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Architecture

This document explains why gstack is built the way it is. For setup and commands, see CLAUDE.md. For contributing, see CONTRIBUTING.md.

The core idea

gstack gives Claude Code a persistent browser and a set of opinionated workflow skills. The browser is the hard part — everything else is Markdown.

The key insight: an AI agent interacting with a browser needs sub-second latency and persistent state. If every command cold-starts a browser, you're waiting 3-5 seconds per tool call. If the browser dies between commands, you lose cookies, tabs, and login sessions. So gstack runs a long-lived Chromium daemon that the CLI talks to over localhost HTTP.

Claude Code                     gstack
─────────                      ──────
                               ┌──────────────────────┐
  Tool call: $B snapshot -i    │  CLI (compiled binary)│
  ─────────────────────────→   │  • reads state file   │
                               │  • POST /command      │
                               │    to localhost:PORT   │
                               └──────────┬───────────┘
                                          │ HTTP
                               ┌──────────▼───────────┐
                               │  Server (Bun.serve)   │
                               │  • dispatches command  │
                               │  • talks to Chromium   │
                               │  • returns plain text  │
                               └──────────┬───────────┘
                                          │ CDP
                               ┌──────────▼───────────┐
                               │  Chromium (headless)   │
                               │  • persistent tabs     │
                               │  • cookies carry over  │
                               │  • 30min idle timeout  │
                               └───────────────────────┘

First call starts everything (~3s). Every call after: ~100-200ms.

Why Bun

Node.js would work. Bun is better here for three reasons:

  1. Compiled binaries. bun build --compile produces a single ~58MB executable. No node_modules at runtime, no npx, no PATH configuration. The binary just runs. This matters because gstack installs into ~/.claude/skills/ where users don't expect to manage a Node.js project.

  2. Native SQLite. Cookie decryption reads Chromium's SQLite cookie database directly. Bun has new Database() built in — no better-sqlite3, no native addon compilation, no gyp. One less thing that breaks on different machines.

  3. Native TypeScript. The server runs as bun run server.ts during development. No compilation step, no ts-node, no source maps to debug. The compiled binary is for deployment; source files are for development.

  4. Built-in HTTP server. Bun.serve() is fast, simple, and doesn't need Express or Fastify. The server handles ~10 routes total. A framework would be overhead.

The bottleneck is always Chromium, not the CLI or server. Bun's startup speed (~1ms for the compiled binary vs ~100ms for Node) is nice but not the reason we chose it. The compiled binary and native SQLite are.

The daemon model

Why not start a browser per command?

Playwright can launch Chromium in ~2-3 seconds. For a single screenshot, that's fine. For a QA session with 20+ commands, it's 40+ seconds of browser startup overhead. Worse: you lose all state between commands. Cookies, localStorage, login sessions, open tabs — all gone.

The daemon model means:

  • Persistent state. Log in once, stay logged in. Open a tab, it stays open. localStorage persists across commands.
  • Sub-second commands. After the first call, every command is just an HTTP POST. ~100-200ms round-trip including Chromium's work.
  • Automatic lifecycle. The server auto-starts on first use, auto-shuts down after 30 minutes idle. No process management needed.

State file

The server writes .gstack/browse.json (atomic write via tmp + rename, mode 0o600):

{ "pid": 12345, "port": 34567, "token": "uuid-v4", "startedAt": "...", "binaryVersion": "abc123" }

The CLI reads this file to find the server. If the file is missing or the server fails an HTTP health check, the CLI spawns a new server. On Windows, PID-based process detection is unreliable in Bun binaries, so the health check (GET /health) is the primary liveness signal on all platforms.

Port selection

Random port between 10000-60000 (retry up to 5 on collision). This means 10 Conductor workspaces can each run their own browse daemon with zero configuration and zero port conflicts. The old approach (scanning 9400-9409) broke constantly in multi-workspace setups.

Version auto-restart

The build writes git rev-parse HEAD to browse/dist/.version. On each CLI invocation, if the binary's version doesn't match the running server's binaryVersion, the CLI kills the old server and starts a new one. This prevents the "stale binary" class of bugs entirely — rebuild the binary, next command picks it up automatically.

Security model

Localhost only

The HTTP server binds to 127.0.0.1, not 0.0.0.0. It's not reachable from the network.

