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Source code tree (R) for my dissertation research software reflects traditional research workflow: "collect data -> prepare data -> analyze data -> collect results -> publish results". I use make to establish and maintain the workflow (most of the project's sub-directories contain Makefile files).

However, frequently, I need to execute individual parts of my workflow via particular Makefile targets in project's sub-directories (not via top-level Makefile). This creates a problem of setting up Makefile rules to maintain dependencies between targets from different parts of the workflow, in other words - between targets in Makefile files, located in different sub-directories.

The following represents the setup for my dissertation project:

+-- diss-floss (Project's root)
|-- import (data collection)
|-- cache (R data objects (), representing different data sources, in sub-directories)
|-+ prepare (data cleaning, transformation, merging and sampling)
  |-- R modules, including 'transform.R'
|-- analysis (data analyses, including exploratory data analysis (EDA))
  |-- R modules, including 'eda.R'
|-+ results (results of the analyses, in sub-directories)
  |-+ eda (*.svg, *.pdf, ...)
  |-- ...
|-- present (auto-generated presentation for defense)

Snippets of targets from some of my Makefile files:

"~/diss-floss/Makefile" (almost full):

# Major variable definitions




# Targets and rules 

all: rprofile collection preparation analysis results presentation

    R CMD BATCH ./.Rprofile

    cd $(COLLECTION_DIR) && $(MAKE)

preparation: collection
    cd $(PREPARATION_DIR) && $(MAKE)

analysis: preparation
    cd $(ANALYSIS_DIR) && $(MAKE)

results: analysis
    cd $(RESULTS_DIR) && $(MAKE)

presentation: results

## Phony targets and rules (for commands that do not produce files)

.PHONY: demo clean

# run demo presentation slides
demo: presentation
    # knitr(Markdown) => HTML page
    # HTML5 presentation via RStudio/RPubs or Slidify
    # OR
    # Shiny app

# remove intermediate files
    rm -f tmp*.bz2 *.Rdata


importFLOSSmole: getFLOSSmoleDataXML.R
    @$(RSCRIPT) $(R_OPTS) $<


transform: transform.R
    $(RSCRIPT) $(R_OPTS) $<


eda: eda.R
    @$(RSCRIPT) $(R_OPTS) $<

Currently, I am concerned about creating the following dependency:

Data, collected by making a target from Makefile in import, always needs to be transformed by making corresponding target from Makefile in prepare before being analyzed via, for example eda.R. If I manually run make in import and then, forgetting about transformation, run make eda in analyze, things are not going too well. Therefore, my question is:

How could I use features of the make utility (in a simplest way possible) to establish and maintain rules for dependencies between targets from Makefile files in different directories?

share|improve this question
What is the target in import/Makefile, and what does it actually produce? What is the target in prepare/Makefile, and what does it actually produce? When you make eda in analyze, what files does it use as input? – Beta May 28 '14 at 13:23
@Beta: Sorry about delay - just got back online. Each target in import/Makefile, such as importFLOSSmole, produces a set of .rds files (I'm considering a change to produce a single .RData file) in cache/<DataSourceName> sub-directory. Correspondingly, each target in prepare either updates existing R data files (targets transform and cleanup) or produces new R data files (targets merge and sample) in cache sub-directories. eda target in analyze/Makefile depends on .rds files in cache sub-directories and produces .svg and .pdf files in results/eda directory. – Aleksandr Blekh May 28 '14 at 21:42

The problem with your use of makefile right now is that you are only listing the code as dependencies, not the data. That's where a lot of the magic happens. If the "analyze" knew what files it was going to use and could list those as dependencies, it could look back to see how they were made and what dependencies they had. And if an earlier file in the pipeline was updated, then it could run all the necessary steps to bring the file up to date. For example

import: rawdata.csv

    scp remoteserver:/rawdata.csv .

transform: tansdata.csv

transdata.csv: rawdata.csv
    perl $< > $@

plot: plot.png

plot.png: plot.R transdata.csv
    Rscript plot.R

So if I do a make import it will download a new csv file. Then if I run make plot, it will try to make plot.png but that depends on transdata.csv and that depends on rawdata.csv and since rawdata.csv was updated, it will need to have to update transdata.csv and then it will be ready to run the R script. If you don't explicitly set a lot of the file dependencies, you're missing out on a lot of the power of make. But to be fail, it can be tricky sometimes to get all the right dependencies in there (especially if you produce multiple output from one step).

