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Unleashing the Synergy of LLMs and Knowledge Graphs

Webinar

Large language models (LLMs) can be incredibly transformative for surfacing company data & insights. However, the path to enriching a company's knowledge base with LLMs remains uncharted.

This webinar explores the interaction between LLMs and Knowledge Graphs (KG). We first demonstrate how LLMs can transform unstructured text into a well-formed Knowledge Graph by extracting entities and relationships from a dataset. We discuss the added value of storing data within a KG and how companies can leverage them.

Next, we delve into how LLM applications can interact seamlessly with the structured knowledge within a knowledge graph. In this session, with the help of a business use case, we explore how this knowledge graph empowers LLM applications with enhanced capabilities and intelligent insights. 

In the practical part of the session, we will present a business use case for building an LLM-based Question answering system using GPT-3.5-turbo and prompting it with a knowledge graph.

This webinar promises to illuminate how LLM applications can interact intelligently with structured knowledge for semantic understanding and reasoning.

Key Takeaways:

  • How LLMs can unlock the potential of building organizational knowledge graphs.
  • How knowledge graphs can further guide LLMs’ reasoning capabilities.
  • How to use pretrained models for translating natural language queries to SPARQL queries on top of company knowledge graphs

Additional Resources

Access the demo notebook

Slides

[COURSE] Introduction to Network Analysis in Python

[TUTORIAL] Social Network Analysis in Python

Summary

Large language models (LLMs) and knowledge graphs are revolutionizing the ability of organizations to leverage data and derive insights. The potential of large language models to act as an assistant, capable of interfacing with diverse data sets, is significant. However, using LLMs effectively requires understanding the relationships between different data sets, a task for which knowledge graphs are particularly suited. Knowledge graphs, which are formal representations of entities and their connections, can connect the gap between structured and unstructured data, providing a semantic layer that enhances data interpretation and retrieval. This collaboration between LLMs and knowledge graphs can unlock new business value across various industries, enabling quicker and more agile decision-making processes. The discussion elaborates on the differences between relational databases and knowledge graphs, highlighting the latter's ability to maintain context and semantic relationships that are often lost in traditional databases. The speakers also touch on the challenges of creating and maintaining knowledge graphs, such as the need for domain expertise and the difficulty of automating their creation from unstructured data. Notably, large language models can assist in generating knowledge graphs by extracting information from unstructured sources, thus accelerating the process. As businesses increasingly adopt semantic technologies, the integration of LLMs and knowledge graphs promises to improve information retrieval, enhance user interaction, and improve organizational efficiency.

Key Takeaways:

  • Knowledge graphs provide a semantic framework that enhances the understanding of data relationships.
  • Large language models can automate the extraction of information, aiding in the creation of knowledge graphs.
  • The collaboration between LLMs and knowledge graphs allows for efficient data retrieval and decision-making.
  • Knowledge graphs are more flexible and can be updated over time, unlike rigid relational databases.
  • Challenges remain in creating knowledge graphs, including the need for domain expertise and handling unstructured data.

Deep Dives

Understanding Knowledge Graphs

Knowledge ...
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graphs are structured representations of entities and their connections, serving as a link between structured and unstructured data. Unlike relational databases that organize data through predetermined relationships, knowledge graphs allow for a more flexible representation that captures semantic relationships and context. This flexibility is key when answering complex business questions that require an understanding of the connections between various data points. As Dr. Sumayya Kobar explains, "The significance of knowledge graphs lies in their ability to provide a deep understanding of data context, enabling businesses to remain agile and responsive." This semantic layer is particularly valuable in industries where understanding the nuances of data can lead to competitive advantages.

Role of Large Language Models

Large language models (LLMs) are advanced AI algorithms trained on vast datasets, capable of performing tasks such as sentiment analysis, classification, and information extraction. In the context of knowledge graphs, LLMs can automate the extraction of information from unstructured data sources, facilitating the creation of knowledge graphs. This capability is particularly useful for businesses looking to integrate external data into their decision-making processes. As Gert De Kater mentioned, "Large language models can extract information from knowledge graphs and unstructured data, providing a more efficient way to retrieve known answers without the computational overhead of inference."

Collaboration Between LLMs and Knowledge Graphs

The integration of large language models and knowledge graphs creates a powerful collaboration that enhances data retrieval and decision-making. LLMs can leverage the structured information in knowledge graphs to answer complex queries with precision and accuracy. This combination allows businesses to provide more customized and responsive services to their users, as demonstrated in various industry applications. The complementarity between LLMs and knowledge graphs is evident in their ability to provide both the reasoning aspect of LLMs and the efficiency and consistency of knowledge graphs. This synergy is a key driver for organizations seeking to leverage the full potential of their data assets.

Challenges and Considerations

Despite their potential, knowledge graphs present several challenges, including the need for domain expertise and the difficulty of automating their creation from unstructured data. The process of constructing a knowledge graph requires a deep understanding of the domain and the ability to translate unstructured data into a structured format. Additionally, while LLMs can assist in information extraction, the accuracy and reliability of the resulting knowledge graph depend on the quality of the underlying data and the algorithms used. Businesses must also consider the scalability and maintenance of knowledge graphs, ensuring they can be updated and enriched over time to reflect new insights and data.

Gert De Geyter Headshot
Gert De Geyter

Machine Learning Lead at Deloitte

Somayeh Koohbor Headshot
Somayeh Koohbor

Senior Data Scientist at Deloitte

Dr. Somayeh Koohbor is a senior Data Scientist in Deloitte US consulting department
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