Addresses #7985 Docker-DCO-1.1-Signed-off-by: Phil Estes <estesp@linux.vnet.ibm.com> (github: estesp)
11 KiB
page_title: Working with Containers page_description: Learn how to manage and operate Docker containers. page_keywords: docker, the docker guide, documentation, docker.io, monitoring containers, docker top, docker inspect, docker port, ports, docker logs, log, Logs
Working with Containers
In the last section of the Docker User Guide
we launched our first containers. We launched two containers using the
docker run
command.
- Containers we ran interactively in the foreground.
- One container we ran daemonized in the background.
In the process we learned about several Docker commands:
docker ps
- Lists containers.docker logs
- Shows us the standard output of a container.docker stop
- Stops running containers.
Tip: Another way to learn about
docker
commands is our interactive tutorial.
The docker
client is pretty simple. Each action you can take
with Docker is a command and each command can take a series of
flags and arguments.
# Usage: [sudo] docker [flags] [command] [arguments] ..
# Example:
$ docker run -i -t ubuntu /bin/bash
Let's see this in action by using the docker version
command to return
version information on the currently installed Docker client and daemon.
$ sudo docker version
This command will not only provide you the version of Docker client and daemon you are using, but also the version of Go (the programming language powering Docker).
Client version: 0.8.0
Go version (client): go1.2
Git commit (client): cc3a8c8
Server version: 0.8.0
Git commit (server): cc3a8c8
Go version (server): go1.2
Last stable version: 0.8.0
Seeing what the Docker client can do
We can see all of the commands available to us with the Docker client by
running the docker
binary without any options.
$ sudo docker
You will see a list of all currently available commands.
Commands:
attach Attach to a running container
build Build an image from a Dockerfile
commit Create a new image from a container's changes
. . .
Seeing Docker command usage
You can also zoom in and review the usage for specific Docker commands.
Try typing Docker followed with a [command]
to see the usage for that
command:
$ sudo docker attach
Help output . . .
Or you can also pass the --help
flag to the docker
binary.
$ sudo docker attach --help
This will display the help text and all available flags:
Usage: docker attach [OPTIONS] CONTAINER
Attach to a running container
--no-stdin=false: Do not attach stdin
--sig-proxy=true: Proxify all received signal to the process (even in non-tty mode)
Note: You can see a full list of Docker's commands here.
Running a Web Application in Docker
So now we've learnt a bit more about the docker
client let's move onto
the important stuff: running more containers. So far none of the
containers we've run did anything particularly useful though. So let's
build on that experience by running an example web application in
Docker.
For our web application we're going to run a Python Flask application.
Let's start with a docker run
command.
$ sudo docker run -d -P training/webapp python app.py
Let's review what our command did. We've specified two flags: -d
and
-P
. We've already seen the -d
flag which tells Docker to run the
container in the background. The -P
flag is new and tells Docker to
map any required network ports inside our container to our host. This
lets us view our web application.
We've specified an image: training/webapp
. This image is a
pre-built image we've created that contains a simple Python Flask web
application.
Lastly, we've specified a command for our container to run: python app.py
.
This launches our web application.
Note: You can see more detail on the
docker run
command in the command reference and the Docker Run Reference.
Viewing our Web Application Container
Now let's see our running container using the docker ps
command.
$ sudo docker ps -l
CONTAINER ID IMAGE COMMAND CREATED STATUS PORTS NAMES
bc533791f3f5 training/webapp:latest python app.py 5 seconds ago Up 2 seconds 0.0.0.0:49155->5000/tcp nostalgic_morse
You can see we've specified a new flag, -l
, for the docker ps
command. This tells the docker ps
command to return the details of the
last container started.
Note: By default, the
docker ps
command only shows information about running containers. If you want to see stopped containers too use the-a
flag.
We can see the same details we saw when we first Dockerized a
container with one important addition in the PORTS
column.
PORTS
0.0.0.0:49155->5000/tcp
When we passed the -P
flag to the docker run
command Docker mapped any
ports exposed in our image to our host.
Note: We'll learn more about how to expose ports in Docker images when we learn how to build images.
In this case Docker has exposed port 5000 (the default Python Flask port) on port 49155.
