Evolution of AI Agents Image Credit- Brij Kishore Pandey
Python, the AI agent evolution is fascinating, but is it really progress, or just a sophisticated illusion, boss?
From 30 seconds to 0.24 seconds ⚡️ See how GitLab moved to ClickHouse to power real-time analytics for 50M+ users across Gitlab, GitLab Dedicated, and self-managed deployments.
This is exactly where businesses start to see ROI: persistent memory, controlled tool use, and multi-step autonomy.
Useful map. The jump from RAG to stateful, multi-step agents is a chasm. All the really tricky problems—state management, tool reliability, error recovery—are hiding in that gap.
Imagine a "GAIA AI Attractor" Model. It describes how a Gaia-oriented agent becomes a stable equilibrium point in a multi-agent AI ecosystem, guiding potentially destructive competing or cooperating agents toward mutually beneficial, long-term, and ecologically balanced behaviour
United States Trends
- 1. Mets 34.4K posts
- 2. Diaz 76.8K posts
- 3. Dodgers 38.8K posts
- 4. Maresca 28.1K posts
- 5. GeForce Season 3,603 posts
- 6. Kentucky State University 1,831 posts
- 7. Stearns 11.1K posts
- 8. Rashford 13.2K posts
- 9. Philip Rivers 42.8K posts
- 10. Schwarber 18.1K posts
- 11. Alonso 62.7K posts
- 12. Gittens 6,070 posts
- 13. Kounde 26.8K posts
- 14. Atalanta 35.7K posts
- 15. Reds 18.3K posts
- 16. Cohen 11.8K posts
- 17. Fofana 5,820 posts
- 18. #TrumpInflationCrisis 9,867 posts
- 19. Deep Blue Sea N/A
- 20. Dictionary 7,699 posts
Something went wrong.
Something went wrong.