Well, I've been using it more than two weeks (though I did just spend a month in Tokyo) so ... not sure how to answer that :)
Do you mean generally though - how many facts does it extract from a typical document of X length? Or do you mean what my own personal corpus currently is?
Size of your personal corpus is a rough signal of usefulness. If you've been using it a while and you have 500 facts, thats very different from 5000 facts.
My crappy personal system is a telegram channel "Today I Learned" that grows at roughly 5 messages per day. The search is obviously much worse than your tool.
The design of no rewrites for facts storage was an approach I have not seen from any of my friends' agent memory setups, so that difference struck my curiosity for how well its working in practice.
If you're talking about the "Fastrecall" part of it, it's clamped to around 3000 entries. Beyond that...I mean...it's just a JSON file. How much do you hate yourself? lol :)
I use mine as intended (well, by me) as a short term memory store with a TTL of 14 days. Right now it has...350ish stored facts with different expiration dates. You can play around with the settings and max resets (touches), but if ctx > max_items, janitor rolls in and the oldest get pruned anyway.
If you're talking about the chat bloat control part (cut the crap), I set mine to keep the last 2 user/assistant pairs and a soft cap of 2000 characters. That middle part obviously decays during the chat. I like to keep my chatty fast.
If you're asking about the KB (attach) system: generally speaking, the SUMM function seems to generate a summary of upto about 1500 characters. That's what...250 words? Short and sweet...because again, potato pc + smart grep = don't be stupid.
In theory, the KB thing is limited by you SSD and pain tolerance. I have about 1500 items I query against and it's still in the sub-secondish range.
Mentats / vault? Scales via Qdrant.
Does that answer it? None of this shit is enterprise grade; it's purely for personal use.
Bro, what you get up to with your bro, is between you and your bro, bro.
Also, Claude said he likes me better than you and he'd know because he's French and old soul and shit.
PS: The concrete thing is a local control layer that makes my LLM shut up unless it can cite my docs. Plus I can run in on my p.o.s P1000 and not line NVIDIA shareholders pockets by buying more VRAM.
Here - an example. You can try it yourself. Pick any topic you want that has what you consider a definitive FAQ and attach to router to something with a brain.
I asked my router to ask: "WTF is AI Horde?" and I’m posting the full outputs because this shows (a) how it behaves in different modes, and (b) how and when it’s wrong in a loud, readable way.
1) Default / YOLO mode (no KB attached). Cold question. Model argues from its own internal priors.
AI-horde is a decentralized platform where users rent or sell computational power (GPU time) to run AI models. It connects AI model developers who need processing with individuals or organizations who have idle GPU hardware. The platform uses blockchain-like tokens to manage payments and incentives. It’s not a single AI system but a marketplace for GPU resources.
Missing details: Specific token mechanics, current model library, or user onboarding flow could affect accuracy. For example, if token economics changed recently, the explanation might not reflect current conditions.
Confidence: Medium | Source: Model
My take: Meh. Sort of. Wrong specifics. Fine for a cheap guess, not fine for “I’m betting money on this.” Note: it clearly identifies "meh, dunno" parts. Call it a 4/10 for factual correctness, with a clear shoulder shrug.
2) Web-enabled mode
Same question, but allowed to pull from the web. Now it sez -
An AI-horde is a free, open-source community service that allows anyone to contribute computing power to generate AI-generated images and text. It functions as a crowdsourced distributed cluster of workers focused on image and text generation tasks [1]. This model resembles collaborative projects like Folding@home, where users share computational resources for a common goal [2].
My take: Better. Still missing details, but broadly right. Let's call it ~7/10.
3) KB mode (FAQ scraped - >>summ new - query)
Here the model is constrained to just what’s in the attached KB summaries.
AI-horde is a decentralized platform for distributed AI computing. It allows users to rent out their idle GPU hardware to run AI models, connecting developers needing processing power with volunteers who provide it through open APIs. The system uses a non-cryptocurrency-based incentive called Kudos to prioritize contributions, where workers earn Kudos for completing tasks, and these are not tradable assets but rather internal metrics of service quality and project loyalty.
