SemaBridge eliminates semantic drift across your data ecosystem. Extract business logic from any BI tool or data platform, normalize it into a portable canonical standard, and deploy it anywhere — automatically, securely, and within your own environment.
Enterprises running multiple BI tools and cloud data platforms are accumulating a silent but critical liability — fragmented, contradictory semantic definitions that erode trust in data.
"Revenue," "Churn Rate," "Active Users" — the same metric returns different values depending on which tool a stakeholder opens. No single source of truth. Decisions are made on contradictory data.
Power BI, Tableau, Snowflake, and Databricks each maintain their own private semantic definitions. There is no cross-platform consistency layer, leaving business logic permanently fragmented across your data estate.
Proprietary semantic layers hold your business logic hostage. Migrating to a modern data cloud means months of manual re-engineering — expensive, error-prone, and deeply disruptive to the business.
Developers painstakingly hand-translate measures, dimensions, hierarchies, and relationships for every platform change. No automation, no traceability, no guarantee the logic survives intact.
Without a governed semantic layer, AI agents and Copilots query raw tables with no business context. They hallucinate metrics, misinterpret dimensions, and produce answers that conflict with your BI reports.
When semantic definitions change, there is no record of what changed, when, or why. Compliance teams cannot trace metric lineage. Regulated industries face significant exposure without an immutable logic audit trail.
SemaBridge introduces a canonical semantic layer — the universal passport for your business logic. Extract once. Deploy anywhere.
Define source, target and auth via a secure YAML config. Zero secrets stored anywhere.
Connect to your BI tool or data platform and extract the full semantic model metadata.
Convert proprietary formats into a canonical, open, versioned, and portable semantic representation.
Detect lossy mappings and unsupported features before deployment. Nothing breaks silently.
Emit to any target platform with full traceability. Every run is versioned and auditable.
Pre-built, production-ready adapters for the world's leading BI tools and cloud data platforms. Each adapter speaks the platform's native language — and normalises it into SemaBridge's canonical semantic layer.
Deploy canonical semantic models as native semantic objects on the world's leading cloud data platforms — no re-engineering required.
Bridge the metric layer with transformation frameworks — carry governed business definitions from your dbt or Cube models directly into any target platform.
Extract rich semantic models — measures, dimensions, hierarchies, DAX expressions, relationships — from your existing BI investments.
SemaBridge's canonical semantic layer doesn't just bridge platforms — it feeds AI agents with verified, governance-approved semantic context. No hallucinations. No ambiguity.
SemaBridge syncs the semantics that is directly consumable by the agents native to the Platform — giving agents the grounded business context they need to reason accurately.
Deploy semantic models directly into Databricks AgentBricks. Your business metrics become the grounded knowledge layer for Mosaic AI agents — ensuring every query resolves to a governed, consistent definition.
SemaBridge outputs Snowflake-native Semantic Views that power Cortex Analyst — Snowflake's natural language-to-SQL AI. Agents answer business questions using the same metric definitions as your BI dashboards.
Feed Microsoft Fabric AI skills and Data Agents with semantic models from OneLake. Copilot and agentic workflows gain access to certified, cross-platform business logic — not raw table schemas.
Semantic layers govern how metrics are calculated. Ontologies govern what enterprise concepts mean — the entities, relationships, and hierarchies that give your data structure real-world context. As each platform rolls out native ontology capabilities, the fragmentation problem extends upward. SemaBridge ensures your semantics becomes the foundation for consistent ontology artifacts everywhere.
Fabric IQ Ontology defines entity types (Customer, Order, Product), properties, and relationship types — bound directly to OneLake sources including lakehouse tables, Eventhouse streams, and existing semantic models.
Unity Catalog Business Semantics unifies metric definitions, dimensions, and lineage at the data layer — making business meaning a first-class governed asset alongside tables and models.
Snowflake pairs its Horizon Catalog governance layer with RelationalAI's native knowledge graph engine — enabling a two-way sync between ontological entity definitions and Snowflake Semantic Views, queryable via Cortex AI.
SemaBridge extracts entity relationships, dimension hierarchies, and role-playing structures from your existing semantic models — normalizes them into structural layer — and propagates consistent entity type definitions across Fabric IQ Ontology, Databricks Unity Catalog, and Snowflake's knowledge graph. Your semantic and ontological truth stay permanently in sync. No manual rebuild. No ontological drift.
Every design decision in SemaBridge is driven by the real operational, security, and compliance demands of enterprise data teams.
Extract from one platform and deploy to another in a single automated pipeline. No manual re-engineering, no guesswork — the same business logic, everywhere.
Every execution is tracked with a Project ID and Run ID. Every artifact — semantic models, conversion reports, source metadata — is permanently logged, creating a tamper-proof flight recorder for compliance teams.
SemaBridge is built on open standards, not proprietary formats. Your business logic is always yours — readable, versionable, and portable.
Replace error-prone manual deployments with a standardized, automated workflow. From extraction to validation to deployment — fully automated, reproducible, and CI/CD-ready.
Plug-in connectors, versioned rule packs, and a stable converter core mean new platforms are addable without disrupting existing pipelines. Built to evolve with your data stack.
SemaBridge runs entirely within your own infrastructure — no external servers, no cloud dependencies. All semantic artifacts persist locally, ensuring your business logic never leaves your controlled perimeter.
SemaBridge is architected from the ground up to run entirely within your own infrastructure — no data leaves your perimeter, no external dependencies, no cloud services required.
SemaBridge is deployed and executed within your own infrastructure — on-premises or your private cloud. There is no SaaS component, no call-home, and no external data transmission. Your semantic models never leave your network.
All credentials — tokens, passwords, client secrets, private keys — are provided exclusively via environment variables. They are never written to YAML configuration, logs, or artifact storage.
All semantic artifacts — source metadata, semantic model outputs, conversion reports — are persisted locally in your own environment using your chosen storage backend. You own and control all data at all times.
Every run is identified with a Project ID and Run ID, with immutable execution status (SUCCESS / FAILED / PARTIAL). Designed for internal audits, SOC 2, and regulated industry requirements.
See how SemaBridge eliminates semantic drift, accelerates platform migrations, and powers AI agents with trusted business logic — in a personalized demo tailored to your data stack.