Systems | Development | Analytics | API | Testing

Validating Trust in AI: How to Test Salesforce Einstein Copilot for Enterprise Use

As enterprises increasingly embed AI assistants into their core workflows, trust becomes the currency of adoption. Salesforce Einstein Copilot is fast becoming a central productivity layer across CRM, Sales, and Service modules. But with great potential comes greater responsibility, especially for quality assurance teams. Validating the trustworthiness of AI outputs, guarding data privacy, and ensuring reliable decision boundaries are now non-negotiable in enterprise environments.

How the Rise of Agentic AI is Transforming API Development and Management

The world of artificial intelligence is undergoing a seismic shift, with the emergence of agentic AI redefining the landscape of API development and management. As businesses and developers navigate the complexities of digital transformation, understanding the implications of this groundbreaking technology becomes paramount.

BI as a Service: 4 Reasons Smart Agencies Grow Faster with Business Intelligence

Based on a sample of data from ~1,000 agencies and 14,000 clients, we estimate that agencies lose about 38% of their clients every year. Based on my 1,000s of conversations with agencies over the years, I think I know one of the big reasons why. Most agencies have been stuck in the same pattern for years: Do good work, report on it, wait for feedback, hope for renewal. They start strong—engaged with the client’s leadership, aligned on strategy and goals, excited to build.

What SmartBear's Acquisition of QMetry Means for the Future of Enterprise Test Management

Earlier this year, SmartBear acquired QMetry, a move that’s more than just a strategic acquisition. This move reflects a deeper commitment to enterprise customers – helping teams: As Product leader of Test Management at SmartBear, I’ve had the opportunity to help define our roadmap. Our vision for QA teams is clear: empower them to deliver better quality and build confidence – and consistently hit release deadlines.

The VSP One Data Platform Meets its Data Management Counterpart: Introducing VSP 360

Peanut butter has jam. Wine has cheese. Great Britain has pubs. The world is filled with things that are great alone, but that together, create an even greater – dare I say, legendary – combination. Now it comes to the world of data platform management. Sorry, I’m getting ahead of myself. You see, a few months back I predicted 2025 was going to be a big year for data platforms. One such solution being Hitachi Virtual Storage Platform One (VSP One).

Mastering Mcp To A2a: Everything A Developer Needs To Know

We have all seen the frenzy of Devin AI—teams racing to spin up models, orchestrate data flows, and automate every possible touchpoint. But beyond the hype, two architectural patterns quietly power next-generation pipelines: Model Context Protocol (MCP) and Agent-to-Agent (A2A). Below is the roadmap for our deep dive into MCP (Model Context Protocol) and A2A (Agent-to-Agent).

Breaking the Upgrade Barrier: Why QA Should Be Front and Center in Your SAP S/4HANA Journey

Upgrading to SAP S/4HANA is more than a technology refresh—it’s a strategic business transformation. With its real-time data processing, simplified architecture, and enhanced user experience, SAP S/4HANA promises agility and innovation. But realising that promise requires more than just a successful migration—it demands a rock-solid Quality Assurance (QA) foundation.

Introducing the Next Generation of Control Center for Confluent Platform: Enhanced UX, Faster Performance, and Unparalleled Scale

We're excited to announce the release of the next generation of Control Center for Confluent Platform, which delivers higher partition limits, faster spin-up time, metrics freshness, and simpler operational overhead. Confluent introduced Confluent Control Center in 2016 as part of Confluent Platform, simplifying Apache Kafka operations and delivering end-to-end visibility into data pipelines.