So, I'm very new to Docker. Let me explain the context to the question.

  1. I have 10 - 20 Spring Boot micro-service applications, each running on different ports on my local machine.

  2. But for migrating to Docker, based on my learning, each of the services must be in a different Docker container so as to quickly deploy or make copies.

  3. For each Docker container, we need to create a new Docker image.

  4. Each Docker image must contain a JRE for the Spring Boot application to run. It is around 200 MB maximum. That means each docker image is, say 350 MB at the maximum. On the other hand, on my local PC I have only one JRE of 200 MB and each application takes only a few MB of space.

  5. Based on this, I would need 600 MB on my local system, yet need 7 GB for all Docker images.

Is this approach correct? Should "OpenJDK" from DockerHub be added to each image?

Why is the size of the image large even if the target PC may already have the JDK?

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    You seem to talk about JDK and JRE - Ideally you would avoid building the images with JDK, as you only need it at build time, and just have the JRE in the production image. Note you have have mutliple FROMs in Dockerfile so you can build with JDK and then package with only JRE. – mcfedr Oct 17 '18 at 12:57
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    Indeed. Take a look at multistage builds. This allows you to build with the JDK in one image, then copy the built artefacts into a lighter run-time image. – spender Oct 17 '18 at 15:14

Your understanding is not correct.

Docker images are formed with layers; see next diagram:

When you install a JRE in your image, let's suppose its checksum is 91e54dfb1179 in the next picture, it will occupy your disk really.

But, if all your containers are then all based on the same image, and add different things, says, your different microservice application to the thin R/W layer, all containers will share the 91e54dfb1179, so it will not be the n*m relationship.

You need to pay attention to using the same base image for all Java applications as much as possible, and add different things to the thin R/W layer.

Enter image description here

  • Good answer, but I have one more doubt. Suppose the docker images are built in different systems? Say each micro service is built by a separate team in a different geographic location? This sharing of existing jre with id won't hold then Right? – SamwellTarly Oct 17 '18 at 13:10
  • @SamwellTarly Use a good commonen base image, when appropiate - this base image should contain the heavy common parts. – Christian Sauer Oct 17 '18 at 13:28
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    @SamwellTarly You need to align a base image with most of common things together at least jre which you care most to one custom base image. And, suggest use dockerhub or private docker registery to share it. Then every service team could add things base on this base image. – lagom Oct 17 '18 at 13:37
  • You should consider using OpenJDK as your base image. – JimmyJames Oct 17 '18 at 13:45

The other answers cover Docker layering pretty well, so I just want to add details for you questions

Is this approach correct? Should "OpenJDK" from DockerHub be added to each image?

Yes. If it's not in the image, it won't be in the container. You can save disk space though by reusing as many Layers as possible. So try to write your Dockerfile from "Least likely to change" to "Most likely to change". So when you build your image, the more often you see "Using cache", the better.

Why is the size of the image large even if the target PC may already have the JDK?

Docker wants as little to do with the host as possible. Docker doesn't even want to deal with the host. The first thing it does is create a VM to hide in. Docker images assume the only thing the host will give is empty ram, disk, and CPUs. So each Docker image must also contain it's own OS/kernel. (That is what your initial FROM is doing, picking a base OS image to use) So your final image size is actually OS + tools + app. Image size is a little misleading though, as it is the sum of all layers, which are reused across images.

(Implied) Should each app/micro-service be in its own container?

Ideally, yes. By converting your app into an isolated module, it makes it easier to replace/load-balance that module.

In practice, maybe not (for you). Spring Boot is not a light framework. In fact, it is a framework for module-izing your code (Effectively running a module control system inside a module control system). And now you want to host 10-20 of them? That is probably not going to be able to run on a single server. Docker will force Spring boot to load itself into memory per app; and objects can't be reused across modules now, so those need to be multi-instantiated too! And if you are restricted to 1 production server, horizontal scaling isn't an option. (You will need ~1GB of HEAP (RAM) per Spring Boot, mileage my very based on your code base). And with 10-20 apps, refactoring to make the app lighter for Docker deployment may not be feasible/in-budget. Not to mention, if you can't run a minimal setup locally for testing (insufficient RAM), development effort will get a lot more "fun".

Docker is not a golden hammer. Give it a try, evaluate the pros and cons yourself, and decide if the pros are worth the cons for you and your team(s).

