This guide will show you how to create a new control method.
A control method is used to test the relative performance of all other methods, and also as a quality control for the pipeline as a whole. A control method can either be a positive control or a negative control. The positive control and negative control methods set a maximum and minimum threshold for performance, so any new method should perform better than the negative control methods and worse than the positive control method.
This guide will show you how to create a new Viash component. In the following we will show examples for both Python and R. Note that the Label Projection task is used throughout the guide, so make sure to replace any occurrences of "label_projection" with your task of interest.
Check inputs
Check language
Check API file
Read API file
Create output dir
Create config
Create script
Done!
This creates a new folder at src/tasks/label_projection/control_methods/my_method_py containing a Viash config and a script.
tree src/tasks/label_projection/control_methods/my_method_py
├── script.py Script for running the method.
├── config.vsh.yaml Config file for method.
└── ... Optional additional resources.
viash run src/common/create_component/config.vsh.yaml --\--task label_projection \--type control_method \--name my_method_r \--language r
Check inputs
Check language
Check API file
Read API file
Create output dir
Create config
Create script
Done!
Tip
Some tasks have multiple method subtypes (e.g. batch_integration), which will require you to use a different value for --type corresponding to the desired method subtype.
This creates a new folder at src/tasks/label_projection/control_methods/my_method_r containing a Viash config and a script.
tree src/tasks/label_projection/control_methods/my_method_r
├── script.R Script for running the method.
├── config.vsh.yaml Config file for method.
└── ... Optional additional resources.
A config file contains metadata of the component and the dependencies required to run it. In steps 2 and 3 we will fill in the required information.
A script contains the code to run the method. In step 4 we will edit the script.
Step 2: Fill in metadata
The Viash config contains metadata of your method, which script is used to run it, and the required dependencies.
Generated config file
This is what the config.vsh.yaml generated by the create_component component looks like:
# The API specifies which type of component this is.# It contains specifications for:# - The input/output files# - Common parameters# - A unit test__merge__: ../../api/comp_control_method.yamlfunctionality: # A unique identifier for your component (required). # Can contain only lowercase letters or underscores.name: my_method_py # Metadata for your componentinfo: # A relatively short label, used when rendering visualisarions (required)label: My Method Py # A one sentence summary of how this method works (required). Used when # rendering summary tables.summary:"FILL IN: A one sentence summary of this method." # A multi-line description of how this component works (required). Used # when rendering reference documentation. description: | FILL IN: A (multi-line) description of how this method works. # Which normalisation method this component prefers to use (required).preferred_normalization: log_cp10k # Component-specific parameters (optional) # arguments: # - name: "--n_neighbors" # type: "integer" # default: 5 # description: Number of neighbors to use. # Resources required to run the componentresources: # The script of your component (required)-type: python_scriptpath: script.py # Additional resources your script needs (optional) # - type: file # path: weights.ptplatforms: # Specifications for the Docker image for this component.-type: dockerimage: ghcr.io/openproblems-bio/base_python:1.0.4 # Add custom dependencies here (optional). For more information, see # https://viash.io/reference/config/platforms/docker/#setup . # setup: # - type: python # packages: scib==1.1.5 # This platform allows running the component natively-type: native # Allows turning the component into a Nextflow module / pipeline.-type: nextflowdirectives:label:[midtime,midmem, midcpu]
Contents of config.vsh.yaml
# The API specifies which type of component this is.# It contains specifications for:# - The input/output files# - Common parameters# - A unit test__merge__: ../../api/comp_control_method.yamlfunctionality: # A unique identifier for your component (required). # Can contain only lowercase letters or underscores.name: my_method_r # Metadata for your componentinfo: # A relatively short label, used when rendering visualisarions (required)label: My Method R # A one sentence summary of how this method works (required). Used when # rendering summary tables.summary:"FILL IN: A one sentence summary of this method." # A multi-line description of how this component works (required). Used # when rendering reference documentation. description: | FILL IN: A (multi-line) description of how this method works. # Which normalisation method this component prefers to use (required).preferred_normalization: log_cp10k # Component-specific parameters (optional) # arguments: # - name: "--n_neighbors" # type: "integer" # default: 5 # description: Number of neighbors to use. # Resources required to run the componentresources: # The script of your component (required)-type: r_scriptpath: script.R # Additional resources your script needs (optional) # - type: file # path: weights.ptplatforms: # Specifications for the Docker image for this component.-type: dockerimage: ghcr.io/openproblems-bio/base_r:1.0.4 # Add custom dependencies here (optional). For more information, see # https://viash.io/reference/config/platforms/docker/#setup . # setup: # - type: r # packages: tidyverse # This platform allows running the component natively-type: native # Allows turning the component into a Nextflow module / pipeline.-type: nextflowdirectives:label:[midtime,midmem, midcpu]
Required metadata fields
Please edit functionality.info section in the config file to fill in the necessary metadata.
.__merge__: The API specifies which type of component this is. It contains specifications for:
The input/output files
Common parameters
A unit test
.functionality.name: A unique identifier. Can only contain lowercase letters, numbers or underscores.
.functionality.info.label: A unique, human-readable, short label. Used for creating summary tables and visualisations.
.functionality.info.summary: A one sentence summary of purpose and methodology. Used for creating an overview tables.
.functionality.info.description: A longer description (one or more paragraphs). Used for creating reference documentation and supplementary information.
.functionality.info.preferred_normalization: Which normalization method a component prefers.
Each value corresponds to a normalization component in the directory src/datasets/normalization.
