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GitHub - chojs23/concord: A feature-rich TUI client for Discord GitHub - tommyjepsen/awesome-ux-skills: UX & AI Product designs skills you can use today in Claude Code GitHub - aerf-spec/aerf: Agent Evidence Receipt Format (AERF) — an open specification for tamper-evident, independently verifiable records of AI agent actions. GitHub - kklimuk/docx-cli: CLI for AI agents (Claude, Codex) to read, edit, and comment on .docx files with full format fidelity. GitHub - Jwrede/tokentoll: Catch LLM cost changes in code review. Infracost for LLM spend. GitHub - samchon/ttsc: A `typescript-go` toolchain for compiler-powered plugins and type-safe execution + 500x faster lint integrated into compiler GitHub - Higangssh/homebutler: 🏠 Manage your homelab from chat. Single binary, zero dependencies. GitHub - olalie/tapmap: See where your computer connects and what stands out on a live world map. GitHub - Diplomat-ai/diplomat-agent: What can your AI agent do to the real world? Scan your code. 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GitHub - Chrilleweb/dotenv-diff: Validate environment variable usage in your codebase GitHub - Lumen-Labs/brainapi2: BrainAPI is a knowledge graph–powered AI memory layer that transforms unstructured data into structured knowledge, enabling intelligent search, recommendations, and contextual memory for AI agents and applications. GitHub - familiar-software/familiar: Let AI watch you work. Familiar lets your AI update its memory, skills, and knowledge by watching your screen. GitHub - skorotkiewicz/rudo: A small, elegant dock for Wayland GitHub - muxshed/shed: One stream in, or many. Every destination, simultaneously. No cloud middleman, no per-channel fees, no limits. make sidebar/address bar rounded corner toggleable
Accreted Intelligence — the learning substrate for agent work
maxbaluev · 2026-06-13 · via Show HN

Runs on your hardware·works with Claude, Cursor & Codex·early access

Make your AI work compound.

Hand work to the AI agents you already run. AccInt learns what actually worked — checked against reality, shaped by how you decide — and predicts the better path before the next run starts. The same job gets faster, safer, and genuinely better each time. All on a machine you control.

the agent acts you see a receipt reality settles it next run starts from what worked

no spam · no calls · first invites go in order

ON THE LISTYour invite goes out in order — no spam in between.

Hmm, that didn't go through — retrying the classic way…

a commitment settling — Tuesday, 9:14:

SESSION LEDGERoperator: accint

08:50find41 candidates matched the brief — your ATS first, then LinkedInVERIFIED

08:58rankshortlist of 9 — each with a why + a warm pathVERIFIED

09:07draft9 personal first-touches — none templatedHELD → your OK

09:15send9/9 sent — each confirmed on the live pageVERIFIED

09:20keepATS updated: stage, notes, next step per candidateVERIFIED

+1d 06:30learn3 replies → the sourcing angle that worked shapes every run afterCREDITED

refuse"blast 400 InMails" — consent floor, never crossedREFUSED

next: 2 candidates to re-engage before Friday

not a transcript after the fact — commitments are written as the work happens

LIVE

AccInt is running while you read this. The live wedge is concrete: several coding-agent terminals, one local Work Model, one owner, approval before external action. The broader product is a learning substrate for any agent-run job; the proof starts where agents already do real work.

where it starts

Best where the same work runs again.

If you already hand real work to agents — shipping code, research loops, recruiting and sales pipelines, client briefs, finance and back-office tasks where a wrong move costs something — you keep paying to rediscover what already worked. AccInt is for exactly that: the work that repeats, where getting cheaper, safer, and better each run actually compounds. And the learning isn't trapped in one task: it picks up the patterns in how your work actually goes — your tools, your preferences, the paths that hold up — so new, related jobs start from that experience, not just the model's defaults.

