Friday, May 9, 2025
News PouroverAI
Visit PourOver.AI
No Result
View All Result
  • Home
  • AI Tech
  • Business
  • Blockchain
  • Data Science & ML
  • Cloud & Programming
  • Automation
  • Front-Tech
  • Marketing
  • Home
  • AI Tech
  • Business
  • Blockchain
  • Data Science & ML
  • Cloud & Programming
  • Automation
  • Front-Tech
  • Marketing
News PouroverAI
No Result
View All Result

Google AI Releases TensorFlow GNN 1.0 (TF-GNN): A Production-Tested Library for Building GNNs at Scale

February 16, 2024
in Data Science & ML
Reading Time: 3 mins read
0 0
A A
0
Share on FacebookShare on Twitter


Graph Neural Networks (GNNs) are deep learning methods that operate on graphs and are used to perform inference on data described by graphs. Graphs have been used in mathematics and computer science for a long time and give solutions to complex problems by forming a network of nodes connected by edges in various irregular ways. Traditional ML algorithms allow only regular and uniform relations between input objects, struggle to handle complex relationships, and fail to understand objects and their connections which is crucial for many real-world data.

Google researchers added a new library in TensorFlow, called TensorFlow GNN 1.0 (TF-GNN) designed to build and train graph neural networks (GNNs) at scale within the TensorFlow ecosystem. This GNN library is capable of processing the structure and features of graphs, enabling predictions on individual nodes, entire graphs, or potential edges.

In TF-GNN, graphs are represented as GraphTensor, a collection of tensors under one class consisting of all the features of the graphs — nodes, properties of each node, edges, and weights or relations between nodes. The library supports heterogeneous graphs, accurately representing real-world scenarios where objects and their relationships come in distinct types. In the case of large datasets, the graph formed has a high number of nodes and complex connections. To train these networks efficiently, TF-GNN uses the subgraph sampling technique in which a small part of the graphs is trained with enough of the original data to compute the GNN result for the labeled node at its center and train the model.

The core GNN architecture is based on message-passing neural networks. In each round, nodes receive and process messages from their neighbors, iteratively refining their hidden states to reflect the aggregate information within their neighborhoods. TF-GNN supports training GNNs in both supervised and unsupervised manners. Supervised training minimizes a loss function based on labeled examples, while unsupervised training generates continuous representations (embeddings) of the graph structure for utilization in other ML systems.

TensorFlow GNN 1.0 addresses the need for a robust and scalable solution for building and training GNNs. Its key strengths lie in its ability to handle heterogeneous graphs, efficient subgraph sampling, flexible model building, and support for both supervised and unsupervised training. By seamlessly integrating with TensorFlow’s ecosystem, TF-GNN empowers researchers and developers to leverage the power of GNNs for various tasks involving complex network analysis and prediction.

Pragati Jhunjhunwala is a consulting intern at MarktechPost. She is currently pursuing her B.Tech from the Indian Institute of Technology(IIT), Kharagpur. She is a tech enthusiast and has a keen interest in the scope of software and data science applications. She is always reading about the developments in different field of AI and ML.

🚀 LLMWare Launches SLIMs: Small Specialized Function-Calling Models for Multi-Step Automation [Check out all the models]



Source link

Tags: BuildingGNNGNNsGoogleLibraryProductionTestedReleasesscaleTensorFlowTFGNN
Previous Post

Leader Spotlight: Localizing global products, with Ayan Basu

Next Post

Introducing Spectrum 2: Adobe’s revamped design system

Related Posts

AI Compared: Which Assistant Is the Best?
Data Science & ML

AI Compared: Which Assistant Is the Best?

