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Dremio Blog: Various Insights
Dremio ELT: Load, Transform, and Govern Data Without Leaving the Lakehouse
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Dremio Blog: Various Insights
Why AI Agents Need a CLI, Not Just an MCP Server
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Dremio Blog: Open Data Insights
What Are Lakehouse Catalogs? The Role of Catalogs in Apache Iceberg
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Dremio Blog: Open Data Insights
Enterprise Agentic Analytics Explained
Browse All Blog Articles
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Dremio Blog: Various Insights
Dremio ELT: Load, Transform, and Govern Data Without Leaving the Lakehouse
Data pipelines used to require a lot of infrastructure to keep running: separate compute for transformation, staging layers between systems, and a growing stack of tools to manage it all. Dremio changes the equation. With native ingestion, flexible transformation, and AI-assisted pipeline development, teams can build and operate end-to-end ELT workflows directly in the lakehouse, […] -
Dremio Blog: Various Insights
Why AI Agents Need a CLI, Not Just an MCP Server
Most conversations about AI and data platforms start with MCP. That's understandable: the Model Context Protocol has become the standard way to give AI agents a window into a data system, and Dremio's MCP server does this well. But MCP solves the specific problem of giving agents a supervised, conversational interface to your data. What […] -
Dremio Blog: Open Data Insights
What Are Lakehouse Catalogs? The Role of Catalogs in Apache Iceberg
A lakehouse catalog is the component that answers one question: "Where is the current metadata for this table?" Without a catalog, every engine would need to independently locate and track metadata files. With a catalog, there is a single source of truth that coordinates reads, writes, and access control across all engines. -
Dremio Blog: Open Data Insights
Enterprise Agentic Analytics Explained
Learn how agentic workflows for enterprise analytics connect AI agents, governed data and multi-step analysis to improve complex business decisions. -
Dremio Blog: Various Insights
Agentic Analytics Benefits and Key Features
Learn the benefits of agentic analytics and how enterprise teams use natural language queries, governed data and AI agents to improve decisions. -
Dremio Blog: Various Insights
Agentic AI in Insurance: From Competitive Advantage to Competitive Baseline: How Dremio Fuels Agentic AI at Scale
The insurance industry is undergoing a structural shift. What was once a slow moving, data heavy sector is now being reshaped by real time intelligence, automation, and advanced analytics powered by artificial intelligence. Agentic AI is no longer a futuristic concept or a “nice to have” innovation, it is rapidly becoming the competitive baseline that […] -
Dremio Blog: Open Data Insights
Writing to an Apache Iceberg Table: How Commits and ACID Actually Work
Understanding the write process is critical because it explains why Iceberg can provide ACID guarantees on top of object storage, something that seems impossible when you consider that S3, ADLS, and GCS have no built-in transaction support. -
Dremio Blog: Open Data Insights
Agentic Lakehouse: The Architecture Built for AI-Native Analytics
The Agentic Lakehouse is not a new name for the same architecture. It represents a genuine shift in what a data platform is responsible for. A traditional lakehouse is a managed repository. An Agentic Lakehouse is an active participant in AI workflows: it provides context, enforces governance, and optimizes itself autonomously. -
Dremio Blog: Open Data Insights
Text-to-SQL vs Agentic Analytics: What the Upgrade Requires
Text-to-SQL on a governed semantic layer is significantly more reliable than text-to-SQL on a raw production schema. The semantic layer constrains what the model can access, provides business-friendly terminology, and enforces metric definitions. The accuracy improvement is material. -
Dremio Blog: Open Data Insights
Semantic Layer vs Data Catalog: What’s the Difference?
The convergence of AI agents, open table formats, and semantic tooling is making this architecture decision more consequential than it was a few years ago. AI agents that query through ungoverned raw tables or that cannot discover what data exists are not reliable. -
Dremio Blog: Open Data Insights
Hidden Partitioning: How Iceberg Eliminates Accidental Full Table Scans
The most expensive mistake in data lake querying is the accidental full table scan: a query that reads every file because the user did not correctly reference the partition columns. In Hive, this happens constantly. In Iceberg, it is structurally impossible because users never reference partition columns at all. -
Dremio Blog: Various Insights
Semantic Layer Governance: Control What AI Agents Access
Semantic layer governance AI is the architectural pattern that closes this gap by enforcing data access controls structurally, at the layer every query must pass through, rather than procedurally, in workflows that agents simply skip. -
Dremio Blog: Various Insights
Building the Hybrid Lakehouse: Storage Platforms That Work With Dremio
In data analytics, it's the query engine that gets all the attention. It's where the SQL runs and where the performance story is told. But the storage layer underneath is just as important; it's the "lake" part of the "lakehouse" after all. Choose the wrong storage infrastructure and you're facing I/O bottlenecks no query engine […] -
Dremio Blog: Open Data Insights
Semantic Layer for AI Agents: Stop Getting the Numbers Wrong
The reason so many agentic analytics projects stall at proof-of-concept is not the AI model. It is the absence of the infrastructure that would make the AI trustworthy on real data. A semantic layer is that infrastructure. -
Dremio Blog: Open Data Insights
MCP Server Data Lakehouse: Connect AI Agents to Your Data
The Model Context Protocol (MCP) changes this equation. An MCP server data lakehouse setup gives any compliant AI client a single, governed, structured gateway to your data. You configure it once. Every agent that follows the spec connects automatically.
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