|
|
|
|
|
by ClaireGz
108 days ago
|
|
Interesting direction. One thing I keep seeing in practice is that “memory” problems are often less about storage and more about structure + retrieval strategy. Vector search helps sometimes, but for a lot of agent workflows we’ve had better results with explicit context organization (files, metadata, rules) rather than semantic similarity alone. Curious how you’re thinking about memory updates over time — append-only vs rewriting summaries? |
|
In Mneme, updates are intentionally asymmetric: – Facts are append-only and explicitly curated (they’re meant to be boring and stable). – Task state is rewritten as work progresses. – Context is disposable and aggressively compacted or dropped.
The idea is that only a small subset of information deserves long-term durability; everything else should be easy to overwrite or forget.
This reduces the need for heavy retrieval logic in the first place, since the model is usually operating over a much smaller, more explicit working set.