English

Structured Distillation for Personalized Agent Memory: 11x Token Reduction with Retrieval Preservation

Artificial Intelligence 2026-03-16 v1 Computation and Language Information Retrieval

Abstract

Long conversations with an AI agent create a simple problem for one user: the history is useful, but carrying it verbatim is expensive. We study personalized agent memory: one user's conversation history with an agent, distilled into a compact retrieval layer for later search. Each exchange is compressed into a compound object with four fields (exchange_core, specific_context, thematic room_assignments, and regex-extracted files_touched). The searchable distilled text averages 38 tokens per exchange. Applied to 4,182 conversations (14,340 exchanges) from 6 software engineering projects, the method reduces average exchange length from 371 to 38 tokens, yielding 11x compression. We evaluate whether personalized recall survives that compression using 201 recall-oriented queries, 107 configurations spanning 5 pure and 5 cross-layer search modes, and 5 LLM graders (214,519 consensus-graded query-result pairs). The best pure distilled configuration reaches 96% of the best verbatim MRR (0.717 vs 0.745). Results are mechanism-dependent. All 20 vector search configurations remain non-significant after Bonferroni correction, while all 20 BM25 configurations degrade significantly (effect sizes |d|=0.031-0.756). The best cross-layer setup slightly exceeds the best pure verbatim baseline (MRR 0.759). Structured distillation compresses single-user agent memory without uniformly sacrificing retrieval quality. At 1/11 the context cost, thousands of exchanges fit within a single prompt while the verbatim source remains available for drill-down. We release the implementation and analysis pipeline as open-source software.

Keywords

Cite

@article{arxiv.2603.13017,
  title  = {Structured Distillation for Personalized Agent Memory: 11x Token Reduction with Retrieval Preservation},
  author = {Sydney Lewis},
  journal= {arXiv preprint arXiv:2603.13017},
  year   = {2026}
}

Comments

6 figures. Code: https://github.com/Process-Point-Technologies-Corporation/searchat

R2 v1 2026-07-01T11:18:28.819Z