Proposal
SRS
SDD
Thesis

Team Members

Seif ElDein Mohamed

Team Leader

Mostafa Ashraf

Team Member

Amr Ehab

Team Member

Omar Shereef

Team Member

Supervisors

Eslam Amer

Associate Professor

Haytham Tarek

Teaching Assistant

Mostafa Badr

Teaching Assistant

Abstract

The mobile industry is in rapid evolution making smartphones available with affordable rates for all segments of society. Smartphones’ purposes are not limited to making phone calls or sending messaging, users can also take photos, store personal data, do online banking and trace their daily activities. The more applications appear, the more security becomes a concern to mobile users. This concern arises from the fear of being subjected to a security breach that jeopardizes confidential personal data such as emails, passwords, location, credentials etc. Malware applications which are developed for the sake of compromising users’ personal data are also increasing rapidly day after day. In our work, we aim to design an intelligent detection framework for Android malware applications. The framework uses different analysis-based approaches along with different machine learning algorithms to distinguish between benign and malicious

System Objectives

1-To use different machine learning algorithms to detect malicious Android applications based on permissions and API Calls.

2-To provide firewall from breaching Android users’ critical data.

3-To secure the personal data information.

System Scope

The proposed system classifies malware behaviors of Android Applications with efficiency and viability, utilizing machine learning techniques and to determine the ability of malware, detect it, and contain it. It additionally helps in determining recognizable examples that can be utilized to fix and prevent future infections.

Documents and Presentations

Proposal

You will find here the documents and presentation for our proposal.

Document

Presentation

SRS

You will find here the documents and presentation for our SRS.

Document

presentation

SDD

You will find here the documents and presentation for our SDD.

Document

presentation

Thesis

You will find here the documents and presentation for our Thesis

Document

Presentation

Accomplishments

Publications

Competitions

Detecting Malicious Android Applications Based On API calls and Permissions Using Machine learning Algorithms

Competition Title

Detail Text