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Dremio Blog: Open Data Insights
A Journey from AI to LLMs and MCP – 9 – Tools in MCP — Giving LLMs the Power to Act
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Dremio Blog: Open Data Insights
A Journey from AI to LLMs and MCP – 8 – Resources in MCP — Serving Relevant Data Securely to LLMs
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Dremio Blog: Various Insights
How Leading Enterprises Transform Data Operations with Dremio: Insights from Industry Leaders
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Dremio Blog: Open Data Insights
A Journey from AI to LLMs and MCP – 7 – Under the Hood — The Architecture of MCP and Its Core Components
Browse All Blog Articles
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Dremio Blog: Open Data Insights
A Journey from AI to LLMs and MCP – 9 – Tools in MCP — Giving LLMs the Power to Act
Tools are executable functions that an LLM (or the user) can call via the MCP client. Unlike resources — which are passive data — tools are active operations. -
Dremio Blog: Open Data Insights
A Journey from AI to LLMs and MCP – 8 – Resources in MCP — Serving Relevant Data Securely to LLMs
One of MCP’s most powerful capabilities is its ability to expose resources to language models in a structured, secure, and controllable way. -
Dremio Blog: Various Insights
How Leading Enterprises Transform Data Operations with Dremio: Insights from Industry Leaders
At a recent customer panel moderated by Maeve Donovan, Senior Product Marketing Manager at Dremio, three of Dremio's largest customers came together with Tomer Shiran, Founder of Dremio, to share their experiences implementing Dremio's intelligent lakehouse platform. Antonio Abi Saad, Group Chief Data Officer at Sodexo, Karl Smolka, Associate Vice President - Data Platform & […] -
Dremio Blog: Open Data Insights
A Journey from AI to LLMs and MCP – 7 – Under the Hood — The Architecture of MCP and Its Core Components
By the end, you’ll understand how MCP enables secure, modular communication between LLMs and the systems they need to work with. -
Dremio Blog: Open Data Insights
Journey from AI to LLMs and MCP – 6 – Enter the Model Context Protocol (MCP) — The Interoperability Layer for AI Agents
What if we had a standard that let any agent talk to any data source or tool, regardless of where it lives or what it’s built with? That’s exactly what the Model Context Protocol (MCP) brings to the table. -
Dremio Blog: Various Insights
Dremio’s Leading the Way in Active Data Architecture
Modern data teams are under pressure to deliver faster insights, support AI initiatives, and reduce architectural complexity. To meet these demands, more organizations are adopting active data architectures—frameworks that unify access, governance, and real-time analytics across hybrid environments. In the newly released Dresner 2025 Active Data Architecture Report, Dremio was ranked #1—recognized as a top […] -
Engineering Blog
Introducing Dremio Auth Manager for Apache Iceberg
Dremio Auth Manager is intended as an alternative to Iceberg’s built-in OAuth2 manager, offering greater functionality and flexibility while complying with the OAuth2 standards. Dremio Auth Manager streamlines authentication by handling token acquisition and renewal transparently, eliminating the need for users to deal with tokens directly, and avoiding failures due to token expiration. -
Dremio Blog: Open Data Insights
A Journey from AI to LLMs and MCP – 5 – AI Agent Frameworks — Benefits and Limitations
Enter agent frameworks — open-source libraries and developer toolkits that let you create goal-driven AI systems by wiring together models, memory, tools, and logic. These frameworks enable some of the most exciting innovations in the AI space… but they also come with trade-offs. -
Dremio Blog: Open Data Insights
What’s New in Apache Iceberg Format Version 3?
Now, with the introduction of format version 3, Iceberg pushes the boundaries even further. V3 is designed to support more diverse and complex data types, offer greater control over schema evolution, and deliver performance enhancements suited for large-scale, high-concurrency environments. This blog explores the key differences between V1, V2, and the new V3, highlighting what makes V3 a significant step forward in Iceberg's evolution. -
Dremio Blog: Open Data Insights
A Journey from AI to LLMs and MCP – 4 – What Are AI Agents — And Why They’re the Future of LLM Applications
We’ve explored how Large Language Models (LLMs) work, and how we can improve their performance with fine-tuning, prompt engineering, and retrieval-augmented generation (RAG). These enhancements are powerful — but they’re still fundamentally stateless and reactive. -
Engineering Blog
Dremio’s Apache Iceberg Clustering: Technical Blog
Clustering is a data layout strategy that organizes rows based on the values of one or more columns, without physically splitting the dataset into separate partitions. Instead of creating distinct directory structures, like traditional partitioning does, clustering sorts and groups related rows together within the existing storage layout. -
Dremio Blog: Open Data Insights
A Journey from AI to LLMs and MCP – 3 – Boosting LLM Performance — Fine-Tuning, Prompt Engineering, and RAG
this post, we’ll walk through the three most popular and practical ways to boost the performance of Large Language Models (LLMs): Fine-tuning Prompt engineering Retrieval-Augmented Generation (RAG) Each approach has its strengths, trade-offs, and ideal use cases. By the end, you’ll know when to use each — and how they work under the hood. -
Dremio Blog: Various Insights
Accelerate Insights While Reducing TCO with An Intelligent Lakehouse Platform
Enterprises today face increasing pressure to extract insights from data quickly while controlling spend. Yet, as data volumes explode across cloud and on-prem environments, traditional architectures often fall short—resulting in higher costs, rigid pipelines, and slower decision-making. The Dremio Intelligent Lakehouse Platform addresses these challenges by delivering faster insights and significant total cost of ownership […] -
Dremio Blog: Various Insights
A Journey from AI to LLMs and MCP — 2 — How LLMs Work — Embeddings, Vectors, and Context Windows
In this post, we’ll peel back the curtain on the inner workings of LLMs. We’ll explore the fundamental concepts that make these models tick: embeddings, vector spaces, and context windows. You’ll walk away with a clearer understanding of how LLMs “understand” language — and what their limits are. -
Dremio Blog: Various Insights
Enabling companies with AI-Ready Data: Dremio and the Intelligent Lakehouse Platform
Artificial Intelligence (AI) has become essential for modern enterprises, driving innovation across industries by transforming data into actionable insights. However, AI's success depends heavily on having consistent, high-quality data readily available for experimentation and model development. It is estimated that data scientists spend 80+% of their time on data acquisition and preparation, compared to model […]
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