AI RESEARCH
Real-Time Text Transmission via LLM-Based Entropy Coding over Fixed-Rate Channels
arXiv CS.LG
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ArXi:2605.01991v1 Announce Type: cross Learning, prediction, and compression are intimately connected: a model that accurately predicts the next symbol in a sequence can be coupled with a source coder to compress that sequence near its information-theoretic limit. When tokenized characters arriving at a fixed reading pace are encoded into variable-length codewords and streamed over a fixed-rate channel, a queue forms whose per-token delay depends on the mean and variance of the bit lengths and on the coder's algorithmic latency.