

Artificial Intelligence for Cybersecurity: Develop AI approaches to solve cybersecurity problems in your organization [Bojan Kolosnjaji, Huang Xiao, Peng Xu, Apostolis Zarras] on desertcart.com. *FREE* shipping on qualifying offers. Artificial Intelligence for Cybersecurity: Develop AI approaches to solve cybersecurity problems in your organization Review: AI-Powered Security Made Simple - This book makes the world of cybersecurity feel both exciting and manageable. Right from the start it uses real examples, like spotting unusual network activity or catching malware before it spreads, to show why AI tools matter now more than ever. The writing is friendly and clear so even if you are new to machine learning or threat detection you are never left wondering what comes next. It feels like a conversation with a trusted colleague rather than a dry lecture. As you read on you learn by doing. The practical exercises guide you through setting up your own lab, running simple anomaly detection scripts, and crafting basic threat intelligence workflows. Rather than overwhelming you with jargon, the book breaks each concept into manageable steps and shows how it all fits into a real security team’s daily work. You will find yourself experimenting with classification models and fine-tuning them to spot suspicious behavior in logs while gaining confidence in your ability to make AI work for you. The most impressive part is how the book balances big ideas with down-to-earth advice. You still get up-to-date coverage of large language models and adversarial learning, but the discussion also covers ethical concerns like bias and model transparency. There is a strong focus on staying adaptable as attackers change their tactics and on making sure your AI pipelines include feedback loops that keep them sharp over time. By the end you feel ready to bring AI into your own cyber defense strategy, certain that you understand both the potential and the challenges. This is a five-star resource for anyone looking to blend artificial intelligence and security in a thoughtful and practical way. Review: Automation in Cybersecurity - This book has clearly and explicitly explain the role automation plays in contemporary cybersecurity practices particularly in an industrial setup.












| Best Sellers Rank | #91,805 in Books ( See Top 100 in Books ) #43 in Privacy & Online Safety #77 in Internet & Telecommunications #211 in Artificial Intelligence & Semantics |
| Customer Reviews | 4.6 out of 5 stars 32 Reviews |
E**N
AI-Powered Security Made Simple
This book makes the world of cybersecurity feel both exciting and manageable. Right from the start it uses real examples, like spotting unusual network activity or catching malware before it spreads, to show why AI tools matter now more than ever. The writing is friendly and clear so even if you are new to machine learning or threat detection you are never left wondering what comes next. It feels like a conversation with a trusted colleague rather than a dry lecture. As you read on you learn by doing. The practical exercises guide you through setting up your own lab, running simple anomaly detection scripts, and crafting basic threat intelligence workflows. Rather than overwhelming you with jargon, the book breaks each concept into manageable steps and shows how it all fits into a real security team’s daily work. You will find yourself experimenting with classification models and fine-tuning them to spot suspicious behavior in logs while gaining confidence in your ability to make AI work for you. The most impressive part is how the book balances big ideas with down-to-earth advice. You still get up-to-date coverage of large language models and adversarial learning, but the discussion also covers ethical concerns like bias and model transparency. There is a strong focus on staying adaptable as attackers change their tactics and on making sure your AI pipelines include feedback loops that keep them sharp over time. By the end you feel ready to bring AI into your own cyber defense strategy, certain that you understand both the potential and the challenges. This is a five-star resource for anyone looking to blend artificial intelligence and security in a thoughtful and practical way.
S**O
Automation in Cybersecurity
This book has clearly and explicitly explain the role automation plays in contemporary cybersecurity practices particularly in an industrial setup.
N**K
Artificial Intelligence for Cybersecurity
Artificial Intelligence for Cybersecurity book provides a practical guide to applying AI and machine learning to real-world cybersecurity challenges. It covers key topics like malware detection, user behavior analytics, and anomaly detection, supported by hands-on Python examples and case studies. The book is well-suited for security and data professionals looking to integrate AI into their workflows. Overall, it’s a solid introduction to AI-driven security practices. Verdict: A hands-on, well-balanced guide for professionals exploring AI-powered cybersecurity.
J**E
Fine book with lot's of good information and background on AI
Packt has been coming out with some great books. This book has a lot of great information in it though I'm not sure where to place it or if the title is correct. There is good information on the background of AI and how it works, all of which is important to know as one contemplates security. I would have like to see a more deliberate focus on novel approaches to addressing AI security. The book is formatted well, clear references, and all the technical things you would expect. Not a disappointment, though for a seasoned IT programmer and cybersecurity professional, it might leave you wanting a little more from the authors.
L**R
A significant contribution to the rapidly evolving intersection of AI and cybersecurity.
