AdversariaLib is a general-purpose library for the automatic evaluation of machine learning-based classifiers under adversarial attacks. It comes with a set of powerful features: **Easy-to-use**: Running sophisticated experiments is as easy as launch a single script. **Wide range of supported ML algorithms** All supervised learning algorithms supported by scikit-learn, as well as Artificial Neural Networks (ANNs) **Fast Learning and Evaluation** Thanks to scikit-learn and FANN, all supported ML algorithms are optimized and written in C/C++ language. **Built-in attack algorithms** Gradient Descent Attack **Extensible** Other attack algorithms can be easily added to the library. **Multi-processing** Do you want to further save time? The built-in attack algorithms can run concurrently on multiple processors.
Last, but not least, AdversariaLib is **free software**, released under the GNU General Public License version 3!

Project Samples

Project Activity

See All Activity >

Follow AdversariaLib

AdversariaLib Web Site

You Might Also Like
Easy management of simple and complex projects Icon
Easy management of simple and complex projects

We help different businesses become digital, manage projects, teams, communicate effectively and control tasks online.

Plan more projects with Worksection. Use Gantt chart and Kanban boards to organize your projects, get your team onboard and assign tasks and due dates.
Rate This Project
Login To Rate This Project

User Reviews

Be the first to post a review of AdversariaLib!

Additional Project Details

Registered

2013-08-01