shenyuanyuan's repositories

IMSAT

tensorflow code for IMSAT (only MNIST clustering)

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Anomaly-Detection

Anomaly detection algorithm implementation in Python

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context-aware-loss

A Context-Aware Loss Function for Action Spotting in Soccer Videos

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CV

A resume template written in Markdown,Yaml JSON auto generates github-pages website & PDF by Jekyll. 在线简历生成模板(超高兼容可导PDF)

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DEC-Keras

Deep Embedding Clustering in Keras

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DEC-keras-1

Keras implementation for Deep Embedding Clustering (DEC)

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dynamic-training-bench

Simplify the training and tuning of Tensorflow models

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facenet

Face recognition using Tensorflow

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Faster-RCNN_TF

Faster-RCNN in Tensorflow

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GDLnotes

Google Deep Learning Notes(TensorFlow教程)

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learning_by_association

This repository contains code for the paper Learning by Association - A versatile semi-supervised training method for neural networks (CVPR 2017) and the follow-up work Associative Domain Adaptation (ICCV 2017).

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mean-teacher

A state-of-the-art semi-supervised method for image recognition

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MedicalNamedEntityRecognition

Medical Named Entity Recognition implement using bi-directional lstm and crf model with char embedding.CCKS2017中文电子病例命名实体识别项目,主要实现使用了基于字向量的四层双向LSTM与CRF模型的网络.该项目提供了原始训练数据样本(一般醒目,出院情况,病史情况,病史特点,诊疗经过)与转换版本,训练脚本,预训练模型,可用于序列标注研究.把玩和PK使用.

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models

Models built with TensorFlow

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numerical-linear-algebra

Free online textbook of Jupyter notebooks for fast.ai Computational Linear Algebra course

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overcoming-catastrophic

Implementation of "Overcoming catastrophic forgetting in neural networks" in Tensorflow

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PositionalEncoding2D

A PyTorch implementation of the 1d and 2d Sinusoidal positional encoding/embedding.

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proxychains-ng

proxychains ng (new generation) - a preloader which hooks calls to sockets in dynamically linked programs and redirects it through one or more socks/http proxies. continuation of the unmaintained proxychains project. the sf.net page is currently not updated, use releases from github release page instead.

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pytorch-loss

label-smooth, amsoftmax, focal-loss, triplet-loss. Maybe useful

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resume

个人中文简历 Latex 源码 https://hijiangtao.github.io/

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shadowsocks

backup of https://github.com/shadowsocks/shadowsocks

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sw_machine_learning

machine learning

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tensorflow

Computation using data flow graphs for scalable machine learning

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tensorflow-triplet-loss

Implementation of triplet loss in TensorFlow

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text_classification

all kinds of text classification models and more with deep learning

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wgan-gp-anomaly

gan, wgan-gp, anomaly detection, unsupervised, pytorch

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