Machine learning to classify Malicious (Spam)/Benign URL's
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Updated
Jun 13, 2021 - Jupyter Notebook
Machine learning to classify Malicious (Spam)/Benign URL's
Offensive & proactive tool designed to disrupt phishing attacks by flooding fake phishing websites' login portals with a deluge of fake user data, sometimes even takes down their entire site in the process.
Extracting features from URLs to build a data set for machine learning. The purpose is to find a machine learning model to predict phishing URLs, which are targeted to the Brazilian population.
Custom SpamAssassin rules I and others have made and contributed with - To mitigate spam mails and phishing mails now also with cool Phishtank rules
Measurement system I built during my PhD to collect and analyse large-scale datasets; including phishing and malware attacks on Twitter, blacklist characterisation, and phishing detection capabilities of web browsers.
gaw.sh url shortener
Phishing URL Dataset collected from IP2Loaction and PhishTank
Simple web API using the hourly dump from Phishtank
Small utility that loads any downloaded JSON databases from www.phishtank.com into Redis cache for quick local queries
A simple phishtank.com API gem
Get the kind of content hosted by a domain based on the domain name
Python API for Phishtank Lookup
Search PhishTank for a URL and return its status.
The server side of PB Project.
PhishFinder - Detecting Phishing Websites using Machine Learning on IBM Cloud
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