Macquarie University

AI-Powered Cybersecurity 专项课程

Macquarie University

AI-Powered Cybersecurity 专项课程

Defend Against Threats With Machine Learning.

Build ML-powered defences, counter adversarial AI attacks, and lead structured incident response.

Matt Bushby

位教师:Matt Bushby

包含在 Coursera Plus

深入学习学科知识
中级 等级

推荐体验

4 周 完成
在 10 小时 一周
灵活的计划
自行安排学习进度
深入学习学科知识
中级 等级

推荐体验

4 周 完成
在 10 小时 一周
灵活的计划
自行安排学习进度

您将学到什么

  • Build and evaluate ML models on cybersecurity datasets to detect malware, network anomalies, and fraudulent behaviour.

  • Analyse adversarial attacks on ML systems — including poisoning and model stealing — and apply defences such as differential privacy and red teaming.

  • Design and execute a complete cyber incident response lifecycle, from detection and triage through containment, eradication, and recovery.

要了解的详细信息

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授课语言:英语(English)
最近已更新!

May 2026

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  • 培养对关键概念的深入理解
  • 通过 Macquarie University 获得职业证书

专业化 - 3门课程系列

Machine Learning for Cyber Threat & Anomaly Detection

Machine Learning for Cyber Threat & Anomaly Detection

第 1 门课程, 小时

您将学到什么

  • Evaluate the role, strengths, and limitations of ML in cybersecurity, including its vulnerability to inference and poisoning attacks.

  • Build and train supervised classification and regression models on real-world cybersecurity datasets to detect malware and fraud.

  • Apply artificial neural networks to analyse malware binaries and classify malicious behavioural patterns using real datasets.

  • Construct network anomaly detection models using KNN and One-Class SVM to identify outlier traffic and detect attacks.

您将获得的技能

类别:Fraud detection
类别:Machine Learning
类别:Unsupervised Learning
类别:Supervised Learning
类别:Malware Protection
类别:Cyber Security Assessment
类别:Computer Security
类别:Feature Engineering
类别:Statistical Machine Learning
类别:Machine Learning Algorithms
类别:AI Security
类别:Network Security
类别:Regression Analysis
类别:Anomaly Detection
类别:Classification Algorithms
类别:Analytical Skills
类别:Deep Learning
类别:Threat Detection
类别:Security Management
类别:Data Preprocessing
Adversarial AI: Attacking, Defending & Governing ML Systems

Adversarial AI: Attacking, Defending & Governing ML Systems

第 2 门课程, 小时

您将学到什么

  • Analyse adversarial attack vectors targeting ML systems including poisoning, model stealing, & backdoor exploits, and assess their operational impact

  • Design & implement layered technical defences using differential privacy, guardrail protection, & secure algorithm design to maintain model integrity

  • Plan and conduct AI security testing using red, purple, and blue teaming approaches to validate ML model robustness under adversarial conditions

  • Evaluate responsible AI governance frameworks and regulatory requirements to ensure AI systems are ethical, fair, and compliant

Cyber Incident Response: Triage, Containment & Recovery

Cyber Incident Response: Triage, Containment & Recovery

第 3 门课程, 小时

您将学到什么

  • Design an organisational incident response capability including CSIRT structure, escalation protocols, and crisis communication strategies.

  • Apply a structured triage and analysis methodology to identify indicators of compromise and escalate incidents accurately and confidently.

  • Execute containment, eradication, and recovery procedures across a range of cyber attack scenarios while maintaining business continuity.

  • Construct a post-incident review process that captures root cause analysis and communicates actionable lessons to technical and executive audiences.

获得职业证书

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位教师

Matt Bushby
Macquarie University
16 门课程20,698 名学生

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