Systems | Development | Analytics | API | Testing

Microsoft Fabric vs MuleSoft vs Dedicated ETL for Salesforce Pipelines: 2026 Architecture Decision Guide

Selecting the right backbone for Salesforce pipelines is difficult because each option optimizes for different tradeoffs. This guide compares Microsoft Fabric, MuleSoft, and a dedicated ETL approach with Integrate.io from a Microsoft-first perspective. We explain when each shines, what to watch out for, and how costs and complexity scale. Throughout, we highlight where Integrate.io fits best for Salesforce-centric data movement without adding platform sprawl.

Building the Foundation for Responsible Autonomy: Preparing for the Agentic Era of AI

Over the past two years, generative AI has transformed how we create, learn, and interact. But a more profound shift is already underway—one that changes not just how we work but who (or what) does the work itself. We are entering the era of agentic AI, where systems don’t merely answer questions—they reason, decide, and act on our behalf.

Starting With Purpose: In-Person Onboarding in a Remote-First World

The hardest part about remote work is building real connection and purpose when everyone is not in the same room. At Confluent, we know flexibility is essential, but we also know that great work and a sense of belonging don’t just happen; they take effort. That’s why we’re intentional about how we bring people together, starting from day one.

Common Kafka Anti Patterns and How to Avoid Them

Kafka is powerful—but common Kafka mistakes can quietly undermine performance, reliability, and scalability. In this video, two OpenLogic experts break down the most frequent Kafka anti-patterns they see in real customer environments—and how to avoid them. Based on hands-on experience fixing production Kafka clusters, this discussion covers: If you’re running Apache Kafka in production—or planning to—this video will help you spot Kafka mistakes early and apply proven best practices to build a more stable, scalable event streaming platform.

Running Kafka in Kubernetes: What We Learned

Apache Kafka is mission-critical for many organizations—but where you deploy it matters just as much as how you use it. In this video, two OpenLogic experts discuss why they increasingly encourage customers to move their Kafka clusters to Kubernetes and utilize the Strimzi operator, and what that shift unlocks from an operational, scalability, and resilience standpoint.

How to quickly add a massive new feature to your apps (with all the work done for you)

Here's the replay of our live event. We cover how software teams and ISVs can add powerful, AI-assisted analytics to their products without building it from scratch. You will see real world use cases, white labeling options and much more! If you’re planning new features for 2026 or feeling the pressure to “add AI” in a way that actually makes sense, this one’s worth your time.

Top Microservices Examples & Guides - DreamFactory

DreamFactory is a secure, self-hosted enterprise data access platform that provides governed API access to any data source, connecting enterprise applications and on-prem LLMs with role-based access and identity passthrough. During the last 10 years, microservices-based applications have benefited global enterprises by providing them with massive scalability, greater agility, more highly available systems, and improved operational efficiency.

Why AI Agents Need Their Own Identity: Lessons from OWASP's MCP Security Guide

The recently released OWASP, “A Practical Guide for Securely Using Third-Party MCP Servers,” highlights a fundamental challenge in modern AI deployments: how do we govern, secure, and audit systems that are inherently non-deterministic? Unlike traditional, static software, AI agents dynamically adapt their execution paths, tool selection, and decisions based on context and real-time resources, allowing the same agent to achieve identical goals through entirely different approaches.

Best AI Test Case Generation Tools in 2026

AI test case generation tools are transforming how QA teams create, maintain, and execute tests by automating repetitive work and improving coverage. Teams that adopt AI for QA now will reduce manual test creation time while expanding their test coverage. Software testing has always been a balancing act between thoroughness and speed. You want comprehensive coverage, but you also want to ship features before your competitors do.