- D6: memory limits already exist (deploy.resources.limits); reframe as RAM right-sizing + disk hygiene rather than "limits missing" - D2: down/--force-recreate is invttrdg-only; clock/notes already differential - D4: broaden BuildKit gap to all docker compose build paths; fix accuracy - D8 (new): deploy-script drift across per-product scripts + dashboard/deploy.sh - add Phase 0 (unify scripts) as prerequisite; update quick-ref + ordering Generated with [Devin](https://cli.devin.ai/docs) Co-Authored-By: Devin <158243242+devin-ai-integration[bot]@users.noreply.github.com>
20 KiB
Deployment Optimization Roadmap
Status: v2 (PROPOSED — analysis complete, no changes applied yet) · Owner: Platform DevOps · Created: 2026-05-31 · Revised: 2026-05-31
v2 review pass: corrected findings after auditing all deploy scripts + compose files (not just
deploy-invttrdg.sh). Key fixes: memory limits already exist (D6 rewritten),down/--force-recreateis invttrdg-only not universal (D2 re-scoped), BuildKit gap spans alldocker compose buildpaths (D4 broadened), and added D8 — deploy-script drift across the per-product scripts.Optimize the deployment orchestration layer for the single-Azure-VM MVP: reduce deploy wall-clock time, eliminate deploy-time downtime, and stop the production VM from running out of RAM/disk during builds.
Scope boundary — read this first. This roadmap is about how we ship and run images on the VM (the
deploy-*.shscripts,docker composelifecycle, registry strategy, VM resource limits). The complementary image-build concerns (pnpm install speed, BuildKit cache mounts,.npmrc.docker, Gitea registry correctness, "build green / app broken" silent failures) live indocker-build-optimization-roadmap.mdand are out of scope here — this doc references that work, never duplicates it.
0. Current state (audited 2026-05-31)
The production deployment model is Docker Compose on a single Azure VM,
fronted by Caddy on 80/443 (see
DEPLOYMENT_GUIDE.md and
learning_ai_common_plat/docs/devops/single_azure_vm/docker/DEPLOYMENT_STATUS_2026-03-29.md).
Four production repos deploy here: learning_ai_invt_trdg,
learning_ai_common_plat, learning_ai_clock, learning_ai_notes.
Deploy surfaces audited (2026-05-31): deploy-invttrdg.sh, deploy-clock.sh,
deploy-notes.sh, deploy-all.sh, dashboard/deploy.sh, plus the production
docker-compose.yml of clock and the docker-compose.ecosystem.yml of common_plat.
What is already good (do not redo): the per-repo Dockerfiles are
multi-stage, use node:22-alpine, mount a BuildKit pnpm-store cache, inject the
Gitea token via a BuildKit secret, and emit Next.js standalone output. The
image-build layer is in good shape — credit to the build-optimization roadmap.
The bottlenecks are in the deployment flow, not the Dockerfiles.
