Summary
Cross-validation for LLMs requires careful consideration of their unique characteristics and capabilities. By implementing these advanced techniques and best practices, you can obtain a more robust and comprehensive assessment of your LLM’s performance across various domains and tasks.
As we move forward, the next chapter will delve into the crucial topic of interpretability in LLMs. We’ll explore techniques for understanding and explaining the outputs and behaviors of LLMs.