GraphNews
How to build a Semantic Layer for your organisation that can communicate with GPT: use the same data model on which GPT is trained - JSON-LD
Are you interested in learning how to build a Semantic Layer for your organisation that can communicate with GPT? If so, here's a valuable tip: use the same… | 87 comments on LinkedIn
Can we boost the confidence scores of LLM answers with the help of knowledge graphs? - DataScienceCentral.com
Irene Politkoff, Founder and Chief Product Evangelist at semantic modeling tools provider TopQuadrant, posted this description of the large language model (LLM) ChatGPT: “ChatGPT doesn’t access a database of facts to answer your questions. Instead, its responses are based on patterns that it saw in the training data. So ChatGPT is not always trustworthy.” Georgetown… Read More »Can we boost the confidence scores of LLM answers with the help of knowledge graphs?
Graph Neural Networks Go Forward-Forward
We present the Graph Forward-Forward (GFF) algorithm, an extension of the
Forward-Forward procedure to graphs, able to handle features distributed over a
graph's nodes. This allows training graph neural networks with forward passes
only, without backpropagation. Our method is agnostic to the message-passing
scheme, and provides a more biologically plausible learning scheme than
backpropagation, while also carrying computational advantages. With GFF, graph
neural networks are trained greedily layer by layer, using both positive and
negative samples. We run experiments on 11 standard graph property prediction
tasks, showing how GFF provides an effective alternative to backpropagation for
training graph neural networks. This shows in particular that this procedure is
remarkably efficient in spite of combining the per-layer training with the
locality of the processing in a GNN.
TigerGraph Introduces Powerful New Capabilities to Streamline the Adoption of Graph Technology
TigerGraph, provider of an advanced analytics and ML platform for connected data, is releasing the latest version (3.9) of TigerGraph Cloud, the native parallel graph database-as-a-service. TigerGraph Cloud 3.9 includes new security, advanced AI, and machine learning capabilities that meet the demands of its rapidly growing customer base and streamline the adoption, deployment, and management of the most scalable graph database platform, according to the company. The underlying parallel native graph database engine is also available for on-prem or self-managed cloud installation.