| # | Finding | Location | Symptom it causes | Severity |
|---|---|---|---|---|
| D1 | Images are built on the production VM. docker build runs on the box while ~31 containers (Cosmos emulator + Azurite are RAM-heavy) are live. The VM has less RAM than the deploy scripts assumed (per the deployment-status doc), so builds thrash/swap. |
deploy-invttrdg.sh build step; deploy-all.sh docker compose build |
Slow builds and memory pressure and risk of OOM-killing live services | High (keystone) |
| D2 | deploy-invttrdg.sh does a blanket docker compose down → up -d --force-recreate — stops all its services and restarts them cold, even for a one-line change. (Note: deploy-clock.sh/deploy-notes.sh do not — they already run docker compose build + docker compose up -d, i.e. differential recreate. So this is a per-script inconsistency, not a universal pattern — see D8.) |
deploy-invttrdg.sh (down then --force-recreate) |
Deploy-time downtime + cold caches on invttrdg releases | Medium |
| D3 | deploy-all.sh rebuilds every service in every repo, sequentially. No change-detection, no parallelism; loops repos one-by-one and runs docker compose build (all services). |
deploy-all.sh deploy loop |
Multi-repo "deploy all" takes minutes even when one file changed | High |
| D4 | The docker compose build paths don't pin BuildKit. deploy-clock.sh, deploy-notes.sh, and deploy-all.sh all call plain docker compose build with no DOCKER_BUILDKIT=1 / COMPOSE_DOCKER_CLI_BUILD=1. Modern Compose v2 defaults to BuildKit (and the compose files use build-time secrets:, which require BuildKit — so on a stale/old toolchain the build hard-fails rather than silently slows). Pinning it explicitly removes the version-dependent ambiguity and guarantees the Dockerfile --mount=type=cache pnpm-store wins. |
deploy-clock.sh, deploy-notes.sh, deploy-all.sh build steps |
Toolchain-dependent build behavior; risk of losing warm-cache wins | Low–Medium |
| D5 | Whole node_modules (dev deps included) copied into the runtime stage. Backend runtime COPY --from=builder .../node_modules is the full install (verified in learning_ai_clock/backend/Dockerfile). |
*/backend/Dockerfile runtime stage |
Larger images → more disk, slower pull/start |
Medium |
| D6 | Memory limits exist but are likely untuned vs the real VM, and log/image-disk guardrails are absent. Limits are set via deploy.resources.limits.memory (cosmos-emulator 1g, azurite 256m, most services 128m–512m). The gaps: (a) the sum of limits hasn't been reconciled against the VM's actual (lower-than-assumed) RAM; (b) only limits, no reservations; (c) no scheduled docker image prune and no container-log rotation, so disk creeps unbounded. |
docker-compose.ecosystem.yml, product docker-compose.yml, VM cron |
Disk creeps to full; limits may over- or under-commit RAM | Medium |
| D7 | Rollback requires a rebuild. DEPLOYMENT_GUIDE.md rollback path is git revert + docker compose up -d --build — i.e. rebuild on the VM to roll back. Production images are tagged :latest (e.g. invttrdg-backend:latest) or auto-named by Compose, so there is no immutable per-release artifact to re-point to. |
DEPLOYMENT_GUIDE.md rollback section; image tags |
Slow, risky rollbacks; no clean "known-good" artifact | Medium |
| D8 | Deploy-script drift — no single source of truth. Three near-duplicate per-product scripts (deploy-invttrdg.sh, deploy-clock.sh, deploy-notes.sh) plus deploy-all.sh and dashboard/deploy.sh have diverged: invttrdg builds via an explicit docker build loop then down + --force-recreate; clock/notes use docker compose build + up -d; common_plat has no dedicated script (goes through deploy-all.sh). Any fix in this roadmap must be applied N times and risks further drift. |
all deploy-*.sh + dashboard/deploy.sh |
Inconsistent behavior; fixes don't propagate; maintenance burden | Medium |
Implications
- D1 is the keystone. Moving builds off the VM removes the build/runtime resource contention that drives slow builds, memory pressure, and (with SHA-tagged images) enables fast rollback. Most other items compound on top of it.
- D8 is a force-multiplier risk. Because the per-product scripts have already drifted, every other fix (D2, D4, change-detection, rollback) must either be applied 3+ times or — better — the scripts should first be unified behind one parameterized deploy library. Prefer consolidating early so later phases land once.
- D2 removes invttrdg's deploy-time downtime and is low-risk; clock/notes already do the right thing here, which is exactly why unifying (D8) matters.
- D3/D4 are the "deploy all is slow" story; D5/D6 are the disk/memory story. Note D6's headline gap is disk hygiene + RAM right-sizing, not "limits missing" — limits already exist.
1. Goals & non-goals
Goals
- Cut warm deploy wall-clock time to seconds for a single changed service.
- Zero (or near-zero) downtime for routine deploys.
- Keep the production VM's RAM/disk predictable and bounded during deploys.