  • I like your answer, but at the same time it is thought provoking. What alternative would you suggest to each microservice run as a spring boot application. This allows for very loose coupling and no deployment step as in older bigger spring applications. The microservices can talk amongst themselves. So in this case, finally on the machine where the docker image is run, won't all of them use same JRE and eliminate the need for 1GB heap per container? – SamwellTarly Oct 18 '18 at 7:11
  • @SamwellTarly The containers will share (most) of the base image, but their runtime memory (the R+W layer and RAM) is isolated per container. So every container's JVM needs to load the resources it is using into memory (and Spring Boot uses A LOT of resources). Docker is actually based on the 12 Factor App design philosophy, which assumes your micro-services where all designed to run on separate VMs/machines. Although, one compromise would be to build it all on 1 Docker container at first, and then create more as you refactor for lighter deployment. – Tezra Oct 18 '18 at 12:52
  • @SamwellTarly The smaller your final image, and the lighter the final RAM footprint, the faster you can start the containers (which is going to be a big deal if you want to take advantage of Docker container scaling/load-balancing. Even if you use just 1 container, it solves the "works on my machine" issue (mostly). For a more targeted answer, it would be better for you to ask another question about how to solve whatever problem you are trying to solve by switching to Docker. – Tezra Oct 18 '18 at 12:58
  • Yes, I understand that the container including RAM usage must be minimal. However Amazon's cloud tutorial itself uses each microservice as a spring boot application. The base JVM will ask for a RAM mapping of 2GB. However each microservice uses very little RAM (10MB) on my local PC. If it needs more RAM, won't the cluster manager handle that? Can you point me to your source which states Spring boot is heavy and needs a lot of RAM in a cloud platform? – SamwellTarly Oct 19 '18 at 13:29
  • @SamwellTarly If Ram is not an issue, than obviously this isn't a problem. If you have a finite server resource limit, than the cluster manager cannot allocate more resources than are in the cluster. Of course, your first major issue with Java+Containers (if you aren't on 11+), is that Java will over-allocate heap from the cluster. I can't point you to hard numbers about Spring being heavy, because any blog about it does superficial tests that just prove "Spring is light on paper", but I've seen in practice Spring can add tremendous start-up and run-time overhead. (up to X5) – Tezra Oct 19 '18 at 13:57

You should learn Union Filesystem of docker.

Union filesystem allows each layer that is created to be reused by an unlimited number of images. This saves a lot of disk space and allows images to be built faster since it is just re-using an existing layer.

Additionally, the read/write top layer gives the appearance that you can modify the image, but the read-only layers below actually maintain their integrity of the container by isolating the contents of the filesystem.

As an example of saving disk space, I always want to design my docker images to be as light weight as possible. Say I need to create a named data volume container for my log files for my web app. The first thing I think of, is what base image can I use that will be the most light weight for this volume container.

I decide to use tianon/true image since it’s super light weight at 125 bytes. But then I remember that I’m using an Ubuntu base for my web app. So if I already have an Ubuntu image, it’s actually better to just reuse that base image for my data volume container instead of creating more layers with the use of tianon/true.

enter image description here


Lagom's answer is great, but I'd like to add that the size of Docker containers should be as small as reasonably possible to ease transfer and storage.

Hence, there are a lot of containers based on the Alpine Linux distribution, which are really small. Try to use them if possible.

Furthermore, do not add every tool imaginable to your container, e.g. you can often do without wget...

  • Not just wget, of course - I've seen production Docker images with all sorts of silly stuff inside, up to and including a full GCC distribution (in a PHP application). – Sebastian Lenartowicz Oct 17 '18 at 11:42
  • @SebastianLenartowicz Funny! Why? Must stuff I have seen is there for testing oder do build a python package. Most people tend not to use multi-layer images, which would prevent this particular problem. – Christian Sauer Oct 17 '18 at 11:48
  • Understood. So stong design with maximum inheritance needed. – SamwellTarly Oct 17 '18 at 13:13
  • @ChristianSauer Because the Docker images were built by people with an incomplete understanding of their purpose. They imagined they needed a whole Unix-y system inside, so they could modify and administer it while it was running (I know, I know). – Sebastian Lenartowicz Oct 17 '18 at 13:16
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    @SamwellTarly WARNING! It depends! Too much inheritance makes your whole project unwieldy. E.g. if you have multiple microservices deployed, it might be beneficial to have various jave versions - e.g. because one package has a bug which prevents it to work on the version you prefer for all other services. Strike a balance! Dev time is a consideration, too - getting alpine images to work can be a pain, if you need to install deps. – Christian Sauer Oct 17 '18 at 13:27

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