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AI for Cybersecurity

Offered By: Johns Hopkins University via Coursera

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Cybersecurity Courses Artificial Intelligence Courses Machine Learning Courses Reinforcement Learning Courses Network Security Courses Malware Analysis Courses Anomaly Detection Courses Fraud Prevention Courses Adversarial Attacks Courses

Course Description

Overview

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This Specialization is designed for post-graduate students aiming to master AI applications in cybersecurity. Through three comprehensive courses, you will explore advanced techniques for detecting and mitigating various cyber threats. The curriculum covers essential topics such as AI-driven fraud prevention, malware analysis, and the implications of Generative Adversarial Networks (GANs). You will gain hands-on experience in identifying anomalies in network traffic, implementing reinforcement learning techniques for adaptive security measures, and evaluating AI model performance against real-world challenges. By completing this Specialization, you will develop a deep understanding of how to secure AI systems while addressing the complexities of adversarial attacks. This knowledge will prepare you to tackle emerging cybersecurity challenges, making you a valuable asset in the rapidly evolving field of digital security. With a focus on practical applications and industry-relevant skills, you will be well-equipped for a career in AI-driven cybersecurity.

Syllabus

Course 1: Introduction to AI for Cybersecurity
- Offered by Johns Hopkins University. In "Introduction to AI for Cybersecurity," you'll gain foundational knowledge of how artificial ... Enroll for free.

Course 2: Advanced Malware and Network Anomaly Detection
- Offered by Johns Hopkins University. The course "Advanced Malware and Network Anomaly Detection" equips learners with essential skills to ... Enroll for free.

Course 3: Securing AI and Advanced Topics
- Offered by Johns Hopkins University. In the course "Securing AI and Advanced Topics", learners will delve into the cutting-edge intersection ... Enroll for free.


Courses

  • 0 reviews

    11 hours 47 minutes

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    The course "Advanced Malware and Network Anomaly Detection" equips learners with essential skills to combat advanced cybersecurity threats using artificial intelligence. This course takes a hands-on approach, guiding students through the intricacies of malware detection and network anomaly identification. In the first two modules, you will gain foundational knowledge about various types of malware and advanced detection techniques, including supervised and unsupervised learning methods. The subsequent modules shift focus to network security, where you’ll explore anomaly detection algorithms and their application using real-world botnet data. What sets this course apart is its emphasis on practical, project-based learning. By applying your knowledge through hands-on implementations and collaborative presentations, you will develop a robust skill set that is highly relevant in today’s cybersecurity landscape. Completing this course will prepare you to effectively identify and mitigate threats, making you a valuable asset in any cybersecurity role. With the rapid evolution of cyber threats, this course ensures you stay ahead by leveraging the power of AI for robust cybersecurity measures.
  • 0 reviews

    9 hours 56 minutes

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    In "Introduction to AI for Cybersecurity," you'll gain foundational knowledge of how artificial intelligence (AI) is transforming the field of cybersecurity. This course covers key AI techniques and how they can be applied to enhance security measures, detect threats, and secure digital systems. Learners will explore hands-on implementations of AI models using tools like Jupyter Notebooks, allowing them to detect spam, phishing emails, and secure user authentication using biometric solutions. What makes this course unique is its focus on real-world applications, blending AI theory with practical skills relevant to today's cybersecurity challenges. By the end of the course, you'll have developed the ability to use AI to address cyber threats such as email fraud and fake logins, and will be equipped with practical skills to protect digital assets in a rapidly evolving technological landscape. Whether you're a cybersecurity professional or someone seeking to expand your skills in AI, this course provides a critical understanding of how AI can be leveraged to mitigate security risks and keep systems secure.
  • 0 reviews

    15 hours 31 minutes

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    In the course "Securing AI and Advanced Topics", learners will delve into the cutting-edge intersection of AI and cybersecurity, focusing on how advanced techniques can secure AI systems against emerging threats. Through a structured approach, you will explore practical applications, including fraud prevention using cloud AI solutions and the intricacies of Generative Adversarial Networks (GANs). Each module builds upon the previous one, enabling a comprehensive understanding of both offensive and defensive strategies in cybersecurity. What sets this course apart is its hands-on experience with real-world implementations, allowing you to design effective solutions for detecting and mitigating fraud, as well as understanding adversarial attacks. By evaluating AI models and learning reinforcement learning principles, you will gain insights into enhancing cybersecurity measures. Completing this course will equip you with the skills necessary to address complex challenges in the evolving landscape of AI and cybersecurity, making you a valuable asset in any organization. Whether you are seeking to deepen your expertise or enter this critical field, this course provides the tools and knowledge you need to excel.

Taught by

Lanier Watkins

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