Dinesh Bhatia

BhatiaDinesh

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liked a model 9 days ago
llmware/mistral-7b-instruct-v0.3-onnx
replied to MonsterMMORPG's post 7 months ago
ResShift 1-Click Windows, RunPod, Massed Compute, Kaggle Installers with Amazing Gradio APP and Batch Image Processing. ResShift is Efficient Diffusion Model for Image Super-resolution by Residual Shifting (NeurIPS 2023, Spotlight). Official Repo : https://github.com/zsyOAOA/ResShift I have developed a very advanced Gradio APP. Developed APP Scripts and Installers : https://www.patreon.com/posts/110331752 Features It supports following tasks: Real-world image super-resolution Bicubic (resize by Matlab) image super-resolution Blind Face Restoration Automatically saving all generated image with same name + numbering if necessary Randomize seed feature for each generation Batch image processing - give input and output folder paths and it batch process all images and saves 1-Click to install on Windows, RunPod, Massed Compute and Kaggle (free account) Windows Requirements Python 3.10, FFmpeg, Cuda 11.8, C++ tools and Git If it doesn't work make sure to below tutorial and install everything exactly as shown in this below tutorial https://youtu.be/-NjNy7afOQ0 How to Install on Windows Make sure that you have the above requirements Extract files into a folder like c:/reshift_v1 Double click Windows_Install.bat and it will automatically install everything for you with an isolated virtual environment folder (VENV) After that double click Windows_Start_app.bat and start the app When you first time use a task it will download necessary models (all under 500 MB) into accurate folders If during download it fails, file gets corrupted sadly it doesn't verify that so delete files inside weights and restart How to Install on RunPod, Massed Compute, Kaggle Follow the Massed_Compute_Instructions_READ.txt and Runpod_Instructions_READ.txt For Kaggle follow the notebook written steps An example video of how to use my RunPod, Massed Compute scripts and Kaggle notebook can be seen https://youtu.be/wG7oPp01COg
reacted to MonsterMMORPG's post with 🚀 7 months ago
ResShift 1-Click Windows, RunPod, Massed Compute, Kaggle Installers with Amazing Gradio APP and Batch Image Processing. ResShift is Efficient Diffusion Model for Image Super-resolution by Residual Shifting (NeurIPS 2023, Spotlight). Official Repo : https://github.com/zsyOAOA/ResShift I have developed a very advanced Gradio APP. Developed APP Scripts and Installers : https://www.patreon.com/posts/110331752 Features It supports following tasks: Real-world image super-resolution Bicubic (resize by Matlab) image super-resolution Blind Face Restoration Automatically saving all generated image with same name + numbering if necessary Randomize seed feature for each generation Batch image processing - give input and output folder paths and it batch process all images and saves 1-Click to install on Windows, RunPod, Massed Compute and Kaggle (free account) Windows Requirements Python 3.10, FFmpeg, Cuda 11.8, C++ tools and Git If it doesn't work make sure to below tutorial and install everything exactly as shown in this below tutorial https://youtu.be/-NjNy7afOQ0 How to Install on Windows Make sure that you have the above requirements Extract files into a folder like c:/reshift_v1 Double click Windows_Install.bat and it will automatically install everything for you with an isolated virtual environment folder (VENV) After that double click Windows_Start_app.bat and start the app When you first time use a task it will download necessary models (all under 500 MB) into accurate folders If during download it fails, file gets corrupted sadly it doesn't verify that so delete files inside weights and restart How to Install on RunPod, Massed Compute, Kaggle Follow the Massed_Compute_Instructions_READ.txt and Runpod_Instructions_READ.txt For Kaggle follow the notebook written steps An example video of how to use my RunPod, Massed Compute scripts and Kaggle notebook can be seen https://youtu.be/wG7oPp01COg
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