AI+ Ethical Hacker™
AT-220
Protect Digital Landscapes: Harness AI-Enhanced TechnologiesThe AI+ Ethical Hacker™ certification delves into the intersection of cybersecurity and artificial intelligence, a pivotal juncture in our era of rapid technological progress. Tailored for budding ethical hackers and cybersecurity experts, it offers comprehensive insights into AI's transformative impact on digital offense and defense strategies. Unlike conventional ethical hacking courses, this program harnesses AI's power to enhance cybersecurity approaches. It caters to tech enthusiasts eager to master the fusion of cutting-edge AI methods with ethical hacking practices amidst the swiftly evolving digital landscape. The curriculum encompasses four key areas, from course objectives and prerequisites to anticipated job roles and the latest AI technologies in Ethical Hacking.
Certification Duration: 40 hours (5 Days)
Buy e-Learning Course Buy Instructor-Led CoursePrerequisites
- Programming Proficiency: Knowledge of Python, Java, C++, etc for automation and scripting.
- Networking Fundamentals: Understanding of networking protocols, subnetting, firewalls, and routing.
- Operating Systems Knowledge: Proficiency in using Windows and Linux operating systems.
- Cybersecurity Basics: Familiarity with fundamental cybersecurity concepts, including encryption, authentication, access controls, and security protocols.
- Machine Learning Basics: Understanding of machine learning concepts, algorithms, and basic implementation.
- Web Technologies: Understanding of web technologies, including HTTP/HTTPS protocols, and web servers.
Modules
12
Examination
1
50 MCQs
90 Minutes
Passing Score
70%
Recertification Requirements
AI CERTs requires recertification every year to keep your certification valid. Notifications will be sent three months before the due date, and candidates must follow the steps in the candidate handbook to complete the process.
Need Help? If you have any questions or need assistance with recertification, please reach out to our support team at support@aicerts.ai
Certification Modules
- Course Introduction Preview
- 1.1 Introduction to Ethical Hacking
- 1.2 Ethical Hacking Methodology
- 1.3 Legal and Regulatory Framework
- 1.4 Hacker Types and Motivations
- 1.5 Information Gathering Techniques
- 1.6 Footprinting and Reconnaissance
- 1.7 Scanning Networks
- 1.8 Enumeration Techniques
- 2.1 AI in Ethical Hacking
- 2.2 Fundamentals of AI
- 2.3 AI Technologies Overview
- 2.4 Machine Learning in Cybersecurity
- 2.5 Natural Language Processing (NLP) for Cybersecurity
- 2.6 Deep Learning for Threat Detection
- 2.7 Adversarial Machine Learning in Cybersecurity
- 2.8 AI-Driven Threat Intelligence Platforms
- 2.9 Cybersecurity Automation with AI
- 3.1 AI-Based Threat Detection Tools
- 3.2 Machine Learning Frameworks for Ethical Hacking
- 3.3 AI-Enhanced Penetration Testing Tools
- 3.4 Behavioral Analysis Tools for Anomaly Detection
- 3.5 AI-Driven Network Security Solutions
- 3.6 Automated Vulnerability Scanners
- 3.7 AI in Web Application
- 3.8 AI for Malware Detection and Analysis
- 3.9 Cognitive Security Tools
- 4.1 Introduction to Reconnaissance in Ethical Hacking
- 4.2 Traditional vs. AI-Driven Reconnaissance
- 4.3 Automated OS Fingerprinting with AI
- 4.4 AI-Enhanced Port Scanning Techniques
- 4.5 Machine Learning for Network Mapping
- 4.6 AI-Driven Social Engineering Reconnaissance
- 4.7 Machine Learning in OSINT
- 4.8 AI-Enhanced DNS Enumeration & AI-Driven Target Profiling
- 5.1 Automated Vulnerability Scanning with AI
- 5.2 AI-Enhanced Penetration Testing Tools
- 5.3 Machine Learning for Exploitation Techniques
- 5.4 Dynamic Application Security Testing (DAST) with AI
- 5.5 AI-Driven Fuzz Testing
- 5.6 Adversarial Machine Learning in Penetration Testing
- 5.7 Automated Report Generation using AI
- 5.8 AI-Based Threat Modeling
- 5.9 Challenges and Ethical Considerations in AI-Driven Penetration Testing
- 6.1 Supervised Learning for Threat Detection
- 6.2 Unsupervised Learning for Anomaly Detection
- 6.3 Reinforcement Learning for Adaptive Security Measures
- 6.4 Natural Language Processing (NLP) for Threat Intelligence
- 6.5 Behavioral Analysis using Machine Learning
- 6.6 Ensemble Learning for Improved Threat Prediction
