Azure Data Factory and Databricks Lakeflow: An Architectural Evolution in Modern Data Platforms
As data platforms evolve, the role of orchestration is being quietly reexamined. This article explores how Azure Data Factory and Databricks Lakeflow reflect two architectural approaches—control-plane orchestration and execution-native pipelines and why many teams are rethinking where orchestration belongs in modern data platforms.
The post Azure Data Factory and Databricks Lakeflow: An Architectural Evolution in Modern Data Platforms appeared first on Beyond the Horizon....
Published on:
Learn moreRelated posts
Introducing Azure HorizonDB - PostgreSQL
Run enterprise Postgres workloads on Azure HorizonDB with around 3x the throughput of self-managed deployments — zone-resilient by default, no...
Azure DevOps and GitHub: Journeying into the AI Era
AI is changing how software gets planned, built, and reviewed. As teams adopt agentic development, the platform underneath those workflows mat...
Introducing azure-functions-skills: An AI-Era Workspace for Azure Functions (Preview)
azure-functions-skills gives GitHub Copilot CLI, Claude Code, Codex CLI, and VS Code the skills, MCP configuration, hooks, and instructions ne...
Announcing the Public Preview of Integrated Embeddings in Azure Cosmos DB: Build AI Apps With Embeddings That Stay in Sync
AI applications built on Azure Cosmos DB depend on embeddings for grounded results. Keeping them in sync with your data is the hard part: it m...
Introducing OmniVec: An Open-Source Embedding Platform for AI Apps on Azure
Today we are open-sourcing OmniVec, a platform for building and operating the embedding pipelines that keep the vector representation of your ...