In the realm of network operations, automation has become a crucial goal for teams looking to streamline processes. However, two significant barriers stand in their way. The first is a lack of accurate data about their infrastructure, while the second is the expectation for network engineers to become software developers. Recognizing this challenge, NetBox Copilot was developed to provide a solution that leverages natural language interfaces tailored to the expertise of network engineers.
One of the key challenges in implementing AI in network operations is building trust in the technology. Many generic large language models struggle with consistency and lack the necessary operational context to make reliable decisions. NetBox Copilot addresses this issue by grounding its AI agent in the comprehensive infrastructure data model provided by NetBox. By utilizing this semantic map of devices, connections, IP addressing, and more, Copilot is able to provide accurate and contextually relevant information for network engineers.
The integration of NetBox’s data model with Copilot’s AI capabilities enables network engineers to perform complex queries with ease. They can now ask questions such as “Which devices are missing IP addresses?” to ensure data completeness, track changes with “Who changed this prefix last week?” for compliance purposes, and analyze impacts before maintenance windows by inquiring “What depends on this switch?” This seamless integration of AI and infrastructure data empowers network operations teams to make informed decisions and streamline their processes effectively.