Machine learning algorithms using Sc...
Tyagi, Amit Kumar.

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  • Machine learning algorithms using Scikit and TensorFlow environments
  • Record Type: Electronic resources : Monograph/item
    Title/Author: Machine learning algorithms using Scikit and TensorFlow environments/ Puvvadi Baby Maruthi, Amit Kumar Tyagi, Smrity Prasad, editors.
    other author: Tyagi, Amit Kumar.
    Published: Hershey, Pennsylvania :IGI Global, : 2024.,
    Description: 1 online resource (xx, 453 p.) :ill. (chiefly col.)
    [NT 15003449]: Chapter 1. Classification models in machine learning techniques -- Chapter 2. Machine learning algorithm with tensorflow and scikit for next generation systems -- Chapter 3. Understanding convolutional neural network with tensorflow: CNN -- Chapter 4. A deep understanding of long short-term memory for solving vanishing error problem: LSTM-VGP -- Chapter 5. Coffee leaf diseases classification using deep learning approach -- Chapter 6. COVID-19 classification with healthcare images based on ML-DL methods -- Chapter 7. Unravelling the enigma of machine learning model interpretability in enhancing disease prediction -- Chapter 8. Deep learning for the intersection of ethics and privacy in healthcare -- Chapter 9. Early detection of Alzheimer's using artificial intelligence for effective emotional support systems -- Chapter 10. Malware analysis and classification using machine learning models -- Chapter 11. Improved breast cancer detection in mammography images: integration of convolutional neural network and local binary pattern approach -- Chapter 12. Predicting depression from social media users by using lexicons and machine learning algorithms -- Chapter 13. Mental stress detection using bidirectional encoder representations from transformers -- Chapter 14. SCRNN: a deep model for colorectal cancer classification from histological images - implementation using tensorflow -- Chapter 15. SRAM memory testing methods and analysis: an approach for traditional test algorithms to ML models -- Chapter 16. Imagining the sustainable future with industry 6.0: a smarter pathway for modern society and manufacturing industries -- Chapter 17. Dew computing: state of the art, opportunities, and research challenges -- Chapter 18. The future of artificial intelligence in blockchain applications -- Chapter 19. Transformative effects of chatgpt on the modern era of education and society: from society's and industry's perspectives -- Chapter 20. Using ensemble learning and random forest techniques to solve complex problems.
    Subject: Machine learning. -
    Online resource: https://services.igi-global.com/resolvedoi/resolve.aspx?doi=10.4018/978-1-6684-8531-6
    ISBN: 9781668485330
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W9521046 電子資源 11.線上閱覽_V 電子書 EB Q325.5 .M32132 2024eb 一般使用(Normal) On shelf 0
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