Tri-City AI Links
Vibe Coding vs AI Pair Programming: Choosing the Right AI Workflow
Discover the difference between Vibe Coding and AI Pair Programming. Learn when to prioritize speed with vibe coding and when to ensure quality with AI pair programming.
Grounding Prompts in Generative AI: How to Use RAG for Accurate AI Responses
Learn how grounding prompts and Retrieval-Augmented Generation (RAG) stop AI hallucinations and bring enterprise-grade accuracy to generative AI outputs.
A/B Testing Prompts in Generative AI: Experimentation Frameworks That Scale
Stop guessing and start measuring. Learn how to implement a scalable A/B testing framework for generative AI prompts to improve LLM performance with data.
Economic Impact of Vibe Coding: Cost Curves and Competitive Dynamics
Explore the economic shift of vibe coding, where AI turns intent into software. Learn about the 80% drop in MVP costs and the risks of long-term technical debt.
Healthcare LLMs for Documentation and Triage: A Practical Guide
Explore how Large Language Models (LLMs) are transforming healthcare through automated clinical documentation and patient triage, including real-world accuracy and risks.
Safety Use Cases for LLMs in Regulated Industries: A Practical Guide
Explore how Large Language Models (LLMs) enhance safety and compliance in regulated sectors like construction, nuclear, and defense through real-world use cases.
Legal Review Steps for Vibe-Coded Features Handling Customer Data
Avoid million-euro fines with a rigorous legal review process for vibe-coded features. Learn the essential steps to secure customer data and ensure GDPR and CRA compliance.
Self-Supervised Learning for Generative AI: Pretraining and Fine-Tuning Guide
Learn how Self-Supervised Learning (SSL) powers Generative AI, from the massive pretraining phase to the precise fine-tuning of models like GPT-4 and DALL-E.
Rotary Position Embeddings (RoPE) vs ALiBi: Which LLM Positioning Method Wins?
Compare RoPE and ALiBi positional embeddings in LLMs. Learn how rotation matrices and linear biases solve the context window problem for models like Llama.
AI-Generated Code Test Coverage: Realistic Targets for 2026
Stop relying on the 80% rule. Learn why AI-generated code requires risk-adjusted test coverage targets and how to use mutation testing to prevent costly production bugs.
Domain-Specialized Models for Code: When Fine-Tuning Beats General LLMs
Discover why domain-specialized AI models outperform general LLMs in coding, from lower hallucination rates to superior security and efficiency.
Evaluating LLM Agents: Measuring Task Success, Safety, and Cost
Learn how to evaluate LLM agents using task success rates, safety audits, and cost-efficiency metrics to move beyond simple accuracy and ensure production reliability.