Access to AI-horde is managed via API keys; anonymous usage is allowed but receives the lowest priority. The project emphasizes volunteerism and discourages commercialization of Kudos, treating its sale or exchange for money or cryptocurrency as contrary to its ethos. Participation as a worker involves installing the AI-horde client, selecting task types (e.g., image or text generation), configuring supported models, and running the worker to begin earning Kudos.
Confidence: High | Source: Docs
My take: That seems pretty solid well source-grounded. Call it 8/10 based on docs.
Finally -
4) For fun, I then asked it to rank the three prior responses against the KB facts. Here's what it said -
[3] is most correct, scoring 9.5/10. It accurately reflects the core model: decentralized GPU renting via open APIs, Kudos as a non-crypto, non-tradable incentive tied to volunteerism, and the crowdsourced nature of contributions. It also correctly notes access via API keys and lower priority for anonymous use.
[2] is accurate but less complete, scoring 7.5/10. It correctly identifies the crowdsourced, open-source, volunteer-based nature and analogy to Folding@home. However, it omits key specifics like Kudos, API key access, and the explicit non-commercialization stance.
[1] is partially correct but misleading, scoring 6/10. It correctly describes GPU
Confidence: medium | Source: Docs
Point being: ungrounded self-eval is vibes. Grounded evaluation becomes boring and useful. Also, Qwen is an easy marker.
TL;DR
YOLO mode: plausible guesses, sometimes confidently wrong. Same old, same old.
Web mode: better, still imperfect.
KB mode: source-based answers with explicit limits/refusals
I was sick of my AI hallucinating, so I added in the system prompts "Do not hallucinate". Just a quick glimpse into my prompt engineering mind
No. Because that works about as well as telling a fat kid not to eat cake.
Prompts shape style, not epistemics.
What this does is moves the problem out of “please behave” and into hard constraints.
Nice drive by tho.
PS: You understand this is enforced outside the model, right? Or are you here just to try and dunk on someone?
How many facts do you have after using your tool for 2 weeks?
Well, I've been using it more than two weeks (though I did just spend a month in Tokyo) so ... not sure how to answer that :)
Do you mean generally though - how many facts does it extract from a typical document of X length? Or do you mean what my own personal corpus currently is?
Size of your personal corpus is a rough signal of usefulness. If you've been using it a while and you have 500 facts, thats very different from 5000 facts.
My crappy personal system is a telegram channel "Today I Learned" that grows at roughly 5 messages per day. The search is obviously much worse than your tool.
The design of no rewrites for facts storage was an approach I have not seen from any of my friends' agent memory setups, so that difference struck my curiosity for how well its working in practice.
Got it. Answer in 3 parts.
If you're talking about the "Fastrecall" part of it, it's clamped to around 3000 entries. Beyond that...I mean...it's just a JSON file. How much do you hate yourself? lol :)
I use mine as intended (well, by me) as a short term memory store with a TTL of 14 days. Right now it has...350ish stored facts with different expiration dates. You can play around with the settings and max resets (touches), but if ctx > max_items, janitor rolls in and the oldest get pruned anyway.
If you're talking about the chat bloat control part (cut the crap), I set mine to keep the last 2 user/assistant pairs and a soft cap of 2000 characters. That middle part obviously decays during the chat. I like to keep my chatty fast.
If you're asking about the KB (attach) system: generally speaking, the SUMM function seems to generate a summary of upto about 1500 characters. That's what...250 words? Short and sweet...because again, potato pc + smart grep = don't be stupid.
In theory, the KB thing is limited by you SSD and pain tolerance. I have about 1500 items I query against and it's still in the sub-secondish range.
Mentats / vault? Scales via Qdrant.
Does that answer it? None of this shit is enterprise grade; it's purely for personal use.
gooncoding
"bro I spent all weekend in claud code. Its incredible"
"Oh nice, what did you build?"
"Dude my set up is crazy. I've got all the vercel skills. plus custom hooks for every project"
"Sick, what are you building?"
"My set up is so optimized. I'm using, like 5 instances at once"
"Hello bro, stop playing with your dick, answer my questions bro!"
