Add the hexagonal architecture section (skeleton/nervous-system/cortex layering), name the tasks/knowledge/enforce ports as deferred, and extend the roadmap with M5-M7. Clarifies that the state machine owns transitions and the LLM advises within the rails. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
13 KiB
AntiDrift Go Reimagining — Design
Date: 2026-05-31
Purpose
AntiDrift is being reimagined from its current Rust implementation (~7,500 lines) into Go, to become the user's focus operating system on the computer: fast, good-looking, and deeply integrated with AI from the start.
This is not a faithful 1:1 port. The existing domain model and the
commitment-os-design.md spec remain the north star. The Rust code is a
reference, not a thing to replicate line-for-line. The move to Go is an
opportunity to shed incidental complexity — most notably the token-heavy
event-log replay/revalidation design — while preserving what is genuinely
valuable.
Why Go, why now
- Token efficiency for AI-assisted development. The current pain is not
runtime cost; it is that any AI edit to the core must load
session.rs(3,475 lines, ~80% replay-validation logic and its tests). Go's smaller idioms plus a redesigned, smaller core directly reduce the context any change requires. - Predictable LLM codegen. Go's rigid syntax produces functional code on the first pass with fewer correction loops.
- Runtime fit. Concurrency and local HTTP serving are first-class, which suits a long-running focus daemon that also talks to AI.
What Carries Over vs. What Changes
Preserved (high value, ports cleanly):
- The domain model:
Commitment,PolicySnapshot,RuntimeState,CommitmentState,AllowedContext,EnforcementLevel. - The pure runtime/commitment state machines (
state_machine.rs) — a near 1:1 port. - The
commitment-os-design.mdspec as the conceptual foundation, including "no unchosen transitions" and the staged threat model. - Hash-chained tamper evidence — but relocated to the audit log only.
Reimagined:
- Persistence. Replace replay-everything-and-revalidate-on-startup with an
in-memory state-of-truth, a persisted snapshot, and an append-only audit
log. This removes roughly 3,000 lines (the bulk of
session.rs). - UI. Replace the ratatui TUI with a local web app (Gin backend + browser). This is the surface that must "look good."
- AI. AI is a first-class participant from the start, not a later add-on.
Deferred for v1:
- The AI reviewer role (session-end reflection). The three live roles ship first.
- Privileged enforcement (guardian, IPC, nftables, delayed admin) — same Stage 2 boundary as the original spec.
Process Model
A single Go binary, antidriftd, runs as a local daemon and owns all
state. The browser is its face.
┌─────────────────────────────────────────┐
│ antidriftd (one Go process) │
│ │
│ web (Gin) ──HTTP + SSE──▶ browser UI │
│ │ │
│ session ── statemachine ── domain │
│ │ │
│ store (snapshot + audit log) │
│ evidence (xdotool/X11) │
│ ai (CLI backend, async workers) │
└─────────────────────────────────────────┘
- The daemon holds live state in memory as the single source of truth.
- It persists a snapshot on every state change (crash/restart recovery).
- It appends every significant event to an append-only audit log (the tamper-evident, hash-chained trail — for audit and later review, not for state reconstruction).
- The browser is stateless: it renders what the daemon pushes over Server-Sent Events (SSE) and POSTs user actions back. No business logic in the browser.
Why snapshot instead of replay
The original Rust design reconstructs all state by replaying the entire event log on startup and re-validating every transition, with a dedicated test per illegal sequence. That is correct and tamper-aware, but it is the single largest source of code and token weight. A snapshot of current state plus an append-only audit trail gives the same recoverability and keeps tamper evidence on the log, at a fraction of the code. State-machine correctness is still enforced — by the pure transition functions at the point of transition, tested directly — just not re-litigated on every startup.
Architecture: Ports Around a Decision Core
AntiDrift is a focus brain: a decision core surrounded by pluggable interfaces (ports) to the outside world. This is a ports-and-adapters (hexagonal) architecture, and it is the organizing principle the whole system grows along. New capability is almost always "a new port + adapter," not a change to the core.
The core is layered, and the layering is load-bearing:
- Skeleton — deterministic, no I/O (
domain+statemachine). The rails. Owns what moves are legal. The original spec's safety property, "no unchosen transitions," lives here: the system can only ever be in a legal state, reached by a legal move. - Nervous system — the orchestrator (
session.Controller). The single hub. Holds the in-memory state-of-truth, routes signals between ports and the skeleton, persists snapshots, appends to the audit log, and broadcasts. Everything connects through here. - Cortex — the advisor (the LLM, via the
aiport). Powerful judgment at the decision points the state machine exposes — sharpen this commitment, is this window drift, nudge me. It informs and proposes; it can never force an illegal transition. The LLM is the most powerful adapter, not the kernel.
"The brain" is all three together. Critically, the state machine — not the LLM — owns transitions; the LLM acts only within the rails the skeleton enforces.
Ports
Each port is a small Go interface with one real adapter (and a fake for tests).
| Port | Interface | "Answers" | Adapter(s) | Milestone |
|---|---|---|---|---|
| Activity | evidence.Source |
What am I doing right now? | X11 / xgbutil (was xdotool) | M1 |
| Advisor | ai.Assistant (Coach/JudgeDrift/Nudge) |
What's the smart call here? | claude/codex CLI |
M2–M3 |
| Tasks | tasks.Provider |
What should I be doing? | Amazing Marvin (existing ampy + marvin MCP) |
deferred (M5) |
| Knowledge | knowledge.Source |
Who am I; what are my priorities? | PKM / files | deferred (M6) |
| Enforcement | enforce.Guard |
Make drift cost something | window-minimize now (legacy minimize_other); nftables/guardian later |
deferred (M7) |
| UI | web |
Show me; take my input | Gin + browser over SSE | M0, ongoing |
Persistence (store) is infrastructure shared by the orchestrator, not a port.
