representation sparsification learning robust

Proj CDeepFuzz Paper Reading: TensorFlow: a system for Large-Scale machine learning

## Abstract 本文:Tensorflow Github: https://github.com/tensorflow/tensorflow Task: Detail on Tensorflow dataflow model 特点: 1. operates at large scale an ......

Proj CDeepFuzz Paper Reading: PyTorch: an imperative style, high-performance deep learning library

## Abstract 本文: PyTorch Task: detail the implementation and architecture of PyTorch Github: https://github.com/pytorch/pytorch 特点: 1. PyTorch同时关注可用性和速 ......

EVA: Visual Representation Fantasies from BAAI

​本文做个简单总结,博主不是做自监督领域的,如果错误,欢迎指正。 链接 Code:​ Official:baaivision/EVA MMpretrain:open-mmlab/mmpretrain/tree/main/configs/eva02 Paper: EVA01:EVA: Explorin ......
Representation Fantasies Visual BAAI from

Learn Git in 30 days——第 13 天:暂存工作目录与索引的变更状态

写的非常好的一个Git系列文章,强烈推荐 原文链接:https://github.com/doggy8088/Learn-Git-in-30-days/tree/master/zh-cn 有没有遇过这种情境,某个系统开发写到一半,结果被老板或客戶「插单」,被要求紧急修正一个现有系统的 Bug 或添加 ......
索引 状态 目录 Learn days

Proj CDeepFuzz Paper Reading: PELICAN: Exploiting Backdoors of Naturally Trained Deep Learning Models In Binary Code Analysis

## Abstract 背景: 1. 本文研究的不是被恶意植入的后门,而是products of defects in training 2. 攻击模式: injecting some small fixed input pattern(backdoor) to induce misclassifi ......

Proj CDeepFuzz Paper Reading: Balancing Effectiveness and Flakiness of Non-Deterministic Machine Learning Tests

## Abstract 背景:In fact, some of the latest findings suggest that the existence of adversarial attacks may be an inherent weakness of deep learning mod ......

Proj CDeepFuzz Paper Reading: COMET: Coverage-guided Model Generation For Deep Learning Library Testing

## Abstract 背景:已有的方法(Muffin, Lemon, Cradle) can cover at most 34.1% layer inputs, 25.9% layer parameter values, and 15.6% layer sequences. 本文:COMET Gi ......

Proj CDeepFuzz Paper Reading: IvySyn: Automated Vulnerability Discovery in Deep Learning Frameworks

## Abstract 本文:IvySyn Task: discover memory error vulnerabilities in DL frameworks BugType: memory safety errors, fatal runtime errors Method: 1. 利用na ......

【ICML2022】Understanding The Robustness in Vision Transformers

来自NUS&NVIDIA 文章地址:[2204.12451] Understanding The Robustness in Vision Transformers (arxiv.org) 项目地址:https://github.com/NVlabs/FAN 一、Motivation CNN使用滑动 ......

Proj CDeepFuzz Paper Reading: Invariance-inducing regularization using worst-case transformations suffices to boost accuracy and spatial robustness

## Abstract 本文: Task: 1. prove invariance-inducing regularizers can increase predictive accuracy for worst-case spatial transformations 2. prove that ......

[论文阅读] Learning Semi-supervised Gaussian Mixture Model

# Learning Semi-supervised Gaussian Mixture Models for Generalized Category Discovery ## Abstract 在本文中,我们解决了广义类别发现(generalized category discovery, GCD ......

Learn Git in 30 days——第 12 天:认识 Git 物件的相对名称

写的非常好的一个Git系列文章,强烈推荐 原文链接:https://github.com/doggy8088/Learn-Git-in-30-days/tree/master/zh-cn 在认识了 Git 物件的「绝对名称」与「参照名称」后,最后我们来介绍 Git 版控过程中也很常用到的「相对名称」 ......
物件 Git 名称 Learn days

Proj CDeepFuzz Paper Reading: Differential Testing of Cross Deep Learning Framework APIs: Revealing Inconsistencies and Vulnerabilities

## Abstract 背景:目前对cross-framework conversion中的inconsistencies和security bugs的研究少有 本文:TensorScope Task: test cross-frame APIs in Machine Learning Librar ......

Learn Git in 30 days——第 11 天:认识 Git 物件的一般参照与符号参照

写的非常好的一个Git系列文章,强烈推荐 原文链接:https://github.com/doggy8088/Learn-Git-in-30-days/tree/master/zh-cn 在认识了 Git 物件的「绝对名称」后,接下来就要介绍 Git 版控过程中最常用到的「参照名称」。 认识物件的参 ......
物件 Git 符号 Learn days

Proj CDeepFuzz Paper Reading: DeepGauge: multi-granularity testing criteria for deep learning systems

## Abstract 本文: DeepGauge Task: provide multi-granularity testing criteria for DL systems Method: multi-granularity testing criteria for DL systems: 1 ......

