Learn how LLM-based testing differs from traditional software testing and implement rules-based testing to assess your LLM application.
Learn how LLM-based testing differs from traditional software testing and implement rules-based testing to assess your LLM application.
In this course, you will learn how to create a continuous integration (CI) workflow to evaluate your LLM applications at every change for faster, safer, and more efficient application development.
When building applications with generative AI, model behavior is less predictable than traditional software. That’s why systematic testing can make an even bigger difference in saving you development time and cost.
Continuous integration, a key part of LLMOps, is the practice of making small changes to software in development and thoroughly testing them to catch issues early when they are easier to fix. With a robust automated testing pipeline, you’ll be able to isolate bugs before they accumulate – when they’re easier and less costly to fix. Automated testing lets your team focus on building new features, so that you can iterate and ship products faster.
After completing this course, you will be able to:
Advanced AI assistant for natural conversations and problem-solving
Create stunning AI-generated artwork and images from text descriptions
AI-powered writing assistant integrated into your workspace
AI content generator for marketing copy and creative writing