BOOKS - NETWORK TECHNOLOGIES - Data Science for Cyber-Security
Data Science for Cyber-Security - Nick Heard, Niall Adams, Patrick Rubin-Delanchy 2019 PDF World Scientific Publishing BOOKS NETWORK TECHNOLOGIES
ECO~15 kg CO²

1 TON

Views
79589

Telegram
 
Data Science for Cyber-Security
Author: Nick Heard, Niall Adams, Patrick Rubin-Delanchy
Year: 2019
Pages: 305
Format: PDF
File size: 20.4 MB
Language: ENG



Pay with Telegram STARS
''

You may also be interested in:

Cyber Security Standards, Practices and Industrial Applications Systems and Methodologies
Offensive and Defensive Cyber Security Strategies Fundamentals, Theory and Practices
Cyber-Physical Systems and Industry 4.0 Practical Applications and Security Management
Cyber Defense and Situational Awareness (Advances in Information Security Book 62)
Cybersecurity Today Cyber attacks, network security, and threat prevention
Nature-Inspired Cyber Security and Resiliency Fundamentals, Techniques and Applications
Artificial Intelligence and IoT for Cyber Security Solutions in Smart Cities
Computer Science in Sport Modeling, Simulation, Data Analysis and Visualization of Sports-Related Data
Computer Science in Sport: Modeling, Simulation, Data Analysis and Visualization of Sports-Related Data
Data Science From Scratch From Data Visualization To Manipulation. It Is The Easy Way! All You Need For Business Using The Basic Principles Of Python And Beyond
Practical Data Science with SAP Machine Learning Techniques for Enterprise Data, Early Release
Computer Science in Sport Modeling, Simulation, Data Analysis and Visualization of Sports-Related Data
Programming Skills for Data Science Start Writing Code to Wrangle, Analyze, and Visualize Data with R
Data Science in Chemistry: Artificial Intelligence, Big Data, Chemometrics and Quantum Computing with Jupyter
Data Science and Big Data Analytics in Smart Environments
Data Smart: Using Data Science, 2nd Ed. Jordan Goldmeier
Advances in Data Science Symbolic, Complex, and Network Data
Handbook of Research on Intelligent Data Processing and Information Security Systems (Advances in Information Security, Privacy, and Ethics)
Data Science and Analytics with Python (Chapman and Hall CRC Data Mining and Knowledge Discovery Series)
Beginning Mathematica and Wolfram for Data Science: Applications in Data Analysis, Machine Learning, and Neural Networks
Cyber Security for Educational Leaders A Guide to Understanding and Implementing Technology Policies
Cyber Security and Business Analysis An essential guide to secure and robust systems
Building a Cyber Risk Management Program Evolving Security for the Digital Age
Confident Cyber Security The Essential Insights and How to Protect from Threats, 2nd Edition
Blockchain for Cybersecurity in Cyber-Physical Systems (Advances in Information Security, 102)
Cyber Security and Business Analysis An essential guide to secure and robust systems
Building a Cyber Risk Management Program Evolving Security for the Digital Age
Artificial Intelligence and Cyber Security in Industry 4.0 (Advanced Technologies and Societal Change)
Cyber Security and Business Analysis: An essential guide to secure and robust systems
Confident Cyber Security The Essential Insights and How to Protect from Threats, 2nd Edition
Advanced Data Science and Analytics with Python (Chapman and Hall CRC Data Mining and Knowledge Discovery Series)
Essential Math for Data Science Take Control of Your Data with Fundamental Linear Algebra, Probability, and Statistics (Third Early Release)
Python Data Science The Ultimate Crash Course, Tips, and Tricks to Learn Data Analytics, Machine Learning, and Their Application
Data Science in Chemistry Artificial Intelligence, Big Data, Chemometrics and Quantum Computing with Jupyter (De Gruyter Textbook)
Data Engineering and Data Science Concepts and Applications
Data Engineering and Data Science: Concepts and Applications
Probability and statistics for data science math + R + data
Data Science Fundamentals with R, Python, and Open Data
Data Science Fundamentals with R, Python, and Open Data
Data Science Fundamentals with R, Python, and Open Data