By using website you agree to our use of cookies as described in our cookie policy. Learn More


checklist report cover image

TDWI Checklist Report | Unlocking the Power of Generative AI with Knowledge Graphs: Five Considerations for Getting Started

November 9, 2023

Many organizations are realizing that they need analytics to stay competitive, including advanced analytics such as AI and generative AI.

Generative AI can be used to analyze data (e.g., for sentiment analysis or churn analysis) as well as for applications such as chatbots or for personalized marketing recommendations. Many of these use cases will require data and analytics professionals to utilize generative AI with their own company’s data to build analyses and applications that serve their own customers and operations.

To do this yourself, you will need your company data arranged in context and organized in a consumable way. Knowledge graphs are a way to help you connect your data based on its meaning and not where or how it’s organized so it can be used to train your AI models more easily and accurately.

This TDWI Checklist Report examines five key considerations and best practices for generative AI using knowledge graphs.

Your e-mail address is used to communicate with you about your registration, related products and services, and offers from select vendors. Refer to our Privacy Policy for additional information.

TDWI Membership

Get immediate access to training discounts, video library, research, and more.

Find the right level of Membership for you.