<?xml version="1.0" encoding="utf-8" standalone="yes"?><rss version="2.0" xmlns:atom="http://www.w3.org/2005/Atom"><channel><title>AI/MLOps on AI VOID</title><link>https://ai-blog.noorshomelab.dev/categories/ai/mlops/</link><description>Recent content in AI/MLOps on AI VOID</description><generator>Hugo</generator><language>en</language><lastBuildDate>Fri, 20 Mar 2026 00:00:00 +0000</lastBuildDate><atom:link href="https://ai-blog.noorshomelab.dev/categories/ai/mlops/index.xml" rel="self" type="application/rss+xml"/><item><title>Regression Testing for AI: Preventing Unintended Consequences</title><link>https://ai-blog.noorshomelab.dev/ai-reliability-guide-2026/ai-regression-testing-prevent-consequences/</link><pubDate>Fri, 20 Mar 2026 00:00:00 +0000</pubDate><guid>https://ai-blog.noorshomelab.dev/ai-reliability-guide-2026/ai-regression-testing-prevent-consequences/</guid><description>&lt;h2 id="introduction-guarding-against-ai-regression"&gt;Introduction: Guarding Against AI Regression&lt;/h2&gt;
&lt;p&gt;Welcome back, future AI reliability expert! In our previous chapters, we laid the groundwork for understanding AI evaluation and explored the crucial art of prompt testing. We learned how to carefully craft and validate inputs to our AI systems. But what happens &lt;em&gt;after&lt;/em&gt; we&amp;rsquo;ve deployed our AI? Or when we make a small change to the model, the data pipeline, or even a single prompt? How do we ensure that our shiny new improvements don&amp;rsquo;t accidentally break something that was working perfectly before?&lt;/p&gt;</description></item><item><title>Securing and Governing LLM Deployments</title><link>https://ai-blog.noorshomelab.dev/llmops-ai-infra-guide-2026/securing-governing-llm-deployments/</link><pubDate>Fri, 20 Mar 2026 00:00:00 +0000</pubDate><guid>https://ai-blog.noorshomelab.dev/llmops-ai-infra-guide-2026/securing-governing-llm-deployments/</guid><description>&lt;h2 id="introduction"&gt;Introduction&lt;/h2&gt;
&lt;p&gt;Welcome to Chapter 11! So far, we&amp;rsquo;ve explored the exciting world of LLM inference, from building robust pipelines to optimizing for cost and scale. We&amp;rsquo;ve learned how to get our powerful language models up and running efficiently. But what good is a powerful system if it&amp;rsquo;s not secure, compliant, and trustworthy? In the real world, deploying LLMs isn&amp;rsquo;t just about performance; it&amp;rsquo;s crucially about protecting sensitive data, ensuring fair and ethical use, and adhering to legal and regulatory standards.&lt;/p&gt;</description></item></channel></rss>