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Recipes and the Queue — GPI Data Pipeline 1.0 documentation

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Recipes and the Queue€ґ

The pipeline’s actions are controlled by “Recipes” that specify input FITS files, various tasks (called “primitives”) to run on them, and options or parameters for those tasks. Any recipe that is written to the queue directory will be detected and run.

Recipes€ґ

A recipe consists of a list of some number of data processing steps (“primitives”), a list of one or more input files to operate on, and some ancillary information such as what directory the output files should be written to. For GPI, recipes are saved as XML files, and while they may be edited by hand, they are more easily created through the use of the Recipe Editor and Data Parser tools. Available primitives are described in detail at Primitives, Listed by Category. Some primitives are actions on individual input files one at a time, for instance Subtract Dark Background or Assemble Datacube. Other primitives act to combine multiple files together, for instance ADI with LOCI.

For example, a typical GPI observation will consist of a sequence of coronagraphic IFS spectroscopic observations of a bright star obtained as the sky rotates. A Recipe to reduce that observation sequence could consist of the following steps, each associated with specific primitives:

Predefined lists of steps (Recipe Templates) exist for standard GPI reduction tasks. These recipes can be selected and applied to data using the GUI tools. The quicklook recipes automatically executed at the telescope are included as additional templates so that users may repeat their own quicklook reductions if desired.

Adding Recipes to the Queue€ґ

The DRP monitors a certain queue directory for new recipes to run. The location of the queue is configured during pipeline installation with the environment variable $GPI_DRP_QUEUE_DIR.

Once a recipe has been created, it needs to be placed into the queue to be processed. This can be done manually, but for users of the Recipe Editor and Data Parser tools, there are buttons to directly queue recipes from those tools.

How the Queue works: For cross-platform portability the queue is implemented with a very simple directory plus filename mechanism. Any file placed in the queue with a filename ending in ".waiting.xml" (for instance, something like S20130606S0276_001.waiting.xml) will be interpreted as a pending recipe file ready for processing. The pipeline will read the file, parse its contents into instructions, and begin executing them. That file’s extension will change to .working.xml while it is being processed. If the reduction completes successfully, then the extension will be changed to .done.xml. If the reduction fails then the extension will be changed to .failed.xml. The pipeline checks the queue for new recipes once per second by default. If multiple new recipes files are found at the same time, then the pipeline will reduce them according to their filenames in alphabetical order. Thus, to queue a recipe manually, simply copy it into the queue directory with a filename ending in ".waiting.xml".

Primitive classes and the special action “Accumulate Images”€ґ

Primitives in the pipeline are loosely divided into two classes:

  • steps which should be performed upon each input file individually (for instance background subtraction), and
  • steps which are done to an entire set of files at once (for instance, combination via ADI).

The dividing line between these two levels of action is set by a special primitive called Accumulate Images. This acts as a marker for the end of the “for loop” over individual files. Primitives in a recipe before Accumulate Images will be executed for each input file in sequence. Then, only after all of those files have been processed, the primitives listed in the recipe after Accumulate Images will be executed once only.

The Accumulate Images primitive has a single option: whether to save the accumulated files (i.e. the results of the processing for each input file) as files written to disk (Method="OnDisk") or to just save all files as variables in memory (Method="InMemory"). From the point of view of the pipeline’s execution of subsequent primitives, these two methods are indistinguishable. The only significant difference is the obvious one: OnDisk will produce permanent files on your hard disk, while InMemory requires your computer have sufficient memory to store the entire dataset at once. When dealing with very large series of files, the OnDisk option is recommended.

If you want to create a recipe that only contains actions on the whole set of input files, you still need to include an Accumulate Images in the recipe file, for instance as its first step. It’s of course possible come up with nonsensical combinations of primitives, for instance trying to use an ADI primitive before accumulating multiple input images. Such recipes will almost certainly fail.