Difference between revisions of "DPS921/PyTorch: Convolutional Neural Networks"
(→Convolutional Neural Networks Using Pytorch) |
Novell Rasam (talk | contribs) |
||
Line 24: | Line 24: | ||
== Progress == | == Progress == | ||
+ | |||
+ | == Intro to Neural Networks == | ||
+ | Artificial intelligence is an umbrella term and in fact, has many levels and implementations. Machine learning is a subset of AI that focuses on these self-teaching algorithms. Deep learning is a further subset of machine learning where multi-layered artificial neural networks are employed to allow for more versatile, independent learning [1]. Machine learning algorithms that do not utilize deep learning would be less versatile in what they could learn and would need more hand-holding by programmers. A handy infographic is shown below: | ||
+ | |||
+ | [[File:Example.jpg]] | ||
Update 1: Friday, Nov 6, 2020 - Created a basic CNN in jupyterlab using the pytorch Framework. | Update 1: Friday, Nov 6, 2020 - Created a basic CNN in jupyterlab using the pytorch Framework. |
Revision as of 22:43, 27 November 2020
Contents
Convolutional Neural Networks Using Pytorch
The basic idea was to create a convolutional neural network using the python machine learning Framework PyTorch. The actual code will
be written in Jupyter Lab both for demonstration and implementation purposes. Furthermore, using the the torchvision dataset, the goal
was to show the training of the neural network, and show the classification of several images which have a single digit from 0 - 9.
A successful execution will show the correct determination of what number resides in that specific image. As part our of research,
We will explain in detail how an actual convolution neural network works at a fundamental level. Will we will both take a graphical
and mathematical approach to explaining the different parts of the neural network and how it comes together as whole. Furthermore,
we will briefly explain how it relates to parallel computing and how parallel computing plays a significant role in driving the
implementation of the neural network.
Group Members
1. Shervin Tafreshipour
2. Parsa Jalilifar
3. Novell Rasam
Progress
Intro to Neural Networks
Artificial intelligence is an umbrella term and in fact, has many levels and implementations. Machine learning is a subset of AI that focuses on these self-teaching algorithms. Deep learning is a further subset of machine learning where multi-layered artificial neural networks are employed to allow for more versatile, independent learning [1]. Machine learning algorithms that do not utilize deep learning would be less versatile in what they could learn and would need more hand-holding by programmers. A handy infographic is shown below:
Update 1: Friday, Nov 6, 2020 - Created a basic CNN in jupyterlab using the pytorch Framework.