
Jedify builds an enterprise context graph that arms AI agents with permissions-aware business context.
Jedify Semantic Fusion platform connects warehouses, CRMs, financial systems, BI tools, and unstructured sources such as documents, Slack, and meeting recordings. It autonomously builds a continuously updated context graph that captures metric definitions, entity relationships, permissions, and domain terminology.
The platform is model-agnostic and inherits access controls from enterprise identity and data systems. Customers use the resulting context layer to power agentic dashboards, conversational applications, and production workflows that require permissions-aware business reasoning.
Enterprise AI adoption is constrained when agents lack runtime business context across fragmented SaaS, warehouse, and unstructured knowledge systems. Jedify targets mid-market and large enterprises with mature data stacks that need infrastructure to move agentic workflows from prototype to production.
Snowflake strategic investment and integration signal demand for context layers that operate where enterprise data already resides. The company plans to invest Series A proceeds in product development, hiring, and go-to-market expansion across data-intensive sectors.
Jedify positions its context graph as multi-dimensional and continuously updated, unlike static semantic layers and metadata catalogs that often require large engineering teams to maintain. The company mines query logs and BI dashboards to infer how organizations actually use data.
Its model-agnostic design and independent incentives aim to reduce token waste and vendor lock-in compared with single-model or single-cloud approaches. Customer deployments reported meaningful accuracy gains as the proprietary context graph compounds with each interaction.