Most organizations recognize the transformative power of Generative AI but are struggling to confidently adopt solutions as they deal with issues such as hallucinations, security, and data bias. Emerging regulatory frameworks will demand safety, transparency, and explainability, especially for consumer-facing experiences. Combining Knowledge Graphs with LLMs creates trustworthy GenAI experiences that minimize risk and maximize relevancy, specificity, completeness, and transparency. Join us in this session to learn:
● How knowledge graphs and LLM can reduce hallucinations and data bias.
● Essential architectural patterns for building conversational experiences grounded by knowledge graphs.
● Advantages of knowledge graphs for retrieval augmented generation (RAG), including graph-native semantic search using vector indexing.
● Leveraging LLMs to accelerate knowledge graph construction, including schema development, entity extraction, and vector embedding. By including knowledge graphs in your GenAI strategy, you’ll have a robust, trustworthy approach for delivering the next generation of intelligent applications.
Data Science Solution Architect, Neo4j
THE CDOIQ SYMPOSIUM HAS BEEN SUPPORTED BY THE SYMPOSIUM SPONSORS, CHIEF DATA OFFICERS AND DATA LEADERS.
Welcome to the CDOIQ Symposium, where innovation meets data excellence! Our symposium sponsors play a crucial role in shaping the future of data and information quality. As champions of cutting-edge technologies, thought leadership, and industry advancements, these forward-thinking organizations contribute to a dynamic ecosystem dedicated to harnessing the power of data for transformative business outcomes. Join us in recognizing and celebrating the invaluable support of our sponsors, who drive the conversation and inspire breakthroughs in the rapidly evolving landscape of Chief Data and Information Quality. Together, we pave the way for a data-driven future that propels organizations to unprecedented heights of success.
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