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yeti-791/awesome-offensive-ai-agentic-landscape — explained in plain English

Analysis updated 2026-05-18

17Audience · researcherComplexity · 1/5Setup · easy

tl;dr

A bilingual curated list of AI-powered offensive security tools, papers, benchmarks, and vendors for penetration testing and red teaming.

vibe map

mindmap
  root((AI offensive security list))
    What it does
      Curated reference list
      Bilingual Chinese English
      Sorted by stars
    Categories
      Pentesting tools
      LLM red teaming
      Autonomous attack agents
      Vulnerability discovery
    Contents
      61 open source projects
      67 academic papers
      12 benchmarks
      48 commercial products
    Use cases
      Research landscape overview
      Vendor comparison
      Track new papers

Code map

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what do people make with this?

VIBE 1

Browse curated AI penetration testing tools sorted by GitHub stars to find established options.

VIBE 2

Track academic papers on LLM red teaming and automated vulnerability discovery in one place.

VIBE 3

Compare commercial AI security vendors, including Chinese and international options, in one table.

what's the stack?

Markdown

how it stacks up fr

yeti-791/awesome-offensive-ai-agentic-landscape0petru/sentimo0xblackash/cve-2026-46333
Stars171717
LanguagePythonC
Setup difficultyeasymoderatemoderate
Complexity1/53/54/5
Audienceresearcherdeveloperresearcher

Figures from each repo's GitHub metadata at analysis time.

how do i run it?

Difficulty · easy time til it works · 5min

in plain english

This repository is a curated reference list covering the intersection of artificial intelligence and offensive cybersecurity. It compiles open-source projects, academic papers, evaluation benchmarks, and commercial products in four main areas: AI-assisted penetration testing (the practice of probing computer systems for security weaknesses), red teaming of language models (testing AI systems for vulnerabilities and unsafe behavior), autonomous agents that can carry out attacks, and automated vulnerability discovery. The list was assembled with a data cutoff of May 2026 and is documented in both Chinese and English. It covers 61 open-source projects, 67 academic papers from June 2023 through January 2026, 12 capability benchmarks, 6 other curated reference lists, and 48 commercial products including 39 international and 9 Chinese vendors. Entries with at least 1,000 stars on GitHub have their star count displayed in thousands. The project tables are sorted by GitHub star count. The most-starred open-source projects include tools for automated web application security testing, LLM vulnerability scanning (described in the README as doing for language models what the network scanner nmap does for networks), fully autonomous penetration testing agents, and frameworks for testing whether AI systems can be tricked through crafted inputs. Several entries include projects from well-known institutions and companies such as NVIDIA, Microsoft, OWASP, and Trail of Bits. The intended audience is security researchers, security engineers, and enterprise decision-makers who want an overview of where AI capabilities are being applied in offensive security. The document is maintained as a living reference and accepts community contributions to fill in missing entries across each category. The full README is longer than what was shown.

prompts (copy fr)

prompt 1
Summarize the top 5 most starred AI-assisted penetration testing tools from the Awesome-Offensive-AI-Agentic-Landscape list and explain what each does.
prompt 2
Using this list, recommend an LLM red teaming benchmark suitable for evaluating a customer support chatbot.
prompt 3
Compare the commercial AI security vendors in this list and point out which ones offer autonomous penetration testing agents.

Frequently asked questions

what is awesome-offensive-ai-agentic-landscape fr?

A bilingual curated list of AI-powered offensive security tools, papers, benchmarks, and vendors for penetration testing and red teaming.

How hard is awesome-offensive-ai-agentic-landscape to set up?

Setup difficulty is rated easy, with roughly 5min to a first successful run.

Who is awesome-offensive-ai-agentic-landscape for?

Mainly researcher.

peek the repo → explain another one

This repo across BitVibe Labs

double-check against the repo, no cap.