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Pipelines

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The project experiments with ways to generate data processing pipelines. The aim is to generate some re-usable building blocks that can be piped together into more functional pipelines. Their prime initial use is as executors for the Squonk Computational Notebook (http://squonk.it) though it is expected that they will have uses in other environments.

As well as being executable directly they can also be executed in Docker containers (separately or as a single pipeline). Additionally they can be executed using Nextflow (http://nextflow.io) to allow running large jobs on HPC-like environments.

Currently it has some python scripts using RDKit (http://rdkit.org) to provide basic cheminformatics and comp chem functionality, though other tools will be coming soon, including some from the Java ecosystem.

  • See here for more info on the RDKit components.
  • See here for more info on running these in Nextflow.

Note: this is experimental, subject to change, and there are no guarantees that things work as expected! That said, it's already proved to be highly useful in the Squonk Computational Notebook, and if you are interested let us know, and join the fun.

The code is licensed under the Apache 2.0 license.

Pipeline Utils

In Jan 2018 some of the core functionality from this repository was broken out into the pipeline-utils repository. This included utility Python modules, as well as creation of a test framework that makes it easier to create and test new modules. This change also makes it easier to create additonal pipeline-like projects. See the Readme in the pipeline-utils repo for more details.

General principles

Modularity

Each component should be small but useful. Try to split complex tasks into reusable steps. Think how the same steps could be used in other workflows. Allow parts of one component to be used in another component where appropriate but avoid over use. For example see the use of functions in rdkit/conformers.py to generate conformers in o3dAlign.py

Consistency

Consistent approach to how components function, regarding:

  1. Use as simple command line tools that can be piped together
  2. Input and outputs either as files of using STDIN and STDOUT
  3. Any info/logging written to STDERR to keep STDOUT free for output
  4. Consistent approach to command line arguments across components

Generally use consistent coding styles e.g. PEP8 for Python.

Input and output formats

We aim to provide consistent input and output formats to allow results to be passed between different implementations. Currently all implementations handle chemical structures so SD file would typically be used as the lowest common denominator interchange format, but implementations should also try to support Squonk's JSON based Dataset formats, which potentially allow richer representations and can be used to describe data other than chemical structures. The utils.py module provides helper methods to handle IO.

Thin output

In addition implementations are encouraged to support "thin" output formats where this is appropriate. A "thin" representation is a minimal representation containing only what is new or changed, and can significantly reduce the bandwith used and avoid the need for the consumer to interpret values it does not need to understand. It is not always appropriate to support thin format output (e.g. when the structure is changed by the process).

In the case of SDF thin format involves using an empty molecule for the molecule block and all properties that were present in the input or were generated by the process (the empty molecule is used so that the SDF syntax remains valid).

In the case of Squonk JSON output the thin output would be of type BasicObject (e.g. containing no structure information) and include all properties that were present in the input or were generated by the process.

Implicit in this is that some identifier (usually a SD file property, or the JSON UUID property) that is present in the input is included in the output so that the full results can be "reassembled" by the consumer of the output. The input would typically only contain additional information that is required for execution of the process e.g. the structure.

For consistency implementations should try to honor these command line switches relating to input and output:

-i and --input: For specifying the location of the single input. If not specified then STDIN should be used. File names ending with .gz should be interpreted as gzipped files. Input on STDIN should not be gzipped.

-if and --informat: For specifying the input format where it cannot be inferred from the file name (e.g. when using STDIN). Values would be sdf or json.

-o and --output: For specifying the base name of the ouputs (there could be multiple output files each using the same base name but with a different file extension. If not specified then STDOUT should be used. Output file names ending with .gz should be compressed using gzip. Output on STDOUT would not be gzipped.

-of and --outformat: For specifying the output format where it cannot be inferred from the file name (e.g. when using STDOUT). Values would be sdf or json.

--meta: Write additional metadata and metrics (mostly relevant to Squonk's JSON format - see below). Default is not to write.

--thin: Write output in thin format (only present where this makes sense). Default is not to use thin format.

