cos MCP server
Enables container orchestration on the local Docker daemon, allowing management of jobs and services via MCP tools.
README
container-orchestration-service (cos)
A small, harness-agnostic Docker control plane. It runs workloads —
one-shot jobs and long-lived services — on the local Docker daemon, with
arc-agnostic ownership, lifecycle, and reaping layered on top. All state lives
in container labels (cos.managed=true), so there's no sidecar database.
Its primary front end is an MCP server: any MCP client (e.g. the arc agent
runtime) connects over streamable-HTTP and gets container_* tools. The same
core library is usable directly from Python and from the cos CLI.
Designed against agent-runtime/v2/_design/0024-container-orchestration-and-job-dispatch.md.
Why
Some capabilities can't (or shouldn't) run in a host process — heavy engines with hostile installs, or untrusted binaries that need a sandbox. The answer is "the environment is a dependency": ship a recipe (an image), and dispatch a job into a container. This service is the thing that runs those containers.
Concepts
- EnvSpec — how to obtain the image:
image(pull),build(a context), orbase + provision(a base image + setup steps, synthesized into a Dockerfile). - WorkloadSpec — env + command + stdin + mounts + env vars + limits +
network (default
none) + lifecycle (ephemeral|persistent). - Jobs run once, return
{exit_code, stdout, stderr}, and auto-remove. - Services are persistent, named, and reconnected by label (find-or-create).
- Networks — put cooperating containers on a user-defined network and they
reach each other by name over Docker's embedded DNS. A persistent container
named
Xis reachable at hostnamecos-X.none(sandbox) andbridge(host-reachable, no inter-container DNS) remain the built-in modes;hostandcontainer:*are rejected. - Images —
build_imagebuilds a named,cos.managed-labeled image ONCE (from a context dir, an inline Dockerfile, or base+provision); reference it from many containers viaimage=<tag>(build-once, run-many).image_list/image_removemanage them. - GC —
gcreclaims managed cruft: stopped containers, empty networks, and images not backing any container. Never touches running containers or unmanaged resources. All builds (including the base+provision cache) are labeled managed, so nothing accumulates unreclaimably.
Multi-container example
cos network create appnet
cos run python:3.11-slim --network appnet --cmd "python -m http.server 8000" # (as a service via MCP container_ensure)
# a second container on appnet reaches the first at http://cos-<name>:8000
cos network ls
Over MCP: network_create / network_list / network_remove, plus
network=<name> on container_run / container_ensure.
Build once, run many + clean up
cos image build myapp:latest --context ./myapp # build + label the image once
cos run myapp:latest --cmd "..." # reference it by tag, N times
cos image ls
cos gc # reclaim stopped/empty/unused
Over MCP: image_build / image_list / image_remove and gc.
Quick start
pip install -e ".[mcp]" # core + MCP server
cos ping # check the daemon
cos run alpine:3.19 --cmd "echo hello"
cos serve --port 8770 # run the MCP server (streamable-HTTP)
Point an MCP client at it (arc example):
arc mcp add container --transport http --url http://127.0.0.1:8770/mcp
Status
v1: core library + Docker backend + MCP server + CLI. Native REST API + a
programmatic Python client are deferred until an engine dispatcher needs a
non-MCP path (see _deviations/).
License
MIT.
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