Dual-listener tunnel architecture (v1.6.0.0)

When a user runs pair-agent --client, the daemon starts an ngrok tunnel so a remote paired agent can drive the browser. Exposing the full daemon surface to the internet (even behind a random ngrok subdomain) meant /health leaked the root token on any Origin spoof, and /cookie-picker embedded the token into HTML that any caller could fetch.

The fix is two HTTP listeners, not one:

  • Local listener (127.0.0.1:LOCAL_PORT) — always bound. Serves bootstrap (/health with token delivery), /cookie-picker, /inspector/*, /welcome, /refs, the sidebar-agent API, and the full command surface. Never forwarded.
  • Tunnel listener (127.0.0.1:TUNNEL_PORT) — bound lazily on /tunnel/start, torn down on /tunnel/stop. Serves a locked allowlist: /connect (pairing ceremony, unauth + rate-limited), /command (scoped tokens only, further restricted to a browser-driving command allowlist), and /sidebar-chat. Everything else 404s.

ngrok forwards only the tunnel port. The security property comes from physical port separation: a tunnel caller cannot reach /health or /cookie-picker because those paths don't exist on that TCP socket. Header inference (check x-forwarded-for, check origin) is unreliable (ngrok header behavior changes; local proxies can add these headers); socket separation isn't.

Endpoint Local listener Tunnel listener Notes
GET /health public (no token unless headed/extension) 404 Token bootstrap for extension happens locally only
GET /connect public ({alive:true}) public ({alive:true}) Probe path for tunnel liveness
POST /connect public (rate-limited 300/min) public (rate-limited) Setup-key exchange for pair-agent
POST /command auth (Bearer root OR scoped) auth (scoped only, allowlisted commands) Root token on tunnel = 403
POST /sidebar-chat auth auth Lets remote agent post into local sidebar
POST /pair root-only 404 Pairing mint — local operator action
POST /tunnel/{start,stop} root-only 404 Daemon configuration
POST /token, DELETE /token/:id root-only 404 Scoped token mint/revoke
GET /cookie-picker, GET /cookie-picker/* public UI, auth API 404 Local-only — reads local browser DBs
GET /inspector, /inspector/events, etc. auth 404 Extension callback, local-only
GET /welcome public 404 GStack Browser landing page, local-only
GET /refs auth 404 Ref map — internal state
GET /activity/stream Bearer OR HttpOnly gstack_sse cookie 404 SSE. ?token= query param no longer accepted
GET /inspector/events Bearer OR HttpOnly gstack_sse cookie 404 SSE. Same cookie as /activity/stream
POST /sse-session auth (Bearer) 404 Mints the view-only 30-min SSE session cookie

Tunnel surface denial logs. Every rejection on the tunnel listener (path_not_on_tunnel, root_token_on_tunnel, missing_scoped_token, disallowed_command:*) is recorded asynchronously to ~/.gstack/security/attempts.jsonl with timestamp, source IP (from x-forwarded-for), path, and method. Rate-capped at 60 writes/min globally to prevent log-flood DoS. Shares the attempt log with the prompt-injection scanner.

SSE session cookies. EventSource can't send Authorization headers, so the extension POSTs /sse-session once at bootstrap with the root Bearer and receives a 30-minute view-only cookie (gstack_sse, HttpOnly, SameSite=Strict). The cookie is valid ONLY for /activity/stream and /inspector/events — it is NOT a scoped token and cannot be used on /command. Scope isolation is enforced by the module boundary: sse-session-cookie.ts has no imports from token-registry.ts.

Non-goal in this wave (tracked as #1136): the cookie-import-browser path launches Chrome with --remote-debugging-port=<random>. On Windows with App-Bound Encryption v20, a same-user local process can connect to that port and exfiltrate decrypted v20 cookies — an elevation path relative to reading the SQLite DB directly (which can't decrypt v20 without DPAPI context). Fix direction is --remote-debugging-pipe instead of TCP; requires restructuring the CDP client.

Bearer token auth

Every server session generates a random UUID token, written to the state file with mode 0o600 (owner-only read). Every HTTP request that mutates browser state must include Authorization: Bearer <token>. If the token doesn't match, the server returns 401.

This prevents other processes on the same machine from talking to your browse server. The cookie picker UI (/cookie-picker) and health check (/health) are exempt on the local listener — they're 127.0.0.1-bound and don't execute commands. On the tunnel listener nothing is exempt except /connect.

