DL colleagues, learn to develop probabilistic models with TensorFlow, making particular use of the TensorFlow Probability library.. Gain high-demand skills in Probabilistic Neural Networks, Deep Learning, Generative Models, Tensorflow and Probabilistic Programming Language (PRPL). The five training modules equip you in: 1) TensorFlow Distributions: Probabilistic modelling is a powerful and principled approach that provides a framework in which to take account of uncertainty in the data, 2) Probabilistic layers and Bayesian Neural Networks: Accounting for sources of uncertainty is an important aspect of the modelling process, especially for safety-critical applications such as medical diagnoses, 3) Bijectors and Normalising Flows: Normalising flows are a powerful class of generative models, that aim to model the underlying data distribution by transforming a simple base distribution through a series of bijective transformations., 4) Variational Autoencoders: Variational autoencoders are one of the most popular types of likelihood-based generative deep learning models. Two networks are jointly learned: an encoder or inference network, as well as a decoder or generative network, and 5) Capstone Project: Develop probabilistic deep learning models using tools and concepts from the TensorFlow Probability library such as Distribution objects, probabilistic layers, bijectors, and KL divergence optimisation.
Download your complimentary AI Certification Guide for 2021 here: https://tinyurl.com/1l2soeh0
Enroll today (individuals & teams): https://tinyurl.com/hjd51uc4
Much career success, Lawrence E. Wilson - Artificial Intelligence Academy