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Waifu2x Extension GuiVideo, Image and GIF upscale/enlarge(Super-Resolution) and Video frame interpolation. Achieved with Waifu2x, Real-ESRGAN, SRMD, RealSR, Anime4K, RIFE, CAIN, DAIN, and ACNet.
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pyanime4kAn easy way to use anime4k in python
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traiNNertraiNNer: Deep learning framework for image and video super-resolution, restoration and image-to-image translation, for training and testing.
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DLInfBenchCNN model inference benchmarks for some popular deep learning frameworks
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mloperatorMachine Learning Operator & Controller for Kubernetes
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NonLocalandSEnetMXNet implementation of Non-Local and Squeeze-Excitation network
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TD-Anime4KImplementation of Anime4K in TouchDesigner.
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lvsfunclvsfunc, a collection of LightArrowsEXE's VapourSynth functions and wrappers
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model-zoo-oldThe ONNX Model Zoo is a collection of pre-trained models for state of the art models in deep learning, available in the ONNX format
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deepspeech.mxnetA MXNet implementation of Baidu's DeepSpeech architecture
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capsnet.mxnetMXNet implementation of CapsNet
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OpSummary.MXNetA tool to count operators and parameters of your MXNet-Gluon model.
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megaface-evaluationA Simple Tool to Evaluate Your Models on Megaface Benchmark Implemented in Python and Mxnet
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vs-mlrtEfficient ML Filter Runtimes for VapourSynth (with built-in support for waifu2x, DPIR, RealESRGANv2, and Real-CUGAN)
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lipnetLipNet with gluon
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Deep-rl-mxnetMxnet implementation of Deep Reinforcement Learning papers, such as DQN, PG, DDPG, PPO
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DLARMDLARM: Dissertation for Computer Science Masters Degree at UFRGS
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MXNetDotNet.NET wrapper for Apache MXNet written in C#
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havsfuncHoly's ported AviSynth functions for VapourSynth
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AAAI 2019 EXAMOfficial implementation of "Explicit Interaction Model towards Text Classification"
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onnx tensorrt projectSupport Yolov5(4.0)/Yolov5(5.0)/YoloR/YoloX/Yolov4/Yolov3/CenterNet/CenterFace/RetinaFace/Classify/Unet. use darknet/libtorch/pytorch/mxnet to onnx to tensorrt
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Nest💡 A flexible tool for building and sharing deep learning modules.
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mxnet-cpp-scratchSome deep learning models written with mxnet and C++11.
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d2l-javaThe Java implementation of Dive into Deep Learning (D2L.ai)
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staxripStaxRip is a video encoding app for Windows with a unrivaled feature set and usability.
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softmaxfocallossthe loss function in Aritcal ‘Focal Loss for Dense Object Detection‘’
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DockerKerasWe provide GPU-enabled docker images including Keras, TensorFlow, CNTK, MXNET and Theano.
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ESRGAN-tensorflowEnhanced SRGAN. Champion PIRM Challenge on Perceptual Super-Resolution
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PNG-UpscaleAI Super - Resolution
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dynamic-training-with-apache-mxnet-on-awsDynamic training with Apache MXNet reduces cost and time for training deep neural networks by leveraging AWS cloud elasticity and scale. The system reduces training cost and time by dynamically updating the training cluster size during training, with minimal impact on model training accuracy.
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gluon2pytorchGluon to PyTorch deep neural network model converter
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ani-ssAnime4K using Web Assembly
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MPV lazy🔄 mpv player 播放器折腾记录 windows conf ; 中文注释配置 快速帮助萌新入门 ; mpv-lazy 懒人包 win10 x64
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mtomoMultiple types of NN model optimization environments. It is possible to directly access the host PC GUI and the camera to verify the operation. Intel iHD GPU (iGPU) support. NVIDIA GPU (dGPU) support.
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robotFunctions and classes for gradient-based robot motion planning, written in Ivy.
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insightocrMXNet OCR implementation. Including text recognition and detection.
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enhanced-ssh-mxnetThe MXNet Implementation of Enhanced SSH (ESSH) for Face Detection and Alignment
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Anime4K-rsAn attempt to write Anime4K in Rust
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vs-dpirDPIR function for VapourSynth
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vs-realesrganReal-ESRGAN function for VapourSynth
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AutoCrispyAutomatically apply AI Upscaling on Dumped Textures
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