Are Multi-Agent Systems the Key to Unlocking LLM Potential?
Large Language Models (LLMs) struggle with scalability, but Multi-Agent Systems (MAS) could offer a breakthrough by distributing tasks among specialized agents. The MALLM framework tests diverse…
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