新论文"LLMs Do Not Always Need Readable Language"提出BabelTele压缩写作风格,让LLM间通信混合缩写、符号、多语言片段及非传统结构,替代人类自然语言的长文本。即使失去人类可读性,模型仍能回答、记忆并在智能体间传递信息。最强结果:BabelTele保持约99.5%语义保真度,同时将文本压缩至原始长度的27.9%。
LLMs may not need human-style language.
i.e. future AI systems might save context space by using dense model-readable messages instead of long normal prose.
The authors propose BabelTele, a compressed writing style that can mix abbreviations, symbols, fragments from different languages, and unusual structure.
To a capable language model, it can still carry enough structure to answer questions, preserve memory, and pass information between agents.
The point is that human readability, natural-language fluency, and machine recoverability are separable properties.
Human prose carries redundancy because humans need rhythm, grammar, context, and reassurance.