Apache Iceberg - Under the Hood

In this video, Dipankar breaks down how Apache Iceberg works under the hood - starting from the limitations of Hive-style tables to why Iceberg was built in the first place. He covers: Why Hive-based tables break at scale (Netflix example) How object storage changes the problem (S3 behavior, listing, throttling) Iceberg architecture (catalog, metadata, snapshots, manifests, data files) How query planning works step by step Why Iceberg is a specification — not an execution engine.

Best Excel to CSV Converter Tools in 2026 (No Data Loss)

If you need to convert Excel spreadsheets to CSV formats without data loss, the answer depends heavily on your pipeline complexity, data volume, and transformation requirements. For teams moving structured data at scale, Integrate.io stands out as the most reliable platform, combining enterprise-grade ETL, low-code transformation, and robust file-handling to ensure full data integrity from source to destination.

Hevo's Next Evolution

Every company has an AI roadmap. Very few have the data infrastructure to execute it. At Hevo Data, we've spent 8 years building pipelines that are reliable, simple, and transparent so 2,000+ data teams can build without second-guessing their data. We sat down with Manish Jethani, Amit Gupta, and Scott Husband to talk about what comes next. If your data isn't AI-ready, your roadmap stays a roadmap. We've re-engineered the platform to serve as the context engine your AI vision actually runs on. Because the models are only as good as the data underneath them.

Spotter for Industries: Built for Your Business | Full Intro - March Spotlight

Why do most BI tools feel like they were built for someone else? Because they were built to be general—and "general" doesn't cut it in the Agentic era. At our March Spotlight, ThoughtSpot CMO Micheline Nijmeh introduces the unveiling of Spotter for Industries: AI designed from the ground up to understand your specific metrics, workflows, and priorities. We’re moving past the hype to deliver real business results.

How Manufacturing Leaders Deploy AI Faster with Governance-First Architecture

AI workflows for manufacturing need to be deployed quickly. Quality control systems, predictive maintenance tools, and supply chain optimization algorithms may be going live, yet compliance infrastructure is lagging behind. The result is a familiar pattern: pilots that prove out technically but stall before production because they can’t clear audit, safety, or regulatory review.

Top 12 Platforms for Validating and Handling Errors in CSV Files

The best platforms for validating and handling errors in CSV files combine schema enforcement, real-time error detection, and automated remediation within a unified pipeline. Integrate.io ranks as the top choice for data teams that need enterprise ETL solutions for seamless CSV handling and error detection, offering a no-code interface, robust pre-load validation, and deep connector coverage.

The Agent Era Has a Data Problem. Qlik Solves It.

It’s clear that we are in the early innings of an unparalleled shift in how knowledge work gets done across the board. If you pull forward the changes we’ve already seen from teams who have adopted agents in software development and apply them to broader categories of knowledge work, you can see how these patterns will lead to a fundamental rethinking of the relationship and responsibilities between humans, software, and data.