Warning: file_put_contents(aCache/aDaily/post/complexnetworkanalysis/--): Failed to open stream: No space left on device in /var/www/tgoop/post.php on line 50
Network Analysis Resources & Updates@complexnetworkanalysis P.995
COMPLEXNETWORKANALYSIS Telegram 995
🎞Tutorial: Graph Neural Networks in TensorFlow: A Practical Guide

💥Free recorded Tutorial by Sami Abu-el-Haija, Neslihan Bulut, Bryan Perozzi, and Anton Tsitsulin.

💥Graphs are general data structures that can represent information from a variety of domains (social, biomedical, online transactions, and many more). Graph Neural Networks (GNNs) are quickly becoming the de-facto Machine Learning models for learning from Graph data and hereby infer missing information, such as, predicting labels of nodes or imputing missing edges. The main goal of this tutorial is to help practitioners and researchers to implement GNNs in a TensorFlow setting. Specifically, the tutorial will be mostly hands-on, and will walk the audience through a process of running existing GNNs on heterogeneous graph data, and a tour of how to implement new GNN models. The hands-on portion of the tutorial will be based on TF-GNN, a new framework that we open-sourced.

📽 Watch

📲Channel: @ComplexNetworkAnalysis

#video #Tutorial #GNN #code #python #TensorFlow
👍4



tgoop.com/complexnetworkanalysis/995
Create:
Last Update:

🎞Tutorial: Graph Neural Networks in TensorFlow: A Practical Guide

💥Free recorded Tutorial by Sami Abu-el-Haija, Neslihan Bulut, Bryan Perozzi, and Anton Tsitsulin.

💥Graphs are general data structures that can represent information from a variety of domains (social, biomedical, online transactions, and many more). Graph Neural Networks (GNNs) are quickly becoming the de-facto Machine Learning models for learning from Graph data and hereby infer missing information, such as, predicting labels of nodes or imputing missing edges. The main goal of this tutorial is to help practitioners and researchers to implement GNNs in a TensorFlow setting. Specifically, the tutorial will be mostly hands-on, and will walk the audience through a process of running existing GNNs on heterogeneous graph data, and a tour of how to implement new GNN models. The hands-on portion of the tutorial will be based on TF-GNN, a new framework that we open-sourced.

📽 Watch

📲Channel: @ComplexNetworkAnalysis

#video #Tutorial #GNN #code #python #TensorFlow

BY Network Analysis Resources & Updates




Share with your friend now:
tgoop.com/complexnetworkanalysis/995

View MORE
Open in Telegram


Telegram News

Date: |

Click “Save” ; So far, more than a dozen different members have contributed to the group, posting voice notes of themselves screaming, yelling, groaning, and wailing in various pitches and rhythms. Channel login must contain 5-32 characters The group also hosted discussions on committing arson, Judge Hui said, including setting roadblocks on fire, hurling petrol bombs at police stations and teaching people to make such weapons. The conversation linked to arson went on for two to three months, Hui said. Concise
from us


Telegram Network Analysis Resources & Updates
FROM American