đź’ˇNy Ordreportal - Se aktuel status >>

Deep Learning With Pytorch

Af: Eli Stevens & Luca Antiga
Kategori: Edb
Kategori nr.: 9420
Varenr.: 3354026
| Stregkode: 9781617295263
Direkte | Leverandør: Gardners EUR

Vælg format:

Kan bestilles hos Dafolo

Leverandør

Dafolo

Lager status
  • IR Lager
  • IR Fysisk lager
  • Næste ankomstdato til IR's lager -
  • Butik bestilling
  • Resv. antal
  • Disp. lager

Beskrivelse

Every other day we hear about new ways to put deep learning to good use: improved medical imaging, accurate credit card fraud detection, long range weather forecasting, and more. PyTorch puts these superpowers in your hands, providing a comfortable Python experience that gets you started quickly and then grows with you as you, and your deep learning skills, become more sophisticated. Deep Learning with PyTorch teaches you how to implement deep learning algorithms with Python and PyTorch. This book takes you into a fascinating case study: building an algorithm capable of detecting malignant lung tumors using CT scans. As the authors guide you through this real example, you''ll discover just how effective and fun PyTorch can be. Key features • Using the PyTorch tensor API  • Understanding automatic differentiation in PyTorch • Training deep neural networks  • Monitoring training and visualizing results • Interoperability with NumPy Audience Written for developers with some knowledge of Python as well as basic linear algebra skills. Some understanding of deep learning will be helpful, however no experience with PyTorch or other deep learning frameworks is required. About the technology PyTorch is a machine learning framework with a strong focus on deep neural networks. Because it emphasizes GPU-based acceleration, PyTorch performs exceptionally well on readily-available hardware and scales easily to larger systems.

Detaljer

  • EAN
    9781617295263
  • Vægt
    946 g
  • Disponent
    Direkte titel
  • Forfatter
    Eli Stevens, Luca Antiga
  • Forlag
    Manning Publications
  • ISBN
    9781617295263
  • Sprog
    Engelsk
  • Sideantal
    450
  • Udgivelsesdato
  • Format
    PAPERBACK
  • Themakode
    UMB
  • Kategori
    Edb
  • Kategori nr
    9420
  • Lev. varenr.
    1501
  • Højde/Dybde (mm)
    235 mm
  • Bredde (mm)
    187 mm
  • Længde (mm)
    32 mm