Docker complements LXC with a high-level API which operates at the process level. It runs unix processes with strong guarantees of isolation and repeatability across servers.
Docker is a great building block for automating distributed systems: large-scale web deployments, database clusters, continuous deployment systems, private PaaS, service-oriented architectures, etc.
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Heterogeneous payloads: any combination of binaries, libraries, configuration files, scripts, virtualenvs, jars, gems, tarballs, you name it. No more juggling between domain-specific tools. Docker can deploy and run them all.
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Any server: docker can run on any x64 machine with a modern linux kernel - whether it's a laptop, a bare metal server or a VM. This makes it perfect for multi-cloud deployments.
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Isolation: docker isolates processes from each other and from the underlying host, using lightweight containers.
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Repeatability: because containers are isolated in their own filesystem, they behave the same regardless of where, when, and alongside what they run.
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Filesystem isolation: each process container runs in a completely separate root filesystem.
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Resource isolation: system resources like cpu and memory can be allocated differently to each process container, using cgroups.
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Network isolation: each process container runs in its own network namespace, with a virtual interface and IP address of its own.
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Copy-on-write: root filesystems are created using copy-on-write, which makes deployment extremely fast, memory-cheap and disk-cheap.
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Logging: the standard streams (stdout/stderr/stdin) of each process container are collected and logged for real-time or batch retrieval.
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Change management: changes to a container's filesystem can be committed into a new image and re-used to create more containers. No templating or manual configuration required.
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Interactive shell: docker can allocate a pseudo-tty and attach to the standard input of any container, for example to run a throwaway interactive shell.
Under the hood, Docker is built on the following components:
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The cgroup and namespacing capabilities of the Linux kernel;
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AUFS, a powerful union filesystem with copy-on-write capabilities;
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The Go programming language;
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lxc, a set of convenience scripts to simplify the creation of linux containers.
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Make sure you have a Go language compiler.
On a Debian/wheezy or Ubuntu 12.10 install the package:
$ sudo apt-get install golang-go
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Execute
make
This command will install all necessary dependencies and build the executable that you can find in
bin/docker
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Should you like to see what's happening, run
make
withVERBOSE=1
parameter:$ make VERBOSE=1
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Install dependencies:
sudo apt-get install lxc wget bsdtar curl sudo apt-get install linux-image-extra-`uname -r`
The
linux-image-extra
package is needed on standard Ubuntu EC2 AMIs in order to install the aufs kernel module. -
Install the latest docker binary:
wget http://get.docker.io/builds/$(uname -s)/$(uname -m)/docker-master.tgz tar -xf docker-master.tgz
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Run your first container!
cd docker-master sudo ./docker pull base sudo ./docker run -i -t base /bin/bash
Consider adding docker to your
PATH
for simplicity.
Right now, the officially supported distributions are:
- Ubuntu 12.04 (precise LTS)
- Ubuntu 12.10 (quantal)
Docker probably works on other distributions featuring a recent kernel, the AUFS patch, and up-to-date lxc. However this has not been tested.
Some streamlined (but possibly outdated) installation paths' are available from the website: http://docker.io/documentation/
# Download a base image
docker pull base
# Run an interactive shell in the base image,
# allocate a tty, attach stdin and stdout
docker run -i -t base /bin/bash
# Run docker in daemon mode
(docker -d || echo "Docker daemon already running") &
# Start a very useful long-running process
JOB=$(docker run -d base /bin/sh -c "while true; do echo Hello world; sleep 1; done")
# Collect the output of the job so far
docker logs $JOB
# Kill the job
docker kill $JOB
docker ps
docker pull base
CONTAINER=$(docker run -d base apt-get install -y curl)
docker commit -m "Installed curl" $CONTAINER $USER/betterbase
docker push $USER/betterbase
# Expose port 4444 of this container, and tell netcat to listen on it
JOB=$(docker run -d -p 4444 base /bin/nc -l -p 4444)
# Which public port is NATed to my container?
PORT=$(docker port $JOB 4444)
# Connect to the public port via the host's public address
echo hello world | nc $(hostname) $PORT
# Verify that the network connection worked
echo "Daemon received: $(docker logs $JOB)"
Want to hack on Docker? Awesome! There are instructions to get you started on the website: http://docker.io/documentation/contributing/contributing.html
They are probably not perfect, please let us know if anything feels wrong or incomplete.
We also keep the documentation in this repository. The website documentation is generated using sphinx using these sources. Please find it under docs/sources/ and read more about it https://github.com/dotcloud/docker/master/docs/README.md
Please feel free to fix / update the documentation and send us pull requests. More tutorials are also welcome.
