Deep Insight
- Shanghai, China
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insightface
Face Analysis Project on MXNet
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mxnet-mtcnn
mtcnn mxnet C++ implementation
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mxnet-serving
mxnet model serving study
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insightocr
MXNet OCR implementation. Including text recognition and detection.
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xlearn
Forked from aksnzhy/xlearnHigh Performance, Easy-to-use, and Scalable Machine Learning Package (C++, Python, R)
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SDUNet
2D and 3D landmark prediction for face alignment
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programming-challenge
Programming Challenges for DeepInsight Candidates
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mxnet-operator
Tools for ML/MXNet on Kubernetes.
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Awesome-MXNet
Forked from chinakook/Awesome-MXNetA curated list of MXNet examples, tutorials and blogs.
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mxnet
Forked from apache/incubator-mxnetLightweight, Portable, Flexible Distributed/Mobile Deep Learning with Dynamic, Mutation-aware Dataflow Dep Scheduler; for Python, R, Julia, Scala, Go, Javascript and more
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examples
Forked from pytorch/examplesA set of examples around pytorch in Vision, Text, Reinforcement Learning, etc.
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mx-lsoftmax
Forked from luoyetx/mx-lsoftmaxmxnet version of Large-Margin Softmax Loss for Convolutional Neural Networks.
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fm-dnn-tensorflow
Forked from weiweijiuzaizhe/product-nets -
angel
Forked from Angel-ML/angelA Flexible and Powerful Parameter Server for large-scale machine learning
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densenet-pytorch
Forked from andreasveit/densenet-pytorchA PyTorch Implementation for Densely Connected Convolutional Networks (DenseNets)
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parabee
Machine Learning Platform Based on Parameter Server
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deepinsight.github.io
DeepInsight's Research Notes
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image-retrieval
Instance-level image retrieval, used in street-to-shop scene. Leveraging large-scale noisy data, and clean it automatically. Learning R-MAC descriptors using a larger network such as ResNet101. Train with a siamese architecture to optimize a triplet loss.
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hyperparameters
Automatically tuning hyperparameters for deep learning
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big-learning-made-easy
Notes for DeepInsight