Cookie security

Cookies are the most sensitive data gstack handles. The design:

  1. Keychain access requires user approval. First cookie import per browser triggers a macOS Keychain dialog. The user must click "Allow" or "Always Allow." gstack never silently accesses credentials.

  2. Decryption happens in-process. Cookie values are decrypted in memory (PBKDF2 + AES-128-CBC), loaded into the Playwright context, and never written to disk in plaintext. The cookie picker UI never displays cookie values — only domain names and counts.

  3. Database is read-only. gstack copies the Chromium cookie DB to a temp file (to avoid SQLite lock conflicts with the running browser) and opens it read-only. It never modifies your real browser's cookie database.

  4. Key caching is per-session. The Keychain password + derived AES key are cached in memory for the server's lifetime. When the server shuts down (idle timeout or explicit stop), the cache is gone.

  5. No cookie values in logs. Console, network, and dialog logs never contain cookie values. The cookies command outputs cookie metadata (domain, name, expiry) but values are truncated.

Shell injection prevention

The browser registry (Comet, Chrome, Arc, Brave, Edge) is hardcoded. Database paths are constructed from known constants, never from user input. Keychain access uses Bun.spawn() with explicit argument arrays, not shell string interpolation.

Prompt injection defense (sidebar agent)

The Chrome sidebar agent has tools (Bash, Read, Glob, Grep, WebFetch) and reads hostile web pages, so it's the part of gstack most exposed to prompt injection. Defense is layered, not single-point.

  1. L1-L3 content security (browse/src/content-security.ts). Runs on every page-content command and every tool output: datamarking, hidden-element strip, ARIA regex, URL blocklist, and a trust-boundary envelope wrapper. Applied at both the server and the agent.

  2. L4 ML classifier — TestSavantAI (browse/src/security-classifier.ts). A 22MB BERT-small ONNX model (int8 quantized) bundled with the agent. Runs locally, no network. Scans every user message and every Read/Glob/Grep/WebFetch tool output before Claude sees it. Opt-in 721MB DeBERTa-v3 ensemble via GSTACK_SECURITY_ENSEMBLE=deberta.

  3. L4b transcript classifier. A Claude Haiku pass that looks at the full conversation shape (user message, tool calls, tool output), not just text. Gated by LOG_ONLY: 0.40 so most clean traffic skips the paid call.

  4. L5 canary token (browse/src/security.ts). A random token injected into the system prompt at session start. Rolling-buffer detection across text_delta and input_json_delta streams catches the token if it shows up anywhere in Claude's output, tool arguments, URLs, or file writes. Deterministic BLOCK — if the token leaks, the attacker convinced Claude to reveal the system prompt, and the session ends.

  5. L6 ensemble combiner (combineVerdict). BLOCK requires agreement from two ML classifiers at >= WARN (0.60), not a single confident hit. This is the Stack Overflow instruction-writing false-positive mitigation. On tool-output scans, single-layer high confidence BLOCKs directly — the content wasn't user-authored, so the FP concern doesn't apply.

Critical constraint: security-classifier.ts runs only in the sidebar-agent process, never in the compiled browse binary. @huggingface/transformers v4 requires onnxruntime-node, which fails dlopen from Bun compile's temp extract directory. Only the pure-string pieces (canary inject/check, verdict combiner, attack log, status) are in security.ts, which is safe to import from server.ts.

Env knobs: GSTACK_SECURITY_OFF=1 is a real kill switch (skips ML scan, canary still injects). Model cache at ~/.gstack/models/testsavant-small/ (112MB, first run) and ~/.gstack/models/deberta-v3-injection/ (721MB, opt-in only). Attack log at ~/.gstack/security/attempts.jsonl (salted sha256 + domain, rotates at 10MB, 5 generations). Per-device salt at ~/.gstack/security/device-salt (0600), cached in-process to survive FS-unwritable environments.

Visibility. The sidebar header shows a shield icon (green/amber/red) polled via /sidebar-chat. A centered banner appears on canary leak or BLOCK verdict with the exact layer scores. bin/gstack-security-dashboard aggregates local attempts; supabase/functions/community-pulse aggregates opt-in community telemetry across users.

The ref system

Refs (@e1, @e2, @c1) are how the agent addresses page elements without writing CSS selectors or XPath.

