Systems | Development | Analytics | API | Testing

React Native Over-the-Air Updates in 2026: Skip the App Store Wait with Codemagic CodePush

Tired of waiting days for App Store review every time you need to ship a fix? In this video we break down how Over-the-Air (OTA) updates work for React Native apps and how Codemagic CodePush lets you push hotfixes, run experiments, and do controlled rollouts without touching the App Store or Google Play.

Why Optimization in a Data Lakehouse is important? #cloudera #techshort #DataLakehouse

Discover the importance of optimization when operationalizing a data lakehouse for production workloads. We break down the journey of bringing a lakehouse into production—from choosing your data file format (Parquet) and table format (Iceberg) to plugging in your catalog and compute engines. Finally, learn why balancing ingestion jobs with critical table management services makes all the difference when moving beyond single-node workloads.

Honeybadger Insights Parameterized Queries

Make your Honeybadger Insights system dashboards dynamic with parameterized widget queries. In this walkthrough, Ben shows how to take a dashboard built from data reported by the Honeybadger CLI agent — load average, memory used, disk used across a fleet of hosts — and filter the whole view down to a single host with one parameter. What you’ll see: One dashboard, many views — no duplicate widgets, just a shareable URL.

Quality Intelligence Explained

Your pipeline is green. But do you actually know what you tested? Most teams don’t know what changed, what was covered, or what risk remains. That’s the gap Quality Intelligence solves. It turns test and engineering data into real, evidence-based confidence so you can release faster, with less risk. With Tricentis SeaLights, you can move from assumption to understanding. So you don’t just test more, you understand more!

What's New in ThoughtSpot's Latest 26.4 Release

Check out what’s new in ThoughtSpot’s latest release. dbt MetricFlow Integration: Seamlessly import semantic definitions from dbt for a single source of truth across your stack. AI Theme Builder: Stop mapping CSS. Describe your brand guidelines and watch a polished UI appear instantly. Enhanced Mobile Experience: Bring decision-making to your pocket with expert-level reasoning via Spotter 3 and mobile-first Muze charts.

Why AI Models Fail Without Trust | The Ontology Secret

Data trust is broken. In the "good old days," one expert vetted one dashboard. Today? You have massive scale and AI models that need accurate data to survive. Jessica Talisman joins Cindi Howson on The Data & AI Chief to reveal why the ontology pipeline is the secret sauce for trustworthy AI. Learn how structural clarity turns data chaos into your biggest competitive advantage. Catch the full discussion on your preferred podcast player!

The 5 Pillars of AI-Ready Data (Explained in 60 Seconds)

Most organizations are investing heavily in AI—but the outputs still aren’t reliable. The reason often isn’t the model. It’s the data pipeline behind it. Disconnected systems, inconsistent preparation, and limited governance make it difficult for AI to produce accurate answers. Before AI can deliver real value, the data feeding it must be structured, contextualized, and governed. In this animation, we break down the 5 Pillars of AI-Ready Data and show how data moves through a connected pipeline before it reaches AI.