[论文阅读] Prototypical contrastive learning of unsupervis

# Prototypical contrastive learning of unsupervised representations ## abstract 这篇论文介绍了原型对比学习(PCL),一种将对比学习与聚类相结合的无监督表示学习方法。PCL不仅为实例区分任务学习低层特征,更重要的是==* ......

Proj CDeepFuzz Paper Reading: Combinatorial Testing for Deep Learning Systems

## Abstract 本文:DeepCT Task: Testing DL Models with Combinatorial Testing Method: 1. 将输出值的空间离散化为区间,以便覆盖每个区间,对不同层内的神经元交互进⾏采样,并减少必须执⾏的测试输⼊的数量。 2. a set o ......

机器学习 -> Machine Learning (III)

> 来做一些入门题吧. 以下大多是 kaggle 环境. **Q1 Titanic** https://www.kaggle.com/competitions/titanic import ``` # This Python 3 environment comes with many helpful ......
Learning 机器 Machine III gt

Meta-Learning, A Survey

## 一、概述 通常在机器学习里,我们需要用大量的数据来训练一个模型;当场景发生改变时,模型就需要重新训练。这显然提升了成本,而人类学习方式与此不同,一个小孩子在学习动物的过程中,学习了很多动物的名称,当某次给他看一些没有见过的动物时,他总能很快的将新动物和别的动物区分开。Meta learning ......
Meta-Learning Learning Survey Meta

aarch64/arm_v8 环境下编译Arcade-Learning-Environment —— ale-py

conda install g++=12 cmake ../ -DCMAKE_BUILD_TYPE=Release -DPYTHON_INCLUDE_DIR=/home/share/xxx/home/software/anaconda3/include -DPYTHON_LIBRARY=/home/ ......

论文解读(SPGJL)《Soft Prompt Guided Joint Learning for Cross-Domain Sentiment Analysis》

Note:[ wechat:Y466551 | 可加勿骚扰,付费咨询 ] 论文信息 论文标题:Soft Prompt Guided Joint Learning for Cross-Domain Sentiment Analysis论文作者:Jingli Shi、Weihua Li、Quan Bai ......

Q-learning and RL implementation

Aim: Train a model to properly play vintage video games... Deep Q-learning Algo~ Very short Brief of Notations: {A,pi(Policy),Q(quality of action-at a ......
implementation Q-learning learning and RL

Learn Git in 30 days——第 10 天:认识 Git 物件的绝对名称

写的非常好的一个Git系列文章,强烈推荐 原文链接:https://github.com/doggy8088/Learn-Git-in-30-days/tree/master/zh-cn 在 Git 版本控制的过程,每一个版本就代表一个 commit 物件。又因为版控过程中经常会建立分支,最终产出的 ......
物件 Git 名称 Learn days

Proj CDeepFuzz Paper Reading: ACETest: Automated Constraint Extraction for Testing Deep Learning Operators

## Abstract Github: https://github.com/shijy16/ACETest 背景: 1. DL operators 用来计算多维tensors,很重要 本文:ACETest Task: automatically extract input validation c ......

[论文阅读] Momentum contrast for unsupervised visual representation learning

# Momentum contrast for unsupervised visual representation learning ## Introduction 我们提出了动量对比(MoCo)作为一种构建具有对比损失的无监督学习的大型一致字典的方法(图1)。 我们将字典维护为数据样本队列:当前 ......

Learn Git in 30 days——第 09 天:比对文件与版本差异

写的非常好的一个Git系列文章,强烈推荐 原文链接:https://github.com/doggy8088/Learn-Git-in-30-days/tree/master/zh-cn 使用任何版本控制软件的过程中,经常会需要查看历史记录与比对版本之间的差异。而在使用 Git 的时候要如何进行比对 ......
差异 版本 文件 Learn days

论文解读(WDGRL)《Wasserstein Distance Guided Representation Learning for Domain Adaptation》

Note:[ wechat:Y466551 | 可加勿骚扰,付费咨询 ] 论文信息 论文标题:Wasserstein Distance Guided Representation Learning for Domain Adaptation论文作者:Jian Shen、Yanru Qu、Weinan ......

【五期邹昱夫】CCF-A(TIFS'23)SAFELearning: Secure Aggregation in Federated Learning with Backdoor Detectability

> "Zhang, Zhuosheng, et al. "SAFELearning: Secure Aggregation in Federated Learning with Backdoor Detectability." IEEE Transactions on Information For ......

Learning Auxiliary Monocular Contexts Helps Monocular 3D Object Detection (2)

Feature backbone采用DLA,输入维度为3×H×W的RGB图,得到维度D×h×w的特征图F,然后将特征图送入几个轻量级regression heads,2D bouding boxes的中心特征图用下面的模块得到: 其中AN是Attentive Normalization.用公式表示: ......

【五期邹昱夫】CCF-A(SP'23)3DFed: Adaptive and Extensible Framework for Covert Backdoor Attack in Federated Learning

> "Li, Haoyang, et al. "3DFed: Adaptive and Extensible Framework for Covert Backdoor Attack in Federated Learning." 2023 IEEE Symposium on Security an ......