How it works

1. Agent runs: $B snapshot -i
2. Server calls Playwright's page.accessibility.snapshot()
3. Parser walks the ARIA tree, assigns sequential refs: @e1, @e2, @e3...
4. For each ref, builds a Playwright Locator: getByRole(role, { name }).nth(index)
5. Stores Map<string, RefEntry> on the BrowserManager instance (role + name + Locator)
6. Returns the annotated tree as plain text

Later:
7. Agent runs: $B click @e3
8. Server resolves @e3 → Locator → locator.click()

Why Locators, not DOM mutation

The obvious approach is to inject data-ref="@e1" attributes into the DOM. This breaks on:

  • CSP (Content Security Policy). Many production sites block DOM modification from scripts.
  • React/Vue/Svelte hydration. Framework reconciliation can strip injected attributes.
  • Shadow DOM. Can't reach inside shadow roots from the outside.

Playwright Locators are external to the DOM. They use the accessibility tree (which Chromium maintains internally) and getByRole() queries. No DOM mutation, no CSP issues, no framework conflicts.

Ref lifecycle

Refs are cleared on navigation (the framenavigated event on the main frame). This is correct — after navigation, all locators are stale. The agent must run snapshot again to get fresh refs. This is by design: stale refs should fail loudly, not click the wrong element.

Ref staleness detection

SPAs can mutate the DOM without triggering framenavigated (e.g. React router transitions, tab switches, modal opens). This makes refs stale even though the page URL didn't change. To catch this, resolveRef() performs an async count() check before using any ref:

resolveRef(@e3) → entry = refMap.get("e3")
                → count = await entry.locator.count()
                → if count === 0: throw "Ref @e3 is stale — element no longer exists. Run 'snapshot' to get fresh refs."
                → if count > 0: return { locator }

This fails fast (~5ms overhead) instead of letting Playwright's 30-second action timeout expire on a missing element. The RefEntry stores role and name metadata alongside the Locator so the error message can tell the agent what the element was.

Cursor-interactive refs (@c)

The -C flag finds elements that are clickable but not in the ARIA tree — things styled with cursor: pointer, elements with onclick attributes, or custom tabindex. These get @c1, @c2 refs in a separate namespace. This catches custom components that frameworks render as <div> but are actually buttons.

Logging architecture

Three ring buffers (50,000 entries each, O(1) push):

Browser events → CircularBuffer (in-memory) → Async flush to .gstack/*.log

Console messages, network requests, and dialog events each have their own buffer. Flushing happens every 1 second — the server appends only new entries since the last flush. This means:

  • HTTP request handling is never blocked by disk I/O
  • Logs survive server crashes (up to 1 second of data loss)
  • Memory is bounded (50K entries × 3 buffers)
  • Disk files are append-only, readable by external tools

The console, network, and dialog commands read from the in-memory buffers, not disk. Disk files are for post-mortem debugging.

SKILL.md template system

The problem

SKILL.md files tell Claude how to use the browse commands. If the docs list a flag that doesn't exist, or miss a command that was added, the agent hits errors. Hand-maintained docs always drift from code.

The solution

SKILL.md.tmpl          (human-written prose + placeholders)
       ↓
gen-skill-docs.ts      (reads source code metadata)
       ↓
SKILL.md               (committed, auto-generated sections)

Templates contain the workflows, tips, and examples that require human judgment. Placeholders are filled from source code at build time:

Placeholder Source What it generates
{{COMMAND_REFERENCE}} commands.ts Categorized command table
{{SNAPSHOT_FLAGS}} snapshot.ts Flag reference with examples
{{PREAMBLE}} gen-skill-docs.ts Startup block: update check, session tracking, contributor mode, AskUserQuestion format
{{BROWSE_SETUP}} gen-skill-docs.ts Binary discovery + setup instructions
{{BASE_BRANCH_DETECT}} gen-skill-docs.ts Dynamic base branch detection for PR-targeting skills (ship, review, qa, plan-ceo-review)
{{QA_METHODOLOGY}} gen-skill-docs.ts Shared QA methodology block for /qa and /qa-only
{{DESIGN_METHODOLOGY}} gen-skill-docs.ts Shared design audit methodology for /plan-design-review and /design-review
{{REVIEW_DASHBOARD}} gen-skill-docs.ts Review Readiness Dashboard for /ship pre-flight
{{TEST_BOOTSTRAP}} gen-skill-docs.ts Test framework detection, bootstrap, CI/CD setup for /qa, /ship, /design-review
{{CODEX_PLAN_REVIEW}} gen-skill-docs.ts Optional cross-model plan review (Codex or Claude subagent fallback) for /plan-ceo-review and /plan-eng-review
{{DESIGN_SETUP}} resolvers/design.ts Discovery pattern for $D design binary, mirrors {{BROWSE_SETUP}}
{{DESIGN_SHOTGUN_LOOP}} resolvers/design.ts Shared comparison board feedback loop for /design-shotgun, /plan-design-review, /design-consultation
{{UX_PRINCIPLES}} resolvers/design.ts User behavioral foundations (scanning, satisficing, goodwill reservoir, trunk test) for /design-html, /design-shotgun, /design-review, /plan-design-review
{{GBRAIN_CONTEXT_LOAD}} resolvers/gbrain.ts Brain-first context search with keyword extraction, health awareness, and data-research routing. Injected into 10 brain-aware skills. Suppressed on non-brain hosts.
{{GBRAIN_SAVE_RESULTS}} resolvers/gbrain.ts Post-skill brain persistence with entity enrichment, throttle handling, and per-skill save instructions. 8 skill-specific save formats.

