ClamAV can be run within a Docker container. This provides isolation from other processes by running it in a containerized environment. If new or unfamiliar with Docker, containers or cgroups see docker.com.
ClamAV image tags on Docker Hub follow this naming convention:
-
clamav/clamav:<version>
: A release preloaded with signature databases.Using this container will save the ClamAV project some bandwidth. Use this if you will keep the image around so that you don't download the entire database set every time you start a new container. Updating with FreshClam from existing databases set does not use much data.
-
clamav/clamav:<version>_base
: A release with no signature databases.Use this container only if you mount a volume in your container under
/var/lib/clamav
to persist your signature database databases. This method is the best option because it will reduce data costs for ClamAV and for the Docker registry, but it does require advanced familiarity with Linux and Docker.Caution: Using this image without mounting an existing database directory will cause FreshClam to download the entire database set each time you start a new container.
You can use the unstable
version (i.e. clamav/clamav:unstable
or
clamav/clamav:unstable_base
) to try the latest from our development branch.
While it is recommended to pull the image from our Docker Hub registry, some may want to build the image locally instead.
To do this, you will need to get the Dockerfile
and the supporting scripts/
directory from the
clamav-docker Git repository.
Be sure to select the correct one for this ClamAV release.
Tip: For unreleased ClamAV versions, such as when building from the
main
git branch, you should select the files from theclamav-docker/clamav/unstable/<distro>
directory.
Place the Dockerfile
and scripts/
directory in the ClamAV source directory.
Then you can build the image. For example, run:
docker build --tag "clamav:TICKET-123" .
in the current directory. This will build the ClamAV image and tag it with the name "clamav:TICKET-123". Any name can generally be used and it is this name that needs to be referred to later when running the image.
To run clamd
in a Docker container, first, an image either has to be built
or pulled from a Docker registry.
To pull the ClamAV "unstable" image from Docker Hub, run:
docker pull clamav/clamav:unstable
Tip: Substitute
unstable
with a different version as needed.
To pull and run the official ClamAV images from the Docker Hub registry, try the following command:
docker run \
--interactive \
--tty \
--rm \
--name "clam_container_01" \
clamav/clamav:unstable
The above creates an interactive container with the current TTY connected to
it. This is optional but useful when getting started as it allows one to
directly see the output and, in the case of clamd
, send ctrl-c
to close the
container. The --rm
parameter ensures the container is cleaned up again after
it exits and the --name
parameter names the container, so it can be
referenced through other (Docker) commands, as several containers of the same
image can be started without conflicts.
Note: Pulling is not always required.
docker run
will pull the image if it cannot be found locally.docker run --pull always
will always pull beforehand to ensure the most up-to-date container is being used. Do not use--pull always
with the larger ClamAV images.
Tip: It's common to see
-it
instead of--interactive --tty
.
In some situations it may be desirable to set (any of) the containers to a
specific timezone. The --env
parameter can be used to set the TZ
variable
to change the default of Etc/UTC
.
You can run a container using an image built locally (see "Building the ClamAV Image"). Just run:
docker run -it --rm \
--name "clam_container_01" \
clamav:TICKET-123
The virus database in /var/lib/clamav
is by default unique to each container
and thus is normally not shared. For simple setups this is fine, where only one
instance of clamd
is expected to run in a dockerized environment. However
some use cases may want to efficiently share the database or at least persist
it across short-lived ClamAV containers.
To do so, you have two options:
-
Create a Docker volume using the
docker volume
command. Volumes are completely managed by Docker and are the best choice for creating a persistent database volume.For example, create a "clam_db" volume:
docker volume create clam_db
Then start one or more containers using this volume. The first container to use a new database volume will download the full database set. Subsequent containers will use the existing databases and may update them as needed:
docker run -it --rm \ --name "clam_container_01" \ --mount source=clam_db,target=/var/lib/clamav \ clamav/clamav:unstable_base
-
Create a Bind Mount that maps a file system directory to a path within the container. Bind Mounts depend on the directory structure, permissions, and operating system of the Docker host machine.
Run the container with these arguments to mount the a directory from your host environment as a volume in the container.
--mount type=bind,source=/path/to/databases,target=/var/lib/clamav
When doing this, it's best to use the
<version>_base
image tags so as to save on bandwith. E.g.:docker run -it --rm \ --name "clam_container_01" \ --mount type=bind,source=/path/to/databases,target=/var/lib/clamav \ clamav/clamav:unstable_base
Disclaimer: When using a Bind Mount, the container's entrypoint script will change ownership of this directory to its "clamav" user. This enables FreshClam and ClamD with the required permissions to read and write to the directory, though these changes will also affect those files on the host.
If you're thinking about running multiple containers that share a single database volume, here are some notes on how this might work.
Scanning files using clamscan
or clamdscan
is possible in various ways with
Docker. This section briefly describes them, but the other sections of this
document are best read before hand to better understand some of the concepts.
