The future of AI is getting a major boost from knowledge graph technology. Think of it like giving AI a dose of “common sense” through structured, up-to-date insights. Knowledge graphs can supercharge AI tools like Large Language Models, machine learning, and artificial neural networks (deep learning). So, knowledge graphs are a way to make AI smarter in context, which is a game changer for businesses, especially when optimizing supply chains. What’s more, it equips AI with factual-based “guardrails” to cut down on errors and hallucinations as well as makes its decisions more trustworthy. With knowledge graphs in the mix, AI becomes more accurate, transparent, and explainable.
In this article, I’ll first highlight the basic components of a knowledge graph and its capabilities. In fact, knowledge graphs are not new. They have already had a major effect on internet search methodologies and how personal assistants work such as Alexa and Siri. Next, I’ll explain how AI developers can leverage knowledge graphs to create contextual-based AI applications. Additionally, I’ll identify the new capabilities that contextual AI brings to businesses and supply chains.
“Deep learning presents entirely new opportunities for training neural commonsense models using a massive amount of raw text, fused with symbolic commonsense knowledge graphs.”
Yejin Choi
What Is a Knowledge Graph, and How Has This Technology Made the Internet Smarter?

A knowledge graph is a graphics-based data structure that brings a wealth of diverse information within an interconnected network. Specifically, these networks are where entities such as individuals, places, and objects are nodes linked by edges representing their mutual relationships. Indeed, knowledge graphs have already transformed search engines. Specifically, knowledge graphs provide search engines smarter information retrieval that goes beyond keyword matching to deliver precise, relevant content. See below, for more details on what a knowledge graph is and how it is having a major impact on internet search results and personal assistant chatbots.
1. So, What Is A Knowledge Graph Exactly?
Let’s first start off with a definition.
“Knowledge graphs are defined as graphs of data that accumulate and convey knowledge of the real world. The nodes in knowledge graphs represent the entities of interest, and the edges represent the relations between the entities.”
INDIAai
This definition aptly highlights that a knowledge graph is inherently dynamic rather than static. Knowledge graphs are characterized by their flexibility and robustness, which stem from two main features. Firstly, they are explicitly designed for continual knowledge accumulation. Secondly, they offer a wide application range by being constructed to impart knowledge rather than simply store data. At its core, a knowledge graph comprises three key elements. These include:
The Components of a Knowledge Graph
- Nodes: These are real-world entities that can be objects, people, events, situations, or abstract concepts.
- Edges: These are the links that connect the nodes.
- Labels: These are the attributes that define the relationships between the nodes and reasoning rules on edges.

2. How Knowledge Graphs Have Made The Internet Smarter.
In particular, academic communities have used knowledge graphs for years, but it was the birth of the internet where this technology started to become very useful. This is because one of the main functions of the internet is information retrieval, and this is something that knowledge graph tech does well. With the introduction of the Google Knowledge Graph in 2012, both academic and business communities began to take great interest in this technology and its use began to expand.
As the use of knowledge graph technology has expanded, it has become even more useful. For instance, the technology has increased in its capability to gather data from various data sources as well as improve the efficiency of storing graphs. Further, with the use of natural language processing (NLP) it has a better capability to describe and use context in retrieving results. This is evident where voice-based chatbots such as Amazon Alexa, Google Assistant, and Apple Siri leverage knowledge graphs to help answer questions.
Additionally, we are seeing more uses of knowledge graphs in visual displays such as seen with Google search results panels. Here, the search results not only display links to web sites, but also detailed factual panels related to the search query. See below, for an example of a Google search result knowledge panel. Lastly, the use of knowledge graphs have expanded their use into business such as in the creation of Know Your Customer (KYC) guidelines. With this, more businesses are starting to use knowledge graphs in support of data analytics. In fact, Gartner expects that nearly 80 percent of all data and analytics innovation will include knowledge graphs by 2025.

