IVY: An Open-Source Tool To Make Deep Learning Code Compatible Across Frameworks – MarkTechPost

As ML aficionados, we’ve all come across interesting projects on GitHub only to discover that they are not in the framework we want and are familiar with. It can be tedious at times to reimplement the whole codebase in our framework, let alone deal with any errors that may arise throughout the process. It is a tedious chore that no one wants to do. Isn’t it good to have something that doesn’t care what framework you’re using? It will provide you with code in your desired framework, whether it is JAX, PyTorch, MXNet, Numpy, or TensorFlow. This is what IVY is attempting to do by unifying all ML frameworks.
The number of open-source machine learning projects has surged significantly over the past. This is evident by the fast-growing number of Github repositories using the keyword Deep learning. Because of different frameworks, code sharability has been considerably hampered. Aside from that, many frameworks become obsolete in comparison to newer frameworks. For software development where collaboration is vital, this is a significant bottleneck. As newer frameworks come into the scene framework-specific code quickly becomes obsolete, and transferring code across frameworks is akin to reinventing the wheel.
In today’s collaborative environment, it is vital to find a common level of abstraction. The development of IVY began with the language, with Python emerging as the clear choice we go further into Python frameworks, and we see that they all operate on the same fundamental principles. A tensor can be manipulated in a variety of ways, but the core tensor operations are constant across frameworks. As a result, IVY was formed as a basic abstraction layer.
Your code has an infinite shell life with IVY since it is no longer reliant on the framework in which it was developed. There will be no more wasting time porting code across frameworks.  If a new Python framework is released in the future, adding it to IVY will make all old code compatible with the new framework.
How to use it?
Getting started with IVY is very easy. Ivy can be installed from PyPi using
You can straightaway use IVY to train a neural network with the backend framework of your choice. IVY can serve 2 purposes:
It is an open-source program and anyone can join their journey towards ML framework unification. 
GitHub: https://github.com/unifyai/ivy
Paper: https://arxiv.org/pdf/2102.02886.pdf
Project: https://lets-unify.ai/ivy/
Marktechpost is a California based AI News Platform providing easy-to-consume, byte size updates in machine learning, deep learning, and data science research
© 2021 Marktechpost LLC. All Rights Reserved. Made with ❤️ in California

source
Connect with Chris Hood, a digital strategist that can help you with AI.

Leave a Reply

Your email address will not be published.

© 2022 AI Caosuo - Proudly powered by theme Octo