Data-Centric Artificial Intelligence for Multidisciplinary Applications

Data-Centric Artificial Intelligence for Multidisciplinary Applications

N Mahalle, Parikshit; Wasatkar, Namrata Nishant; R. Shinde, Gitanjali

Taylor & Francis Ltd

06/2024

294

Dura

9781032610061

Pré-lançamento - envio 15 a 20 dias após a sua edição

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I) Section I Recent developments in data-centric AI: 1. Advancements in Data-Centric AI Foundations, Ethics, and Emerging Technology 2. Emerging Development and Challenges in Data-Centric AI 3. Unleashing the Power of Industry 4.0: A Harmonious Blend of Data-Centric and Model- Centric AI 4. Data centric AI approaches for machine translation II) Section II Data Centric AI in Healthcare and Agriculture: 5. Case Study Medical Images Analysis and Classification with Data Centric Approach 6. Comparative Analysis of Machine Learning Classification Techniques for Kidney Disease Prediction 7. Fusion of Multi Modal Lumber Spine Scans Using Convolutional Neural Networks 8. Medical Image Analysis and Classification for Varicose Veins 9. Brain Tumor Detection using CNN 10. Explainable Artificial Intelligence in the Healthcare: An Era of Commercialization for AI Solutions 11. Role of Data centric artificial intelligence in agriculture 12. Detection and Classification of Mango Fruit based on Feature extraction applying optimized hybrid LA-FF algorithms III) Section III Building AI with quality Data for multidisciplinary domains: 13 Guiding Your Way: Solving Student Admission Woes 14. Melodic pattern recognition for ornamentation features in music computing 15. Content Analysis Framework for Skill Assessment 16. Machine learning techniques for effective text mining 17. Emails Classification and Anomaly Detection using Natural Language Processing
Data centric;Model centric;Artificial Intelligence;Security;Privacy;Data Science;Healthcare;Agriculture