UUIDs

The JSON format for input and oputput makes heavy use of UUIDs that uniquely identify each structure. Generally speaking, if the structure is not changed (e.g. properties are just being added to input structures) then the existing UUID should be retained so that UUIDs in the output match those from the input. However if new structures are being generated (e.g. in reaction enumeration or conformer generation) then new UUIDs MUST be generated as there is no longer a straight relationship between the input and output structures. Instead you probably want to store the UUID of the source structure(s) as a field(s) in the output. To allow correlation of the outputs to the inputs (e.g. for conformer generation output the source molecule UUID as a field so that each conformer identifies which source molecule it was derived from.

When not using JSON format the need to handle UUIDs does not necessarily apply (though if there is a field named 'uuid' in the input it will be respected accordingly). To accommodate this you are recommended to ALSO specify the input molecule number (1 based index) as an output field independent of whether UUIDs are being handled as a "poor man's" approach to correlating the outputs to the inputs.

Filtering

When a service that filters molecules special attention is needed to ensure that the molecules are output in the same order as the input (obviously skipping structures that are filtered out). Also the service descriptor (.dsd.json) file needs special care. For instance take a look at the "thinDescriptors" section of src/pipelines/rdkit/screen.dsd.json

When using multi-threaded execution this is especially important as results will usually not come back in exactly the same order as the input.

Metrics

To provide information about what happened you are strongly recommended to generate a metrics output file (e.g. output_metrics.txt). This file allows to provide feedback about what happened. The contents of this file are fairly simple, each line having a

key=value

syntax. Keys beginning and ending with __ (2 underscores) have magical meaning. All other keys are treated as metrics that are recorded against that execution. The current magical values that are recognised are:

  • InputCount: The total count of records (structures) that are processed
  • OutputCount: The count of output records
  • ErrorCount: The number of errors encountered

Here is a typical metrics file:

__InputCount__=360
__OutputCount__=22
PLI=360

It defines the input and output counts and specifies that 360 PLI 'units' should be recorded as being consumed during execution.

The purpose of the metrics is primarily to be able to chage for utilisation, but even if not charging (which is often the case) then it is still good practice to record the utilisation.

Metadata

Squonk's JSON format requires additional metadata to allow proper handling of the JSON. Writing detailed metadata is optional, but recommended. If not present then Squonk will use a minimal representation of metadata, but it's recommended to provide this directly so that additional information can be added.

At the very minimum Squonk needs to know the type of dataset (e.g. MoleculeObject or BasicObject), but this should be handled for you automatically if you use the utils.default_open_output* methods. Better though to also specify metadata for the field types when you do this. See e.g. conformers.py for an example of how to do this.

Deployment to Squonk

The service descriptors need to to POSTed to the Squonk coreservices REST API.

Docker

A shell script can be used to deploy the pipelines to a running containerised Squonk deployment: -

$ ./post-service-descriptors.sh

OpenShift/OKD

The pipelines and service-descriptor container images are built using gradle in this project. The are deployed from the Squonk project using Ansible playbooks.

A discussion about the deployment of pipelines can be found in the Posting Squonk pipelines section of Squonk's OpenShift Ansible README.

Running tests

The test running is in the pipelines-utils repo and tests are run from there. For full details consult that repo.

But as a quick start you should be able to run the the tests in a conda environment like this:

Create a conda environment containing RDKit:

conda env create -f environment-rdkit-utils.yml

Now activate that environment:

conda activate pipelines-utils

Note: this environment includes pipeline-utils and pipeline-utils-rdkit from PyPi. If you need to use changes from these repos you will need to create a conda environment that does not contain these and instead set your PYTHONPATH environment variable to include the pipelines-utils and pipelines-utils-rdkit sources (adjusting /path/to/ to whatever is needed):

export PYTHONPATH=/path/to/pipelines-utils/src/python:/path/to/pipelines-utils-rdkit/src/python

Move into the pipelines-utils repo (this should be alongside pipelines and pipelines-utils-rdkit):

cd ../pipelines-utils

Run tests:

./gradlew runPipelineTester -Pptargs=-opipelines

Contact

Any questions contact:

Tim Dudgeon [email protected]

Alan Christie [email protected]