Jianguo Huang (Jianguo99)

Jianguo99

Geek Repo

Company:ShanghaiTech University

Location:pudong new district

Home Page:https://jianguo99.github.io/

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Jianguo Huang's repositories

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ChatPDF

RAG for Local LLM, chat with PDF/doc/txt files, ChatPDF

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test_torcp

Testing TorchCP

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mae

PyTorch implementation of MAE https//arxiv.org/abs/2111.06377

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MAE-pytorch

Unofficial PyTorch implementation of Masked Autoencoders Are Scalable Vision Learners

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OneSC

A open source package for machine leanring algorithms in scientific computation.

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JdBuyer

京东抢购自动下单助手,GUI 支持 Windows 和 macOS

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competition_baselines

开源的各大比赛baseline

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tutorials

Tutorials on deep learning, Python, and dissipative particle dynamics

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team-learning-data-mining

主要存储Datawhale组队学习中“数据挖掘/机器学习”方向的资料。

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PapersCodes

Reproduce the papers' codes, winch I have read

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MetaDelta

AAAI 2021 metadl competition solution from Team Meta_Learners

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fenics-tutorial

Source files and published documents for the FEniCS tutorial.

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CopyTranslator

The Project had moved to elsewhere. Please go to|项目已迁移至别处,请到

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SotchasticEllipticEq

This repository has tools to solve the 1D stochastic elliptic equation. It is aimed at introducing Uncertainty Quantification. So far it contains a deterministic Galerkin method to solve the elliptic equation and a code to solve the stochastic case using both the Galerkin deterministic solver in a Monte Carlo approach

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