One important aspect is however to realize that Docker by default does not have access to any of the hosts files. And so to scan these within Docker, they need to be mounted with a bind mount to be made accessible.
For example, running the container with these arguments ...
--mount type=bind,source=/path/to/scan,target=/scandir
--mount type=bind,source=/path/to/scan,target=/scandir
... would make the hosts file/directory /path/to/scan
available in the
container as /scandir
and thus invoking clamscan
would thus be done on
/scandir
.
Note that while technically possible to run either scanners via docker exec
this is not described as it is unlikely the container has access to the files
to be scanned.
Using clamscan
outside of the Docker container is how normally clamscan
is
invoked. To make use of the available shared dockerized resources however, it
is possible to expose the virus database and share that for example. E.g. it
could be possible to run a Docker container with only the freshclam
daemon
running, and share the virus database directory /var/lib/clamav
. This could
be useful for file servers for example, where only clamscan
is installed on
the host, and freshclam
is managed in a Docker container.
Note: Running the
freshclam
daemon separated fromclamd
is less recommended, unless theclamd
socket is shared withfreshclam
asfreshclam
would not be able to informclamd
of database updates.
To run clamscan
in a Docker container, the Docker container can be invoked
as:
docker run -it --rm \
--mount type=bind,source=/path/to/scan,target=/scandir \
clamav/clamav:unstable \
clamscan /scandir
However, this will use whatever signatures are found in the image, which may be
slightly out of date. If using clamscan
in this way, it would be best to use
a database volume that is
up-to-date so that you scan with the latest signatures. E.g.:
docker run -it --rm \
--mount type=bind,source=/path/to/scan,target=/scandir \
--mount type=bind,source=/path/to/databases,target=/var/lib/clamav \
clamav/clamav:unstable_base \
clamscan /scandir
As with clamscan
, clamdscan
can also be run when installed on the host, by
connecting to the dockerized clamd
. This can be done by either pointing
clamdscan
to the exposed TCP/UDP port or unix socket.
Running both clamd
and clamdscan
is also easily possible, as all that is
needed is the shared socket between the two containers. The only cavaet here
is to:
- mount the files to be scanned in the container that will run
clamd
, or - mount the files to be scanned in the container that will
clamdscan
run if usingclamdscan --stream
. The--stream
option will be slower, but enables submitting files from a different machine on a network.
For example:
docker run -it --rm \
--mount type=bind,source=/path/to/scan,target=/scandir \
--mount type=bind,source=/var/lib/docker/data/clamav/sockets/,target=/run/clamav/
clamav/clamav:unstable
docker run -it --rm \
--mount type=bind,source=/path/to/scan,target=/scandir \
--mount type=bind,source=/var/lib/docker/data/clamav/sockets/,target=/run/clamav/
clamav/clamav:unstable_base \
clamdscan /scandir
The ClamAV container actually runs both freshclam
and clamd
daemons by
default. Optionally available to the container is ClamAV's milter daemon.
To control the behavior of the services started within the container, the
following flags can be passed to the docker run
command with the
--env
(-e
) parameter.
- CLAMAV_NO_CLAMD [true|false] Do not start
clamd
. (default: startclamd
) - CLAMAV_NO_FRESHCLAMD [true|false] Do not start the
freshclam
daemon. (default: start thefreshclam
daemon) - CLAMAV_NO_MILTERD [true|false] Do not start the
clamav-milter
daemon. (default: start theclamav-milter
daemon ) - CLAMD_STARTUP_TIMEOUT [integer] Seconds to wait for
clamd
to start. (default: 1800) - FRESHCLAM_CHECKS [integer]
freshclam
daily update frequency. (default: once per day)
So to additionally also enable clamav-milter
, the following flag can be
added:
--env 'CLAMAV_NO_MILTERD=false'
Further more, all of the configuration files that live in /etc/clamav
can be
overridden by doing a volume-mount to the specific file. The following argument
can be added for this purpose. The example uses the entire configuration
directory, but this can be supplied multiple times if individual files deem to
be replaced.
--mount type=bind,source=/full/path/to/clamav/,target/etc/clamav
Note: Even when disabling the
freshclam
daemon,freshclam
will always run at least once during container startup if there is no virus database. While not recommended, the virus database location itself/var/lib/clamav/
could be a persistent Docker volume. This however is slightly more advanced and out of scope of this document.
To connect to a running ClamAV container, docker exec
can be used to run a
command on an already running container. To do so, the name needs to be either
obtained from docker ps
or supplied during container start via the --name
parameter. The most interesting command in this case can be clamdtop
.
docker exec --interactive --tty "clamav_container_01" clamdtop
Alternatively, a shell can be started to inspect and run commands within the container as well.
docker exec --interactive --tty "clamav_container_01" /bin/sh
The default socket for clamd
is located inside the container as
/run/clamav/clamd.sock
and can be connected to when exposed via a Docker
volume mount. To ensure, that clamd
within the container can freely create
and remove the socket, the path for the socket is to be volume-mounted, to
expose it for others on the same host to use. The following volume can be used
for this purpose. Do ensure that the directory on the host actually exists and
clamav inside the container has permission to access it.
