RingZer0 2025 - Training Announcement

Applied AI/LLM for Android APK Reversing and Analysis

RingZer0 - Applied AI/LLM for Android APK Reversing and Analysis

Unlock the next level of Android security analysis in our hands-on AI-Augmented Reverse Engineering training. You will learn to wield both local and online Large Language Models to accelerate decompilation, automate Frida script generation, and supercharge your workflow in Jadx and Ghidra. From intelligent code annotation to automated reporting, this course will redefine how you approach APK analysis.

Overview

This hands-on training explores how AI and Large Language Models (LLMs) can augment the reverse engineering and security analysis of Android applications. Participants will learn to leverage both local and online LLMs to assist with decompiling, annotating, and analyzing APKs and native libraries. The training introduces Multi-Client Plugins (MCPs) to enhance static analysis tools like Jadx and Ghidra, and walks through real-world usage of LLMs for code refactoring, Frida script generation, fuzzing harness creation, and automated reporting. The course blends static and dynamic analysis with AI-assisted tooling, culminating in a hands-on project where participants reverse a complex APK using AI throughout the process.

Ocotber 26th - November 1st 2025

RingZer0 (Virtual)

2 days

Beginner

Gueric Eloi & Nabih Benazzouz

$2,600.00 (CAD)

25 participants

Schedule

Day 1 : AI-Augmented Static Analysis

  • Module 1 | Introduction & Setup

  • Module 2 | AI Overview for Reverse Engineers

  • Module 3 | Jadx MCP + AI-enhanced Analysis

  • Module 4 | Ghidra MCP + AI Integration

  • Module 5 | AI-Powered Decompilation Refactoring

  • Module 6 | Practice Challenge

 

Day 2 : Dynamic Analysis + AI-Powered Automation

  • Module 7 | Frida Script Generation with AI

  • Module 8 | AI-Driven Fuzzing Harness Generation

  • Module 9 | Using Nuclei AI for Mobile Security

  • Module 10 | Automated Reporting with LLMs

  • Module 11 | Final Hands-on Project

Your Instructors

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Guerric Eloi

Guerric ELOI is a cybersecurity researcher at FuzzingLabs focused on Android and iOS security. He identifies high-impact vulnerabilities through penetration testing, reverse engineering, and bug bounty programs, working with vendors to prevent major threats. He also delivers practical training on mobile security and builds custom tools to automate vulnerability discovery and strengthen system defenses.

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Nabih Benazzouz

Nabih is the COO of FuzzingLabs. Over the last 3.5 years he has moved from intern to security engineer, team lead, and now operations lead. His work focuses on fuzzing and vulnerability research, writing and maintaining tools in C, Python, Rust, and Go. He earned his cybersecurity-engineering degree from EPITA

Topics Covered

Part 1 – AI-Augmented Static Analysis

Module 1 | Introduction & Setup

  • Training overview
  • Installing required tools: Jadx, Ghidra, Frida, Python LLM clients
  • Introduction to MCPs (Multi-Client Plugins)

Module 2 | AI Overview for Reverse Engineers

  • What LLMs can do for reverse engineering
  • Prompt engineering basics
  • Online vs local LLM models
  • Tools: GPT-5, Claude, DeepSeek, StarCoder, Llama3

Module 3 | Jadx MCP + AI-enhanced Analysis

  • Reverse engineering APKs with Jadx
  • Using AI to annotate decompiled code
  • Recovering class names, enums, constants

Module 4 | Ghidra MCP + AI Integration

  • Reverse engineering native .so files
  • Using AI inside Ghidra to annotate disassembly
  • Generating and executing Ghidra scripts with LLM support

Module 5 | AI-Powered Decompilation Refactoring

  • Refactor and clean decompiled Java/smali
  • Use AI for control flow simplification, better naming

Module 6 | Practice Challenge

  • Reverse a full APK using Jadx + AI
  • Summarize functionality, permissions, and logic
  • Deliver a short AI-assisted report

Part 2 – Dynamic Analysis + AI-Powered Automation

Module 7 | Frida Script Generation with AI

  • Basics of Frida (Java + JNI hooking)
  • Prompting LLMs to generate Frida scripts
  • Auto-generate Java method hooks, native interceptors

Module 8 | AI-Driven Fuzzing Harness Generation

  • Explain a target function to LLM
  • Generate fuzz harnesses for Java/native
  • Integrate with AFL++, libFuzzer

Module 9 | Using Nuclei AI for Mobile Security

  • Create AI-generated Nuclei templates
  • Connect APK analysis to backend scanning
  • Combine static APK info with Nuclei tests

Module 10 | Automated Reporting with LLMs

  • Auto-generate vulnerability reports
  • Summarize technical data for exec/management

Module 11 | Final Hands-on Project

  • Reverse a more complex APK (obfuscation + native)
  • Use AI for annotation, Frida script, fuzzing, and report
  • Deliver final findings
  • Q&A, feedback, and resources

Prerequisites and requirements

PREREQUISITES

  • Basic understanding of Android application structure and components (APK, manifest, smali/Java)
  • Basic knowledge of reverse engineering concepts (Jadx, Ghidra, Frida is a plus)
  • Familiarity with Python scripting
  • Some experience with using LLMs (e.g., ChatGPT, Claude) is helpful but not required
  • Optional: previous experience with fuzzing or mobile vulnerability analysis

SYSTEM REQUIREMENTS

  • Operating System: Linux or macOS
  • Internet Access: Required for using online LLMs
  • Local AI: a local LLM client or interface

About Us

Founded in 2021 and headquartered in Paris, FuzzingLabs is a cybersecurity startup specializing in vulnerability research, fuzzing, and blockchain security. We combine cutting-edge research with hands-on expertise to secure some of the most critical components in the blockchain ecosystem.

Contact us for an audit or long term partnership!

Any questions about our services and trainings ?​

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email

contact@fuzzinglabs.com

X (Twitter)

@FuzzingLabs

Github

FuzzingLabs

LinkedIn

FuzzingLabs