AI Security
AI+ Security Level 1
This course integrates AI with cybersecurity, starting with Python fundamentals. Participants learn machine learning for threat detection, AI-driven authentication, and GANs for security. Hands-on projects, including a Capstone Project, ensure practical expertise in safeguarding digital assets.
5 Days (40 hours)

Targeted Audience
Threat Intelligence Specialist
AI-Powered Incident Response Analyst
AI Security Analyst
Cybersecurity Engineer (AI-focused)
Prerequisites for Success
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Basic Python Programming: Familiarity with loops, functions, and variables.
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Basic Cybersecurity Knowledge: Understanding of CIA triad and common threats (e.g., malware, phishing).
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Basic Machine Learning Concepts: Awareness of fundamental machine learning concepts, not mandatory.
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Basic Networking: Understanding of IP addressing and TCP/IP protocols.
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Linux/Command Line Skills: Ability to navigate and use the CLI effectively.
Modules | 11
Examination | 1
Passing Score | 70%
COURSE AGENDA
Module 1: Introduction to Cybersecurity
1.1 Definition and Scope of Cybersecurity
1.2 Key Cybersecurity Concepts
1.3 CIA Triad (Confidentiality, Integrity, Availability)
1.4 Cybersecurity Frameworks and Standards (NIST, ISO/IEC27001)
1.5 Cyber Security Laws and Regulations (e.g., GDPR, HIPAA)
1.6 Importance of Cybersecurity in Modern Enterprises
1.7 Careers in Cyber Security
Module 2: Operating System Fundamentals
2.1 Core OS Functions (Memory Management, Process Management)
2.2 User Accounts and Privileges
2.3 Access Control Mechanisms (ACLs, DAC, MAC)
2.4 OS Security Features and Configurations
2.5 Hardening OS Security (Patching, Disabling
Unnecessary Services)
2.6 Virtualization and Containerization Security
Considerations
2.7 Secure Boot and Secure Remote Access
2.8 OS Vulnerabilities and Mitigations
Module 3: Networking Fundamentals
3.1 Network Topologies and Protocols (TCP/IP, OSI Model)
3.2 Network Devices and Their Roles (Routers, Switches,
Firewalls)
3.3 Network Security Devices (Firewalls, IDS/IPS)
3.4 Network Segmentation and Zoning
3.5 Wireless Network Security (WPA2, Open WEP
vulnerabilities)
3.6 VPN Technologies and Use Cases
3.7 Network Address Translation (NAT)
3.8 Basic Network Troubleshooting
Module 4: Threats, Vulnerabilities, and Exploits
4.1 Types of Threat Actors (Script Kiddies, Hacktivists, Nation-States)
4.2 Threat Hunting Methodologies using AI
4.3 AI Tools for Threat Hunting (SIEM, IDS/IPS)
4.4 Open-Source Intelligence (OSINT) Techniques
4.5 Introduction to Vulnerabilities
4.6 Software Development Life Cycle (SDLC) and Security Integration with AI
4.7 Zero-Day Attacks and Patch Management Strategies
4.8 Vulnerability Scanning Tools and Techniques using AI
4.9 Exploiting Vulnerabilities (Hands-on Labs)
Module 5: Understanding of AI and ML
5.1 An Introduction to AI
5.2 Types and Applications of AI
5.3 Identifying and Mitigating Risks in Real-Life
5.4 Building a Resilient and Adaptive Security Infrastructure with AI
5.5 Enhancing Digital Defenses using CSAI
5.6 Application of Machine Learning in Cybersecurity
5.7 Safeguarding Sensitive Data and Systems Against Diverse Cyber Threats
5.8 Threat Intelligence and Threat Hunting Concepts
Module 6: Python Programming Fundamentals
6.1 Introduction to Python Programming
6.2 Understanding of Python Libraries
6.3 Python Programming Language for Cybersecurity
Applications
6.4 AI Scripting for Automation in Cybersecurity Tasks
6.5 Data Analysis and Manipulation Using Python
6.6 Developing Security Tools with Python
Module 7: Applications of AI in Cybersecurity
7.1 Understanding the Application of Machine Learning in Cybersecurity
7.2 Anomaly Detection to Behavior Analysis
7.3 Dynamic and Proactive Defense using Machine Learning
7.4 Utilizing Machine Learning for Email Threat Detection
7.5 Enhancing Phishing Detection with AI
7.6 Autonomous Identification and Thwarting of Email Threats
7.7 Employing Advanced Algorithms and AI in Malware Threat Detection
7.8 Identifying, Analyzing, and Mitigating Malicious Software
7.9 Enhancing User Authentication with AI Techniques
7.10 Penetration Testing with AI
Module 8: Incident Response and Disaster Recovery
8.1 Incident Response Process (Identification, Containment, Eradication, Recovery)
8.2 Incident Response Lifecycle
8.3 Preparing an Incident Response Plan
8.4 Detecting and Analyzing Incidents
8.5 Containment, Eradication, and Recovery
8.6 Post-Incident Activities
8.7 Digital Forensics and Evidence Collection
8.8 Disaster Recovery Planning (Backups, Business Continuity)
8.9 Penetration Testing and Vulnerability Assessments
8.10 Legal and Regulatory Considerations of Security Incidents
Module 9: Open Source Security Tools
9.1 Introduction to Open-Source Security Tools
9.2 Popular Open Source Security Tools
9.3 Benefits and Challenges of Using Open-Source Tools
9.4 Implementing Open Source Solutions in Organizations
9.5 Community Support and Resources
9.6 Network Security Scanning and Vulnerability Detection
9.7 Security Information and Event Management (SIEM) Tools (Open-Source options)
9.8 Open-Source Packet Filtering Firewalls
9.9 Password Hashing and Cracking Tools (Ethical Use)
9.10 Open-Source Forensics Tools
Module 10: Securing the Future
10.1 Emerging Cyber Threats and Trends
10.2 Artificial Intelligence and Machine Learning in
Cybersecurity
10.3 Blockchain for Security
10.4 Internet of Things (IoT) Security
10.5 Cloud Security
10.6 Quantum Computing and its Impact on Security
10.7 Cybersecurity in Critical Infrastructure
10.8 Cryptography and Secure Hashing
10.9 Cyber Security Awareness and Training for Users
10.10 Continuous Security Monitoring and Improvement
Module 11: Capstone Project
11.1 Introduction
11.2 Use Cases: AI in Cybersecurity
11.3 Outcome Presentation