metame
Code mutator
Generates mutated versions of executable files to evade pattern recognition by antivirus software
metame is a metamorphic code engine for arbitrary executables
569 stars
29 watching
88 forks
Language: Python
last commit: about 5 years ago Related projects:
Repository | Description | Stars |
---|---|---|
codeintegrity-ai/mutahunter | Automated unit test generation and mutation testing tool using Large Language Models. | 243 |
agroce/universalmutator | A tool for generating and analyzing mutants in source code across multiple programming languages. | 137 |
nettitude/shellcodemutator | Tool to modify assembly code by inserting random no-instructions. | 233 |
eli64s/readme-ai | Automates the generation of comprehensive README files using AI-powered language models. | 1,590 |
spoonlabs/metamutator | A tool that generates testable versions of Java programs by injecting mutations at compile-time. | 18 |
sugakandrey/scalamu | An engine for testing software mutations in Scala code | 43 |
taiga-family/ng-morph | A set of tools for updating and manipulating Angular projects using TypeScript Abstract Syntax Trees (ASTs) with high-level modifications | 156 |
metasmile/git-xcp | Automates versioning and release management for Xcode projects using Git | 13 |
deepgrace/monster | An advanced C++ template metaprogramming framework for working with sequences and algorithms. | 161 |
mbj/mutant | Automated code review tool with mutation testing to simplify and improve code quality | 1,956 |
boxed/mutmut | Tool for detecting and applying code mutations to improve testing | 927 |
scicloj/metamorph.ml | A tool for tuning complex data transformation pipelines in machine learning models | 18 |
mirage/conan | Re-implementation of a file recognition engine with support for multiple MIME types and decision trees. | 48 |
xverse-ai/xverse-moe-a36b | Develops and publishes large multilingual language models with advanced mixing-of-experts architecture. | 36 |
lge-arc-advancedai/auptimizer | Automates model building and deployment process by optimizing hyperparameters and compressing models for edge computing. | 200 |