Future prospects of agentic AI using LLMs
Looking to the future, several exciting possibilities for agentic AI using LLMs come to the forefront:
- Multi-agent collaboration: Agents working together in a shared environment can exchange information, strategize, and coordinate their actions for more complex tasks.
- Long-term memory and continual learning: Agents could maintain a lifelong memory and continue learning from their interactions, becoming more intelligent over time.
- Integration with robotics and physical world interaction: As LLM-based agents evolve, they may integrate with physical systems, enabling autonomous robots to perform tasks in the real world.
- Meta-learning and self-improvement: Future agents could learn to optimize their learning processes, becoming better at learning from experiences.
- Explainable AI and transparent decision-making: Ensuring that LLM-based agents can explain their decisions is crucial for building trust and ensuring accountability...