Network port bindings are very configurable in Docker. In our last
example the -P
flag is a shortcut for -p 5000
that maps port 5000
inside the container to a high port (from the range 49153 to 65535) on
the local Docker host. We can also bind Docker containers to specific
ports using the -p
flag, for example:
$ sudo docker run -d -p 5000:5000 training/webapp python app.py
This would map port 5000 inside our container to port 5000 on our local host. You might be asking about now: why wouldn't we just want to always use 1:1 port mappings in Docker containers rather than mapping to high ports? Well 1:1 mappings have the constraint of only being able to map one of each port on your local host. Let's say you want to test two Python applications: both bound to port 5000 inside your container. Without Docker's port mapping you could only access one at a time.
So let's now browse to port 49155 in a web browser to see the application.
Our Python application is live!
Note: If you have used the boot2docker virtual machine on OS X, Windows or Linux, you'll need to get the IP of the virtual host instead of using localhost. You can do this by running the following in the boot2docker shell.
$ boot2docker ip The VM's Host only interface IP address is: 192.168.59.103
In this case you'd browse to http://192.168.59.103:49155 for the above example.
A Network Port Shortcut
Using the docker ps
command to return the mapped port is a bit clumsy so
Docker has a useful shortcut we can use: docker port
. To use docker port
we
specify the ID or name of our container and then the port for which we need the
corresponding public-facing port.
$ sudo docker port nostalgic_morse 5000
0.0.0.0:49155
In this case we've looked up what port is mapped externally to port 5000 inside the container.
Viewing the Web Application's Logs
Let's also find out a bit more about what's happening with our application and
use another of the commands we've learnt, docker logs
.
$ sudo docker logs -f nostalgic_morse
* Running on http://0.0.0.0:5000/
10.0.2.2 - - [23/May/2014 20:16:31] "GET / HTTP/1.1" 200 -
10.0.2.2 - - [23/May/2014 20:16:31] "GET /favicon.ico HTTP/1.1" 404 -
This time though we've added a new flag, -f
. This causes the docker logs
command to act like the tail -f
command and watch the
container's standard out. We can see here the logs from Flask showing
the application running on port 5000 and the access log entries for it.
Looking at our Web Application Container's processes
In addition to the container's logs we can also examine the processes
running inside it using the docker top
command.
$ sudo docker top nostalgic_morse
PID USER COMMAND
854 root python app.py
Here we can see our python app.py
command is the only process running inside
the container.
Inspecting our Web Application Container
Lastly, we can take a low-level dive into our Docker container using the
docker inspect
command. It returns a JSON hash of useful configuration
and status information about Docker containers.
$ sudo docker inspect nostalgic_morse
Let's see a sample of that JSON output.
[{
"ID": "bc533791f3f500b280a9626688bc79e342e3ea0d528efe3a86a51ecb28ea20",
"Created": "2014-05-26T05:52:40.808952951Z",
"Path": "python",
"Args": [
"app.py"
],
"Config": {
"Hostname": "bc533791f3f5",
"Domainname": "",
"User": "",
. . .
We can also narrow down the information we want to return by requesting a specific element, for example to return the container's IP address we would:
$ sudo docker inspect -f '{{ .NetworkSettings.IPAddress }}' nostalgic_morse
172.17.0.5
Stopping our Web Application Container
Okay we've seen web application working. Now let's stop it using the
docker stop
command and the name of our container: nostalgic_morse
.
$ sudo docker stop nostalgic_morse
nostalgic_morse
We can now use the docker ps
command to check if the container has
been stopped.
$ sudo docker ps -l
Restarting our Web Application Container
Oops! Just after you stopped the container you get a call to say another developer needs the container back. From here you have two choices: you can create a new container or restart the old one. Let's look at starting our previous container back up.
$ sudo docker start nostalgic_morse
nostalgic_morse
Now quickly run docker ps -l
again to see the running container is
back up or browse to the container's URL to see if the application
responds.
Note: Also available is the
docker restart
command that runs a stop and then start on the container.
Removing our Web Application Container
Your colleague has let you know that they've now finished with the container
and won't need it again. So let's remove it using the docker rm
command.
$ sudo docker rm nostalgic_morse
Error: Impossible to remove a running container, please stop it first or use -f
2014/05/24 08:12:56 Error: failed to remove one or more containers
What's happened? We can't actually remove a running container. This protects you from accidentally removing a running container you might need. Let's try this again by stopping the container first.
$ sudo docker stop nostalgic_morse
nostalgic_morse
$ sudo docker rm nostalgic_morse
nostalgic_morse
And now our container is stopped and deleted.
Note: Always remember that deleting a container is final!
Next steps
Until now we've only used images that we've downloaded from Docker Hub now let's get introduced to building and sharing our own images.
Go to Working with Docker Images.