Found 322 bookmarks
Custom sorting
Tree-based RAG with RAPTOR and how knowledge graphs can come to the rescue to enhance answer quality.
Tree-based RAG with RAPTOR and how knowledge graphs can come to the rescue to enhance answer quality.
Long-Context models, such as Google Gemini Pro 1.5 or Large World Model, are probably changing the way we think about RAG (retrieval-augmented generation)… | 12 comments on LinkedIn
, how knowledge graphs can come to the rescue to enhance answer quality.
·linkedin.com·
Tree-based RAG with RAPTOR and how knowledge graphs can come to the rescue to enhance answer quality.
Jensen Huang in his keynote at NVIDIA GTC24 calls out three sources of data to integrate with LLMs: 1) vector databases, 2) ERP / CRM and 3) knowledge graphs
Jensen Huang in his keynote at NVIDIA GTC24 calls out three sources of data to integrate with LLMs: 1) vector databases, 2) ERP / CRM and 3) knowledge graphs
Wow, in Jensen Huang (CEO) his keynote at NVIDIA #GTC24, he calls out three sources of data to integrate with LLMs: 1) vector databases, 2) ERP / CRM and 3)…
Jensen Huang (CEO) his keynote at NVIDIA hashtag#GTC24, he calls out three sources of data to integrate with LLMs: 1) vector databases, 2) ERP / CRM and 3) *knowledge graphs*
·linkedin.com·
Jensen Huang in his keynote at NVIDIA GTC24 calls out three sources of data to integrate with LLMs: 1) vector databases, 2) ERP / CRM and 3) knowledge graphs
Kurt Cagle chatbot on Knowledge Graphs, Ontology, GenAI and Data
Kurt Cagle chatbot on Knowledge Graphs, Ontology, GenAI and Data
I want to thank Jay (JieBing) Yu, PhD for his hard work in creating a Mini-Me (https://lnkd.in/g6TR543j), a virtual assistant built on his fantastic LLM work…
Kurt is one of my favorite writers, a seasoned practitioner and deep thinker in the areas of Knowledge Graphs, Ontology, GenAI and Data
·linkedin.com·
Kurt Cagle chatbot on Knowledge Graphs, Ontology, GenAI and Data
Knowledge Graph Large Language Model (KG-LLM) for Link Prediction
Knowledge Graph Large Language Model (KG-LLM) for Link Prediction
The task of predicting multiple links within knowledge graphs (KGs) stands as a challenge in the field of knowledge graph analysis, a challenge increasingly resolvable due to advancements in natural language processing (NLP) and KG embedding techniques. This paper introduces a novel methodology, the Knowledge Graph Large Language Model Framework (KG-LLM), which leverages pivotal NLP paradigms, including chain-of-thought (CoT) prompting and in-context learning (ICL), to enhance multi-hop link prediction in KGs. By converting the KG to a CoT prompt, our framework is designed to discern and learn the latent representations of entities and their interrelations. To show the efficacy of the KG-LLM Framework, we fine-tune three leading Large Language Models (LLMs) within this framework, employing both non-ICL and ICL tasks for a comprehensive evaluation. Further, we explore the framework's potential to provide LLMs with zero-shot capabilities for handling previously unseen prompts. Our experimental findings discover that integrating ICL and CoT not only augments the performance of our approach but also significantly boosts the models' generalization capacity, thereby ensuring more precise predictions in unfamiliar scenarios.
·arxiv.org·
Knowledge Graph Large Language Model (KG-LLM) for Link Prediction
DeepOnto: A Python Package for Ontology Engineering with Deep Learning
DeepOnto: A Python Package for Ontology Engineering with Deep Learning
Integrating deep learning techniques, particularly language models (LMs), with knowledge representation techniques like ontologies has raised widespread attention, urging the need of a platform that supports both paradigms. Although packages such as OWL API and Jena offer robust support for basic ontology processing features, they lack the capability to transform various types of information within ontologies into formats suitable for downstream deep learning-based applications. Moreover, widely-used ontology APIs are primarily Java-based while deep learning frameworks like PyTorch and Tensorflow are mainly for Python programming. To address the needs, we present DeepOnto, a Python package designed for ontology engineering with deep learning. The package encompasses a core ontology processing module founded on the widely-recognised and reliable OWL API, encapsulating its fundamental features in a more "Pythonic" manner and extending its capabilities to incorporate other essential components including reasoning, verbalisation, normalisation, taxonomy, projection, and more. Building on this module, DeepOnto offers a suite of tools, resources, and algorithms that support various ontology engineering tasks, such as ontology alignment and completion, by harnessing deep learning methods, primarily pre-trained LMs. In this paper, we also demonstrate the practical utility of DeepOnto through two use-cases: the Digital Health Coaching in Samsung Research UK and the Bio-ML track of the Ontology Alignment Evaluation Initiative (OAEI).
·arxiv.org·
DeepOnto: A Python Package for Ontology Engineering with Deep Learning
Enhancing RAG-based application accuracy by constructing and leveraging knowledge graphs
Enhancing RAG-based application accuracy by constructing and leveraging knowledge graphs
A practical guide to constructing and retrieving information from knowledge graphs in RAG applications with Neo4j and LangChain Editor's Note: the following is a guest blog post from Tomaz Bratanic, who focuses on Graph ML and GenAI research at Neo4j. Neo4j is a graph database and analytics company which helps
·blog.langchain.dev·
Enhancing RAG-based application accuracy by constructing and leveraging knowledge graphs
Knowledge, Data and LLMs
Knowledge, Data and LLMs
Today is a pretty special day. In some sense, this is the day I’ve been waiting for all my life. The day that we figure out how to make…
·medium.com·
Knowledge, Data and LLMs
Tony Seale Knowledge Graph Chatbot
Tony Seale Knowledge Graph Chatbot
I am thrilled to introduce a new AI Study Guide (https://lnkd.in/g4rPZVHW) dedicated to Tony Seale, another of my favorite authors, thought leaders, and…
Knowledge Graph
·linkedin.com·
Tony Seale Knowledge Graph Chatbot