Dataconomy
  • News
    • Artificial Intelligence
    • Cybersecurity
    • DeFi & Blockchain
    • Finance
    • Gaming
    • Startups
    • Tech
  • Industry
  • Research
  • Resources
    • Articles
    • Case Studies
    • Glossary
    • Whitepapers
  • Newsletter
  • + More
    • Conversations
    • Events
    • About
      • About
      • Contact
      • Imprint
      • Legal & Privacy
      • Partner With Us
Subscribe
No Result
View All Result
  • AI
  • Tech
  • Cybersecurity
  • Finance
  • DeFi & Blockchain
  • Startups
  • Gaming
Dataconomy
  • News
    • Artificial Intelligence
    • Cybersecurity
    • DeFi & Blockchain
    • Finance
    • Gaming
    • Startups
    • Tech
  • Industry
  • Research
  • Resources
    • Articles
    • Case Studies
    • Glossary
    • Whitepapers
  • Newsletter
  • + More
    • Conversations
    • Events
    • About
      • About
      • Contact
      • Imprint
      • Legal & Privacy
      • Partner With Us
Subscribe
No Result
View All Result
Dataconomy
No Result
View All Result

Google releases TF-GNN for creating graph neural networks in TensorFlow

byKyle Wiggers
November 19, 2021
in Artificial Intelligence, Contributors
Home News Artificial Intelligence
Share on FacebookShare on TwitterShare on LinkedInShare on WhatsAppShare on e-mail

Google today released TensorFlow Graph Neural Networks (TF-GNN) in alpha, a library designed to make it easier to work with graph-structured data using TensorFlow, its machine learning framework. Used in production at Google for spam and anomaly detection, traffic estimation, and YouTube content labeling, Google says that TF-GNN is designed to “encourage collaborations with researchers in industry.”

Graphs are a set of objects, places, or people and the connections between them. A graph represents the relations (edges) between a collection of entities (nodes or vertices), all of which can store data. Directionality can be ascribed to the edges to describe information, traffic flow, and more.

More often than not, the data in machine learning problems is structured or relational and thus can be described with a graph. Fundamental research on GNNs is decades old, but recent advances have led to great achievements in many domains, like modeling the transition of glass from a liquid to a solid and predicting pedestrian, cyclist, and driver behavior on the road.TF-GNN

Stay Ahead of the Curve!

Don't miss out on the latest insights, trends, and analysis in the world of data, technology, and startups. Subscribe to our newsletter and get exclusive content delivered straight to your inbox.

Above: Graphs can model the relationships between many different types of data, including web pages (left), social connections (center), or molecules (right).Image Credit: Google

Indeed, GNNs can be used to answer questions about multiple characteristics of graphs. By working at the graph level, they can try to predict aspects of the entire graph, for example identifying the presence of certain “shapes” like circles in a graph that might represent close social relationships. GNNs can also be used on node-level tasks to classify the nodes of a graph or at the edge level to discover connections between entities.

TensorFlow Graph Neural Networks: TF-GNN

TF-GNN provides building blocks for implementing GNN models in TensorFlow. Beyond the modeling APIs, the library also delivers tooling around the task of working with graph data, including a data-handling pipeline and example models.

Also included with TF-GNN is an API to create GNN models that can be composed with other types of AI models. In addition to this, TF-GNN ships with a schema to declare the topology of a graph (and tools to validate it), helping to describe the shape of training data.

“Graphs are all around us, in the real world and in our engineered systems … In particular, given the myriad types of data at Google, our library was designed with heterogeneous graphs in mind,” Google’s Sibon Li, Jan Pfeifer, Bryan Perozzi, and Douglas Yarrington wrote in the blog post introducing TF-GNN.

TF-GNN adds to Google’s growing collection of TensorFlow libraries, which spans TensorFlow Privacy, TensorFlow Federated, and TensorFlow.Text. More recently, the company open-sourced TensorFlow Similarity, which trains models that search for related items — for example, finding similar-looking clothes and identifying currently playing songs.

This article originally appeared on VentureBeat and is reproduced with permission.

Tags: AIartificial intelligenceGNNGooglegraph neural networksMachine LearningTensorFlow

Related Posts

Your next pair of Warby Parkers might secretly house a Google AI

Your next pair of Warby Parkers might secretly house a Google AI

May 21, 2025
Can Google’s tiny Gemma 3n AI really run smoothly on any device?

Can Google’s tiny Gemma 3n AI really run smoothly on any device?

May 21, 2025
Apple’s AI catch-up plan now seems to rely heavily on third-party devs

Apple’s AI catch-up plan now seems to rely heavily on third-party devs

May 21, 2025
Amazon’s new AI tool could deepen your connection to artists

Amazon’s new AI tool could deepen your connection to artists

May 21, 2025
Google brings NotebookLM to mobile with new standalone apps

Google brings NotebookLM to mobile with new standalone apps

May 20, 2025
Microsoft now lets you build a custom AI army with new Copilot Tuning

Microsoft now lets you build a custom AI army with new Copilot Tuning

May 20, 2025
Please login to join discussion

LATEST NEWS

Is 16GB of VRAM for just $349 AMD’s new gaming sweet spot?

Your next pair of Warby Parkers might secretly house a Google AI

Can Google’s tiny Gemma 3n AI really run smoothly on any device?

Google I/O 2025 in a nutshell

How did Epic Games finally win its long App Store battle with Apple?

Apple’s AI catch-up plan now seems to rely heavily on third-party devs

Dataconomy

COPYRIGHT © DATACONOMY MEDIA GMBH, ALL RIGHTS RESERVED.

  • About
  • Imprint
  • Contact
  • Legal & Privacy

Follow Us

  • News
    • Artificial Intelligence
    • Cybersecurity
    • DeFi & Blockchain
    • Finance
    • Gaming
    • Startups
    • Tech
  • Industry
  • Research
  • Resources
    • Articles
    • Case Studies
    • Glossary
    • Whitepapers
  • Newsletter
  • + More
    • Conversations
    • Events
    • About
      • About
      • Contact
      • Imprint
      • Legal & Privacy
      • Partner With Us
No Result
View All Result
Subscribe

This website uses cookies. By continuing to use this website you are giving consent to cookies being used. Visit our Privacy Policy.