Open source memory layer so any AI agent can do what Claude.ai and ChatGPT do

alash3al.github.io

38 points

alash3al

9 hours ago


15 comments

Incipient 32 minutes ago

I still haven't found useful "memory". It's either an agents.md with a high level summary, which is fairly useless for specific details (eg "editing this element needs to mark this other element as a draft") or something detailed and explaining the nitty gritty, which seems to give too much detail such that it gets ignored, or detail from one functional area contaminates the intended changes in another functional area.

The only approach I've found that works is no memory, and manually choosing the context that matters for a given agent session/prompt.

  • jvwww a few seconds ago

    Yeah I feel the same way. Wonder when/if we'll get continual learning from these models. I feel like they are smart enough already but their lack of real memory makes them a pain to deal with.

  • clutter55561 26 minutes ago

    All the memories Claude created for me fell in the category remember-to-not-forget, so I disabled it altogether.

dwb 36 minutes ago

I’m certainly on the lookout for something like this and I’m happy to see your account has published software from before the LLM boom as well. I guess I’d like some kind of LLM-use-statement attached to projects: did you use an LLM to generate this, and if so, how much and what stages (design, build, test)? How carefully did you review the output? Do you feel the quality is at least what you could have produced by yourself? That sort of thing.

Not casting aspersions on you personally, I’d really like this from every project, and would do the same myself.

  • dennisy 22 minutes ago

    This is a fair question, but not one I feel we can let people self answer.

    I doubt many people will honestly admit they did no design, testing and that they believe the code is sub par.

    It does give me an idea that maybe we need a third party system which can try and answer some of the questions you are asking… of course it too would be LLM driven and quite subjective.

_pdp_ 2 hours ago

Well the project is promising something without providing any details how exactly this is achieved which to me is always a huge red flag.

Digging deeper I can see it is effectively pg_vector plus mcp with two functions: "recall" and "remember".

It is effectively a RAG.

You can make the argument that perhaps the data structure matters but all of these "memory" systems effectively do the same and none of them have so far proven that retrieval is improved compared to baseline vector db search.

adithyassekhar an hour ago

Is this only for vibecoders who work alone?

If I am working on a real project with real people, it won’t have the complete memory of the project. I won’t have the complete memory. My memory will be outdated when other PRs are merged. I only care about my tickets.

I am starting to think this is not meant for that kind of work.

great_psy 3 hours ago

LLM Memeory (in general, any implementation) is good in theory.

In practice, as it grows it gets just as messy as not having it.

In the example you have on front page you say “continue working on my project”, but you’re rarely working on just one project, you might want to have 5 or 10 in memory, each one made sense to have at the time.

So now you still have to say, “continue working on the sass project”, sure there’s some context around details, but you pay for it by filling up your llm context , and doing extra mcp calls

  • dennisy 2 hours ago

    True! But this is a very naive implementation, a proper implementation could surpass these challenges.

    • awestroke 18 minutes ago

      Well let's talk again when the problems have been solved, then. Until then, manually curated skills and documentation will beat this

  • vasco 2 hours ago

    And once you're being specific about what it needs to remember you are 0 steps away from having just told AI to write and read files with the "memory"

bobkb an hour ago

There is already memory palace ?

clutter55561 an hour ago

Isn’t “memory” just another markdown file that the LLM reads when starting a new session?

I keep two files in each project - AGENTS (generic) and PROJECT (duh). All the “memory” is manually curated in PROJECT, no messy consolidation, no Russian roulette.

I do understand that this is different because the vector search and selective unstash, but the messy consolidation risk remains.

Also not sure about tools that further detach us from the driver seat. To me, this seems to encourage vibe coding instead of engineering-plus-execution.

Not a criticism on the product itself, just rambling.

dennisy 3 hours ago

Congratulations on the launch!

There is lots of competition in this space, how is your tool different?

alash3al 9 hours ago

Platform memory is locked to one model and one company. Stash brings the same capability to any agent — local, cloud, or custom. MCP server, 28 tools, background consolidation, Apache 2.0.