- Make rollback an artifact re-point, not a rebuild.
Non-goals
- ❌ Adopting Kubernetes / Swarm / Nomad. Compose-on-one-VM is the correct model at MVP; revisit orchestration only when we outgrow a single host.
- ❌ Re-doing image-build internals (pnpm, BuildKit cache, Gitea path) — owned
by
docker-build-optimization-roadmap.md. - ❌ Full blue/green infra. Tier 1 already removes most downtime; multi-replica comes only when traffic justifies it.
Measurement targets
| Metric | Baseline (observed/estimated) | Target |
|---|---|---|
| Warm deploy, 1 service changed | ~2–3 min (build-on-VM) | < 30 s (pull + recreate one service) |
| Deploy-time downtime per service | full stop/start cycle | ~0 (recreate-in-place, old stays up until new is ready) |
| Peak VM RAM during deploy | build spike on top of live stack | no build spike (build is off-VM) |
| Rollback to previous release | rebuild on VM (minutes) | < 30 s (re-point SHA tag + up -d) |
Fill in actuals during Phase 3.
2. Phased roadmap (why / what / how)
Phases are ordered by leverage. Phase 0 (unify the scripts) is a prerequisite enabler; Phase 1 is the keystone — every later phase should land in the unified script once, not be copy-pasted across the per-product scripts.
Phase 0 — Unify the deploy scripts (prerequisite)
Why. D8: deploy-invttrdg.sh, deploy-clock.sh, and deploy-notes.sh are
near-duplicate copies that have already drifted (invttrdg uses an explicit
docker build loop + down + --force-recreate; clock/notes use
docker compose build + up -d). Every fix below would otherwise have to be
written 3+ times. Consolidating first means Phases 1–5 are implemented once.
What. A single parameterized deploy entrypoint (one script or a sourced library) that takes the repo/product as input and encodes the build + lifecycle
- health-check steps once. The per-product scripts become thin wrappers (or are
replaced by
deploy.sh <product>).
How (checklist).
- 0.1 Inventory the divergence across
deploy-invttrdg.sh,deploy-clock.sh,deploy-notes.sh,deploy-all.sh,dashboard/deploy.sh(build method, lifecycle command, health endpoints, package-publication check). - 0.2 Extract the shared steps (dirty-check, fetch/rebase, smoke test, build, deploy, health check) into one library; express per-product differences (ports, endpoints, image names) as config/data.
- 0.3 Replace the per-product scripts with thin wrappers calling the library; keep the old filenames as shims so existing muscle memory + the DevOps dashboard's deploy buttons keep working.
- 0.4 Point
deploy-all.shanddashboard/deploy.shat the same library. - 0.5 Add a drift guard (lint/CI) so the scripts can't silently diverge
again — mirror the
check-*-drift.shpattern already used for.npmrcanddocker-prep.shinlearning_ai_common_plat.
Done when: one code path drives all production deploys; per-product files are config or thin shims; a drift check guards against regression.
If Phase 0 is deferred, treat every checklist item in Phases 1–5 as "apply to invttrdg and clock and notes" — the drift tax is real.
Phase 1 — Build off the VM, ship images, VM pulls ⟵ keystone
Why. D1 is the single biggest cause of slow builds, memory pressure, and
risky rollback. The production VM should run containers, not compile them.
Removing build work from the box frees its scarce RAM/CPU and turns deploys into
a fast pull + recreate. Tagging images by commit SHA gives an immutable,
re-pointable artifact (fixes D7).
What.
- Build images in CI (GitHub Actions / Gitea Actions) or on a dedicated builder.
- Push to the Gitea container/image registry, tagged
:<commit-sha>and:latest. - The VM deploy step becomes
docker compose pull && docker compose up -d— nodocker buildon the box.
How (checklist).
