Research Finding
TA-Mem (arXiv:2603.09297, Mar 10, 2026) shows that adaptive tool selection for memory retrieval (choosing exact-key lookup vs. vector similarity per query) outperforms fixed retrieval pipelines for heterogeneous query types.
Applicability
Zeph currently routes all memory retrieval through BM25+RRF hybrid search + MMR re-ranking. This is suboptimal for:
- Episodic queries ("what did I say about X yesterday?") — benefit from exact key/timestamp lookup
- Semantic queries ("find similar concepts to Y") — benefit from vector similarity
Design Sketch
Add a lightweight query classifier before retrieval dispatch in zeph-memory:
- Classify incoming
recall query as episodic (keyword + temporal cues) or semantic
- Route to appropriate retrieval path:
- Episodic: SQLite FTS5 + timestamp range filter
- Semantic: existing BM25+RRF+MMR pipeline
- No schema changes required — both retrieval paths already exist
The query classifier could be a simple regex/heuristic ("yesterday", "last week", "when did", "remember when") without requiring an LLM call.
Expected Benefit
Improved recall for episodic queries without degrading semantic search quality.
Source
Research session 2026-03-13. arXiv:2603.09297 (TA-Mem).
Research Finding
TA-Mem (arXiv:2603.09297, Mar 10, 2026) shows that adaptive tool selection for memory retrieval (choosing exact-key lookup vs. vector similarity per query) outperforms fixed retrieval pipelines for heterogeneous query types.
Applicability
Zeph currently routes all memory retrieval through BM25+RRF hybrid search + MMR re-ranking. This is suboptimal for:
Design Sketch
Add a lightweight query classifier before retrieval dispatch in
zeph-memory:recallquery asepisodic(keyword + temporal cues) orsemanticThe query classifier could be a simple regex/heuristic ("yesterday", "last week", "when did", "remember when") without requiring an LLM call.
Expected Benefit
Improved recall for episodic queries without degrading semantic search quality.
Source
Research session 2026-03-13. arXiv:2603.09297 (TA-Mem).