These answers come from the year-long archive of my previous chatbot that lived on my previous site iamnicola.ai. I’ve curated the most useful sessions—real questions from operators exploring AI workflows, experimentation, and conversion work—and lightly edited them so you get the original signal without the noise.

ai-workflows

How do I scale a RAG system?

Complete Guide

The Complete Guide to AI Workflow Automation for Businesses

Everything you need to know about implementing AI workflows, from strategy to execution. Learn how to identify automation opportunities, choose the right tools, and measure ROI.

Direct Answer

RAG (Retrieval-Augmented Generation) combines search and generation to provide accurate, grounded answers. It retrieves relevant information from your knowledge base, then uses that context to generate responses. This approach reduces hallucinations and keeps answers current without retraining models.

Key Considerations

  • Start with clear objectives and success metrics
  • Iterate based on data and feedback
  • Focus on user needs and business outcomes
  • Maintain quality while moving quickly

Takeaway & Related Resources

Want to go deeper?

If this answer sparked ideas or you'd like to discuss how it applies to your team, let's connect for a quick strategy call.

Book a Strategy Call