- 6.7 Feature Engineering in Threat Analysis
- 6.8 Machine Learning in Endpoint Security
- 6.9 Explainable AI in Threat Analysis
- 7.1 Behavioral Biometrics for User Authentication
- 7.2 Machine Learning Models for User Behavior Analysis
- 7.3 Network Traffic Behavioral Analysis
- 7.4 Endpoint Behavioral Monitoring
- 7.5 Time Series Analysis for Anomaly Detection
- 7.6 Heuristic Approaches to Anomaly Detection
- 7.7 AI-Driven Threat Hunting
- 7.8 User and Entity Behavior Analytics (UEBA)
- 7.9 Challenges and Considerations in Behavioral Analysis
- 8.1 Automated Threat Triage using AI
- 8.2 Machine Learning for Threat Classification
- 8.3 Real-time Threat Intelligence Integration
- 8.4 Predictive Analytics in Incident Response
- 8.5 AI-Driven Incident Forensics
- 8.6 Automated Containment and Eradication Strategies
- 8.7 Behavioral Analysis in Incident Response
- 8.8 Continuous Improvement through Machine Learning Feedback
- 8.9 Human-AI Collaboration in Incident Handling
- 9.1 AI-Driven User Authentication Techniques
- 9.2 Behavioral Biometrics for Access Control
- 9.3 AI-Based Anomaly Detection in IAM
- 9.4 Dynamic Access Policies with Machine Learning
- 9.5 AI-Enhanced Privileged Access Management (PAM)
- 9.6 Continuous Authentication using Machine Learning
- 9.7 Automated User Provisioning and De-provisioning
- 9.8 Risk-Based Authentication with AI
- 9.9 AI in Identity Governance and Administration (IGA)
- 10.1 Adversarial Attacks on AI Models
- 10.2 Secure Model Training Practices
- 10.3 Data Privacy in AI Systems
- 10.4 Secure Deployment of AI Applications
- 10.5 AI Model Explainability and Interpretability
- 10.6 Robustness and Resilience in AI
- 10.7 Secure Transfer and Sharing of AI Models
- 10.8 Continuous Monitoring and Threat Detection for AI
- 11.1 Ethical Decision-Making in Cybersecurity
- 11.2 Bias and Fairness in AI Algorithms
- 11.3 Transparency and Explainability in AI Systems
- 11.4 Privacy Concerns in AI-Driven Cybersecurity
- 11.5 Accountability and Responsibility in AI Security
- 11.6 Ethics of Threat Intelligence Sharing
- 11.7 Human Rights and AI in Cybersecurity
- 11.8 Regulatory Compliance and Ethical Standards
- 11.9 Ethical Hacking and Responsible Disclosure
- 12.1 Case Study 1: AI-Enhanced Threat Detection and Response
- 12.2 Case Study 2: Ethical Hacking with AI Integration
- 12.3 Case Study 3: AI in Identity and Access Management (IAM)
- 12.4 Case Study 4: Secure Deployment of AI Systems
Certification Modules
- Course Introduction Preview
- 1.1 Introduction to Ethical Hacking
- 1.2 Ethical Hacking Methodology
- 1.3 Legal and Regulatory Framework
- 1.4 Hacker Types and Motivations
- 1.5 Information Gathering Techniques
- 1.6 Footprinting and Reconnaissance
- 1.7 Scanning Networks
- 1.8 Enumeration Techniques
- 2.1 AI in Ethical Hacking
- 2.2 Fundamentals of AI
- 2.3 AI Technologies Overview
- 2.4 Machine Learning in Cybersecurity
- 2.5 Natural Language Processing (NLP) for Cybersecurity
- 2.6 Deep Learning for Threat Detection
- 2.7 Adversarial Machine Learning in Cybersecurity
- 2.8 AI-Driven Threat Intelligence Platforms
- 2.9 Cybersecurity Automation with AI
- 3.1 AI-Based Threat Detection Tools
- 3.2 Machine Learning Frameworks for Ethical Hacking
- 3.3 AI-Enhanced Penetration Testing Tools
- 3.4 Behavioral Analysis Tools for Anomaly Detection
- 3.5 AI-Driven Network Security Solutions
- 3.6 Automated Vulnerability Scanners
- 3.7 AI in Web Application
- 3.8 AI for Malware Detection and Analysis
- 3.9 Cognitive Security Tools
- 4.1 Introduction to Reconnaissance in Ethical Hacking
- 4.2 Traditional vs. AI-Driven Reconnaissance
- 4.3 Automated OS Fingerprinting with AI
- 4.4 AI-Enhanced Port Scanning Techniques
- 4.5 Machine Learning for Network Mapping
- 4.6 AI-Driven Social Engineering Reconnaissance
- 4.7 Machine Learning in OSINT
- 4.8 AI-Enhanced DNS Enumeration & AI-Driven Target Profiling
- 5.1 Automated Vulnerability Scanning with AI
- 5.2 AI-Enhanced Penetration Testing Tools
- 5.3 Machine Learning for Exploitation Techniques
- 5.4 Dynamic Application Security Testing (DAST) with AI
- 5.5 AI-Driven Fuzz Testing
- 5.6 Adversarial Machine Learning in Penetration Testing
- 5.7 Automated Report Generation using AI
- 5.8 AI-Based Threat Modeling
