Systems | Development | Analytics | API | Testing

ZeroTrust for LLMs: Applying Security Principles Through DreamFactory's Gateway

The key to securing large language models (LLMs) lies in adopting a Zero‑Trust framework. This approach ensures that every interaction - whether from users, devices, or applications - is verified, authenticated, and authorized. With the rise of LLMs in enterprise environments, traditional security models no longer suffice. Here's how DreamFactory's Gateway helps implement Zero‑Trust principles effectively.

Building Streaming Data Pipelines, Part 2: Data Processing and Enrichment With SQL

In my last blog post, I looked at the essential first part of building any data pipeline—exploring the raw source data to understand its characteristics and relationships. The data is information about river levels, rainfall, and other weather information provided by the UK Environment Agency on a REST API. I used the HTTP Source connector to stream this into Apache Kafka topics (one per REST endpoint), and then Tableflow to expose these as Apache Iceberg tables.

Perfecto AI: Glass Manufacturing Configurator

Explore how Perfecto AI, powered by Perforce Intelligence, is redefining test automation for dynamic and complex applications. Say goodbye to brittle scripts and constant maintenance caused by evolving interfaces. Perfecto AI uses natural language steps to execute precise, human-like tasks with unparalleled efficiency.

AI at Scale Needs Control: Inside ClearML's Resource Allocation Policy Manager

By Erez Schnaider, Technical Product Marketing Manager, ClearML AI engineering today goes far beyond simply training a model. Teams are fine-tuning large language models on high-end GPUs, running massive, distributed experiments, and orchestrating hybrid workflows spanning on-premises clusters, private and public clouds. With great power comes great responsibility, and with powerful hardware comes complexity. Without robust controls, things can quickly descend into costly chaos: Who’s using what?

A Brief History of APIs

The history of modern technology is a story about APIs. But the same tools that built our connected world have also created complexity and fragmentation. Before we can offload major workloads to AI and autonomous agents, we need to fix the shaky foundation they might be built on. This video explains the evolution of APIs, the challenges of API fragmentation, and why managing the full API lifecycle is critical for the future of tech and artificial intelligence.

From Checklists to Discovery: Leveraging AI and Embracing Curiosity in Testing | Kunal Ashar

This session explores the shift from structured checklists to a more dynamic, curiosity-driven approach in software testing. Attendees will learn how AI tools can enhance exploratory testing by supporting deeper requirement analysis, generating actionable insights, and streamlining the capture of questions, risks, and test ideas.

Don't lose the trace that matters: Multiplayer's zero-sampling approach

Multiplayer is the only session recorder that combines frontend replays with unsampled backend traces, stitched together automatically. You don’t have to choose between drowning in noise or missing the critical data. Backend tracing is the backbone of understanding how modern distributed systems behave. Each request generates a chain of spans as it travels through your services and components: what happened, how long it took, and whether it failed.

Orchestrating Multi-Agent Workflows with MCP & A2A - MLOps Live #39 with Google Cloud

In this webinar we explored cutting-edge tools enabling scalable AI workflows. Discover how MCP (Model Context Protocol) and A2A (Agent-to-Agent communication layer) empower teams to design, build, and manage multi-agent workflows with precision. Key Takeaways.