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Graphs for Generative AI Network Orchestration |
NEWS |
A key similarity is emerging among breakthrough applications of generative Artificial Intelligence (AI) for network orchestration: the use of AI to manipulate network graphs. Two key players, EnterpriseWeb (an Information Technology (IT) automation platform vendor) and China Telecom (a Communication Service Provider (CSP)), exemplify this trend. While their roles differ, both share a successful strategy, underscoring the broader implications for vendors and CSPs alike.
A Common Tactical Breakthrough |
IMPACT |
Despite differences in market role, firm size, and regional context, China Telecom and the award-winning EnterpriseWeb illustrate breakthrough graph-based solutions for generative AI-based network orchestration. China Telecom credits generative AI with advancing its network automation, contributing to the type of closed-loop, Level 4 network automation that is also offered by EnterpriseWeb. This offers convincing support for their common claims: 1) integrating generative AI with network graphs can provide sufficient structure for telco-grade reliability, 2) using generative AI for NL-based graph queries and commands, rather than for extracting human-readable output can advance network automation.
These solutions may not be within the immediate purview or pathway of CSPs. For instance, the EnterpriseWeb solution is fully cloud-native and serverless for agile exchanges among public LLMs, an intermediate AI Operations (AIOps) layer, and back end servers; telco workloads still awaiting cloudification will not be ready. Likewise, China Telecom uses a proprietary LLM for knowledge graph queries, producing a unique architecture that will not be followed by most CSPs. However, the impact of these market developments is in revealing opportunities for generative AI in network orchestration down the road, drawing attention to an underrepresented area of application. Another impact is in advancing from strategy to tactic. The strategic focus involves upholding telco-grade reliability and security standards with network generative AI, facing unique challenges. This is why CSPs are proceeding so slowly and cautiously in this area, yielding to customer and business use cases. But it is becoming clear tactically what this means—that network generative AI requires channeling through deterministic environments or use with graphs, taking a problems-first and AIOps-forward approach.
Reconsidering Network Generative AI |
RECOMMENDATIONS |
The broadest recommendation offered by these two preceding cases is for CSPs to reconsider generative AI for long-term network strategies: Network-graph approaches reveal the potential of generative AI for network orchestration and offer tactics for approaching it. Although CSPs may not be prepared to implement such solutions in the short term, CSPs can begin working out the requirements and plan internal development of a Proof of Concept (POC). In doing so, two additional factors common to the EnterpriseWeb and China Telecom cases stand out as crucial: