templine / flare-floss

FLARE Obfuscated String Solver - Automatically extract obfuscated strings from malware.

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

PyPI - Python Version CI status build status License

FLARE Obfuscated String Solver

Rather than heavily protecting backdoors with hardcore packers, many malware authors evade heuristic detections by obfuscating only key portions of an executable. Often, these portions are strings and resources used to configure domains, files, and other artifacts of an infection. These key features will not show up as plaintext in output of the strings.exe utility that we commonly use during basic static analysis.

The FLARE Obfuscated String Solver (FLOSS, formerly FireEye Labs Obfuscated String Solver) uses advanced static analysis techniques to automatically deobfuscate strings from malware binaries. You can use it just like strings.exe to enhance basic static analysis of unknown binaries.

FLOSS extracts all the following string types:

  1. static strings: "regular" ASCII and UTF-16LE strings
  2. decoded strings: strings decoded in a function
  3. stack strings: strings constructed on the stack at run-time
  4. tight strings: special form of stack strings, decoded on the stack

Please review the theory behind FLOSS here. Our blog post talks more about the motivation behind FLOSS and details how the tool works.

Quick Run

To try FLOSS right away, download a standalone executable file from the releases page: https://github.com/mandiant/flare-floss/releases

For a detailed description of installing FLOSS, review the documentation here.

Usage

Extract obfuscated strings from a malware binary:

$ floss /path/to/malware/binary

Display the help/usage screen to see all available switches.

$ floss -h

For a detailed description of using FLOSS, review the documentation here.

For a detailed description of testing FLOSS, review the documentation here.

About

FLARE Obfuscated String Solver - Automatically extract obfuscated strings from malware.

License:Apache License 2.0


Languages

Language:Python 100.0%