scripts to run ControlNet on Qualcomm® devices. |
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More details on model performance across various devices, can be found |
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[here](https://aihub.qualcomm.com/models/controlnet_quantized). |
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### Model Details |
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- **Model Type:** Image generation |
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- **Model Stats:** |
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- Input: Text prompt and input image as a reference |
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- QNN-SDK: 2.19 |
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- Text Encoder Number of parameters: 340M |
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- UNet Number of parameters: 865M |
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- VAE Decoder Number of parameters: 83M |
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- ControlNet Number of parameters: 361M |
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- Model size: 1.4GB |
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| Device | Chipset | Target Runtime | Inference Time (ms) | Peak Memory Range (MB) | Precision | Primary Compute Unit | Target Model |
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| ---|---|---|---|---|---|---|---| |
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| Samsung Galaxy S23 Ultra (Android 13) | Snapdragon® 8 Gen 2 | QNN Binary | 11.369 ms | 0 - 33 MB | UINT16 | NPU | [TextEncoder_Quantized.bin](https://huggingface.co/qualcomm/ControlNet/blob/main/TextEncoder_Quantized.bin) |
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| Samsung Galaxy S23 Ultra (Android 13) | Snapdragon® 8 Gen 2 | QNN Binary | 386.746 ms | 0 - 4 MB | UINT16 | NPU | [VAEDecoder_Quantized.bin](https://huggingface.co/qualcomm/ControlNet/blob/main/VAEDecoder_Quantized.bin) |
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| Samsung Galaxy S23 Ultra (Android 13) | Snapdragon® 8 Gen 2 | QNN Binary | 259.981 ms | 12 - 14 MB | UINT16 | NPU | [UNet_Quantized.bin](https://huggingface.co/qualcomm/ControlNet/blob/main/UNet_Quantized.bin) |
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| Samsung Galaxy S23 Ultra (Android 13) | Snapdragon® 8 Gen 2 | QNN Binary | 103.748 ms | 0 - 22 MB | UINT16 | NPU | [ControlNet_Quantized.bin](https://huggingface.co/qualcomm/ControlNet/blob/main/ControlNet_Quantized.bin) |
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## Installation |
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This model can be installed as a Python package via pip. |
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```bash |
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pip install "qai-hub-models[controlnet_quantized]" |
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``` |
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## Configure Qualcomm® AI Hub to run this model on a cloud-hosted device |
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Sign-in to [Qualcomm® AI Hub](https://app.aihub.qualcomm.com/) with your |
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Qualcomm® ID. Once signed in navigate to `Account -> Settings -> API Token`. |
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With this API token, you can configure your client to run models on the cloud |
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hosted devices. |
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```bash |
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qai-hub configure --api_token API_TOKEN |
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``` |
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Navigate to [docs](https://app.aihub.qualcomm.com/docs/) for more information. |
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## Demo on-device |
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The package contains a simple end-to-end demo that downloads pre-trained |
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weights and runs this model on a sample input. |
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```bash |
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python -m qai_hub_models.models.controlnet_quantized.demo |
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``` |
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The above demo runs a reference implementation of pre-processing, model |
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inference, and post processing. |
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**NOTE**: If you want running in a Jupyter Notebook or Google Colab like |
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environment, please add the following to your cell (instead of the above). |
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``` |
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%run -m qai_hub_models.models.controlnet_quantized.demo |
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``` |
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### Run model on a cloud-hosted device |
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In addition to the demo, you can also run the model on a cloud-hosted Qualcomm® |
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device. This script does the following: |
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* Performance check on-device on a cloud-hosted device |
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* Downloads compiled assets that can be deployed on-device for Android. |
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* Accuracy check between PyTorch and on-device outputs. |
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```bash |
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python -m qai_hub_models.models.controlnet_quantized.export |
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``` |
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``` |
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Profile Job summary of TextEncoder_Quantized |
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-------------------------------------------------- |
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Device: Samsung Galaxy S23 Ultra (13) |
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Estimated Inference Time: 11.37 ms |
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Estimated Peak Memory Range: 0.05-33.25 MB |
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Compute Units: NPU (570) | Total (570) |
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Profile Job summary of VAEDecoder_Quantized |
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-------------------------------------------------- |
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Device: Samsung Galaxy S23 Ultra (13) |
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Estimated Inference Time: 386.75 ms |
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Estimated Peak Memory Range: 0.12-4.28 MB |
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Compute Units: NPU (409) | Total (409) |
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Profile Job summary of UNet_Quantized |
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-------------------------------------------------- |
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Device: Samsung Galaxy S23 Ultra (13) |
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Estimated Inference Time: 259.98 ms |
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Estimated Peak Memory Range: 12.45-14.35 MB |
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Compute Units: NPU (5434) | Total (5434) |
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Profile Job summary of ControlNet_Quantized |
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-------------------------------------------------- |
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Device: Samsung Galaxy S23 Ultra (13) |
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Estimated Inference Time: 103.75 ms |
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Estimated Peak Memory Range: 0.19-22.20 MB |
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Compute Units: NPU (2406) | Total (2406) |
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``` |
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## How does this work? |
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This [export script](https://github.com/quic/ai-hub-models/blob/main/qai_hub_models/models/ControlNet/export.py) |
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leverages [Qualcomm® AI Hub](https://aihub.qualcomm.com/) to optimize, validate, and deploy this model |
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on-device. Lets go through each step below in detail: |
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Step 1: **Upload compiled model** |
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Upload compiled models from `qai_hub_models.models.controlnet_quantized` on hub. |
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```python |
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import torch |
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import qai_hub as hub |
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from qai_hub_models.models.controlnet_quantized import Model |
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# Load the model |
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model = Model.from_precompiled() |
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model_textencoder_quantized = hub.upload_model(model.text_encoder.get_target_model_path()) |
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model_unet_quantized = hub.upload_model(model.unet.get_target_model_path()) |
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model_vaedecoder_quantized = hub.upload_model(model.vae_decoder.get_target_model_path()) |
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model_controlnet_quantized = hub.upload_model(model.controlnet.get_target_model_path()) |
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``` |
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Step 2: **Performance profiling on cloud-hosted device** |
