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DTSTART;TZID=Europe/Vienna:20250716T150000
DTEND;TZID=Europe/Vienna:20250716T160000
DTSTAMP:20260527T031431
CREATED:20250626T110010Z
LAST-MODIFIED:20260225T105804Z
UID:239612-1752678000-1752681600@graphwise.ai
SUMMARY:Graph RAG - Why Your RAG Needs a Graph
DESCRIPTION:On-Demand WEBINAR \n			\n				\n				\n				\n				\n				Graph RAG – Why Your RAG Needs a Graph\n			\n				\n				\n				\n				\n				Unifying Structured and Unstructured Data in Graph to Give Context \n			\n				\n				\n				\n				\n				\n					\n					\n						\n						July 16\, 2025 \n					\n				\n			\n			\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n					\n\n\n\n\n	\n		\n		\n      		\n	            \n                \n                    \n\n                    \n                    \n                                                \n                        \n                                                                                                                                    \n                                                                                                                        \n                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                    \n                                                                                                                    \n                                                                                                                                                                                    \n                                                                    \n                                                                                                                                                                                                                                                                                                                                                                                                                            \n                                                                                                                                    \n                                                            \n                                                            \n                                                                Andreas Blumauer                                                                                                                                                                                                \n                                                                                                                                Senior VP Growth\, Graphwise \n                                                                                                                            \n                                                                                                                                                                                                                        \n                                                                                                                                                                                                                                    \n                                                                            \n                                                                                                                                                                                    \n                        \n                                            \n                    \n                    \n                \n                            \n        \n      		\n		\n		\n		\n	\n	\n\n				\n			\n				\n				\n				\n				\n				Fill out the form to watch this webinar\n			\n				\n				\n				\n				\n				\n			\n				\n				\n			\n		\n			\n			\n				\n				\n				\n				\n			\n				\n				\n			\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				Chunk Is Dead\, Long Live the Graph RAG! \nAs AI applications increasingly rely on large language models (LLMs) for search\, summarization\, and decision support\, one major limitation persists: traditional Retrieval-Augmented Generation (RAG) systems often treat knowledge as disconnected chunks of text\, missing the deeper context behind relationships. But what if we could connect the dots more intelligently? \nSmarter Retrieval for Smarter AI \nIn this on-demand webinar\, we introduce a graph-based approach to RAG that leverages the power of knowledge graphs to represent meaning more holistically. By structuring information as a web of semantic relationships\, this method enables LLMs to retrieve and generate content that is not only more accurate but also more contextually aware. \nWatch Márcia R. Ferreira and Astrid Krickl\, Data and Knowledge Engineers at Graphwise\, as they walk through the Graphwise Graph RAG framework—an innovative architecture that enhances semantic retrieval using graph-connected data. Through real-world use cases and the Graphwise platform\, they’ll demonstrate how this approach bridges gaps left by chunk-based methods and discuss practical implementation challenges often overlooked in AI pipelines. \n			\n			\n				\n				\n				\n				\n			\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				Discover these key takeaways:\n			\n				\n				\n				\n				\n				\n					\n					\n						\n						Knowledge Graphs are Everywhere: Fortune 500 companies are using them\, are you? \n					\n				\n			\n				\n				\n				\n				\n				\n					\n					\n						\n						Graph vs Knowledge Graph: Learn what differentiates a Knowledge Graph from a regular Graph. \n					\n				\n			\n				\n				\n				\n				\n				\n					\n					\n						\n						Enterprise Structure: Find out the secret recipe for Knowledge Graphs and LLMs in an enterprise.  \n					\n				\n			\n				\n				\n				\n				\n				\n					\n					\n						\n						Vector and Graph: What are the differences and benefits of vector-based RAG and a graph-based RAG approach? \n					\n				\n			\n				\n				\n				\n				\n				\n					\n					\n						\n						And much more!\n \n					\n				\n			\n			\n				\n				\n				\n				\n			\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				Whether you’re designing search systems\, building intelligent assistants\, or architecting AI solutions\, this webinar will give you a fresh perspective on integrating structured knowledge into modern workflows.\n			\n			\n				\n				\n				\n				\n			\n				\n				\n				\n				\n				\n				\n				WATCH NOW\n			\n			\n				\n				\n				\n				\n			\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n                \n                    \n\n                    \n                    \n                                                                                    Speaker\n                                                                            \n                        \n                                                                                                                                    \n                                                                                                                        \n                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                    \n                                                                                                                    \n                                                                                                                                                                                    \n                                                                    \n                                                                                                                                                                                                                                                                                                                                                                                                                            \n                                                                                                                                    \n                                                            \n                                                            \n                                                                Andreas Blumauer                                                                Senior VP Growth\, Graphwise                                                                                                                                          \n                                                                                                                                                    Senior Vice President of Growth at Graphwise. As the founder of Semantic Web Company (SWC) and creator of the PoolParty Semantic Platform\, Andreas has been a driving force in advancing semantic AI\, knowledge graph technologies\, and RAG solutions. \nWith more than 20 years of experience\, he has partnered with over 200 organizations worldwide to design and implement cutting-edge AI\, semantic search\, and knowledge graph solutions — empowering enterprises to unlock the full potential of their data through intelligent integration\, modeling\, and reasoning. In recent years\, his focus has expanded to developing AI-powered ESG solutions that help companies and investors make more informed\, sustainable decisions.
