AI+ Ethical Hacker™

# AT-220

Safeguard Digital Frontiers: Elevate Cybersecurity with AI Integration
The AI+ Ethical Hacker™ certification offers an in-depth exploration of Artificial Intelligence (AI) and its transformative role in cybersecurity. This program is designed for aspiring ethical hackers and cybersecurity professionals who want to master AI-driven offensive and defensive strategies. With a focus on real-world applications, learners will delve into AI-powered penetration testing, threat intelligence, and vulnerability assessments, enabling them to proactively identify and neutralize cyber threats. By integrating machine learning techniques with traditional cybersecurity practices, participants gain skills in automated threat detection, anomaly analysis, and security protocol optimization. The curriculum includes practical training on the latest AI cybersecurity tools, ethical considerations, and case studies to prepare professionals for the evolving landscape of cyber defense. This course is ideal for anyone seeking to harness AI to enhance network security, protect sensitive data, and ensure system resilience against emerging threats.

$495.00

What’s included?

  • High Quality Courseware
  • AI Mentor for Personalized Guidance
  • Quizzes, Assessments and Course Resources
  • Proctored Exam With 1 Free Retake
  • Exam Study Guide

Prerequisites

  • Programming Skills: Proficiency in languages like Python, Java, or C++ for automation.
  • Networking Fundamentals: Understanding of protocols, firewalls, and subnetting.
  • Operating Systems Knowledge: Experience with Windows and Linux environments.
  • Cybersecurity Basics: Concepts of encryption, authentication, and access control.
  • Machine Learning Fundamentals: Algorithms, models, and their applications in security.
  • Web Technology Knowledge: Familiarity with HTTP/HTTPS protocols and web server configurations.

Exam Details

What Will You Learn?

AI-Integrated Cybersecurity Techniques
Learn to implement AI in ethical hacking processes like penetration testing, vulnerability scanning, and incident response.
Threat Analysis and Anomaly Detection
Use machine learning algorithms to identify unusual patterns, predict risks, and mitigate potential cyberattacks.
AI for Identity and Access Management (IAM)
Enhance secure authentication processes by applying AI to dynamically manage user permissions and access protocols.
Automated Security Protocol Optimization
Leverage AI for real-time firewall rule adjustment, data protection, and proactive risk assessment.

