Era of Artificial Intelligence The 21st Century Practitioners Approach 1st Edition by Rik Das, Madhumi Mitra, Chandrani Singh – Ebook PDF Instant Download/Delivery: 9781032291116 ,1032291117
Full download Era of Artificial Intelligence The 21st Century Practitioners Approach 1st Edition after payment
Product details:
ISBN 10: 1032291117
ISBN 13: 9781032291116
Author: Rik Das, Madhumi Mitra, Chandrani Singh
Era of Artificial Intelligence The 21st Century Practitioners Approach 1st Edition Table of contents:
1 Artificial Intelligence for Accessibility and Inclusion
1.1 Introduction: Background and Driving Forces
1.2 AI in Daily Life
1.2.1 Productivity
1.2.2 Accessing Technology
1.3 AI in Higher Education and the Workplace
1.4 AI in Healthcare
1.4.1 Automated Reminders
1.4.2 AI in Radiology
1.4.3 Treatment Algorithms
1.4.4 Selfies Healthcare
1.4.5 Privacy
1.5 Expectations of AI
1.6 Diversity on AI Teams
1.7 Conclusions
References
2 Artificial Intelligence—Applications across Industries (Healthcare, Pharma, Education)
2.1 Introduction
2.2 AI in Healthcare
2.3 Applications of AI in Healthcare
2.3.1 AI for Early Disease Identification and Diagnosis
2.3.2 Patient-Specific Management of Disease
2.3.3 Using AI in Medical Imaging
2.3.4 Reliability of Clinical Trials
2.3.5 Accelerated Improvement of Medication
2.3.6 Intelligent Patient Care
2.3.7 Minimising Errors
2.3.8 Reduction in Healthcare Expenses
2.3.9 Increasing Patient-Doctor Interaction
2.3.10 Providing Relevant Context
2.3.11 Robot-Assisted Surgery
2.4 AI in Education
2.5 Applications of Artificial Intelligence in Education
2.5.1 Personalised Learning
2.5.2 Automation of Tasks
2.5.3 Creating Smart Content
2.5.4 Visualisation of Data
2.5.5 Creation of Digital Lessons
2.5.6 Accessibility for All
2.5.7 Identifying Classroom Weaknesses
2.5.8 Personalised Feedback Based on Data
2.5.9 Conversational AI Is Available 24-7
2.5.10 Decentralised and Safe Educational Platforms
2.5.11 Using AI in Exams
2.5.12 Frequently Updated Material
2.6 AI in Pharmaceuticals
2.7 Applications AI in the Pharmaceutical Industry (Anon., 2020)
2.7.1 AI in Drug Discovery
2.7.2 Drug Development and Design
2.7.3 Diagnosis
2.7.4 Remote Observation
2.7.5 Improved Manufacturing Process
2.7.6 Marketing
2.8 Conclusion
References
3 AI-Enabled Healthcare for Next Generation
3.1 Introduction to AI-Enabled Healthcare
3.1.1 Challenges for Artificial Intelligence in Healthcare
3.1.2 Patient-centric
3.1.3 Clinical Decision Support
3.1.4 Prevention Is the Buzzword
3.1.5 AI Support for Healthcare
3.1.6 Always Connected
3.1.7 Personalization in the Health-Care Domain
3.1.8 Health-Care on the Cloud
3.1.9 Data Driven
3.2 Hurdles to the Implementation of AI
3.2.1 Data Attributes and Access Limitations
3.3 AI Technologies for Health and Pharma
3.3.1 Rule-Based Expert Systems
3.3.2 Diagnosis and Treatment Applications
3.3.3 Clinical Trials
3.4 Conclusion
References
4 Classification of Brain Tumors Using CNN and ML Algorithms
4.1 Introduction
4.2 Related works
4.3 Proposal of System Approach
4.4 Methodology Used in Proposed System
4.4.1 Convolutional Neural Networks
4.4.2 Random Forest Classifier
4.4.3 SVM
4.4.4 Naive Bayes Classifier
4.4.5 Decision Tree Classifier
4.4.6 K-Nearest Neighbor Classifier
4.5 Results
4.6 Conclusion
References
5 Cognitive Computing and Big Data for Digital Health: Past, Present, and the Future
5.1 Introduction
5.2 Big Data Analysis for Cognitive Computing Applications
5.3 Related Studies
5.4 Data and Methodology
5.5 Analysis and Discussion
5.6 Conclusions
References
6 Quantum Machine Learning and Its Applications
6.1 Introduction
6.2 Quantum Fundamentals
6.2.1 Quantum Basic Concepts and Quantum Circuits
6.2.2 Quantum Computing
6.3 Quantum Machine Learning Algorithms and Applications
6.3.1 First Phase (1900s ~ 2007): Fundamental Model Formulation
6.3.2 Second Phase (2008 ~ present): Implementation
6.4 Current State of Knowledge in Applications
6.5 Conclusion and Future Directions
References
7 Introducing an IoT-Enabled Multimodal Emotion Recognition System for Women Cancer Survivors
7.1 Introduction
7.2 Related Work
7.3 Identified Challenges
7.4 Need for a Multimodal Emotion Recognition System
7.5 Proposed IoT Enabled Multimodal Emotion Recognition System
7.6 Methodology
7.6.1 Design and Development of an Integrated IoT Framework
7.6.2 Module Design for Proposed System
7.7 Implementation and Results
7.8 Discussion of Results
7.9 Conclusion
References
8 Responsible AI in Automatic Speech Recognition
8.1 Introduction
8.1.1 Features of Responsible AI
8.1.2 Deep Neural Networks
8.2 ASR and Current Trends
8.2.1 Why Do We Need ASR?
8.2.2 What Factors Affect the Accuracy of Speech to Text?
8.3 How Responsible AI Can Improve ASR
8.3.1 Architecture of ASR
8.3.2 ASR Using Responsible AI in Customer Operations
8.4 Scope of Responsible AI
8.4.1 What Impact Can It Have on the Market?
8.4.2 How Can It Benefit Clients?
8.5 Conclusion
References
9 A Mathematical Disposition of Optimization Techniques for Neural Networks
9.1 Introduction
9.2 Global and Local Maximum and Minimum Values of Univariate Function
9.3 Fuzzy Goal Programming Approach with Machine Learning
9.4 Convex and Non-convex Optimization
9.5 Linear Programming Problem
9.6 Loss Functions
9.7 Over-parameterization and Generalization
9.8 Optimizers for Neural Net
9.9 Conclusion
References
Index
People also search for Era of Artificial Intelligence The 21st Century Practitioners Approach 1st Edition:
literary translation in the era of artificial intelligence
microbiology in the era of artificial intelligence
metabolomics in the era of artificial intelligence
plasma medicine the era of artificial intelligence
design in the age of artificial intelligence. harvard business school
Tags: Rik Das, Madhumi Mitra, Chandrani Singh, Artificial Intelligence, Practitioners Approach