qhapi

qhapi

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Web3Bugs

Demystifying Exploitable Bugs in Smart Contracts

Language:SolidityStargazers:1532Issues:0Issues:0
Language:SolidityStargazers:61Issues:0Issues:0
License:AGPL-3.0Stargazers:2Issues:0Issues:0
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Smart-Contract-Dataset

Datasets for evaluating smart contract security analysis tools ( continuously updating... )

Stargazers:135Issues:0Issues:0

DAppSCAN

DAppSCAN: Building Large-Scale Datasets for Smart Contract Weaknesses in DApp Projects.

Language:SolidityStargazers:48Issues:0Issues:0

solidity-flattener

Utility to combine Solidity project to a flat file

Language:JavaScriptLicense:Apache-2.0Stargazers:326Issues:0Issues:0

smartbugs

SmartBugs: A Framework to Analyze Ethereum Smart Contracts

Language:PythonLicense:Apache-2.0Stargazers:571Issues:0Issues:0

AIJack

Security and Privacy Risk Simulator for Machine Learning (arXiv:2312.17667)

Language:C++License:Apache-2.0Stargazers:363Issues:0Issues:0

breaching

Breaching privacy in federated learning scenarios for vision and text

Language:PythonLicense:MITStargazers:269Issues:0Issues:0

ant-design-vue

🌈 An enterprise-class UI components based on Ant Design and Vue. 🐜

Language:VueLicense:NOASSERTIONStargazers:20235Issues:0Issues:0

nps

一款轻量级、高性能、功能强大的内网穿透代理服务器。支持tcp、udp、socks5、http等几乎所有流量转发,可用来访问内网网站、本地支付接口调试、ssh访问、远程桌面,内网dns解析、内网socks5代理等等……,并带有功能强大的web管理端。a lightweight, high-performance, powerful intranet penetration proxy server, with a powerful web management terminal.

Language:GoLicense:GPL-3.0Stargazers:30666Issues:0Issues:0

Emotion-XAI-Videos

Deep learning solution for explaining and detecting emotions in advertisement videos.

Language:PythonStargazers:3Issues:0Issues:0

Astronomical-Images-Classification

Recently, a massive astronomical dataset is being collected to find answers for a variety of unanswered questions about our universe by virtue of modern sky survey instruments. Unfortunately, it is impossible to work on these massive datasets manually to get effective results so, astronomers are seeking approaches to automate the human error borne processes of manual scanning in order to discover astronomical knowledge and information from these large raw datasets i.e. to classify stars, quasars, galaxies and Supernovae (SNe). The problem here, this is done by hand and it is a very time consuming job as well as it is subject to human bias which differs from person to person. In addition, the manual scanning is infeasible for a huge amount of images. From this point of view, I've selected this concrete astronomical classification problem to investigate applying convolutional Neural Networks (CNNs) algorithm to automate this process and then I compared my results to a reference publication as a benchmark model by using the same well-known public dataset of the Sloan Digital Sky Survey (SDSS).

Language:Jupyter NotebookStargazers:15Issues:0Issues:0

galaxy2galaxy

Library of models, datasets, and utilities to build generative models for astronomical images.

Language:Jupyter NotebookLicense:MITStargazers:27Issues:0Issues:0

weekly

科技爱好者周刊,每周五发布

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