• Seattle Skeptics on AI
Seattle Skeptics on AI

Tag: software development workflows

Prompting LLMs for Code: Proven Patterns for Unit Tests and Refactors
Prompting LLMs for Code: Proven Patterns for Unit Tests and Refactors

Tamara Weed, May, 28 2026

Master LLM code generation with proven prompt patterns. Learn how to use Context/Instruction and Recipe frameworks to generate precise unit tests and refactors, reducing errors and saving time.

Categories:

Enterprise Technology

Tags:

LLM prompt engineering code generation patterns unit test prompts refactoring with AI software development workflows

Recent post

  • How Large Language Models Communicate Uncertainty to Avoid False Answers
  • How Large Language Models Communicate Uncertainty to Avoid False Answers
  • Domain-Specialized Generative AI Models: Why Industry-Specific AI Outperforms General Models
  • Domain-Specialized Generative AI Models: Why Industry-Specific AI Outperforms General Models
  • Build vs Buy for Generative AI Platforms: Decision Framework for CIOs
  • Build vs Buy for Generative AI Platforms: Decision Framework for CIOs
  • How to Integrate Stripe and Supabase in Vibe-Coded Apps (2026 Guide)
  • How to Integrate Stripe and Supabase in Vibe-Coded Apps (2026 Guide)
  • Performance vs Cost Curves: Finding Elbows for LLM Investment Decisions
  • Performance vs Cost Curves: Finding Elbows for LLM Investment Decisions

Categories

  • Science & Research
  • Enterprise Technology

Archives

  • June 2026
  • May 2026
  • April 2026
  • March 2026
  • February 2026
  • January 2026
  • December 2025
  • November 2025
  • October 2025
  • September 2025
  • August 2025
  • July 2025

Tags

vibe coding prompt engineering large language models generative AI Large Language Models AI coding tools AI governance transformer architecture LLM security AI compliance data privacy AI development AI coding assistants responsible AI LLM optimization AI coding transformer models AI code security enterprise AI GitHub Copilot

© 2026. All rights reserved.