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Advanced Binary Analysis

This repository contains the materials for the Advanced Binary Analysis workshop given by @alxbl at NorthSec 2020.

Install

This repository uses git LFS to store large files, make sure you have the git-lfs package installed, then run

git lfs install
git lfs checkout

to ensure that all the static assets are available.

Usage

Serve html/ with your favorite built-in HTTP server or navigate to the URL in the repository description.

cd html && python3 -m http.server 8080
firefox http://localhost:8080

Build and run the workshop environment:

# Build docker image
docker build -t advanced-binary-analysis .

# Create workshop container instance
docker run --name aba-workshop -v$(pwd):/home/lab -p 8888:8888 -it advanced-binary-analysis

After running the workshop, to clean up the environment:

# Remove docker container when done
docker stop aba-workshop && docker rm aba-workshop

# Remove docker image to reclaim disk space.
docker rmi advanced-binary-analysis

Building Code Lab

If you modify the code lab sources (advanced-binary-analysis.md) you will need to re-export the HTML. This can be done using claat:

claat export advanced-binary-analysis.md
rm -rf html
mv advanced-binary-analysis html

Keep in mind that LAB 2 and LAB 3 are duplicated and slightly edited versions of labs/labs.ipynb to make use of Code Lab's info and warning outlines, so if you modify either, you should keep the Jupyter Notebook in sync.

License

  • The code provided as part of the workshop is licensed under MIT.
  • The material (visual support, walkthrough, notes) is licensed under CC-BY-SA.

See LICENSE for more details.

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Materials for the Binary Analysis Workshop presented at NorthSec 2020

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  • Dockerfile 0.2%