Systems | Development | Analytics | API | Testing

Filtering out bugs at each software layer by leveraging AI| Heemeng (Chris) Foo| TTTribeCast Webinar

How do we achieve bug free code? To answer this question we must first understand why bugs manifest: inadequate requirements definition and lack of software craftsmanship. In this talk, we look at a "filter" based approach to our software pipelines: how we can at each layer filter out bugs or the probability of bugs and how AI can help with that. About Heemeng (Chris) Foo.

Ep 27 | Leading with Joy in the Age of AI with Kevin Surace

In this episode of The AI Forecast, host Paul Muller is joined by Kevin Surace—Chair & CEO of AI-Driven Autonomous Software Testing Tools | Appvance , Chair of Token Ring, and a pioneering force behind the first human-like AI virtual assistant—for a deeply human conversation about what it means to lead through disruption.

Redefining Product Design: How AI Transforms Workflow, Speed, and Execution

In design, time has always been more than just a resource — it’s a key metric of competitiveness, and today, it matters more than ever. With generative AI accelerating every phase of product development, the stakes are rising fast, triggering a sharp rise in demand for AI-driven design tools. According to Precedence Research, the global generative AI in design market is projected to grow from $741.11 million in 2024 to over $13.9 billion by 2034, expanding at a CAGR of 34.11%.

Is Power BI Embedded Right for You? A Comparative Guide

Microsoft Power BI is a ubiquitous business intelligence (BI) solution entry point that can create a good foundation for analytics capabilities at any company. Its Power BI Embedded tier allows for embedding data visualizations, dashboards and reports into your applications, while using the broader Microsoft Azure Cloud infrastructure. The key challenges Power BI Embedded presents, however, is complexity.

Watch an AI Agent Connect to External Tools and Systems in Minutes Using MCPs | Live Demo

Building AI agents is just the beginning. The real value comes when these agents are connected to your enterprise data and systems in a meaningful way. This means moving beyond isolated tasks and enabling agents to interact with real-time data, external applications, and business logic through seamless integration. But traditionally, that requires coding, API management, and technical expertise. What if you could skip all that?

Why APIs and Tools are Critical to Your AI Strategy

As enterprises race to integrate AI into their workflows, a critical truth is emerging: success isn’t defined by the size of your model—but by the strength of your infrastructure. Join Hugo Guerrero, Principal Technical Product Marketing Manager at Kong, and Alex Salazar, Co-Founder/CEO of Arcade.dev, for a live conversation on how APIs and the right tooling can unlock the full potential of AI agents in real-world enterprise environments.

Driving Innovation with NVIDIA AI Data Platform: A View from Hitachi Vantara

The rapid acceleration of AI adoption is transforming how enterprises design their data infrastructure, driving the need for robust, scalable, and energy-efficient solutions. At Hitachi Vantara, we’re building the future of AI storage by collaborating with NVIDIA to close the gap between data and AI compute. Our mission: help organizations unlock faster, smarter insights with an AI-ready data pipeline.

What Is Code Refactoring?

Have you ever looked at your code and asked yourself, "Who wrote this mess??" And suddenly you realized it is none other than you. I’ve faced this situation a lot—your own code seems like a mess if you review it after 2 or 3 months. Do you know the reason why? Yes, it’s because there is no refactoring in the code In this blog, we’ll explore what code refactoring is, why it’s important, and walk through a few examples.

The Easiest Way to Power Real-Time AI: Confluent Announces Delta Lake Support & Unity Catalog Integration for Tableflow

In the age of AI, the hunger for fresh, reliable data to power machine learning (ML) models and real-time analytics is insatiable. Yet, organizations frequently hit roadblocks when trying to bridge their operational data in motion, typically flowing through Apache Kafka, with their data at rest in data lakehouses. On one side, you have the data streaming platform, the central nervous system managing the real-time flow of business events.