AI+ Security Strategist™

# AT-2103

Formerly known as AI+ Security Level 3™

Validate Your Expertise in Cybersecurity
This certification validates advanced-level expertise in AI-driven cybersecurity strategy, governance, and risk management. The exam assesses deep knowledge of advanced security architectures, AI-enabled threat intelligence, and strategic security decision-making within complex enterprise environments.

$495.00

High-Quality Video, E-book & Audiobook
Modules Quizzes
AI Mentor
Access for Tablet & Phone
Online Proctored Exam with One Free Retake
Hands-on Practices

Prerequisites

  • Foundation in AI+ Security: Completion of AI+ Security Compliance Practitioner and AI+ Security Practitioner.  
  • Intermediate / Advanced Python Programming: Proficiency in Python, including  experience with deep learning tools like TensorFlow and PyTorch.  
  • Advanced Cybersecurity Knowledge: Strong skills in threat detection, incident  response, and securing networks and devices.  
  • Cloud and Blockchain Basics: Understanding of cloud security, container systems,  and blockchain technology.  
  • Linux/CLI Mastery: Advanced command-line skills and experience with security tools in Linux environments. 
  • AI in Security Engineering: Knowledge of AI’s role in identity and access  management (IAM), IoT security, and physical security.  

Exam Details

Exam Blueprint

ModulesPercentage
Foundations of AI and Machine Learning for Security Engineering 5
Machine Learning for Threat Detection and Response5
Deep Learning for Security Applications5
Adversarial AI in Security6
AI in Network Security6
AI in Endpoint Security8
Secure AI System Engineering8
AI for Cloud and Container Security11
AI and Blockchain for Security 11
AI in Identity and Access Management (IAM)12
AI for Physical and IoT Security 12
Capstone Project – Engineering AI Security Systems11

Self Study Materials Included

Videos
Engaging visual content to enhance understanding and learning experience.
Podcasts
Insightful audio sessions featuring expert discussions and real-world cases.
E-Books
Comprehensive digital guides offering in-depth knowledge and learning support.
Audiobooks
Listen and learn anytime with convenient audio-based knowledge sharing.
Module Wise Quizzes
Interactive assessments to reinforce learning and test conceptual clarity.
Additional Resources
Supplementary references and list of tools to deepen knowledge and practical application.
Hands-on
Practical experience through real-world exercises, case studies, and applied learning.

Tools You'll Master

Splunk UBA
Microsoft Defender for Endpoint
Microsoft Azure AD Conditional Access
Adversarial Robustness Toolkit (ART)
CrowdStrike Falcon XDR
Palo Alto Cortex XDR
Darktrace Enterprise
Vectra for Cloud
Fortinet AI Cloud Security
Semgrep

What Will You Learn?

Advanced AI Cybersecurity Techniques
Develop expertise in addressing adversarial AI challenges, securing IoT devices, and implementing blockchain-based security solutions.
Adversarial AI and Emerging Technologies
Develop expertise in addressing adversarial AI challenges, securing IoT devices, and implementing blockchain-based security solutions.
AI-Powered Security System Design
Acquire practical skills through a capstone project, designing AI-driven solutions for identity management, cloud security, and physical security architecture.
Leadership in AI-Driven Cybersecurity
Prepare to take on leadership roles in AI security engineering, ensuring organisations remain secure and adaptable in today’s evolving digital landscape.

Certification Modules

Module 1: Foundations of AI and ML for Security Engineering
  1. This module equips you to implement cutting-edge AI-driven security solutions. You’ll explore core algorithms like neural networks, advanced NLP techniques, and deep learning models to analyze security logs. The module also guides you on designing AI pipelines, managing imbalanced datasets, and mitigating adversarial threats, ensuring that your security systems remain adaptive and robust against evolving cyber risks. 
Module 2: ML for Threat Detection and Response
  1. This module provides practical expertise in applying supervised and unsupervised learning methods for tasks such as malware classification, anomaly detection, and real-time threat response. You’ll also learn to build advanced pipelines, optimize AI models, and use tools like Apache Kafka and Spark for scalable real-time solutions. 
Module 3: Deep Learning for Security Applications
  1. In this module, you’ll gain proficiency in implementing CNNs, RNNs, and hybrid models for network traffic classification, phishing detection, and intrusion analysis. Additionally, you’ll explore autoencoders for anomaly detection and adversarial training methods to strengthen defenses against manipulated inputs. 
Module 4: Adversarial AI in Security
  1. This module explores the strategies for crafting secure AI systems, including adversarial training, ensemble methods, and red teaming. You’ll also explore tools for simulating attacks and designing architectures that resist adversarial inputs while maintaining transparency and trust. 
Module 5: AI in Network Security
  1. This module teaches you to implement AI-powered IDS, anomaly detection models, and zero-trust architectures. With case studies and hands-on projects, you’ll develop skills in integrating AI into next-generation firewalls and optimizing network security for high-throughput environments. 
Module 6: AI in Endpoint Security
  1. In this module, you’ll learn to build AI-based malware detection systems, optimize models for polymorphic threats, and leverage ML for anomaly detection on endpoints. The content also covers securing IoT devices and implementing lightweight AI solutions for resource-constrained environments. 
Module 7: Secure AI System Engineering
  1. This module provides expertise in designing robust AI pipelines, incorporating cryptographic techniques, and optimizing models for real-time security. You’ll also explore frameworks for ensuring explainability, scalability, and compliance with data protection regulations. 
Module 8: AI for Cloud and Container Security
  1. This module equips you to build AI systems for cloud security, integrate tools into container orchestration platforms like Kubernetes, and deploy AI-driven solutions for serverless architectures. You’ll also explore DevSecOps practices and advanced security testing methods. 
Module 9: AI and Blockchain for Security
  1. This module offers insights into integrating AI with blockchain for transaction security, optimizing consensus mechanisms, and safeguarding smart contracts. Practical case studies showcase applications in cryptocurrency exchanges and supply chain management. 
Module 10: AI in Identity and Access Management (IAM)
  1. This module focuses on automating role-based access controls, detecting unauthorized access, and implementing AI-driven MFA systems. You’ll also explore real-world applications of reinforcement learning and AI-based fraud detection in IAM scenarios. 
Module 11: AI for Physical and IoT Security
  1. This module covers AI solutions for securing smart cities, industrial IoT, and autonomous vehicles. You’ll also learn about federated learning for decentralized security and techniques for safeguarding smart home devices against unauthorized access. 
Module 12: Capstone Project – Engineering AI Security Systems
  1. This module guides you through every step, from defining project goals and selecting datasets to integrating AI models into existing infrastructures. You’ll gain hands-on expertise in creating scalable, adaptive, and effective security solutions. 

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Frequently Asked Questions

The certification focuses on designing and implementing advanced AI-driven security solutions across networks, cloud, endpoints, and enterprise environments.
The program covers AI engineering, threat detection, deep learning, adversarial AI, cloud security, blockchain security, IAM, and IoT protection.
The certification is designed for professionals with advanced knowledge of AI security, cybersecurity, Python, cloud, Linux, and security engineering.
Learners will gain skills in building AI security systems, optimizing models, analyzing threats, and implementing secure AI solutions.
The course explores machine learning, deep learning, adversarial AI, cloud security, blockchain, IoT security, and AI-driven IAM.
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