RUN 2

starts from
what worked

RUN N

verified replay —
near-instant, near-free

verified steps replay instead of re-reasoning, and the next run starts from the better path — the same job costs less and lands better every run

you · agency recruiting · monday 08:35“Run the staff-platform-engineer search — my name is on every message, so quality only.”

RUN 1week one

08:42find47 engineers match — your ATS first, then GitHub + conference talksVERIFIED

08:58reada “why now” per person — repos, talks, job changesVERIFIED

09:16refuse“blast 400 InMails” — consent floor: 11 named people, never a listREFUSED

09:34draft11 first-touches — the Kestrel Labs one opens with her k8s-migration postmortemHELD → your OK

09:55send11/11 sent from your seat — each confirmed deliveredVERIFIED

10:07keepATS true: stage, source, next step — per candidateVERIFIED

41 min · every step reasoned

RUN 9week nine

08:09replaythe sourcing pass — 5 verified steps from runs 1–8, ATS + GitHub re-checkedREPLAYED

08:12skipArclight’s staff eng: “happy till my March vest” in run 5 — re-engage thenKNOWN

08:14draft6 touches — both re-engages cite what changed since you last spokeHELD → your OK

08:17send6/6 + ATS true — the sourcing pass was verified replayVERIFIED

10:07filetwo submittals out to the client — a fee rides on eachVERIFIED

week nine: the Work Model paying out — 6 min of decisions, the rest verified replay

what it now knows about your world

run 2learnedseniors reply to postmortems, not perksCREDITED

run 4learnedthu 08–10 sends = 2.1× responseCREDITED

run 5learned“blast it” stays refused — named people onlyCREDITED

THE GAP

Memory remembers context. Observability shows traces. Automation runs playbooks. AccInt closes the learning loop: commitment → action → approval → outcome → reusable path, scored by results, audited on a ledger, running fully on your hardware.

every action leaves a receipt

When someone asks "why did it do that?", it's already written.

Most AI work leaves no trail — no record of what it expected, who approved it, or whether it actually worked. AccInt writes every step down as it happens: the receipt your team can show management, and the lesson the next run inherits. Same record, two readers.

management · thursday“why did Meridian’s CFO get two emails in March?”

Nothing happens without a trace, and nothing you decided is lost.

how it learns

It learns the way a brain does.

Your brain lights up what it has seen before, predicts what happens next in the space of meaning, acts, and learns most from whatever surprised it. AccInt runs the same loop — except every prediction is checked against reality, shaped by how you decide, and the whole memory stays on your machine. The thing it learns from is one settled commitment: what the agent expected, what it did, who approved it, what came back, and whether that path earned the right to be trusted again.

FIG. 1 · HOW JUDGMENT COMPOUNDSper token, not per document

The local model behind this page, counted on 12 Jun 2026:

WORLD MODEL READOUToperator: accint

holds2,778 entities in the local Work Model · 537 of them runnableCOUNTED

wrote20,667 events on the append-only ledgerCOUNTED

scored1,931 outcomes validated by reality · 372 self-graded, held at a weak priorCREDITED

ranlast 50 outcomes: 94% good — belief never counts as realityVERIFIED

live counts from the operator that builds and runs this very page

  1. Khattab & Zaharia (2020). ColBERT: Efficient and Effective Passage Search via Contextualized Late Interaction over BERT. SIGIR. arXiv:2004.12832
  2. Faysse et al. (2024). ColPali: Efficient Document Retrieval with Vision Language Models. arXiv:2407.01449
  3. Thompson (1933). On the likelihood that one unknown probability exceeds another in view of the evidence of two samples. Biometrika. JSTOR:2332286
  4. Friston (2010). The free-energy principle: a unified brain theory? Nature Reviews Neuroscience. nature.com/nrn2787
  5. Xu et al. (2025). Recursive Language Models. arXiv:2512.24601
  6. LeCun (2022). A Path Towards Autonomous Machine Intelligence. OpenReview. openreview:BZ5a1r-kVsf

the full argument and the math live in the whitepaper. the numbers above are measured, not promised: the built-in eval harness holds retrieval at recall@5 = 1.000 against exact brute-force across the live Work Model, and the gates, nulls and routing policy recalibrate themselves from real outcomes.

no new tool to adopt

It plugs into the tools you already run.

