Most enterprises today have invested heavily in AI models: foundation models, fine-tuned LLMs, and AI-powered products. Yet most AI initiatives fail to reach production at scale. The reason is almost always the same – data isn’t accessible in the way the AI needs it.
Enterprise data lives across hundreds of systems, from CRM platforms, ERP systems, databases, SaaS tools to document and videos, and in enterprise applications that were never designed to communicate with each other. Each of these systems hold critical context that AI agents need to act. Today, connecting each one requires custom integration work, fragile pipelines, and months of engineering time.
MCP (Model Context Protocol) has emerged as the standard interface for connecting AI agents to data. But most MCP implementations are shallow: they expose a single system’s API, lack enterprise context, and fall apart the moment an agent needs to span multiple systems in a single workflow.
Nexla’s approach is different, and for enterprises dealing with data fragmentation and older, mission-critical infrastructure, it is the only architecture that addresses the problem at its root.