This is structurally sound — if a command exists in code, it appears in docs. If it doesn't exist, it can't appear.

The preamble

Every skill starts with a {{PREAMBLE}} block that runs before the skill's own logic. It handles five things in a single bash command:

  1. Update check — calls gstack-update-check, reports if an upgrade is available.
  2. Session tracking — touches ~/.gstack/sessions/$PPID and counts active sessions (files modified in the last 2 hours). When 3+ sessions are running, all skills enter "ELI16 mode" — every question re-grounds the user on context because they're juggling windows.
  3. Operational self-improvement — at the end of every skill session, the agent reflects on failures (CLI errors, wrong approaches, project quirks) and logs operational learnings to the project's JSONL file for future sessions.
  4. AskUserQuestion format — universal format: context, question, RECOMMENDATION: Choose X because ___, lettered options. Consistent across all skills.
  5. Search Before Building — before building infrastructure or unfamiliar patterns, search first. Three layers of knowledge: tried-and-true (Layer 1), new-and-popular (Layer 2), first-principles (Layer 3). When first-principles reasoning reveals conventional wisdom is wrong, the agent names the "eureka moment" and logs it. See ETHOS.md for the full builder philosophy.

Why committed, not generated at runtime?

Three reasons:

  1. Claude reads SKILL.md at skill load time. There's no build step when a user invokes /browse. The file must already exist and be correct.
  2. CI can validate freshness. gen:skill-docs --dry-run + git diff --exit-code catches stale docs before merge.
  3. Git blame works. You can see when a command was added and in which commit.

Template test tiers

Tier What Cost Speed
1 — Static validation Parse every $B command in SKILL.md, validate against registry Free <2s
2 — E2E via claude -p Spawn real Claude session, run each skill, check for errors ~$3.85 ~20min
3 — LLM-as-judge Sonnet scores docs on clarity/completeness/actionability ~$0.15 ~30s

Tier 1 runs on every bun test. Tiers 2+3 are gated behind EVALS=1. The idea is: catch 95% of issues for free, use LLMs only for judgment calls.

Command dispatch

Commands are categorized by side effects:

  • READ (text, html, links, console, cookies, ...): No mutations. Safe to retry. Returns page state.
  • WRITE (goto, click, fill, press, ...): Mutates page state. Not idempotent.
  • META (snapshot, screenshot, tabs, chain, ...): Server-level operations that don't fit neatly into read/write.

This isn't just organizational. The server uses it for dispatch:

if (READ_COMMANDS.has(cmd))   handleReadCommand(cmd, args, bm)
if (WRITE_COMMANDS.has(cmd))  handleWriteCommand(cmd, args, bm)
if (META_COMMANDS.has(cmd))   handleMetaCommand(cmd, args, bm, shutdown)

The help command returns all three sets so agents can self-discover available commands.

Error philosophy

Errors are for AI agents, not humans. Every error message must be actionable:

  • "Element not found" → "Element not found or not interactable. Run snapshot -i to see available elements."
  • "Selector matched multiple elements" → "Selector matched multiple elements. Use @refs from snapshot instead."
  • Timeout → "Navigation timed out after 30s. The page may be slow or the URL may be wrong."

Playwright's native errors are rewritten through wrapError() to strip internal stack traces and add guidance. The agent should be able to read the error and know what to do next without human intervention.