Bro, what you get up to with your bro, is between you and your bro, bro.
Also, Claude said he likes me better than you and he'd know because he's French and old soul and shit.
PS: The concrete thing is a local control layer that makes my LLM shut up unless it can cite my docs. Plus I can run in on my p.o.s P1000 and not line NVIDIA shareholders pockets by buying more VRAM.
Repo’s over there if you want to kick the tires.
Here - an example. You can try it yourself. Pick any topic you want that has what you consider a definitive FAQ and attach to router to something with a brain.
I asked my router to ask: "WTF is AI Horde?" and I’m posting the full outputs because this shows (a) how it behaves in different modes, and (b) how and when it’s wrong in a loud, readable way.
1) Default / YOLO mode (no KB attached). Cold question. Model argues from its own internal priors.
AI-horde is a decentralized platform where users rent or sell computational power (GPU time) to run AI models. It connects AI model developers who need processing with individuals or organizations who have idle GPU hardware. The platform uses blockchain-like tokens to manage payments and incentives. It’s not a single AI system but a marketplace for GPU resources.
Missing details: Specific token mechanics, current model library, or user onboarding flow could affect accuracy. For example, if token economics changed recently, the explanation might not reflect current conditions.
Confidence: Medium | Source: Model
My take: Meh. Sort of. Wrong specifics. Fine for a cheap guess, not fine for “I’m betting money on this.” Note: it clearly identifies "meh, dunno" parts. Call it a 4/10 for factual correctness, with a clear shoulder shrug.
2) Web-enabled mode
Same question, but allowed to pull from the web. Now it sez -
An AI-horde is a free, open-source community service that allows anyone to contribute computing power to generate AI-generated images and text. It functions as a crowdsourced distributed cluster of workers focused on image and text generation tasks [1]. This model resembles collaborative projects like Folding@home, where users share computational resources for a common goal [2].
My take: Better. Still missing details, but broadly right. Let's call it ~7/10.
3) KB mode (FAQ scraped - >>summ new - query)
Here the model is constrained to just what’s in the attached KB summaries.
AI-horde is a decentralized platform for distributed AI computing. It allows users to rent out their idle GPU hardware to run AI models, connecting developers needing processing power with volunteers who provide it through open APIs. The system uses a non-cryptocurrency-based incentive called Kudos to prioritize contributions, where workers earn Kudos for completing tasks, and these are not tradable assets but rather internal metrics of service quality and project loyalty.
Access to AI-horde is managed via API keys; anonymous usage is allowed but receives the lowest priority. The project emphasizes volunteerism and discourages commercialization of Kudos, treating its sale or exchange for money or cryptocurrency as contrary to its ethos. Participation as a worker involves installing the AI-horde client, selecting task types (e.g., image or text generation), configuring supported models, and running the worker to begin earning Kudos.
Confidence: High | Source: Docs
My take: That seems pretty solid well source-grounded. Call it 8/10 based on docs.
Finally -
4) For fun, I then asked it to rank the three prior responses against the KB facts. Here's what it said -
[3] is most correct, scoring 9.5/10. It accurately reflects the core model: decentralized GPU renting via open APIs, Kudos as a non-crypto, non-tradable incentive tied to volunteerism, and the crowdsourced nature of contributions. It also correctly notes access via API keys and lower priority for anonymous use.
[2] is accurate but less complete, scoring 7.5/10. It correctly identifies the crowdsourced, open-source, volunteer-based nature and analogy to Folding@home. However, it omits key specifics like Kudos, API key access, and the explicit non-commercialization stance.
[1] is partially correct but misleading, scoring 6/10. It correctly describes GPU
Confidence: medium | Source: Docs
Point being: ungrounded self-eval is vibes. Grounded evaluation becomes boring and useful. Also, Qwen is an easy marker.
TL;DR
YOLO mode: plausible guesses, sometimes confidently wrong. Same old, same old.
Web mode: better, still imperfect.
KB mode: source-based answers with explicit limits/refusals
KB-grounded ranking: reproducible, source-anchored adjudication
Repeatable demo. Attach good model and try it yourself.