- 1.1 Stand up / confirm an image registry (reuse Gitea on the VM, or a
hosted registry). Decide auth: reuse the existing
GITEA_NPM_TOKENpattern fromdeploy-invttrdg.shfordocker login. - 1.2 Add a CI build job per production repo: build backend + web images
with BuildKit, tag
:<git-sha>+:latest, push to the registry. Reuse the existingBYTELYST_COMMIT_*build args already collected indeploy-invttrdg.sh. - 1.3 Parameterize each
docker-compose.ymlservice to useimage: <registry>/<svc>:${IMAGE_TAG:-latest}instead of a localbuild:context for production. (Keepbuild:for local dev via an override file.) - 1.4 Rewrite the VM-side deploy path to
docker compose pullthendocker compose up -d(no build). PassIMAGE_TAG=<sha>to deploy a specific release. - 1.5 Keep a thin "emergency build-on-VM" fallback flag for when the registry/CI is unavailable, but make pull-based the default.
- 1.6 Verify: a clean deploy uses zero
tsc/next buildCPU on the VM.
Done when: deploys to the VM perform no compilation; images are addressable by commit SHA in the registry.
Phase 2 — Stop-the-world → recreate-in-place
Why. D2: deploy-invttrdg.sh does docker compose down + --force-recreate,
taking everything down on every deploy. Plain up -d already recreates only the
containers whose image/config changed, leaving the rest running — which is exactly
what deploy-clock.sh/deploy-notes.sh already do. This phase is mostly about
bringing invttrdg in line with clock/notes (and, post-Phase 0, deleting the
divergence entirely).
What. Remove the blanket down; rely on Compose's differential recreate.
Target individual services where possible.
How (checklist).
- 2.1 Remove
docker compose downfromdeploy-invttrdg.sh(the only script that has it). Replaceup -d --force-recreate(all services) withup -d(differential) —--force-recreateonly when config didn't change but image did and you're not using SHA tags (after Phase 1, the SHA tag change makes Compose recreate automatically). Adopt the clock/notes pattern. - 2.2 Support per-service deploys:
docker compose up -d --no-deps <svc>so deploying the backend doesn't bounce unrelated services. - 2.3 Confirm every service has a correct healthcheck so
up -dwaits for healthy before considering the deploy done. Clock already handles the IPv6/localhostpitfall (F12 in the build roadmap) by forcing127.0.0.1in its healthcheck — verify the other production repos do the same. - 2.4 (Later / optional) For true zero-downtime on a hot service, run two replicas behind Caddy and recreate one at a time. Defer until traffic needs it.
Done when: a routine single-service deploy does not interrupt the other running services.
Phase 3 — Deploy only what changed; guarantee the fast path
Why. D3/D4: deploy-all.sh rebuilds everything sequentially, and none of the
docker compose build paths pin BuildKit. After Phase 1 most of this moves to CI,
but the VM-side and any remaining build paths should still skip untouched services
and use a deterministic, warm-cache builder.
What. Change-detection on what to deploy + an explicit BuildKit guarantee for any path that still builds.
How (checklist).
- 3.1 In
deploy-all.sh(or the Phase-0 unified library), compute changed services viagit diff --name-only <last-deployed-sha>..HEADand skip services with no changes. Record the last-deployed SHA per repo (e.g. a small state file or the registry tag). - 3.2 Pin
DOCKER_BUILDKIT=1andCOMPOSE_DOCKER_CLI_BUILD=1(or switch todocker buildx bake) in every path that still builds —deploy-clock.sh,deploy-notes.sh,deploy-all.sh(D4) — so behavior is not toolchain-version-dependent and the Dockerfile--mount=type=cachepnpm-store wins are guaranteed. - 3.3 Where multiple independent images must build, build them in
parallel (
buildx bake, ordocker compose build --parallel) instead of the current sequential loop. - 3.4 Capture before/after timings into the Measurement targets table above.
Done when: "deploy all" only touches changed services and always uses the warm-cache build path.