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After uploading compiled models from step 1. Models can be profiled model on-device using the |
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`target_model`. Note that this scripts runs the model on a device automatically |
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provisioned in the cloud. Once the job is submitted, you can navigate to a |
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provided job URL to view a variety of on-device performance metrics. |
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```python |
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# Device |
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device = hub.Device("Samsung Galaxy S23") |
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profile_job_textencoder_quantized = hub.submit_profile_job( |
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model=model_textencoder_quantized, |
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device=device, |
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) |
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profile_job_unet_quantized = hub.submit_profile_job( |
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model=model_unet_quantized, |
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device=device, |
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) |
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profile_job_vaedecoder_quantized = hub.submit_profile_job( |
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model=model_vaedecoder_quantized, |
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device=device, |
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) |
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profile_job_controlnet_quantized = hub.submit_profile_job( |
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model=model_controlnet_quantized, |
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device=device, |
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) |
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``` |
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Step 3: **Verify on-device accuracy** |
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To verify the accuracy of the model on-device, you can run on-device inference |
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on sample input data on the same cloud hosted device. |
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```python |
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input_data_textencoder_quantized = model.text_encoder.sample_inputs() |
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inference_job_textencoder_quantized = hub.submit_inference_job( |
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model=model_textencoder_quantized, |
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device=device, |
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inputs=input_data_textencoder_quantized, |
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) |
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on_device_output_textencoder_quantized = inference_job_textencoder_quantized.download_output_data() |
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input_data_unet_quantized = model.unet.sample_inputs() |
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inference_job_unet_quantized = hub.submit_inference_job( |
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model=model_unet_quantized, |
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device=device, |
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inputs=input_data_unet_quantized, |
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) |
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on_device_output_unet_quantized = inference_job_unet_quantized.download_output_data() |
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input_data_vaedecoder_quantized = model.vae_decoder.sample_inputs() |
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inference_job_vaedecoder_quantized = hub.submit_inference_job( |
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model=model_vaedecoder_quantized, |
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device=device, |
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inputs=input_data_vaedecoder_quantized, |
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) |
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on_device_output_vaedecoder_quantized = inference_job_vaedecoder_quantized.download_output_data() |
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input_data_controlnet_quantized = model.controlnet.sample_inputs() |
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inference_job_controlnet_quantized = hub.submit_inference_job( |
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model=model_controlnet_quantized, |
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device=device, |
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inputs=input_data_controlnet_quantized, |
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) |
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on_device_output_controlnet_quantized = inference_job_controlnet_quantized.download_output_data() |
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``` |
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With the output of the model, you can compute like PSNR, relative errors or |
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spot check the output with expected output. |
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**Note**: This on-device profiling and inference requires access to Qualcomm® |
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AI Hub. [Sign up for access](https://myaccount.qualcomm.com/signup). |
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## Deploying compiled model to Android |
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The models can be deployed using multiple runtimes: |
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- TensorFlow Lite (`.tflite` export): [This |
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tutorial](https://www.tensorflow.org/lite/android/quickstart) provides a |
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guide to deploy the .tflite model in an Android application. |
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- QNN ( `.so` / `.bin` export ): This [sample |
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app](https://docs.qualcomm.com/bundle/publicresource/topics/80-63442-50/sample_app.html) |
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provides instructions on how to use the `.so` shared library or `.bin` context binary in an Android application. |
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## View on Qualcomm® AI Hub |
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Get more details on ControlNet's performance across various devices [here](https://aihub.qualcomm.com/models/controlnet_quantized). |
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Explore all available models on [Qualcomm® AI Hub](https://aihub.qualcomm.com/) |
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## License |
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- The license for the original implementation of ControlNet can be found |
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[here](https://github.com/lllyasviel/ControlNet/blob/main/LICENSE). |
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- The license for the compiled assets for on-device deployment can be found [here](https://qaihub-public-assets.s3.us-west-2.amazonaws.com/qai-hub-models/Qualcomm+AI+Hub+Proprietary+License.pdf). |
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## References |
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* [Adding Conditional Control to Text-to-Image Diffusion Models](https://arxiv.org/abs/2302.05543) |
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* [Source Model Implementation](https://github.com/lllyasviel/ControlNet) |
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## Community |
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* Join [our AI Hub Slack community](https://join.slack.com/t/qualcomm-ai-hub/shared_invite/zt-2dgf95loi-CXHTDRR1rvPgQWPO~ZZZJg) to collaborate, post questions and learn more about on-device AI. |
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* For questions or feedback please [reach out to us](mailto:[email protected]). |
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## Usage and Limitations |
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Model may not be used for or in connection with any of the following applications: |
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- Accessing essential private and public services and benefits; |
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- Administration of justice and democratic processes; |
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- Assessing or recognizing the emotional state of a person; |
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- Biometric and biometrics-based systems, including categorization of persons based on sensitive characteristics; |
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- Education and vocational training; |
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- Employment and workers management; |
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- Exploitation of the vulnerabilities of persons resulting in harmful behavior; |
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- General purpose social scoring; |
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- Law enforcement; |
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- Management and operation of critical infrastructure; |
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- Migration, asylum and border control management; |
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- Predictive policing; |
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- Real-time remote biometric identification in public spaces; |
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- Recommender systems of social media platforms; |
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- Scraping of facial images (from the internet or otherwise); and/or |
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- Subliminal manipulation |
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