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For all of the advances in analytics, two issues proceed to plague information groups: misaligned or inconsistent metrics throughout instruments and the inaccessibility of unstructured information. These two points not solely decelerate decision-making but additionally power groups to depend on guide workarounds – introducing inefficiencies, inflicting information drift, and rising the chance of expensive errors.
When groups outline KPIs in numerous instruments, similar to dashboards, spreadsheets, and reviews, these numbers typically don’t match, undermining belief within the information. In the meantime, crucial enterprise data stays locked inside PDFs, contracts, and different unstructured recordsdata that the majority BI platforms can’t entry or analyze successfully.
Sigma, a warehouse-native BI and analytics platform, introduced two main updates on the Snowflake Summit 2025 that immediately deal with these ache factors. In partnership with Snowflake, the corporate unveiled native assist for Snowflake Semantic Views and integration with AI SQL, Snowflake’s breakthrough characteristic for querying unstructured information utilizing massive language fashions (LLMs).
These advances are designed to assist ruled semantic exploration and allow AI-powered evaluation of unstructured recordsdata, immediately inside Sigma’s spreadsheet-style interface. Sigma positions this as a big step ahead in unified analytics because it permits customers to question each structured metrics and uncooked human context side-by-side inside a single ruled system.
In response to Mike Palmer, CEO of Sigma, the combination with Snowflake Semantic Views is “actually native” and is constructed for flexibility, scale, and the following era of analytics. “By assembly the semantic layer the place it belongs, we’re giving enterprise groups prompt entry to ruled metrics and logic with out compromise,” explains Palmer. “And that is just the start. From bi-directional syncs to visible semantic exploration, Sigma is constructing towards a unified modeling expertise that brings readability and management to each layer of the info stack.”
“This can be a main leap ahead in delivering a constant, ruled expertise powered totally by Snowflake,” added Palmer. “Sigma is constructing towards a future the place each layer of the info stack speaks the identical language – outlined as soon as, executed in every single place.”
The corporate presents this integration as a method to streamline analytics by aligning enterprise metrics immediately with the info warehouse. It’s a part of a broader push to make sure that everybody, from analysts to enterprise customers, is working from the identical trusted definitions.
The collaboration with Snowflake additionally displays a broader trade shift towards warehouse-native analytics. For Sigma, it’s an opportunity to assist understand a long-standing aim within the information world: outline your small business logic as soon as, preserve it ruled on the supply, and make it accessible wherever it’s wanted.
This implies no extra duplicating definitions throughout dashboards and spreadsheets. As a substitute, every thing stays anchored within the warehouse, giving groups a single, trusted basis to work from. That’s one much less supply of confusion when groups want to maneuver rapidly and belief their information.
The opposite main replace is Sigma’s assist for Snowflake AI SQL, a brand new set of LLM-powered instruments that make it attainable to question unstructured content material, like photos, scanned receipts, product manuals, or contracts, identical to how you’ll in the event that they have been rows in a desk.
This improve pairs properly with Sigma’s lately launched File Column Sort, which permits customers to add and work with recordsdata immediately within the platform. Paired with AI SQL, this opens the door to make use of circumstances that have been beforehand cumbersome, like extracting fee phrases from contracts or reviewing receipts as a part of claims workflows. The brand new capabilities scale back the necessity for customized scripts, third-party instruments, or guide information entry.
“For many years, legacy BI instruments assumed your information was clear, structured, and ready politely in rows and columns,” stated Palmer. “However a number of the most necessary enterprise choices are made with the messy stuff: authorized paperwork, compliance PDFs, screenshots, receipts, product specs, and annotated photos.
“Traditionally, these codecs required a human within the loop: to learn, interpret, and manually extract insights. That’s the bottleneck AI SQL removes. Sigma and Snowflake flip human information into scalable techniques, unlocking totally new sorts of evaluation throughout industries and groups.”
For Snowflake, the combination helps advance its imaginative and prescient of a unified, AI-powered information cloud. It validates its semantic layer technique and showcases how third-party platforms can faucet into Cortex AI SQL, with out heavy engineering.
Carl Perry, Head of Analytics at Snowflake, stated the combination “marks an necessary step ahead in enabling enterprises to leverage the state-of-the-art AI options out there with Snowflake Intelligence and Cortex Analyst,” including that it helps groups “create extra environment friendly and highly effective workflows.”
The newest updates to the Sigma platform aren’t nearly stacking on extra options – it affords a glimpse into what trendy analytics might be. With native assist for Semantic Views and AI SQL, Sigma is exhibiting how structured metrics and unstructured context can coexist in a single interface.
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