Unleashing AI Potential in Documentation: My Experiment with LLMs
In an age where AI is reshaping our workflows, I dove into experimenting with various language models (LLMs) to optimize documentation processes. Here’s what I discovered:
- Goals: Evaluate different LLMs for tasks like title generation, spell-checking, and code automation.
- Experiments:
- Transitioning documents from British to American English using Claude Sonnet 4.5 was insightful.
- After testing various LLMs, I found that their outputs varied significantly; some were surprisingly effective, while others were exceedingly slow.
Key findings include:
- LLMs require quality groundwork—humans must lay the foundation.
- Use cases reveal that while LLMs can save time, thorough human oversight remains vital.
This journey not only refines documentation quality but emphasizes that structured documentation benefits both AI and users alike.
💬 What’s your experience with AI in documentation? Share your thoughts below!