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Implementation of the article "Malicious Software Classification using Transfer Learning of ResNet-50 Deep Neural Network" under "classifier.ipynb". Achieved 98% Accuracy.
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Malware detection using transfer learning from ResNet-50, with only 2 classes- benign and malicious, i.e- distinction between benign and malicious software.
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Data:
- MalImg dataset- consists of 9,339 labeled malware binary images in 25 different malware classes.
- Benign dataset- created by us, consists of 7592 benign binary images.
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