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.
- Updated
Jun 1, 2021 - Python
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.
ExeRay AI detects malicious Windows executables using ML. Analyzes entropy, imports, and metadata for rapid classification, aiding incident response. Built with Python and scikit-learn.
🌸 Breast epithelium segmentation through IHC-guided supervision
Official implementation of the paper: "REGroup: Rank-aggregating Ensemble of Generative Classifiers for Robust Predictions", IEEE WACV, 2022
Classification of Benign and Malignant Breast Cancer using Supervised Machine Learning Algorithm Logistic Regression
Liver Hemangioma - Karaciğer Hemangioma
Endometriosis - Endometriozis
Esophagus Granular Cell Tumor - Özofagus Granüler Hücreli Tümör
Reactive atypia in an ulcerated colon polyp - Ülsere Kolon Polibinde Reaktif Atipi
Gallbladder Rokitansky-Aschoff Sinus - Safra Kesesi Rokitansky-Aschoff Sinus
Benign Prostate Hyperplasia - Benign Prostat Hiperplazisi
Collect and download benign Windows PE executables from marketplace sources for research and machine learning
Pancreas Solid Pseudopapillary Neoplasm - Pankreas Solid Psödopapiller Neoplazm
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