- 5.9 Challenges and Ethical Considerations in AI-Driven Penetration Testing
- 6.1 Supervised Learning for Threat Detection
- 6.2 Unsupervised Learning for Anomaly Detection
- 6.3 Reinforcement Learning for Adaptive Security Measures
- 6.4 Natural Language Processing (NLP) for Threat Intelligence
- 6.5 Behavioral Analysis using Machine Learning
- 6.6 Ensemble Learning for Improved Threat Prediction
- 6.7 Feature Engineering in Threat Analysis
- 6.8 Machine Learning in Endpoint Security
- 6.9 Explainable AI in Threat Analysis
- 7.1 Behavioral Biometrics for User Authentication
- 7.2 Machine Learning Models for User Behavior Analysis
- 7.3 Network Traffic Behavioral Analysis
- 7.4 Endpoint Behavioral Monitoring
- 7.5 Time Series Analysis for Anomaly Detection
- 7.6 Heuristic Approaches to Anomaly Detection
- 7.7 AI-Driven Threat Hunting
- 7.8 User and Entity Behavior Analytics (UEBA)
- 7.9 Challenges and Considerations in Behavioral Analysis
- 8.1 Automated Threat Triage using AI
- 8.2 Machine Learning for Threat Classification
- 8.3 Real-time Threat Intelligence Integration
- 8.4 Predictive Analytics in Incident Response
- 8.5 AI-Driven Incident Forensics
- 8.6 Automated Containment and Eradication Strategies
- 8.7 Behavioral Analysis in Incident Response
- 8.8 Continuous Improvement through Machine Learning Feedback
- 8.9 Human-AI Collaboration in Incident Handling
- 9.1 AI-Driven User Authentication Techniques
- 9.2 Behavioral Biometrics for Access Control
- 9.3 AI-Based Anomaly Detection in IAM
- 9.4 Dynamic Access Policies with Machine Learning
- 9.5 AI-Enhanced Privileged Access Management (PAM)
- 9.6 Continuous Authentication using Machine Learning
- 9.7 Automated User Provisioning and De-provisioning
- 9.8 Risk-Based Authentication with AI
- 9.9 AI in Identity Governance and Administration (IGA)
- 10.1 Adversarial Attacks on AI Models
- 10.2 Secure Model Training Practices
- 10.3 Data Privacy in AI Systems
- 10.4 Secure Deployment of AI Applications
- 10.5 AI Model Explainability and Interpretability
- 10.6 Robustness and Resilience in AI
- 10.7 Secure Transfer and Sharing of AI Models
- 10.8 Continuous Monitoring and Threat Detection for AI
- 11.1 Ethical Decision-Making in Cybersecurity
- 11.2 Bias and Fairness in AI Algorithms
- 11.3 Transparency and Explainability in AI Systems
- 11.4 Privacy Concerns in AI-Driven Cybersecurity
- 11.5 Accountability and Responsibility in AI Security
- 11.6 Ethics of Threat Intelligence Sharing
- 11.7 Human Rights and AI in Cybersecurity
- 11.8 Regulatory Compliance and Ethical Standards
- 11.9 Ethical Hacking and Responsible Disclosure
- 12.1 Case Study 1: AI-Enhanced Threat Detection and Response
- 12.2 Case Study 2: Ethical Hacking with AI Integration
- 12.3 Case Study 3: AI in Identity and Access Management (IAM)
- 12.4 Case Study 4: Secure Deployment of AI Systems
Tools
Acunetix
Wazuh
Shodan
OWASP ZAP
Exam Objectives
AI-Integrated Cybersecurity Techniques
Learners will develop the ability to integrate AI tools and technologies into cybersecurity practices. This includes using AI for ethical hacking tasks such as reconnaissance, vulnerability assessments, penetration testing, and incident response.
Threat Analysis and Anomaly Detection
Students will develop skills in applying machine learning algorithms to detect unusual patterns and behaviors that may indicate potential security threats. This capability is essential for proactively identifying and mitigating risks before they escalate.
AI for Identity and Access Management (IAM)
Learners will understand how to apply AI to enhance IAM systems, crucial for maintaining secure access to resources within an organization. This involves using AI to improve authentication processes and manage user permissions more dynamically and securely.
Automated Security Protocol Optimization
Students will be equipped to utilize AI to dynamically adjust and optimize security protocols based on real-time data analysis and threat assessment. Learners will explore how AI algorithms can predict and respond to potential security breaches by automatically tweaking firewall rules, security configurations, and other protective measures.
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Get CertifiedFrequently 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.