Crash recovery

The server doesn't try to self-heal. If Chromium crashes (browser.on('disconnected')), the server exits immediately. The CLI detects the dead server on the next command and auto-restarts. This is simpler and more reliable than trying to reconnect to a half-dead browser process.

E2E test infrastructure

Session runner (test/helpers/session-runner.ts)

E2E tests spawn claude -p as a completely independent subprocess — not via the Agent SDK, which can't nest inside Claude Code sessions. The runner:

  1. Writes the prompt to a temp file (avoids shell escaping issues)
  2. Spawns sh -c 'cat prompt | claude -p --output-format stream-json --verbose'
  3. Streams NDJSON from stdout for real-time progress
  4. Races against a configurable timeout
  5. Parses the full NDJSON transcript into structured results

The parseNDJSON() function is pure — no I/O, no side effects — making it independently testable.

Observability data flow

  skill-e2e-*.test.ts
        │
        │ generates runId, passes testName + runId to each call
        │
  ┌─────┼──────────────────────────────┐
  │     │                              │
  │  runSkillTest()              evalCollector
  │  (session-runner.ts)         (eval-store.ts)
  │     │                              │
  │  per tool call:              per addTest():
  │  ┌──┼──────────┐              savePartial()
  │  │  │          │                   │
  │  ▼  ▼          ▼                   ▼
  │ [HB] [PL]    [NJ]          _partial-e2e.json
  │  │    │        │             (atomic overwrite)
  │  │    │        │
  │  ▼    ▼        ▼
  │ e2e-  prog-  {name}
  │ live  ress   .ndjson
  │ .json .log
  │
  │  on failure:
  │  {name}-failure.json
  │
  │  ALL files in ~/.gstack-dev/
  │  Run dir: e2e-runs/{runId}/
  │
  │         eval-watch.ts
  │              │
  │        ┌─────┴─────┐
  │     read HB     read partial
  │        └─────┬─────┘
  │              ▼
  │        render dashboard
  │        (stale >10min? warn)

Split ownership: session-runner owns the heartbeat (current test state), eval-store owns partial results (completed test state). The watcher reads both. Neither component knows about the other — they share data only through the filesystem.

Non-fatal everything: All observability I/O is wrapped in try/catch. A write failure never causes a test to fail. The tests themselves are the source of truth; observability is best-effort.

Machine-readable diagnostics: Each test result includes exit_reason (success, timeout, error_max_turns, error_api, exit_code_N), timeout_at_turn, and last_tool_call. This enables jq queries like:

jq '.tests[] | select(.exit_reason == "timeout") | .last_tool_call' ~/.gstack-dev/evals/_partial-e2e.json

Eval persistence (test/helpers/eval-store.ts)

The EvalCollector accumulates test results and writes them in two ways:

  1. Incremental: savePartial() writes _partial-e2e.json after each test (atomic: write .tmp, fs.renameSync). Survives kills.
  2. Final: finalize() writes a timestamped eval file (e.g. e2e-20260314-143022.json). The partial file is never cleaned up — it persists alongside the final file for observability.

eval:compare diffs two eval runs. eval:summary aggregates stats across all runs in ~/.gstack-dev/evals/.

Test tiers

Tier What Cost Speed
1 — Static validation Parse $B commands, validate against registry, observability unit tests Free <5s
2 — E2E via claude -p Spawn real Claude session, run each skill, scan for errors ~$3.85 ~20min
3 — LLM-as-judge Sonnet scores docs on clarity/completeness/actionability ~$0.15 ~30s

Tier 1 runs on every bun test. Tiers 2+3 are gated behind EVALS=1. The idea: catch 95% of issues for free, use LLMs only for judgment calls and integration testing.

What's intentionally not here

  • No WebSocket streaming. HTTP request/response is simpler, debuggable with curl, and fast enough. Streaming would add complexity for marginal benefit.
  • No MCP protocol. MCP adds JSON schema overhead per request and requires a persistent connection. Plain HTTP + plain text output is lighter on tokens and easier to debug.
  • No multi-user support. One server per workspace, one user. The token auth is defense-in-depth, not multi-tenancy.
  • No Windows/Linux cookie decryption. macOS Keychain is the only supported credential store. Linux (GNOME Keyring/kwallet) and Windows (DPAPI) are architecturally possible but not implemented.
  • No iframe auto-discovery. $B frame supports cross-frame interaction (CSS selector, @ref, --name, --url matching), but the ref system does not auto-crawl iframes during snapshot. You must explicitly enter a frame context first.