The tasks, knowledge, and enforce ports are named now but built later
— defining them keeps the architecture coherent without expanding near-term
scope. We resist designing their interfaces in detail until the milestone that
builds them, to avoid speculative abstraction (YAGNI). M1 ships the first real
port end-to-end (evidence.Source + X11 adapter + fake), establishing the
pattern every later port copies.
Package Layout
| Package | Ports from | Size | Purpose |
|---|---|---|---|
domain |
domain.rs |
small | Commitment, PolicySnapshot, runtime/commitment states, AllowedContext, EnforcementLevel, validation |
statemachine |
state_machine.rs |
small | Pure transition functions (1:1 port) |
session |
reimagined session.rs |
medium | In-memory controller; drives transitions, snapshots, audit appends; no replay validation |
store |
event_log.rs |
small | Snapshot file (current state) + append-only hash-chained audit JSONL |
evidence |
window/* + context.rs |
small | Active-window snapshot (xdotool/X11), evidence health, allowed-context matching |
ai |
new | small | Coach / JudgeDrift / Nudge behind one interface; CLI backend |
web |
new (replaces TUI) | medium | Gin routes, SSE stream, static browser UI |
tasks |
new (deferred, M5) | small | Provider port over current to-do items; Amazing Marvin adapter |
knowledge |
new (deferred, M6) | small | Source port over personal priorities / about-me context |
enforce |
window/* (minimize) |
small | Guard port; make drift cost something (window-minimize → nftables/guardian) |
Design constraint: every package stays small and single-purpose so an AI edit loads one focused file, not a monolith. This is the concrete mechanism for the token-efficiency goal.
AI Integration
AI is reached through one narrow interface with a single CLI backend to start:
type Assistant interface {
// Planning: turn a vague intent into a concrete commitment.
Coach(ctx context.Context, intent string) (domain.Commitment, error)
// Live: is the current window on-task for this commitment?
JudgeDrift(ctx context.Context, c domain.Commitment, w evidence.WindowSnapshot) (Verdict, error)
// Ambient: periodic check-in based on recent activity.
Nudge(ctx context.Context, c domain.Commitment, recent []evidence.WindowSnapshot) (string, error)
}
- Backend (v1): shell out to
claude/codexwith a strict prompt that demands JSON output. Reuses existing CLI auth; no API key plumbing. - Latency containment (the CLI is slow, ~seconds, and AI is in the live hot path): all AI calls run in background goroutines; the UI never blocks. Drift judgments are debounced (no faster than ~10s) and cached per (commitment, window-class) so the same window is not re-judged. The UI shows a pending state and updates via SSE when a verdict lands.
- Swap path: the interface boundary lets an Anthropic API backend (faster, structured, prompt-cached) drop in later without touching callers. Not built in v1.
The three live roles ship first: planning coach, live drift interceptor, ambient nudge. The reviewer is deferred. The advisor sits at the cortex layer of the decision core (see "Architecture: Ports Around a Decision Core"): it proposes and judges at the decision points the state machine exposes, but never owns a transition.
Roadmap
Each milestone is independently shippable and gets its own spec → plan → build cycle. M0–M4 build the core plus the first two ports (activity, advisor) and the UI; M5–M7 add the remaining ports, each a small interface + adapter following the pattern M1 establishes.
- M0 — Walking skeleton. Daemon + Gin + minimal browser UI; port
domain+statemachine; snapshot persistence; manual commitment → timebox → end. Proves the full stack end-to-end. No AI, no window tracking. - M1 — Evidence & audit. X11 (xgbutil) active-window tracking via the
evidence.Sourceport, evidence health, per-window time stats, append-only hash-chained audit log, live SSE updates. Establishes the port pattern. - M2 — AI planning coach.
aiport + CLI backend; "sharpen this commitment" in the Planning view. - M3 — Drift interceptor + ambient nudge. Allowed-context matching + live AI drift judgment (debounced/cached) + violation friction UI.
- M4 — Look good. A real design pass on the web UI.
- M5 — Tasks port.
tasks.Providerover current to-do items; Amazing Marvin adapter. Pull the day's commitments from real tasks. - M6 — Knowledge port.
knowledge.Sourceover personal priorities and about-me context, feeding the advisor richer grounding. - M7 — Enforcement port.
enforce.Guard: make drift cost something, starting with window-minimize (porting legacyminimize_other) and later the privileged guardian / nftables path.
The first sub-project to brainstorm and spec in detail is M0.
Repo Strategy
- New Go module at the repository root.
- Move the existing Rust into a
legacy/directory (or arustbranch) so it remains available as reference while the Go code becomes the front door.
Out of Scope (v1)
"v1" here means the first shippable arc, M0–M4 (core + activity/advisor ports + UI). The items below are deferred past it; some are now named ports with their own later milestones (see Roadmap), others remain fully out of scope.
- Tasks, knowledge, and enforcement ports — named in the architecture and
slotted as M5–M7, but not built in v1. The
enforce.Guardport starts with window-minimize; its privileged adapters (guardian process, root-owned Unix socket IPC, nftables/DNS domain blocking, delayed admin, break-glass) remain out of scope until that milestone and keep the original Stage 2 threat boundary. - AI reviewer / session-end reflection.
- Wayland compositor adapters beyond the existing degraded reporting.
- Planner/project model and outcome writeback (beyond the M5 tasks port).
- Presence sensing.
These remain governed by commitment-os-design.md and may return as later
milestones.