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AEGIS by Team Kernel Krypts

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📌 About

AEGIS is an intrusion detection & alerting system using eBPF for securing IoT devices. By introducing a new IoT device into the network, it acts ass a central hub for monitoring the remaining IoT devices (nodes) in the network.

Motivation

A study by Fastly states that, on average, once an IoT device is infected, it can begin launching an attack within 6 minutes of being exposed to the internet. Hence, network observability of devices is of utmost importance to detect intrusion in IoT networks.

⛓ System Architecture

AEGIS system architecture

🎯 Key Features

  • Gain insights into network observability statistics of devices in an IoT network.

  • Obtain alerts for any malicious activity flagged by the rule engine.

  • Deploy the system by simply installing a binary on an IoT device in a network.

  • Current system includes rules to flag malicious IPs, DoS, and ICMP flooding attacks.

⚡ Technologies Used

  • eBPF: A technology that can run sandboxed programs in a privileged contexts such as the operating system kernel.

  • Rust: A systems programming language that enforces memory safety and helps interface with eBPF programs.

  • Raspberry Pi: It is a low-cost micro-computer that can be easily deployed in an IoT network.

  • Flask: A micro-web framework for creating server side applications using Python.

Implementation

Landing page


Dashboard

🔗 Important Links