✔ Use machine learning to classify malware.
✔ Malware analysis 101.
✔ Set up a cybersecurity lab environment.
✔ Learn how to tackle data class imbalance.
✔ Unsupervised anomaly detection.
✔ End-to-end deep neural networks for malware classification.
✔ Create a machine learning Intrusion Detection System (IDS).
✔ Employ machine learning for offensive security.
✔ Learn how to address False Positive constraints.
✔ Break a CAPTCHA system using machine learning.
The best of the best badass hackers and security experts are using machine learning to break and secure systems. This course has everything you need to join their ranks.
In this one-of-its-kind course, we will be covering all from the fundamentals of cybersecurity data science, to the state of the art. We will be setting up a cybersecurity lab, building classifiers to detect malware, training deep neural networks and even breaking CAPTCHA systems using machine learning.
If you’ve tried to enter the super hot field of cybersecurity and machine learning, but faced rejection after rejection, needing experience to get experience, feeling hopeless that the demand and pay are so high, but nothing you are doing is letting you in, this is your chance to gain an edge over the competition. This is your chance to get credentials and real experience.
If you are looking to break into the field of cybersecurity data science, pick up on the bleeding edge tools, and become the best in the field of cybersecurity, this course is for you.
We will be using python and scikit learn for majority of our machine learning, and keras, a wrapper for tensorflow, for deep learning. This course is hands on and practical. Consequently, a student is expected to put in the work and not be shy about getting their hands dirty with some malware!
– Data scientists curious to apply the craft to the field of cybersecurity.
– Cybersecurity experts curious to see how data science can be applied to cybersecurity.
☐ Basic programming in python.
☐ Basic knowledge of data science.
Dr. Tsukerman graduated from Stanford University and UC Berkeley. His achievements include designing a machine-learning-based anti-ransomware product that won Top 10 Ransomware Products by PC Magazine as well as implementing a machine-learning-based malware detection system for Palo Alto Network’s WildFire service serving over 30,000 enterprise customers. Dr. Tsukerman is the author of the Machine Learning for Cybersecurity Cookbook, Cybersecurity Data Science and Machine Learning for Red Team Hackers Courses.