Step 3: Add dependencies
Each component has it’s own set of dependencies, because different components might have conflicting dependencies.
base images
For your convenience we have created several base images that can be used for python or R scripts. These images can be found in the OpenProblems github repo base_images. Click on the packages to view the url you need to use. You are not required to use these images but install the required packages to make sure OpenProblems works properly.
ghcr.io/openproblems-bio/base_images/python Base image for python scripts.
ghcr.io/openproblems-bio/base_images/r Base image for R scripts.
ghcr.io/openproblems-bio/base_images/pytorch_nvidia Base image for scripts that use pytorch with nvidia gpu support.
ghcr.io/openproblems-bio/base_images/tensorflow_nvidia Base image for scripts that use tensorflow with nvidia gpu support.
custom image
Update the setup definition in the platforms section of the config file. This section describes the packages that need to be installed in the Docker image and are required for your method to run.
If you’re using a custom image use the following minimum setup:
In the top section of the script you can define which packages/libraries the method needs. If you add a new or different package add the dependency to config.vsh.yaml in the setup field (see above).
Argument block
The Viash code block is designed to facilitate prototyping, by enabling you to execute directly by running python script.py (or Rscript script.R for R users). Note that anything between “VIASH START” and “VIASH END” will be removed and replaced with a CLI argument parser when the components are being built by Viash.
Here, the par dictionary contains all the arguments defined in the config.vsh.yaml file (including those from the defined __merge__ file). When adding a argument in the par dict also add it to the config.vsh.yaml in the arguments section.
Read input data
This section reads any input AnnData files passed to the component.
Generate results
This is the most important section of your script, as it defines the core functionality provided by the component. It processes the input data to create results for the particular task at hand.
Write output data to file
The output stored in a AnnData object and then written to an .h5ad file. The format is specified by the API file specified in the __merge__ field in the config file.
Step 5: Try component
Your component’s API file contains the necessary unit tests to check whether your component works and the output is in the correct format.
You can test your component by using the following command:
viash test src/tasks/label_projection/control_methods/my_method_py/config.vsh.yaml
Output
Running tests in temporary directory: '/tmp/viash_test_majority_vote12243085687128613759'
====================================================================
+/tmp/viash_test_majority_vote12243085687128613759/build_executable/majority_vote ---verbosity 6 ---setup cachedbuild
[notice] Building container 'ghcr.io/openproblems-bio/label_projection/control_methods/majority_vote:test' with Dockerfile
[info] Running 'docker build -t ghcr.io/openproblems-bio/label_projection/control_methods/majority_vote:test /tmp/viash_test_majority_vote12243085687128613759/build_executable -f /tmp/viash_test_majority_vote12243085687128613759/build_executable/tmp/dockerbuild-majority_vote-XWIHZm/Dockerfile'
#0 building with "default" instance using docker driver
#1 [internal] load build definition from Dockerfile
#1 transferring dockerfile: 529B done
#1 DONE 0.0s
#2 [internal] load metadata for ghcr.io/openproblems-bio/base_python:1.0.4
#2 DONE 0.0s
#3 [internal] load .dockerignore
#3 transferring context: 2B done
#3 DONE 0.0s
#4 [1/2] FROM ghcr.io/openproblems-bio/base_python:1.0.4@sha256:e907268bee0b400e0eb1555d9cf6727ac64d976fb097eb669debd686fceaa705
#4 DONE 0.0s
#5 [2/2] RUN :
#5 CACHED
#6 exporting to image
#6 exporting layers done
#6 writing image sha256:b6f7328d47b9a31881bd4f0f93ff827714ec4ead142921a2f75de9ea9d00523d done
#6 naming to ghcr.io/openproblems-bio/label_projection/control_methods/majority_vote:test done
#6 DONE 0.0s
====================================================================
+/tmp/viash_test_majority_vote12243085687128613759/test_check_method_config/test_executable
Load config data
Check general fields
Check info fields
Check platform fields
All checks succeeded!
====================================================================
+/tmp/viash_test_majority_vote12243085687128613759/test_run_and_check_adata/test_executable
>> Running test 'run'
>> Checking whether input files exist
>> Running script as test
Load data
Compute majority vote
Create prediction object
Write output to file
>> Checking whether output file exists
>> Reading h5ad files and checking formats
Reading and checking input_train
AnnData object with n_obs × n_vars = 387 × 1500
obs: 'label', 'batch'
var: 'hvg', 'hvg_score'
uns: 'dataset_id', 'normalization_id'
obsm: 'X_pca'
layers: 'counts', 'normalized'
Reading and checking input_test
AnnData object with n_obs × n_vars = 213 × 1500
obs: 'batch'
var: 'hvg', 'hvg_score'
uns: 'dataset_id', 'normalization_id'
obsm: 'X_pca'
layers: 'counts', 'normalized'
Reading and checking input_solution
AnnData object with n_obs × n_vars = 213 × 1500
obs: 'label', 'batch'
var: 'hvg', 'hvg_score'
uns: 'dataset_description', 'dataset_id', 'dataset_name', 'dataset_organism', 'dataset_reference', 'dataset_summary', 'dataset_url', 'normalization_id'
obsm: 'X_pca'
layers: 'counts', 'normalized'
Reading and checking output
AnnData object with n_obs × n_vars = 213 × 1500
obs: 'batch', 'label_pred'
var: 'hvg', 'hvg_score'
uns: 'dataset_id', 'method_id', 'normalization_id'
obsm: 'X_pca'
layers: 'counts', 'normalized'
All checks succeeded!
====================================================================
SUCCESS! All 2 out of 2 test scripts succeeded!
Cleaning up temporary directory
Visit “Run tests” for more information on running unit tests and how to interpret common error messages.
You can also run your component on local files using the viash run command. For example:
viash run src/tasks/label_projection/control_methods/my_method_py/config.vsh.yaml --\--input_train resources_test/label_projection/pancreas/train.h5ad \--input_test resources_test/label_projection/pancreas/test.h5ad \--output output.h5ad