June 10, 2024
5 Machine Learning Models Explained in 5 Minutes
Data Science & ML

5 Machine Learning Models Explained in 5 Minutes

June 7, 2024
Cohere Picks Enterprise AI Needs Over ‘Abstract Concepts Like AGI’
Data Science & ML

Cohere Picks Enterprise AI Needs Over ‘Abstract Concepts Like AGI’

June 7, 2024
How to Learn Data Analytics – Dataquest
Data Science & ML

How to Learn Data Analytics – Dataquest

June 6, 2024
Adobe Terms Of Service Update Privacy Concerns
Data Science & ML

Adobe Terms Of Service Update Privacy Concerns

June 6, 2024
Build RAG applications using Jina Embeddings v2 on Amazon SageMaker JumpStart
Data Science & ML

Build RAG applications using Jina Embeddings v2 on Amazon SageMaker JumpStart

June 6, 2024
Next Post
Introducing Spectrum 2: Adobe’s revamped design system

Introducing Spectrum 2: Adobe’s revamped design system

Code Llama 70B is now available in Amazon SageMaker JumpStart

Code Llama 70B is now available in Amazon SageMaker JumpStart

Freshservice’s Journey to Streamlining IT Operations

Freshservice’s Journey to Streamlining IT Operations

Leave a Reply Cancel reply

Your email address will not be published. Required fields are marked *

  • Trending
  • Comments
  • Latest
Is C.AI Down? Here Is What To Do Now

Is C.AI Down? Here Is What To Do Now

January 10, 2024
Porfo: Revolutionizing the Crypto Wallet Landscape

Porfo: Revolutionizing the Crypto Wallet Landscape

October 9, 2023
A Complete Guide to BERT with Code | by Bradney Smith | May, 2024

A Complete Guide to BERT with Code | by Bradney Smith | May, 2024

May 19, 2024
A faster, better way to prevent an AI chatbot from giving toxic responses | MIT News

A faster, better way to prevent an AI chatbot from giving toxic responses | MIT News

April 10, 2024
Part 1: ABAP RESTful Application Programming Model (RAP) – Introduction

Part 1: ABAP RESTful Application Programming Model (RAP) – Introduction

November 20, 2023
Saginaw HMI Enclosures and Suspension Arm Systems from AutomationDirect – Library.Automationdirect.com

Saginaw HMI Enclosures and Suspension Arm Systems from AutomationDirect – Library.Automationdirect.com

December 6, 2023
Can You Guess What Percentage Of Their Wealth The Rich Keep In Cash?

Can You Guess What Percentage Of Their Wealth The Rich Keep In Cash?

June 10, 2024
AI Compared: Which Assistant Is the Best?

AI Compared: Which Assistant Is the Best?

June 10, 2024
How insurance companies can use synthetic data to fight bias

How insurance companies can use synthetic data to fight bias

June 10, 2024
5 SLA metrics you should be monitoring

5 SLA metrics you should be monitoring

June 10, 2024
From Low-Level to High-Level Tasks: Scaling Fine-Tuning with the ANDROIDCONTROL Dataset

From Low-Level to High-Level Tasks: Scaling Fine-Tuning with the ANDROIDCONTROL Dataset

June 10, 2024
UGRO Capital: Targeting to hit milestone of Rs 20,000 cr loan book in 8-10 quarters: Shachindra Nath

UGRO Capital: Targeting to hit milestone of Rs 20,000 cr loan book in 8-10 quarters: Shachindra Nath

June 10, 2024
Facebook Twitter LinkedIn Pinterest RSS
News PouroverAI

The latest news and updates about the AI Technology and Latest Tech Updates around the world... PouroverAI keeps you in the loop.

CATEGORIES

  • AI Technology
  • Automation
  • Blockchain
  • Business
  • Cloud & Programming
  • Data Science & ML
  • Digital Marketing
  • Front-Tech
  • Uncategorized

SITEMAP

  • Disclaimer
  • Privacy Policy
  • DMCA
  • Cookie Privacy Policy
  • Terms and Conditions
  • Contact us

Copyright © 2023 PouroverAI News.
PouroverAI News

No Result
View All Result
  • Home
  • AI Tech
  • Business
  • Blockchain
  • Data Science & ML
  • Cloud & Programming
  • Automation
  • Front-Tech
  • Marketing

Copyright © 2023 PouroverAI News.
PouroverAI News

Welcome Back!

Login to your account below

Forgotten Password? Sign Up

Create New Account!

Fill the forms bellow to register

All fields are required. Log In

Retrieve your password

Please enter your username or email address to reset your password.

Log In