Python utility to generate filesystem content for Obsidian.

Overview

Security Vault Generator

Quickly parse, format, and output common frameworks/content for Obsidian.md.

There is a strong focus on MITRE ATT&CK because it provides a solid and generally accepted framework that can be used to bind notes to.

I ripped this out in 1-2 days so it's only at minimum viable product.

This should have been an Obsidian plugin but I didn't want to JS.

Docs

Quickstart

This assumes all packages have been installed via PIP. See Installation for steps on this process.

Just execute the proper build subcommand and generator.py will:

  1. Clone necessary repositories.
  2. Parse all artifacts.
  3. Embed frontmatter with tagging.
  4. Format them to .md files.
  5. And dump the files to disk in a directory of your choice.

Assuming your vault is named TheVault, these commands should work to build out the MITRE ATT&CK framework and LOLBAS:

Tip: Select a directory in the target Obsidian vault as an output directory using the -od flag for each subcommand.

python3 generator.py mitre-attack build -od ~/TheVault/MITRE\ Attack/
python3 generator.py lolbas build -od ~/TheVault/LOLBAS/
python3 generator.py mitre-attack link --attack-directory ~/TheVault/MITRE\ Attack/

execution

Now all you have to do is open the vault in Obsidian:

obsidian

Engaging "graph view" and applying a filter with group colors on tags should yield output similar to the following, where green nodes are LOLBAS notes and red are MITRE ATT&CK:

obsidian_global_graph

Tip: Here's the filter I used. You'll have to go about grouping by isolating the tags.

tag:#lolbas OR tag:#mitre/attack/technique
Owner
Justin Angel
Justin Angel
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