Caution is required when managing permissions, as incorrect permission could
open clamd for anyone on the host system.
--mount type=bind,source=/var/lib/docker/data/clamav/sockets/,target=/run/clamav/
With the socket exposed to the host, any other service can now talk to clamd
as well. If for example clamdtop
where installed on the local host, calling
clamdtop "/var/lib/docker/data/clamav/sockets/clamd.sock"
should work just fine. Likewise, running clamdtop
in a different container,
but sharing the socket will equally work. While clamdtop
works well as an
example here, it is of course important to realize, this can also be used to
connect a mail server to clamd
.
ClamAV in the official Docker images is configured to listen for TCP connections on these ports:
clamd
: 3310clamav-milter
: 7357
While clamd
and clamav-milter
will listen on the above TCP ports, Docker
does not expose these by default to the host.
Only within containers can these ports be accessed. To expose, or "publish",
these ports to the host, and thus potentially over the (inter)network, the
--publish
(or --publish-all
) flag to docker run
can be used. While more
advanced/secure mappings can be done as per documentation, the basic way is to
--publish [<host_port>:]<container_port>
to make the port available to the
host.
--publish 73310:3310 \
--publish 7357
The above would thus publish the milter port 3310 as 73310 on the host and the
clamd port 7357 as a random to the host. The random port can be inspected via
docker ps
.
Warning: Extreme caution is to be taken when using
clamd
over TCP as there are no protections on that level. All traffic is un-encrypted. Extra care is to be taken when using TCP communications.
Docker has the ability to run simple ping
checks on services running inside
containers. If clamd
is running inside the container, Docker will on
occasion send a ping
to clamd
on the default port and wait for the pong
from clamd
. If clamd
fails to respond, Docker will treat this as an error.
The healthcheck results can be viewed with docker inspect
.
When the container starts up, the health-check also starts up. As loading the
virus database can take some time, there is a delay configured in the
Dockerfile
to try and avoid this race condition.
The performance impact of running clamd
in Docker is negligible. Docker is
in essence just a wrapper around Linux's cgroups and cgroups can be thought of
as chroot
or FreeBSD's jail
. All code is executed on the host without any
translation. Docker does however do some isolation (through cgroups) to isolate
the various systems somewhat.
Of course, nothing in life is free, and so there is some overhead. Disk-space being the most prominent one. The Docker container might have some duplication of files for example between the host and the container. Further more, also RAM memory may be duplicated for each instance, as there is no RAM-deduplication. Both of which can be solved on the host however. A filesystem that supports disk-deduplication and a memory manager that does RAM-deduplication.
The base container in itself is already very small ~16 MiB, at the time of this writing, this cost is still very tiny, where the advantages are very much worth the cost in general.
The container including the virus database is about ~240 MiB at the time of this writing.
Please, be kind when using 'free' bandwidth, both for the virus databases but also the Docker registry. Try not to download the entire database set or the larger ClamAV database images on a regular basis.
You can run multiple containers that share the same database volume, but be aware that the FreshClam daemons on each would compete to update the databases. Most likely, one would update the databases and trigger its ClamD to load the new databases, while the others would be oblivious to the new databases and would continue with the old signatures until the next ClamD self-check.
This is fine, honestly. It won't take that long before the new signatures are detected by ClamD's self-check and the databases are reloaded automatically.
To reload the databases on all ClamD containers immediately after an update,
you could disable the FreshClam daemon when you
start the containers. Later, use docker exec
to perform an update and again
as needed to have ClamD load updated databases.
Note: This really isn't necessary but you could do this if you wish.
Exactly how you orchestrate this will depend on your environment. You might do something along these lines:
-
Create a "clam_db" volume, if you don't already have one:
docker volume create clam_db
-
Start your containers:
docker run -it --rm \ --name "clam_container_01" \ --mount source=clam_db,target=/var/lib/clamav \ --env 'CLAMAV_NO_FRESHCLAMD=true' \ clamav/clamav:unstable_base
Wait for the first one to download the databases (if it's a new database volume). Then start more:
docker run -it --rm \ --name "clam_container_02" \ --mount source=clam_db,target=/var/lib/clamav \ --env 'CLAMAV_NO_FRESHCLAMD=true' \ clamav/clamav:unstable_base
-
Check for updates, as needed:
docker exec -it clam_container_01 freshclam --on-update-execute=EXIT_1 || \ if [ $? == 1 ]; then \ docker exec -it clam_container_01 clamdscan --reload; \ docker exec -it clam_container_02 clamdscan --reload; \ fi