URL:https://graphwise.ai/event/webinar-graph-rag-why-your-rag-needs-a-graph/
LOCATION:Online
CATEGORIES:On-demand Webinar
ATTACH;FMTTYPE=image/png:https://graphwise.ai/wp-content/uploads/2025/07/WebFeatImg_WhyGraphNeedRag_16172025.png
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BEGIN:VEVENT
DTSTART;TZID=Europe/Vienna:20250724T200000
DTEND;TZID=Europe/Vienna:20250724T210000
DTSTAMP:20260527T031431
CREATED:20250618T144119Z
LAST-MODIFIED:20260219T120703Z
UID:239479-1753387200-1753390800@graphwise.ai
SUMMARY:Is Your Data Ready for AI?
DESCRIPTION:On-Demand WEBINAR \n			\n				\n				\n				\n				\n				Is Your Data Ready for AI?\n			\n				\n				\n				\n				\n				How to Build a Solid Foundation \n			\n				\n				\n				\n				\n				\n				\n				\n					\n\n\n\n\n	\n		\n		\n      		\n	            \n                \n                    \n\n                    \n                    \n                                                \n                        \n                                                                                                                                    \n                                                                                                                        \n                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                                    \n                                                                                                                    \n                                                                                                                                                                                    \n                                                                    \n                                                                                                                                                                                                                                                                                                                                                                                                                            \n                                                                                                                                    \n                                                            \n                                                            \n                                                                Andreas Blumauer                                                                                                                                                                                                \n                                                                                                                                Senior VP Growth\, Graphwise \n                                                                                                                            \n                                                                                                                                                                                                                        \n                                                                                                                                                                                                                                    \n                                                                            \n                                                                                                                                                                                    \n                        \n                                            \n                    \n                    \n                \n                            \n        \n      		\n		\n		\n		\n	\n	\n\n				\n			\n			\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				Fill out the form to watch this webinar\n			\n				\n				\n				\n				\n				\n						\n						\n			\n			\n				\n				\n				\n				\n			\n				\n				\n			\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				\n				As AI adoption continues to accelerate\, the pressure is on IT leaders and data teams to deliver clean\, reliable and scalable data pipelines. At the same time\, building an AI-ready data foundation requires more than just cleaning up tables – it takes the right architecture\, governance and tools. \nWatch this special roundtable webinar that explores proven best practices\, modern architecture strategies\, and new technologies to optimize your data for successful AI deployment. \nThis expert panel dives into: \n\nThe key technical requirements for AI-ready data\nBest practices for data quality\, integration\, and lineage\nArchitectures that support scale: from data lakes to real-time pipelines\nTools and platforms to streamline AI data prep: from ingestion to semantic enrichment\nHow to align infrastructure with business-driven AI initiatives\n\nWhether you’re managing infrastructure\, pipelines\, or platforms\, this session will give you the practical guidance to build a future-proof data environment for AI. \n			\n			\n				\n				\n				\n				\n			\n				\n				\n				\n				\n				\n				\n				Watch Now
URL:https://graphwise.ai/event/is-your-data-ready-for-ai-dbta-2025/
CATEGORIES:On-demand Webinar
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