Data Engineering for Advanced RAG Datavolo helps data teams build multimodal data pipelines to support their organization’s AI initiatives. Every organization has their own private data that they need to incorporate into their AI apps, and a predominant pattern to do...
Data Engineering
How custom code can add security risk to enterprise AI projects and LLMs
Data teams are actively delivering new architectures to propel AI innovation at a rapid pace. In this blog, we’ll explore how Datavolo empowers these teams to accelerate while addressing the critical aspects of security, observability, and maintenance for their data...
Datavolo Architecture Viewpoint
The Evolving AI Stack Datavolo is going to play in three layers of the evolving AI stack: data pipelines, orchestration, and observability & governance. The value of any stack is determined by the app layer, as we saw with Windows, iOS, and countless other...
ETL is dead, long live ETL (for multimodal data)
Why did ELT become the most effective pattern for structured data? A key innovation in the past decade that unlocked the modern data stack was the decoupling of storage and compute enabled by cloud data warehouses as well as cloud data platforms like Databricks. This...
Seven Strategies for Securing Data Ingest Pipelines
Introduction Information security is an elusive but essential quality of modern computer systems. Implementing secure design principles involves different techniques depending on the domain, but core concepts apply regardless of architecture, language, or layers of...