
Research
Malicious NuGet Packages Typosquat Nethereum to Exfiltrate Wallet Keys
The Socket Threat Research Team uncovered malicious NuGet packages typosquatting the popular Nethereum project to steal wallet keys.
@chakra-ui/shared-utils
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A Quick description of the component
This is an internal utility, not intended for public usage.
yarn add @chakra-ui/shared-utils
# or
npm i @chakra-ui/shared-utils
Yes please! See the contributing guidelines for details.
This project is licensed under the terms of the MIT license.
Lodash is a popular utility library that provides a wide range of functions for common programming tasks, such as manipulating arrays, objects, and functions. It offers more comprehensive functionality compared to @chakra-ui/shared-utils, but it is also larger in size.
Ramda is a functional programming library for JavaScript that emphasizes immutability and side-effect-free functions. It provides utilities for working with arrays, objects, and functions, similar to @chakra-ui/shared-utils, but with a focus on functional programming paradigms.
Underscore is a utility library that provides a range of functions for dealing with arrays, objects, and other data types. It is similar to Lodash but with a smaller footprint and fewer features. It offers some overlapping functionality with @chakra-ui/shared-utils.
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Research
The Socket Threat Research Team uncovered malicious NuGet packages typosquatting the popular Nethereum project to steal wallet keys.
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