Kezhou Ren (renkz)

renkz

Geek Repo

Company:Sun Yat-sen University

Location:guangzhou, china

Twitter:@renkz16

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Kezhou Ren's repositories

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IoT-For-Beginners

12 Weeks, 24 Lessons, IoT for All!

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gpt_academic

为GPT/GLM等LLM大语言模型提供实用化交互接口,特别优化论文阅读/润色/写作体验,模块化设计,支持自定义快捷按钮&函数插件,支持Python和C++等项目剖析&自译解功能,PDF/LaTex论文翻译&总结功能,支持并行问询多种LLM模型,支持chatglm3等本地模型。接入通义千问, deepseekcoder, 讯飞星火, 文心一言, llama2, rwkv, claude2, moss等。

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hello-algo

《Hello 算法》:动画图解、一键运行的数据结构与算法教程,支持 Python, C++, Java, C#, Go, Swift, JS, TS, Dart, Rust, C, Zig 等语言。English edition ongoing

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Auto-GPT

An experimental open-source attempt to make GPT-4 fully autonomous.

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dfdc_deepfake_challenge

A prize winning solution for DFDC challenge

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996.ICU

Repo for counting stars and contributing. Press F to pay respect to glorious developers.

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GNSSAMS

基于PyQt5开发的前后端GUI桌面、导航定位与测量综合系统软件

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models

Pre-trained and Reproduced Deep Learning Models (『飞桨』官方模型库,包含多种学术前沿和工业场景验证的深度学习模型)

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fairseq

Facebook AI Research Sequence-to-Sequence Toolkit written in Python.

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pytorch-handbook

pytorch handbook是一本开源的书籍,目标是帮助那些希望和使用PyTorch进行深度学习开发和研究的朋友快速入门,其中包含的Pytorch教程全部通过测试保证可以成功运行

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ChineseNLPCorpus

中文自然语言处理数据集,平时做做实验的材料。欢迎补充提交合并。

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cpython

The Python programming language

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Paddle

PArallel Distributed Deep LEarning: Machine Learning Framework from Industrial Practice (『飞桨』核心框架,深度学习&机器学习高性能单机、分布式训练和跨平台部署)

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Keras-YOLOv4

supports training, at least 39.5% mAP.支持训练,至少39.5%mAP。少数的给出精度的复现。

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AdversarialNetsPapers

The classical paper list with code about generative adversarial nets

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CVPR2020-Code

CVPR 2020 论文开源项目合集

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CVPR2020-Paper-Code-Interpretation

cvpr2020/cvpr2019/cvpr2018/cvpr2017 papers,极市团队整理

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AGD

[ICML2020] "AutoGAN-Distiller: Searching to Compress Generative Adversarial Networks" by Yonggan Fu, Wuyang Chen, Haotao Wang, Haoran Li, Yingyan Lin, Zhangyang Wang

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PyTorch-GAN

PyTorch implementations of Generative Adversarial Networks.

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ALBERT_NER_KERAS

基于albert_bilstm_crf架构利用keras框架实现NER。

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pytorch

Tensors and Dynamic neural networks in Python with strong GPU acceleration

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