S. R. / Gowda / Rammohan | Engineering Science and Technology: Innovations for the Future | Buch | 978-1-041-16681-8 | www.sack.de

Buch, Englisch, 432 Seiten, Format (B × H): 210 mm x 280 mm, Gewicht: 630 g

S. R. / Gowda / Rammohan

Engineering Science and Technology: Innovations for the Future


1. Auflage 2025
ISBN: 978-1-041-16681-8
Verlag: CRC Press

Buch, Englisch, 432 Seiten, Format (B × H): 210 mm x 280 mm, Gewicht: 630 g

ISBN: 978-1-041-16681-8
Verlag: CRC Press


The International Conference on Recent Innovations in Engineering Science & Technology (ICRIET-2025), hosted by KSIT Bengaluru, brought together researchers and experts from around the world to present 225 peer reviewed papers across four engineering domains. With keynote sessions on AI, energy harvesting, and sustainable manufacturing, the conference promoted interdisciplinary dialogue and cutting-edge innovation. It served as a dynamic platform for academic exchange, fostering collaboration between academia and industry. ICRIET-2025 stands as a testament to KSIT’s commitment to advancing research and technological progress.

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Zielgruppe


Academic

Weitere Infos & Material


Chapter 1 Deep learning techniques for judicial judgement system

Chapter 2 Advancing cancer diagnosis: A machine learning approach for early detection and improved outcomes

Chapter 3 Animatrix: Personalized multimodal content generation for advertising

Chapter 4 Automated code validator with LLM-powered test case generation

Chapter 5 FlowCast: A simple method for traffic prediction

Chapter 6 Smart sericulture: Leveraging CNNs for silkworm disease detection

Chapter 7 Quantum-enhanced stock market prediction: Integrating AI, sentiment analysis, and multimodal data fusion

Chapter 8 Intelligent women’s safety protocol for automated risk detection

Chapter 9 Performance analysis of classification algorithms to predict failures in IIoT devices

Chapter 10 Leveraging generative adversarial networks (GANs) for deepfake

Chapter 11 AI-driven urban resilience system: Tackling urban flooding, rescue optimisation, and heat island mitigation

Chapter 12 Few-shot learning for behavioural biometrics: A personalised approach to anomaly detection with limited data

Chapter 13 LSTM neural network-based Li-ion battery cycle forecast

Chapter 14 Coco areca wellness CNN-based disease detection in coconut and arecanut crops

Chapter 15 Artificially intelligent adaptive voice assistant for next-generation desktop automation desktop detection

Chapter 16 Medilink: AI-powered virtual healthcare for brain tumour and eye disordedetection

Chapter 17 LLM-based automated scoring and feedback for essays in the Marathi language

Chapter 18 A blockchain-based web application for enhancing financial transparency in NGOs

Chapter 19 IoT-based gamified learning model for visually impaired users

Chapter 20 Real-time snake detection and alert system in agricultural fields using computer vision and IoT

Chapter 21 Intelligent IoT-enabled hydroponics system using machine learning

Chapter 22 IoT-integrated smart mirror for continuous health and wellness monitoring

Chapter 23 Automatic vehicle emergency response and alert system using GPS and GSM

Chapter 24 Smart IoT-enabled vending machine for medical and sanitary supplies

Chapter 25 Revolutionising supply chains: An AI-driven approach to inventory management

Chapter 26 Workload prediction in cloud computing: A machine learning-based approach

Chapter 27 Smart traffic sign detection using deep learning for intelligent vehicle control

Chapter 28 Developing a sustainable online ecosystem for second-hand accessories within a university community

Chapter 29 AI-powered adaptive traffic light system

Chapter 30 Predicting drug-target interactions using graph neural networks: A deep learning approach


Reeja S. R., Bore Gowda, Y. S. Rammohan, Ganesan Prabu Sankar, G. Jayalatha



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