Skip to content

Malware-Detection-System-Using-Deep-Learning-Project. Project Includes PPT. Code, Explanation Video and Documents

Notifications You must be signed in to change notification settings

satyam707/Malware-Detection-Using-Deep-Learning-Project

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

8 Commits
 
 
 
 

Repository files navigation

Malware-Detection-System-Using-Deep-Learning-Project

Youtube explanation : https://youtu.be/f-JRYJWVKKE

youtube

Abstract

Abstract: Malware continues to be a serious threat starting from home users to large enterprises. This makes it a hot research topic. Detection of malware is done using static and dynamic analysis of malware signatures and behaviour patterns. These are proven to be ineffective and time consuming while detecting unknown malware. In order to identify the new malware many machine learning algorithms are created. Feature engineering is a key step for building these algorithms. This takes too much time. By using deep learning techniques this step can be completely avoided. Recent research reported that many of them used biased dataset, which is completely ineffective in real-time situations. Hence this drives to create a new algorithm/architecture to detect malware using deep learning.

Programming : Python

Project Includes :

  1. PPT
  2. Code
  3. Report
  4. Documents
  5. Explanation Video
  6. Base Research Papers

Research paper References :

1.https://www.ijstr.org/final-print/jan2020/Detection-Of-Malware-Using-Deep-Learning-Techniques.pdf

2.https://www.ijstr.org/final-print/jan2020/Detection-Of-Malware-Using-Deep-Learning-Techniques.pdf

Need Code, Documents & Explanation video ?

How to Reach me :

WhatsApp: +91 9310631437 (Helping 24*7) CHAT

1000 Computer Science Projects : https://www.computer-science-project.in/

Mail/Message me for Projects Help 🙏🏻

Youtube explanation : https://youtu.be/f-JRYJWVKKE

About

Malware-Detection-System-Using-Deep-Learning-Project. Project Includes PPT. Code, Explanation Video and Documents

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Python 100.0%