Certification Modules

Certification Overview
  1. Course Introduction Preview
Module 1: Foundation of Ethical Hacking Using Artificial Intelligence (AI)
  1. 1.1 Introduction to Ethical Hacking
  2. 1.2 Ethical Hacking Methodology
  3. 1.3 Legal and Regulatory Framework
  4. 1.4 Hacker Types and Motivations
  5. 1.5 Information Gathering Techniques
  6. 1.6 Footprinting and Reconnaissance
  7. 1.7 Scanning Networks
  8. 1.8 Enumeration Techniques
Module 2: Introduction to AI in Ethical Hacking
  1. 2.1 AI in Ethical Hacking
  2. 2.2 Fundamentals of AI
  3. 2.3 AI Technologies Overview
  4. 2.4 Machine Learning in Cybersecurity
  5. 2.5 Natural Language Processing (NLP) for Cybersecurity
  6. 2.6 Deep Learning for Threat Detection
  7. 2.7 Adversarial Machine Learning in Cybersecurity
  8. 2.8 AI-Driven Threat Intelligence Platforms
  9. 2.9 Cybersecurity Automation with AI
Module 3: AI Tools and Technologies in Ethical Hacking
  1. 3.1 AI-Based Threat Detection Tools
  2. 3.2 Machine Learning Frameworks for Ethical Hacking
  3. 3.3 AI-Enhanced Penetration Testing Tools
  4. 3.4 Behavioral Analysis Tools for Anomaly Detection
  5. 3.5 AI-Driven Network Security Solutions
  6. 3.6 Automated Vulnerability Scanners
  7. 3.7 AI in Web Application
  8. 3.8 AI for Malware Detection and Analysis
  9. 3.9 Cognitive Security Tools
Module 4: AI-Driven Reconnaissance Techniques
  1. 4.1 Introduction to Reconnaissance in Ethical Hacking
  2. 4.2 Traditional vs. AI-Driven Reconnaissance
  3. 4.3 Automated OS Fingerprinting with AI
  4. 4.4 AI-Enhanced Port Scanning Techniques
  5. 4.5 Machine Learning for Network Mapping
  6. 4.6 AI-Driven Social Engineering Reconnaissance
  7. 4.7 Machine Learning in OSINT
  8. 4.8 AI-Enhanced DNS Enumeration & AI-Driven Target Profiling
Module 5: AI in Vulnerability Assessment and Penetration Testing
  1. 5.1 Automated Vulnerability Scanning with AI
  2. 5.2 AI-Enhanced Penetration Testing Tools
  3. 5.3 Machine Learning for Exploitation Techniques
  4. 5.4 Dynamic Application Security Testing (DAST) with AI
  5. 5.5 AI-Driven Fuzz Testing
  6. 5.6 Adversarial Machine Learning in Penetration Testing
  7. 5.7 Automated Report Generation using AI
  8. 5.8 AI-Based Threat Modeling
  9. 5.9 Challenges and Ethical Considerations in AI-Driven Penetration Testing
Module 6: Machine Learning for Threat Analysis
  1. 6.1 Supervised Learning for Threat Detection
  2. 6.2 Unsupervised Learning for Anomaly Detection
  3. 6.3 Reinforcement Learning for Adaptive Security Measures
  4. 6.4 Natural Language Processing (NLP) for Threat Intelligence
  5. 6.5 Behavioral Analysis using Machine Learning
  6. 6.6 Ensemble Learning for Improved Threat Prediction
  7. 6.7 Feature Engineering in Threat Analysis
  8. 6.8 Machine Learning in Endpoint Security
  9. 6.9 Explainable AI in Threat Analysis
Module 7: Behavioral Analysis and Anomaly Detection for System Hacking
  1. 7.1 Behavioral Biometrics for User Authentication
  2. 7.2 Machine Learning Models for User Behavior Analysis
  3. 7.3 Network Traffic Behavioral Analysis
  4. 7.4 Endpoint Behavioral Monitoring
  5. 7.5 Time Series Analysis for Anomaly Detection
  6. 7.6 Heuristic Approaches to Anomaly Detection
  7. 7.7 AI-Driven Threat Hunting
  8. 7.8 User and Entity Behavior Analytics (UEBA)
  9. 7.9 Challenges and Considerations in Behavioral Analysis
Module 8: AI Enabled Incident Response Systems
  1. 8.1 Automated Threat Triage using AI
  2. 8.2 Machine Learning for Threat Classification
  3. 8.3 Real-time Threat Intelligence Integration
  4. 8.4 Predictive Analytics in Incident Response
  5. 8.5 AI-Driven Incident Forensics
  6. 8.6 Automated Containment and Eradication Strategies
  7. 8.7 Behavioral Analysis in Incident Response
  8. 8.8 Continuous Improvement through Machine Learning Feedback
  9. 8.9 Human-AI Collaboration in Incident Handling
Module 9: AI for Identity and Access Management (IAM)
  1. 9.1 AI-Driven User Authentication Techniques
  2. 9.2 Behavioral Biometrics for Access Control
  3. 9.3 AI-Based Anomaly Detection in IAM
  4. 9.4 Dynamic Access Policies with Machine Learning
  5. 9.5 AI-Enhanced Privileged Access Management (PAM)
  6. 9.6 Continuous Authentication using Machine Learning
  7. 9.7 Automated User Provisioning and De-provisioning
  8. 9.8 Risk-Based Authentication with AI
  9. 9.9 AI in Identity Governance and Administration (IGA)
Module 10: Securing AI Systems
  1. 10.1 Adversarial Attacks on AI Models
  2. 10.2 Secure Model Training Practices
  3. 10.3 Data Privacy in AI Systems
  4. 10.4 Secure Deployment of AI Applications
  5. 10.5 AI Model Explainability and Interpretability
  6. 10.6 Robustness and Resilience in AI
  7. 10.7 Secure Transfer and Sharing of AI Models
  8. 10.8 Continuous Monitoring and Threat Detection for AI
Module 11: Ethics in AI and Cybersecurity
  1. 11.1 Ethical Decision-Making in Cybersecurity
  2. 11.2 Bias and Fairness in AI Algorithms
  3. 11.3 Transparency and Explainability in AI Systems
  4. 11.4 Privacy Concerns in AI-Driven Cybersecurity
  5. 11.5 Accountability and Responsibility in AI Security
  6. 11.6 Ethics of Threat Intelligence Sharing
  7. 11.7 Human Rights and AI in Cybersecurity
  8. 11.8 Regulatory Compliance and Ethical Standards
  9. 11.9 Ethical Hacking and Responsible Disclosure
Module 12: Capstone Project
  1. 12.1 Case Study 1: AI-Enhanced Threat Detection and Response
  2. 12.2 Case Study 2: Ethical Hacking with AI Integration
  3. 12.3 Case Study 3: AI in Identity and Access Management (IAM)
  4. 12.4 Case Study 4: Secure Deployment of AI Systems

Industry Opportunities after Certification Completion

Median Salaries
$113,151
With AI+ Ethical Hacker™
$146,430
% Difference
29

Learner Success Stories

Recommended Certifications

Frequently Asked Questions

Participants gain comprehensive insights into AI's role in cybersecurity, learning advanced techniques that are essential in modern ethical hacking practices. The certification equips learners with cutting-edge skills highly valued in the cybersecurity industry.
This certification is ideal for aspiring ethical hackers and cybersecurity professionals who want to integrate AI technologies into their skill set. It caters to tech enthusiasts looking to stay ahead in the rapidly evolving digital landscape.
Participants will gain hands-on experience in using AI to enhance ethical hacking techniques. Skills include AI-driven reconnaissance, vulnerability assessment, penetration testing, threat analysis, incident response, and identity and access management. Additionally, participants will learn to secure AI systems and address ethical considerations in AI and cybersecurity.
Basic knowledge of cybersecurity principles and familiarity with programming languages such as Python are recommended. Prior experience in ethical hacking or AI is advantageous but not mandatory
Unlike traditional courses, this certification uniquely integrates AI technologies into ethical hacking practices. It focuses on leveraging AI's capabilities to enhance cybersecurity measures, providing a forward-looking approach to digital defense.