SMRTR AIJan 25, 2026Daily.dev

Getting Real With LLMs

SMRTR summary

Current Large Language Models excel at simple coding tasks with predictable outcomes and complex isolated projects, but struggle with real-world enterprise development where simple changes can have cascading effects across interconnected systems. Using a complexity versus side-effects matrix, engineers should focus on identifying tasks that fall into easily automated categories while developing strategies to reduce system coupling and better map dependencies for more challenging scenarios.

SMRTR provides this summary for quick context. The original article belongs to Daily.dev.

Read the original article
SMRTR AI

Get the next batch of curated summaries in your inbox.

This archive is built from SMRTR newsletter summaries. Subscribe for hand-picked stories without the extra noise.