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
98209

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 An In-Depth Beginners Guide into the Essentials of Machine Learning Algorithms
Probabilistic Machine Learning: An Introduction (Adaptive Computation and Machine Learning series)
Cloud Computing for Machine Learning and Cognitive Applications A Machine Learning Approach
Statistics for Machine Learning Implement Statistical methods used in Machine Learning using Python
Python for Data Science A Practical Guide to Master Python Programming and System Administration. Discover The Essentials of Machine Learning and Artificial Intelligent Using Python Code
Engineering Intelligent Systems: Systems Engineering and Design with Artificial Intelligence, Visual Modeling, and Systems Thinking
Deep Learning for Multimedia Processing Applications Volume 1 Image Security and Intelligent Systems for Multimedia Processing
Deep Learning for Multimedia Processing Applications Volume 1 Image Security and Intelligent Systems for Multimedia Processing
Python Machine Learning A Complete Guide for Beginners on Machine Learning and Deep Learning with Python
Python Machine Learning Machine Learning and Deep Learning with Python, scikit-learn and Tensorflow
Integration of Cloud Computing with Internet of Things Foundations, Analytics and Applications (Advances in Learning Analytics for Intelligent Cloud-IoT Systems)
Machine Learning for Beginners An Introduction to Artificial Intelligence and Machine Learning
Machine Learning Interviews: Kickstart Your Machine Learning and Data Career
Practical Machine Learning with R and Python Machine Learning in Stereo, Third Edition
Optimizing AI and Machine Learning Solutions Your ultimate guide to building high-impact ML/AI solutions
Optimizing AI and Machine Learning Solutions Your ultimate guide to building high-impact ML/AI solutions
Towards Heterogeneous Multi-core Systems-on-Chip for Edge Machine Learning Journey from Single-core Acceleration to Multi-core Heterogeneous Systems
Towards Heterogeneous Multi-core Systems-on-Chip for Edge Machine Learning Journey from Single-core Acceleration to Multi-core Heterogeneous Systems
Optimizing AI and Machine Learning Solutions: Your ultimate guide to building high-impact ML AI solutions (English Edition)
Intelligent Data Analysis for Biomedical Applications Challenges and Solutions (Intelligent Data-Centric Systems Sensor Collected Intelligence)
Ultimate MLOps for Machine Learning Models Use Real Case Studies to Efficiently Build, Deploy, and Scale Machine Learning Pipelines with MLOps
Machine Learning For Beginners A Math Free Introduction for Business and Individuals to Machine Learning, Big Data, Data Science, and Neural Networks
Ultimate MLOps for Machine Learning Models Use Real Case Studies to Efficiently Build, Deploy, and Scale Machine Learning Pipelines with MLOps
Unsupervised Machine Learning in Python Master Data Science and Machine Learning with Cluster Analysis, Gaussian Mixture Models, and Principal Components Analysis
Hands-On Machine Learning with Scikit-Learn and Scientific Python Toolkits: A practical guide to implementing supervised and unsupervised machine learning algorithms in Python
Intelligent Systems Advances in Biometric Systems, Soft Computing, Image Processing, and Data Analytics
Machine Learning Hero Master Data Science with Python Essentials Machine Learning with Python Hands-On Guide from Beginner to Expert (Mastering the AI Revolution Book 1)
Hacker|s Guide to Machine Learning with Python Hands-on guide to solving real-world Machine Learning problems with Scikit-Learn, TensorFlow 2, and Keras
Fundamentals of Machine & Deep Learning A Complete Guide on Python Coding for Machine and Deep Learning with Practical Exercises for Learners (Sachan Book 102)
Microservices for Machine Learning Design, implement, and manage high-performance ML systems with microservices
Microservices for Machine Learning Design, implement, and manage high-performance ML systems with microservices
Python Machine Learning Is The Complete Guide To Everything You Need To Know About Python Machine Learning Keras, Numpy, Scikit Learn, Tensorflow, With Useful Exercises and examples
Python Machine Learning A Hands-On Beginner|s Guide to Effectively Understand Artificial Neural Networks and Machine Learning Using Python
Machine Learning for Emotion Analysis in Python: Build AI-powered tools for analyzing emotion using natural language processing and machine learning
Artificial Intelligent Algorithms for Image Dehazing and Non-Uniform Illumination Enhancement (Algorithms for Intelligent Systems)
Ultimate Machine Learning with ML.NET Build, Optimize, and Deploy Powerful Machine Learning Models for Data-Driven Insights with ML.NET, Azure Functions, and Web API
Building Data Science Applications with FastAPI: Develop, manage, and deploy efficient machine learning applications with Python
Privacy-Preserving Machine Learning: A use-case-driven approach to building and protecting ML pipelines from privacy and security threats
Data Science and Machine Learning Interview Questions Using R: Crack the Data Scientist and Machine Learning Engineers Interviews with Ease
Data Science and Machine Learning Interview Questions Using R Crack the Data Scientist and Machine Learning Engineers Interviews with Ease