Generative AI: Boost Your Cybersecurity Career
Offered By: IBM via Coursera
Course Description
Overview
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This short course provides cybersecurity professionals and enthusiasts with the latest Generative AI tools to address complex cybersecurity challenges.
The course focuses on combating the exploitation of undetected vulnerabilities for which organizations increasingly turn to Artificial Intelligence (AI) and Machine Learning (ML). Generative AI, a transformative technology, emerges as a vital cybersecurity tool, detecting and preventing attacks by identifying and neutralizing unknown vulnerabilities before causing significant harm.
The course explores foundational generative AI principles and their application in real-world cybersecurity, encompassing User and Entity Behavior Analytics (UEBA), threat intelligence, report summarization, playbooks, and its impact on phishing, malware, misinformation, and deepfakes. Additionally, participants learn about potential Natural Language Processing (NLP) attack techniques, like prompt injection, and strategies to mitigate them.
The course ensures learners stay updated on the latest trends in using generative AI for cyber defense and threat prediction.
Throughout the course you will be able to apply your knowledge with hands-on labs. Additionally, real-world inspired exercises will help you practice what you have learned.
This course is suitable for both existing cybersecurity professionals who want to enhance their careers, as well as those aspiring to start a career in this field, such as cybersecurity specialists, cybersecurity analysts, cybersecurity engineers, and so on. Cybersecurity skills and basic generative AI knowledge is beneficial for this course.
Syllabus
- Get Started with Gen AI in Cybersecurity
- In this module, you will learn to use generative AI for cybersecurity. First, you will explore the dependencies on training data quality used in generative AI models. You learn to address transparency challenges in Large Language Models (LLMs). The lesson further covers types of cybersecurity analytics and how generative AI enhances cybersecurity analytics, including incident response and forensic analysis. Then, you will learn EDR and SIEM functions for effective threat detection and response. Additionally, you will learn the importance of cybersecurity playbooks for strategic frameworks for incident report summarization using generative AI.
- SIEM and SOC Tasks Using Generative AI
- In this module, you will learn to use generative AI for cybersecurity. Lesson 1 emphasizes generative AI’s role in automating incident analysis and integrating it into cybersecurity for efficient responses. It discusses how generative AI complements traditional vulnerability management. It includes threat hunting and streamlining incident response communication. The lesson highlights collaborative synergy for a robust defense against evolving cybersecurity threats. Lesson 2 highlights proactive threat detection and generative AI integration for efficient automation. It underscores the significance of generative AI in advancing cybersecurity and shaping the future of threat detection, concluding with QRadar Suite’s capabilities. Lesson 3 discusses the challenges of generative AI, such as risk exploration, ChatGPT management, mass adoption, and privacy concerns. Security oversights risk data and revenue loss, necessitating a security-by-design approach and ethical considerations in cybersecurity.
- Final Project and Exam
- In this module, you will demonstrate your skills through hands-on exercises. You will develop proficiency in utilizing generative AI for cybersecurity in a given project. The project will have five distinct exercises. In exercise 1, you will explore the capability of a Generative AI platform to detect spam mail. In exercise 2, you will employ generative AI techniques to examine the code structures of malware programs. In exercise 3, you will analyze network logs with generative AI to identify potential security threats. In exercise 4, you will learn generative AI for crafting detailed incident reports, covering the identification, containment, eradication, and recovery phases. In the fifth exercise, you will create a detailed playbook for responding to malware attacks.
Taught by
Rav Ahuja and Manish kumar
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