For more discussion on knowledge graphs and its history, see Altexsoft’s Knowledge Graphs: The Essential Guide.
Moving Toward Knowledge Graph AI: 4 Ways A Knowledge Graph Can Help AI Be More Discerning, Contextual, and Trustworthy.
Knowledge graphs are the perfect complement to AI’s Large Language Models (LLM). This is because knowledge graphs shore up LLM’s greatest weaknesses. Namely, knowledge graphs help AI to be more accurate, transparent, and explainable. For instance, AI can be less susceptible to hallucinations as knowledge graphs act as guardrails to help keep AI from providing answers that do not line up with the facts. Another thing knowledge graphs do for AI is help to explain its answers instead of just being a “black box”. This transparency and explainability helps us to better trust LLM responses.
So, it is becoming apparent that we are moving toward a more knowledgeable AI. As a result, this provides incredible capabilities for business enterprises across all industries and use cases. To further detail, below are four ways that knowledge graph tech can enhance LLM AI apps, and vice versa, to drive business success.
The Four Synergisms of Knowledge Graphs and LLM AI
- Knowledge Graph Tech Links Enterprise Data Together to Make LLM’s More Contextually Aware.
- Keep LLMs Up-To-Date With the Latest Information Using Knowledge Graphs.
- Knowledge Graphs Enables LLMs to be Trustworthy by Aligning with Corporate Culture, Goals, and Wisdom.
- LLMs Can Rapidly Seed Knowledge Graph Development for Smarter Applications.
For a more detail explanation to include examples and advantages of Knowledge Graph and LLM AI Synergisms, see my article, The Many Ways Knowledge Graph Tech Enables Enterprise LLM AI Apps To Be Smarter, More Accurate, And Reliable.
What New Capabilities Does Contextual AI Offer Businesses?
Indeed, knowledge graphs make AI much more valuable to business operations and planning. AI to include LLMs using knowledge graphs now have new capabilities to be more than personal assistants or to augment internet searches. In fact, Knowledge Graph AI opens up a wide range of possibilities to businesses. To summarize, below are the powerful capabilities that knowledge graph tech brings to AI:
- Fact Verification. AI is more trustworthy, delivering results that are fact checked.
- Superior Contextual Understanding. AI can put data in context via linking and semantic metadata.
- Fact Ranking. Moreover, AI can prioritize results by ranking them against a structured knowledge graph.
- Linking Related Entities. With Contextual AI, it provides more depth, helping to discover additional facts as well as provide better, explainable insights.
- Contextually Linking Data From Disparate Data Sources. Lastly, AI can better answer multi-hop questions across many different functional domains and data types.
For more discussion on the capabilities that knowledge graphs bring to AI, see GLASP’s The Power of Data, Compute, and Knowledge Graphs in the AI Era. Also, see WiseCube capabilities where they are leveraging knowledge graphs and Large Language Model (LLM) AI to offer research intelligence services for biomedical research organizations.
Conclusion.
So with the use of knowledge graphs, AI software such as Large Language Models (LLM), machine learning, and artificial neural networks (deep learning) are able to become more contextually aware. Indeed, this contextual-based AI is opening up unlimited possibilities for businesses, and in particular, supply chains. As a result, AI can now have factual-based “guardrails” in place to minimize hallucinations and enable us to better trust its results. As a result, AI coupled with knowledge graphs are more accurate, transparent, and explainable.
More References.
Below are additional references on the use of knowledge graphs and AI.
- Technical Overview of Knowledge Graphs: LeewayHertz’s UNDERSTANDING KNOWLEDGE GRAPHS: A KEY TO EFFECTIVE DATA GOVERNANCE.
- Overview of Knowledge Graph Benefits Using a Simple Retail Example: Semantic Art’s article, Data-Centric Approach to Managing Customer Data.
- LLMs and Knowledge Graphs: Daniel McCoy’s From Knowledge Graphs to Knowledge Flows.
- Scientific Review of AI, Intuitive Reasoning, and Knowledge: Yejin Choi’s paper, The Curious Case of Commonsense Intelligence.
- Achieving Data Centricity Leveraging Data-Intensive Tech like AI and Knowledge Graphs. See my article, Being A Data Centric Business: It’s Going Beyond The Frenzy Of More Big Apps And High Tech
Need help with an innovative supply chain solution that leverages emerging information technologies? I’m Randy McClure, and I’ve spent many years helping logistics organizations to make the most of new information technologies. As a supply chain tech advisor, I’ve implemented hundreds of successful projects across all transportation modes, working with the data of thousands of shippers, carriers, and 3rd party logistics (3PL) providers. I specialize in new strategies, proof-of-concepts and operational pilot projects using emerging technologies and methodologies. If you’re ready to supercharge your supply chain or if you are a solution provider, let’s talk. To reach me, click here to access my contact form or you can find me on LinkedIn.
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Greetings! As a supply chain tech advisor with 30+ years of hands-on experience, I take great pleasure in providing actionable insights and solutions to logistics leaders. My focus is to drive transformation within the logistics industry by leveraging emerging LogTech, applying data-centric solutions, and increasing interoperability within supply chains. I have a wide range of experience to include successfully leading the development of 100s of innovative software solutions across supply chains and delivering business intelligence (BI) solutions to 1,000s of shippers. Click here for more info.