In this example tutorial, we will show you how to use Bacalhau to process images on a Landsat dataset.
Bacalhau has the unique capability of operating at a massive scale in a distributed environment. This is made possible because data is naturally sharded across the IPFS network amongst many providers. We can take advantage of this to process images in parallel.
To get started, you need to install the Bacalhau client, see more information here
To submit a workload to Bacalhau, we will use the bacalhau docker run
command. This command allows to pass input data volume with a -i ipfs://CID:path
argument just like Docker, except the left-hand side of the argument is a content identifier (CID). This results in Bacalhau mounting a data volume inside the container. By default, Bacalhau mounts the input volume at the path /inputs
inside the container.
Bacalhau also mounts a data volume to store output data. The bacalhau docker run
command creates an output data volume mounted at /outputs
. This is a convenient location to store the results of your job.
Let's look closely at the command above:
bacalhau docker run
: call to Bacalhau
-i src=s3://landsat-image-processing/*,dst=/input_images,opt=region=us-east-1
: Specifies the input data, which is stored in the S3 storage.
--entrypoint mogrify
: Overrides the default ENTRYPOINT of the image, indicating that the mogrify utility from the ImageMagick package will be used instead of the default entry.
dpokidov/imagemagick:7.1.0-47-ubuntu
: The name and the tag of the docker image we are using
-- -resize 100x100 -quality 100 -path /outputs '/input_images/*.jpg'
: These arguments are passed to mogrify and specify operations on the images: resizing to 100x100 pixels, setting quality to 100, and saving the results to the /outputs
folder.
When a job is submitted, Bacalhau prints out the related job_id
. We store that in an environment variable so that we can reuse it later on.
The same job can be presented in the declarative format. In this case, the description will look like this:
The job description should be saved in .yaml
format, e.g. image.yaml
, and then run with the command:
Job status: You can check the status of the job using bacalhau job list
:
When it says Completed
, that means the job is done, and we can get the results.
Job information: You can find out more information about your job by using bacalhau job describe
:
Job download: You can download your job results directly by using bacalhau job get
. Alternatively, you can choose to create a directory to store your results. In the command below, we created a directory and downloaded our job output to be stored in that directory.
To view the images, open the results/outputs/
folder:
If you have questions or need support or guidance, please reach out to the Bacalhau team via Slack (#general channel).