Graph Models for Deep Learning: An Executive Review of Hot Technology
Executive Reviews, Book 1
Échec de l'ajout au panier.
Échec de l'ajout à la liste d'envies.
Échec de la suppression de la liste d’envies.
Échec du suivi du balado
Ne plus suivre le balado a échoué
Acheter pour 18,74 $
Aucun mode de paiement valide enregistré.
Nous sommes désolés. Nous ne pouvons vendre ce titre avec ce mode de paiement
-
Narrateur(s):
-
Harriett Hunt
-
Auteur(s):
-
Stephen Donald Huff
À propos de cet audio
This course provides a detailed executive-level review of contemporary topics in graph modeling theory with specific focus on Deep Learning theoretical concepts and practical applications. The ideal student is a technology professional with a basic working knowledge of statistical methods.
Upon completion of this review, the student should acquire improved ability to discriminate, differentiate, and conceptualize appropriate implementations of application-specific ("traditional" or "rule-based") methods versus deep learning methods of statistical analyses and data modeling. Additionally, the student should acquire improved general understanding of graph models as deep learning concepts with specific focus on state-of-the-art awareness of deep learning applications within the fields of character recognition, natural language processing, and computer vision. Optionally, the provided code base will inform the interested student regarding basic implementation of these models in Keras using Python (targeting TensorFlow, Theano, or Microsoft Cognitive Toolkit).
As an "executive review", this audiobook presents a distillation of essential information without the clutter of formulae, charts, graphs, references, and footnotes. Thus, the student will not have a "textbook" experience (or expense) while reviewing its contents. Instead, the student will quickly pass through a surprising wealth of actionable, easily-digestible technological information without the distraction of extemporaneous considerations.
©2018 Stephen Donald Huff (P)2019 Stephen Donald Huff