Imperial College London
Probabilistic Deep Learning with TensorFlow 2
Imperial College London

Probabilistic Deep Learning with TensorFlow 2

This course is part of TensorFlow 2 for Deep Learning Specialization

Taught in English

Some content may not be translated

Dr Kevin Webster

Instructor: Dr Kevin Webster

13,007 already enrolled

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Course

Gain insight into a topic and learn the fundamentals

4.7

(98 reviews)

Advanced level

Recommended experience

52 hours (approximately)
Flexible schedule
Learn at your own pace

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Assessments

4 quizzes

Course

Gain insight into a topic and learn the fundamentals

4.7

(98 reviews)

Advanced level

Recommended experience

52 hours (approximately)
Flexible schedule
Learn at your own pace

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This course is part of the TensorFlow 2 for Deep Learning Specialization
When you enroll in this course, you'll also be enrolled in this Specialization.
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There are 5 modules in this course

Probabilistic modelling is a powerful and principled approach that provides a framework in which to take account of uncertainty in the data. The TensorFlow Probability (TFP) library provides tools for developing probabilistic models that extend the capability of TensorFlow. In this first week of the course, you will learn how to use the Distribution objects in TFP, and the key methods to sample from and compute probabilities from these distributions. You will also learn how to make these distributions trainable. The programming assignment or this week will put these techniques into practice by implementing a Naive Bayes classifier on the Iris dataset.

What's included

14 videos4 readings1 quiz1 programming assignment1 discussion prompt8 ungraded labs1 plugin

Accounting for sources of uncertainty is an important aspect of the modelling process, especially for safety-critical applications such as medical diagnoses. Most standard deep learning models do not quantify the uncertainty in their predictions. In this week you will learn how to use probabilistic layers from TensorFlow Probability to develop deep learning models that are able to provide measures of uncertainty in both the data, and the model itself. In the programming assignment for this week, you will develop a Bayesian CNN for the MNIST and MNIST-C datasets.

What's included

11 videos1 quiz1 programming assignment7 ungraded labs

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. In this week you will learn how to use bijector objects from the TensorFlow Probability library to implement these transformations, and learn a complex transformed distribution from data. These models can be used to sample new data generations, as well as evaluate the likelihood of data examples. In the programming assignment for this week, you will develop a RealNVP normalising flow model for the LSUN bedroom dataset.

What's included

12 videos1 quiz1 programming assignment8 ungraded labs

Variational autoencoders are one of the most popular types of likelihood-based generative deep learning models. In the VAE algorithm two networks are jointly learned: an encoder or inference network, as well as a decoder or generative network. In this week you will learn how to implement the VAE using the TensorFlow Probability library. You will then use the trained networks to encode data examples into a compressed latent space, as well as generate new samples from the prior distribution and the decoder. In the programming assignment for this week, you will develop the variational autoencoder for an image dataset of celebrity faces.

What's included

10 videos1 quiz1 programming assignment8 ungraded labs

In this course you have learned how to 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. The Capstone Project brings many of these concepts together with a task to create a synthetic image dataset using normalising flows, and train a variational autoencoder on the dataset.

What's included

2 videos1 peer review1 ungraded lab1 plugin

Instructor

Instructor ratings
4.7 (31 ratings)
Dr Kevin Webster
Imperial College London
6 Courses42,551 learners

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