BOOKS - Building Intelligent Systems Using Machine Learning and Deep Learning Securit...
Building Intelligent Systems Using Machine Learning and Deep Learning Security, Applications and Its Challenges - Abhaya Kumar Sahoo, Chittaranjan Pradhan, Bhabani Shankar Prasad Mishra 2024 PDF Nova Science Publishers BOOKS
ECO~14 kg CO²

1 TON

Views
98214

Telegram
 
Building Intelligent Systems Using Machine Learning and Deep Learning Security, Applications and Its Challenges
Author: Abhaya Kumar Sahoo, Chittaranjan Pradhan, Bhabani Shankar Prasad Mishra
Year: 2024
Pages: 238
Format: PDF
File size: 10.8 MB
Language: ENG



Pay with Telegram STARS
Book Description: Building Intelligent Systems Using Machine Learning and Deep Learning Security Applications and Its Challenges explores the development and implementation of machine learning and deep learning techniques in various applications, including security systems. The book provides an overview of the current state of the field, discussing the challenges and opportunities that come with these advancements, and offers practical guidance on how to apply these techniques in real-world scenarios. It covers topics such as data preprocessing, feature selection, model evaluation, and hyperparameter tuning, providing readers with a comprehensive understanding of the process. The book begins by introducing the basics of machine learning and deep learning, explaining the fundamental concepts and algorithms used in these fields. It then delves into more advanced topics, such as neural networks, natural language processing, and computer vision, highlighting their applications in various industries. The book also discusses the challenges associated with implementing these techniques, including data quality, privacy concerns, and ethical considerations. Throughout the book, the authors emphasize the importance of understanding the underlying principles of machine learning and deep learning, rather than simply using pre-trained models or black-box solutions. They provide examples of successful applications and cautionary tales of failed implementations, illustrating the need for careful consideration of the specific problem being addressed and the limitations of these techniques. The book concludes with a discussion of the future of machine learning and deep learning, including the potential for further advancements and the challenges that must be overcome to achieve widespread adoption. It emphasizes the importance of continued research and development in this field, as well as the need for ongoing education and training for those working in the field. Book Outline: I.
''

You may also be interested in:

Machine Learning with Python Advanced and Effective Strategies Using Machine Learning with Python Theories
Machine Learning Step-by-Step Guide To Implement Machine Learning Algorithms with Python
Machine Learning in Python Hands on Machine Learning with Python Tools, Concepts and Techniques
Cracking The Machine Learning Interview 225 Machine Learning Interview Questions with Solutions
Nature-Inspired Computing Paradigms in Systems: Reliability, Availability, Maintainability, Safety and Cost (RAMS+C) and Prognostics and Health Management (PHM) (Intelligent Data-Centric Systems)
Mastering Classification Algorithms for Machine Learning: Learn how to apply Classification algorithms for effective Machine Learning solutions (English Edition)
Up and Running Google AutoML and AI Platform Building Machine Learning and NLP Models Using AutoML and AI Platform
Advances in Artificial Systems for Medicine and Education II (Advances in Intelligent Systems and Computing Book 902)
Automation in Construction toward Resilience: Robotics, Smart Materials and Intelligent Systems (Resilience and Sustainability in Civil, Mechanical, Aerospace and Manufacturing Engineering Systems)
Machine Learning in Trading: Step by step implementation of Machine Learning models
Machine Learning in Microservices: Productionizing microservices architecture for machine learning solutions
Deep Machine Learning Complete Tips and Tricks to Deep Machine Learning
Linear Algebra And Optimization With Applications To Machine Learning - Volume II Fundamentals of Optimization Theory with Applications to Machine Learning
Building Recommendation Systems in Python and JAX: Hands-On Production Systems at Scale
Mastering ChatGPT and Google Colab for Machine Learning Automate AI Workflows and Fast-Track Your Machine Learning Tasks with the Power of ChatGPT, Google Colab, and Python
Building Recommendation Systems in Python and JAX Hands-On Production Systems at Scale (Final)
Building Recommendation Systems in Python and JAX Hands-On Production Systems at Scale (Final)
Building Secure and Reliable Systems Best Practices for Designing, Implementing, and Maintaining Systems (Google version)
Python Machine Learning Discover the Essentials of Machine Learning, Data Analysis, Data Science, Data Mining and Artificial Intelligence Using Python Code with Python Tricks
Building Better Interfaces for Remote Autonomous Systems: An Introduction for Systems Engineers (Human-Computer Interaction Series)
Hands-on Supervised Learning with Python Learn How to Solve Machine Learning Problems with Supervised Learning Algorithms
Mastering Excel VBA and Machine Learning A Complete, Step-by-Step Guide To Learn and Master Excel VBA and Machine Learning From Scratch
Signal Processing and Machine Learning for Brain-Machine Interfaces
Machine Learning with Python Advanced Guide in Machine Learning with Python
Machine Learning with Python 3 in 1 Beginners Guide + Step by Step Methods + Advanced Methods and Strategies to Learn Machine Learning with Python
Machine Learning with Neural Networks An In-depth Visual Introduction with Python Make Your Own Neural Network in Python A Simple Guide on Machine Learning with Neural Networks
Machine Learning with Python A Step-By-Step Guide to Learn and Master Python Machine Learning
Intelligent Healthcare Systems
Swarm Intelligent Systems
Machine Learning Master Supervised and Unsupervised Learning Algorithms with Real Examples
Bio-inspired Algorithms in Machine Learning and Deep Learning for Disease Detection
Artificial Intelligence and Machine Learning Foundations Learning from experience, 2nd Edition
Learning Kernel Classifiers: Theory and Algorithms (Adaptive Computation and Machine Learning)
Artificial Intelligence and Machine Learning Foundations Learning from experience, 2nd Edition
Machine Learning with Python Cookbook Practical Solutions from Preprocessing to Deep Learning
Disease Prediction using Machine Learning, Deep Learning and Data Analytics
Disease Prediction using Machine Learning, Deep Learning and Data Analytics
Federated Learning (Synthesis Lectures on Artificial Intelligence and Machine Learning)
Learning TensorFlow.js Powerful Machine Learning in javascript
Risk Modeling Practical Applications of Artificial Intelligence, Machine Learning, and Deep Learning