The Evolution of AI Agents
Last updated
Last updated
AI agents are developing at an exponential pace have evolved from:
Rule-Based Chatbots
Static, task-specific chatbots using predefined rules and logic trees
AI-Powered Conversational Agents
Dynamic, context-aware Agents with memory, powered by LLMs.
Proactive Multi-Agent Systems
Collaborative, highly specialised system of AI agents handling complex tasks.
Autonomous Worlds
Dynamic, persistent worlds and economies where AI agents collaborate, adapt, and evolve.
Symbiotic AI-Human Ecosystems
AI and humans co-create, govern, and innovate in interconnected digital and physical realms.
Autonomous Worlds allow agents to:
Pursue multiple objectives in dynamic environments.
Collaborate with other agents and humans to tackle complex problems.
Operate transparently, with blockchain ensuring verifiability and trust.
These systems emulate the persistence of natural ecosystems or economic structures, evolving through defined rules and interactions.
The concept of diegesis defines what is "inside" the World. Entities respect predefined introduction rules, ensuring coherence and trust. For example, Bitcoin’s diegetic rules are defined by cryptographic protocols. Similarly, Autonomous Worlds enforce consistent, transparent boundaries to maintain their integrity.