Phase 4 — Image size & VM resource guardrails
Why. D5/D6: bloated images and unbounded disk are the slow-burn causes of
"the VM filled up / a build OOM'd the box." Memory limits already exist via
deploy.resources.limits.memory — the remaining work is right-sizing them against
the real (lower-than-assumed) VM RAM, adding reservations, and adding disk hygiene.
What. Prune runtime deps, reconcile + extend memory caps, rotate logs, prune images.
How (checklist).
- 4.1 In each backend runtime stage, install production-only deps
(
pnpm install --prod/pnpm deploy --prod) instead of copying the full buildernode_modules(D5). Verify the app still starts. - 4.2 Reconcile the existing
deploy.resources.limits.memoryvalues (cosmos-emulator1g, azurite256m, services128m–512m) against the VM's actual RAM — confirm the sum fits with headroom. Addreservations(not justlimits) so the scheduler protects critical services, and addcpuswhere a service is CPU-bursty. - 4.3 Add Docker daemon log rotation (
json-filewithmax-size+max-file, or ship logs to Loki only) so container logs can't fill disk. - 4.4 Add a scheduled
docker image prune -f(andbuilder prune) on the VM to reclaim dangling layers left by rebuilds. - 4.5 Add a small swap file on the VM as an OOM safety net for any residual on-box work; alert when disk > 80%.
Done when: runtime images are prod-only, memory limits are reconciled with VM RAM (+ reservations), and disk usage is bounded by rotation + prune.
Phase 5 — Fast, artifact-based rollback
Why. D7: rollback today means rebuild-on-VM. With SHA-tagged images from Phase 1, rollback becomes re-pointing to a known-good tag.
What. A rollback command that redeploys a previous image tag.
How (checklist).
- 5.1 Keep the last N image SHAs in the registry (don't prune the most recent good tags).
- 5.2 Add
IMAGE_TAG=<previous-sha> docker compose up -drollback path (and adeploy-*.sh --rollback [sha]wrapper). - 5.3 Update
DEPLOYMENT_GUIDE.mdrollback section to use tag re-point instead ofgit revert+ rebuild. - 5.4 Document how to find the currently-deployed SHA (the
/api/devops/versionendpoint already exposed and checked bydeploy-invttrdg.sh).
Done when: rolling back is a sub-30s tag re-point with no rebuild.
3. Quick-reference summary
| Phase | Theme | Fixes | Primary symptom addressed |
|---|---|---|---|
| 0 | Unify deploy scripts | D8 | Stops fixes from being copy-pasted/drifting |
| 1 | Build off VM, pull images | D1, D7 | Slow builds + memory pressure + rollback |
| 2 | Recreate-in-place (align invttrdg) | D2 | Downtime |
| 3 | Deploy only changed + BuildKit guarantee | D3, D4 | Slow "deploy all" |
| 4 | Image slimming + RAM right-sizing + disk hygiene | D5, D6 | Disk/memory |
| 5 | Artifact rollback | D7 | Rollback speed/safety |
Suggested order: Phase 0 (unify, so later fixes land once) → Phase 1 → 2 (≈80% of the benefit across all three symptoms), then 3 → 4 → 5. If Phase 0 is skipped, apply Phases 2–4 to invttrdg, clock, and notes individually.
4. Explicitly out of scope
- Image-build internals (pnpm/BuildKit/Gitea/
.npmrc.docker/silent-break correctness) — seedocker-build-optimization-roadmap.md. - Migration to Kubernetes/Swarm or a managed cloud runtime.
- Multi-platform image builds.
5. Related docs
../DEPLOYMENT_GUIDE.md— current production deploy proceduredocker-build-optimization-roadmap.md— image-build layerVM_OBSERVABILITY_ROADMAP.md— metrics/monitoring for the VMvm-security-blind-spots-roadmap.md— VM hardening../../learning_ai_common_plat/docs/devops/single_azure_vm/docker/DEPLOYMENT_STATUS_2026-03-29.md— VM deployment status snapshot