"Artificial Intelligence for Cyber Security" stands as a significant contribution to the rapidly evolving intersection of AI and cybersecurity. The authors have successfully created a comprehensive resource that provides an introduction to the gap between theoretical AI concepts and practical security implementations. The book's strength lies in its methodical approach to explaining complex considerations and their applications in security contexts, particularly in areas such as malware detection, network analysis, and threat intelligence. The technical content progresses logically, building from fundamental concepts to advanced applications, making it accessible to security professionals venturing into AI while remaining relevant for those with existing AI expertise. The inclusion of Python code examples and real-world security use cases adds practical value, though these could be more extensive. While the book excels in explaining traditional machine learning approaches to security problems, its coverage of emerging technologies like transformers and large language models is limited. The practical implementations, while useful, could benefit from more comprehensive end-to-end examples and detailed performance metrics. That stated, AI is an area that is in constant flux, so it is understandable in the approach in this first edition. Recommendations for Future Editions The next edition has significant potential for enhancement in several key areas. First, expanding the coverage of emerging AI technologies in security operations would increase its relevance to cybersecurity practitioners. This includes deeper exploration of large language models, AI-powered threat hunting, and zero-day vulnerability detection. The practical aspects could be strengthened through more comprehensive case studies of enterprise-scale deployments, including challenges and solutions encountered in real-world implementations. The book would benefit from additional content on AI model security itself, including protection against adversarial attacks, model poisoning, and privacy considerations. A discussion of AI/ML supply chain security and regulatory compliance would also be timely additions. From an educational perspective, incorporating more visual aids, specific step-by-step labs that allow the reader progress through the content within their own environment, detailed prerequisites for each chapter, and advanced exercises would enhance the learning experience. For example, the addition of an online companion portal with updated code examples and interactive tutorials would provide significant value to readers. Target Audience and Impact Currently, the book serves security professionals, data scientists, and others. However, with the suggested enhancements, it could expand its reach to include security analysts transitioning to AI roles, DevSecOps practitioners, and risk management professionals. The content remains technically rigorous while maintaining practicality, though some sections may challenge readers without strong mathematical backgrounds. Looking Forward As AI continues to reshape cybersecurity and other fields, future editions of this book have the opportunity to become an even more essential resource. By incorporating emerging technologies, expanding practical examples, and adding comprehensive case studies, the next edition could provide even greater value to professionals working at this critical intersection. The current edition earns a solid 4.5 out of 5 rating, with potential to reach 5 by implementing these suggestions. Despite its current limitations, it remains a valuable resource for understanding and implementing AI in security contexts. The authors have laid a strong foundation, and with these enhancements, future editions could further cement this book's position as a go-to reference for AI-driven security implementations. The key will be maintaining the current technical rigor with the rapid changes within the AI field while expanding coverage of emerging technologies and providing more comprehensive real-world applications.
A**R
A Sophisticated Yet Accessible Dive into AI for Cybersecurity
As a GenAI practitioner exploring applications in cybersecurity, I found "Artificial Intelligence for Cybersecurity" to be an exceptionally well-crafted resource. It strikes an excellent balance between theoretical depth and practical implementation. Highlights: * Conceptual Clarity: The book begins with a strong conceptual grounding in AI/ML relevant to security, then transitions smoothly into the specifics of data engineering and its significance in cyber contexts. * Algorithm Deep Dive: Provides a robust overview of essential ML algorithms and their statistical basis – a valuable refresher for practitioners, specifically tailored to cybersecurity use cases. * Practical Python Code: The hands-on Python examples are genuinely useful for understanding how to implement the discussed techniques, covering areas like anomaly detection and threat intelligence analysis. * Addressing Real-World Challenges: Chapter 17's focus on learning in changing and adversarial environments is particularly salient, tackling the complexities of deploying AI in the dynamic landscape of cybersecurity. The inclusion of * Responsible AI principles (Chapter 18) also adds significant value for ethical deployment. This book is highly recommended for data scientists, AI/ML engineers, and cybersecurity professionals looking to bridge the gap between artificial intelligence and practical security applications. It provides both the 'why' and the 'how' effectively.
T**E
Poorly Written; AI generated?
This book is poorly written. Lots of long, run-on sentences filled with excessive commas and AI buzzwords. It almost reads like AI-generated slop. Not recommended.
H**E
A good jump-start into using Ai to solve Cybersecurity problems.
Artificial Intelligence for Cybersecurity covers a great deal of ground for Developers, Cybersecurity professionals, and AI Professionals operating at the intersection of AI and Cybersecurity. Part I of the book provides a good introductory overview of the technologies used in modern cybersecurity departments, including Big Data, and Data Analytics. (If you're coming from a heavy security background, you can skip ahead). Part II provided a great introduction into the basics of AI (If you are a developer with a year of experience in AI, you can skip this part). After getting all of the readers up to speed on both, Part III of the book then delves into practical examples, demonstrating how AI can assist in improving cybersecurity workflows for effectiveness, speed, and agility. The exercises provide instructions for MacOS, Ubuntu, and Windows. They leverage Python/Conda, using libraries such as Langchain, OpenAI, Tensorflow, Numpy, and others. Readers can delve into examples including Malware/Intrusion Detection; Behavior Analysis; Spam Detection; User Access Control; and Threat Intelligence. These practical examples, and hands-on exercises give the reader a strong feel for how AI might be applied to solve real cybersecurity problems. The last part of the book dives into common problems in implementing AI, including: Data Quality, Bias, How to Monitor AI Systems & Monitor Performance, AI Transparency, and Privacy. Overall, this book contains a well thought out curriculum to get people jumpstarted in Cybersecurity for AI, and a little hands-on experience with basic applications that will give them a feel for how problems can be tackled in the real world.
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