We recommend discussing your plans on the mailing list before starting to code - especially for more ambitious contributions. This gives other contributors a chance to point you in the right direction, give feedback on your design, and maybe point out if someone else is working on the same thing.
Any significant improvement should be documented as a github issue before anybody starts working on it.
Please take a moment to check that an issue doesn't already exist documenting your bug report or improvement proposal. If it does, it never hurts to add a quick "+1" or "I have this problem too". This will help prioritize the most common problems and requests.
Golang has a great testing suite built in: use it! Take a look at existing tests for inspiration.
Instructions that have been verified to work on Ubuntu 12.10,
sudo apt-get -y install lxc wget bsdtar curl golang git
export GOPATH=~/go/
export PATH=$GOPATH/bin:$PATH
mkdir -p $GOPATH/src/github.com/dotcloud
cd $GOPATH/src/github.com/dotcloud
git clone [email protected]:dotcloud/docker.git
cd docker
go get -v github.com/dotcloud/docker/...
go install -v github.com/dotcloud/docker/...
Then run the docker daemon,
sudo $GOPATH/bin/docker -d
Run the go install
command (above) to recompile docker.
Docker defines a unit of software delivery called a Standard Container. The goal of a Standard Container is to encapsulate a software component and all its dependencies in a format that is self-describing and portable, so that any compliant runtime can run it without extra dependencies, regardless of the underlying machine and the contents of the container.
The spec for Standard Containers is currently a work in progress, but it is very straightforward. It mostly defines 1) an image format, 2) a set of standard operations, and 3) an execution environment.
A great analogy for this is the shipping container. Just like Standard Containers are a fundamental unit of software delivery, shipping containers (http://bricks.argz.com/ins/7823-1/12) are a fundamental unit of physical delivery.
Just like shipping containers, Standard Containers define a set of STANDARD OPERATIONS. Shipping containers can be lifted, stacked, locked, loaded, unloaded and labelled. Similarly, standard containers can be started, stopped, copied, snapshotted, downloaded, uploaded and tagged.
Just like shipping containers, Standard Containers are CONTENT-AGNOSTIC: all standard operations have the same effect regardless of the contents. A shipping container will be stacked in exactly the same way whether it contains Vietnamese powder coffee or spare Maserati parts. Similarly, Standard Containers are started or uploaded in the same way whether they contain a postgres database, a php application with its dependencies and application server, or Java build artifacts.
Both types of containers are INFRASTRUCTURE-AGNOSTIC: they can be transported to thousands of facilities around the world, and manipulated by a wide variety of equipment. A shipping container can be packed in a factory in Ukraine, transported by truck to the nearest routing center, stacked onto a train, loaded into a German boat by an Australian-built crane, stored in a warehouse at a US facility, etc. Similarly, a standard container can be bundled on my laptop, uploaded to S3, downloaded, run and snapshotted by a build server at Equinix in Virginia, uploaded to 10 staging servers in a home-made Openstack cluster, then sent to 30 production instances across 3 EC2 regions.
Because they offer the same standard operations regardless of content and infrastructure, Standard Containers, just like their physical counterpart, are extremely well-suited for automation. In fact, you could say automation is their secret weapon.
Many things that once required time-consuming and error-prone human effort can now be programmed. Before shipping containers, a bag of powder coffee was hauled, dragged, dropped, rolled and stacked by 10 different people in 10 different locations by the time it reached its destination. 1 out of 50 disappeared. 1 out of 20 was damaged. The process was slow, inefficient and cost a fortune - and was entirely different depending on the facility and the type of goods.
Similarly, before Standard Containers, by the time a software component ran in production, it had been individually built, configured, bundled, documented, patched, vendored, templated, tweaked and instrumented by 10 different people on 10 different computers. Builds failed, libraries conflicted, mirrors crashed, post-it notes were lost, logs were misplaced, cluster updates were half-broken. The process was slow, inefficient and cost a fortune - and was entirely different depending on the language and infrastructure provider.
There are 17 million shipping containers in existence, packed with every physical good imaginable. Every single one of them can be loaded on the same boats, by the same cranes, in the same facilities, and sent anywhere in the World with incredible efficiency. It is embarrassing to think that a 30 ton shipment of coffee can safely travel half-way across the World in less time than it takes a software team to deliver its code from one datacenter to another sitting 10 miles away.
With Standard Containers we can put an end to that embarrassment, by making INDUSTRIAL-GRADE DELIVERY of software a reality.
(TODO)
- Copy
- Run
- Stop
- Wait
- Commit
- Attach standard streams
- List filesystem changes
- ...