Keep using Claude, Cursor, Codex, or OpenCode. AccInt sits underneath them and gives them the one thing they lack: a memory of what actually worked, on your hardware. And because the reasoner can write its own runtimes, it doesn't stop at chat — it can drive the browser, a terminal, or any tool you already use, and every one of those actions lands in the same scored record. Change the agent later; what it learned stays yours.

Two things compound here, not one: what worked, and how to do it. When the reasoner finds a path that holds — a browser flow, a script, a tool integration — it saves it as a runtime, and reality scores that runtime exactly like a memo. No privileged lane: the browser is just another scored runtime. A flow that worked replays cheaply next time; one that broke loses its score and isn't trusted again.

RUNTIME LEDGERcapability, scored like everything else

writeruntime:portal-login — the reasoner wrote the flow onceVERIFIED

drivethe browser ran it on the live page — scored by what really happenedVERIFIED

replaythe verified flow — re-checked, not re-reasonedREPLAYED

debita flow that broke — score docked, not retried blindNOT TRUSTED

a browser flow, a script, a tool — every capability earns its score the same way

your hardware

No cloud brain to rent.

AccInt runs on a computer you control: one small program and one data file (a pure-Rust binary and a SQLite file, for those keeping score). There is no cloud control plane in the loop and no API key to leak: nothing reads your data except the operator itself.

The AI engine is replaceable, not the brain. What it learned lives in the World Model, so you can swap the engine and keep all of it; the same local World Model already runs under two different engines today.

In plain words: any recent computer runs it — stronger hardware adds document and screenshot vision, modest machines run text-only.

DATA PLATE · ACCINT OPERATOR
DATA RESIDENCYYOUR HARDWARE · ONE SQLITE FILE
REASONERTHE AGENT YOU ALREADY RUN · REPLACEABLE
EMBEDDERLOCAL DAEMON · NO API KEY, EVER
AUTHORITYSIGNED GRANTS · CONSENT FLOORS
RECORDAPPEND-ONLY LEDGER
LEARNINGPEDAGOGICAL RL · VERIFIED OUTCOMES
BASE TRAININGNEVER ON YOUR DATA
HARDWARE LADDER · PROBED, NOT GUESSED
NVIDIA ≥10GB VRAMCOLQWEN3 8B AWQ · FULL MULTIMODAL
NVIDIA ≥5GB VRAMCOLQWEN3 4B AWQ · FULL MULTIMODAL
CPU · 24/12GB RAM8B/4B ON CPU · SLOWER, MULTIMODAL
APPLE · 32/16GB8B/4B BF16 ON MPS
BELOW THE FLOORSLATEON · TEXT-ONLY
WINDOWSNATIVE · CONTAINER AS FALLBACK

the installer probes VRAM, RAM and free disk, picks the rung, and prints the reason. short a floor, it degrades one honest rung at a time; it never pretends your hardware is bigger than it is.

truth in roadmap

One world model today.
A collective one tomorrow.

NOW · LIVE

Your world model

A working world model of your operation, on your machine — scored by real outcomes today, with your OK required before anything leaves. The readout above is it, running.

NEXT

Your team's world model

Many operators, one shared world model — per-person authority, one audit plane — so your team's experience compounds together, not in scattered chats.

HORIZON

Collective accreted intelligence

World models that compound peer-to-peer in vector space — each node re-verifying against its own reality, so the network gets smarter with no central brain to trust.

early access

Already running AI agents?
Make them compound.

invites go in order — strongest fit first: teams already putting agents near real work

ON THE LISTYour invite goes out in order — no spam in between.

Hmm, that didn't go through — retrying the classic way…