GraphAide: Advanced Graph-Assisted Query and Reasoning System
Curating knowledge from multiple siloed sources that contain both structured and unstructured data is a major challenge in many real-world applications. Pattern matching and querying represent fundamental tasks in modern data analytics that leverage this curated knowledge. The development of such ap...
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Zusammenfassung: | Curating knowledge from multiple siloed sources that contain both structured
and unstructured data is a major challenge in many real-world applications.
Pattern matching and querying represent fundamental tasks in modern data
analytics that leverage this curated knowledge. The development of such
applications necessitates overcoming several research challenges, including
data extraction, named entity recognition, data modeling, and designing query
interfaces. Moreover, the explainability of these functionalities is critical
for their broader adoption.
The emergence of Large Language Models (LLMs) has accelerated the development
lifecycle of new capabilities. Nonetheless, there is an ongoing need for
domain-specific tools tailored to user activities. The creation of digital
assistants has gained considerable traction in recent years, with LLMs offering
a promising avenue to develop such assistants utilizing domain-specific
knowledge and assumptions.
In this context, we introduce an advanced query and reasoning system,
GraphAide, which constructs a knowledge graph (KG) from diverse sources and
allows to query and reason over the resulting KG. GraphAide harnesses both the
KG and LLMs to rapidly develop domain-specific digital assistants. It
integrates design patterns from retrieval augmented generation (RAG) and the
semantic web to create an agentic LLM application. GraphAide underscores the
potential for streamlined and efficient development of specialized digital
assistants, thereby enhancing their applicability across various domains. |
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DOI: | 10.48550/arxiv.2411.08041 |