share|improve this answer
Thank you very much for the answer! You're right that as of now my use of make is basic (code only), but this is by design. I deliberately delayed creating dependencies, based on data, because earlier I haven't had a clear idea about my workflow and structure of data components. Now, as I have clearer realization about workflow and data, it's time to move on to more advanced use of make's power to automate the workflow for my research. Hence my question. (To be continued) – Aleksandr Blekh May 29 '14 at 4:17
Even if make has features to maintain dependencies between targets and multiple files (as a whole directory), I'm still leaning toward switching back to use .RData files (each per data source) instead of zillion of .rds files (each per indicator). This will not only simplify Makefile files, but, I hope, allow easier and more natural merging, sampling and visualization of data as well as results of data analysis. – Aleksandr Blekh May 29 '14 at 4:24
@AleksandrBlekh I think that does sound reasonable. And I've found that choosing good file names is very important. If the files at different steps in the pipeline are different just by a prefix or suffix or directory, then it because much easier to write elegant rules. make only has one useful form of wildcard/pattern matching and it's pretty limited. – MrFlick May 29 '14 at 4:27
Would appreciate, if you could share your feedback on my answer. – Aleksandr Blekh May 29 '14 at 11:09
up vote 0 down vote accepted

The following are my thoughts (with some ideas from @MrFlick's answer - thank you) on adding my research workflow's data dependencies to the project's current make infrastructure (with snippets of code). I have also tried to reflect the desired workflow by specifying dependencies between make targets.


importFLOSSmole: getFLOSSmoleDataXML.R FLOSSmole.RData
    @$(RSCRIPT) $(R_OPTS) $<
    @touch $@.done

(similar targets for other data sources)



prepare: import \
         transform \
         cleanup \
         merge \

import: $IMPORT_DIR/importFLOSSmole.done # and/or other flag files, as needed

transform: transform.R import
    @$(RSCRIPT) $(R_OPTS) $<
    @touch $@.done

cleanup: cleanup.R transform
    @$(RSCRIPT) $(R_OPTS) $<
    @touch $@.done

merge: merge.R cleanup
    @$(RSCRIPT) $(R_OPTS) $<
    @touch $@.done

sample: sample.R merge
    @$(RSCRIPT) $(R_OPTS) $<
    @touch $@.done



analysis: prepare \
          eda \
          efa \
          cfa \

prepare: $PREP_DIR/transform.done # and/or other flag files, as needed

eda: eda.R prepare
    @$(RSCRIPT) $(R_OPTS) $<
    @touch $@.done

efa: efa.R eda
    @$(RSCRIPT) $(R_OPTS) $<
    @touch $@.done

cfa: cfa.R efa
    @$(RSCRIPT) $(R_OPTS) $<
    @touch $@.done

sem: sem.R cfa
    @$(RSCRIPT) $(R_OPTS) $<
    @touch $@.done

The contents of Makefile files in directories results and present are still TBD.

I would appreciate your thoughts and advice on the above!

share|improve this answer
make checks the last modified date on the files to see if they need to be re-built. Since all of your targets are phony (ie, they are not the actual names of files on disc) they will all be re-built every time. This is probably not the behavior you want. – MrFlick May 29 '14 at 13:07
But you are not listing the .done files as a dependency or as a target so make doesn't know about them. Using done files can be a good strategy, but they should be a part of the dependency chain to be useful in my opinion. – MrFlick May 29 '14 at 14:26
But I don't see a build rule for transform.done. I only see a phony target called transform. Make will not know how to build transform.done if it doesn't exist. Unless that's part of the code you are leaving out or you don't wish to automate the building of those dependencies. – MrFlick May 29 '14 at 14:40
This has become difficult to address via comments. Make does not look into build recipes to see what's actually made. Everything must be specified on the rule definition line. I suggest you make a small test case for yourself to try out different combinations. You can use make -n to see what make would run without actually doing the building. – MrFlick May 29 '14 at 15:06
I would look again at the answer that I originally posted to this question. That's the strategy I recommend. (You may replace file extensions with .done if you like.) – MrFlick May 29 '14 at 15:20

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