О программе
Этот навык предоставляет информацию о CLI `container` от Apple с открытым исходным кодом для сборки и запуска OCI/Linux контейнеров на macOS с процессорами Apple Silicon. Он позволяет управлять контейнерами без необходимости в демоне Docker, используя легковесные виртуальные машины для каждого контейнера. Используйте этот навык при работе с нативным инструментом Apple для разработки на macOS вместо Docker или Podman.
Быстрая установка
Claude Code
Рекомендуетсяnpx skills add sanjay3290/ai-skills -a claude-code/plugin add https://github.com/sanjay3290/ai-skillsgit clone https://github.com/sanjay3290/ai-skills.git ~/.claude/skills/apple-containerСкопируйте и вставьте эту команду в Claude Code для установки этого навыка
Документация
Apple container
Apple's container is an open-source CLI for building, running, and managing OCI/Linux
containers on Apple-silicon Macs. Each container runs inside its own lightweight virtual
machine (backed by the Containerization framework and the Virtualization API), so there is no
shared daemon like Docker — services run per-user via launchd. Images are standard OCI
artifacts, so they interoperate with Docker registries and other OCI tooling. The CLI is
deliberately Docker-like (container run, container build, and image ops under
container image push/pull), but it is a distinct tool: do not assume Docker command paths,
flags, defaults, or daemon behavior carry over (e.g. there is no container images/push/pull
top-level command — image verbs live under container image).
Requirements
- Apple silicon only (M1 or later). Intel Macs are not supported.
- macOS 26 (Tahoe) is the officially supported target. The maintainers do not support
older macOS and typically will not fix issues that can't be reproduced on 26. The binary
still runs on macOS 15 (Sequoia) but with reduced networking: only the single default
subnet is available, and the
container networkgroup and--networkflag error out. macOS-26-gated features are called out throughout the reference files. - Version: this skill documents the 1.0.0 release (the fullest feature set). The
machinegroup,container cp,container export,container prune,container image prune,container registry list, andcontainer system versionwere added in 1.0.0 (not in 0.7.1) — features that postdate 0.7.1 are flagged (1.0.0+) in the reference files. Runcontainer --versionandcontainer <group> --helpto see what your installed build supports. - Install by downloading the signed
.pkginstaller from the project's GitHub releases (apple/container) and running it. Seereferences/concepts.mdfor the full requirements/compatibility matrix and how the VM-per-container model works.
Setup
Install the signed package, then start the background services once:
- Download the latest signed installer
.pkgfrom the GitHub releases page. - Double-click the downloaded package and follow the prompts, entering your admin
password so it can place files under
/usr/local. (There is no documented CLIinstallerinvocation — installation is via the GUI package.) - Start the services and confirm they are healthy:
# Start the container services (container-apiserver + helpers via launchd). On first run it
# offers to install the default Linux kernel — accept it, or start non-interactively with
# `--disable-kernel-install` and add a kernel later via `container system kernel set`.
container system start
# Verify services are healthy
container system status
container system start must have run before any container/image/build command works — a
connection/XPC error almost always means the services are stopped, so run it again. Stop and
deregister the launchd services with container system stop (which takes only -p/--prefix).
The startup flags for container system start (-a/--app-root, --install-root, --log-root,
--enable-kernel-install/--disable-kernel-install, --timeout) are in
references/configuration.md.
Upgrade / downgrade / uninstall use helper scripts in /usr/local/bin (stop first with
container system stop): update-container.sh (add -v <version> to pin a version), and
uninstall-container.sh -d to remove user data or -k to keep it. Full recipes in
references/workflows.md.
Command groups at a glance
Invoke everything as container <group> <subcommand>. Container-lifecycle verbs (run,
create, start, stop, exec, logs, inspect, list/ls, delete/rm, kill,
stats) and build are top-level; image operations like push, pull, and tag live
under container image. Run container <group> --help for exact flags, or read
references/commands.md for the exhaustive matrix.
| Group | What it does | Example |
|---|---|---|
| container lifecycle | Create, start, run, stop, exec, inspect, list, remove containers | container run --rm -it docker.io/library/alpine sh |
| build | Build an OCI image from a Dockerfile in the builder VM | container build -t myapp:latest . |
| image | List, tag, inspect, remove, load/save, prune local images; push/pull to registries | container image ls |
| registry | Authenticate (login/logout/list) to OCI registries | container registry login ghcr.io |
| system | Start/stop/status services, logs, disk usage (df), DNS, kernel, properties | container system status |
| network | Create/list/remove container networks (macOS 26 only) | container network create mynet |
| volume | Create/list/inspect/remove persistent volumes | container volume create data |
| builder | Manage the builder VM that runs container build (start/stop/status) | container builder status |
| machine (1.0.0+) | Persistent Linux "machine" environments (added in 1.0.0) | container machine --help |
Exact subcommand names, aliases, arguments, and flags for each group live in
references/commands.md — consult it before running an unfamiliar command rather than
guessing Docker-equivalent syntax.
Navigating this skill
Read the reference file that matches the task; do not guess flags or behavior.
references/commands.md— exhaustive CLI reference: every command group, subcommand, alias, argument, and flag. Read this to construct any concretecontainer ...invocation, or to confirm a flag exists before using it.references/concepts.md— architecture (VM-per-container, Containerization framework), system requirements and macOS 15 vs 26 differences, networking model, per-container IPs, security model, and a Docker-vs-containercomparison. Read this to explain how or why something works, or when a Docker mental model gives the wrong answer.references/configuration.md— the system service,config.toml/ property model, default kernel, DNS domains, default registry, builder resources, and machine settings. Read this to change defaults, tune CPU/memory, point at a private registry, or manage the kernel.references/workflows.md— copy-pasteable task recipes (run an image, build & push, wire up local DNS, mount a volume, expose ports) and troubleshooting for common failures. Read this first when the user wants to accomplish a concrete end-to-end task.
Key rules
- This is not Docker. The CLI resembles Docker, but flags, defaults, and daemon behavior
differ. Verify syntax in
references/commands.mdinstead of assuming Docker equivalence. - Always ensure services are up first. Run
container system start(and confirm withcontainer system status) before any container/image/build command; connection errors usually mean the services are stopped. - Images are standard OCI artifacts and interoperate with Docker registries and other OCI
tools. Image references that omit a registry default to
docker.io(configurable via theregistry.domainproperty — seereferences/configuration.md). - Each container gets its own IP address on its network (one lightweight VM per
container). There is no shared Docker bridge; reach a container directly by its IP, or set
up a local DNS domain (
container system dns create ..., admin required) for name-based access. container networkrequires macOS 26. On macOS 15 only the single default subnet is available and the network command group is unavailable — seereferences/concepts.md.- Use fully-qualified image references when precision matters (e.g.
docker.io/library/alpinerather than barealpine) to avoid ambiguity about the source registry.
GitHub репозиторий
Frequently asked questions
What is the apple-container skill?
apple-container is a Claude Skill by sanjay3290. Skills package instructions and resources that Claude loads on demand, so Claude can perform apple-container-related tasks without extra prompting.
How do I install apple-container?
Use the install commands on this page: add apple-container to Claude Code as a plugin, or clone its repository into your skills directory, then restart Claude so it picks up the skill.
What category does apple-container belong to?
apple-container is in the Meta category, tagged ai and design.
Is apple-container free to use?
Yes. apple-container is listed on AIMCP and free to install. It runs inside Claude, so no separate service account is required to use the skill itself.
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