--- title: "The *Repo* R Data Manager" date: author: "Francesco Napolitano" output: rmarkdown::html_vignette vignette: > %\VignetteIndexEntry{Getting started with Repo} %\VignetteEngine{knitr::rmarkdown} %\VignetteEncoding{UTF-8} --- ```{r include=FALSE} library(knitr) knitr::opts_chunk$set(fig.width=7, fig.height=7, comment="") ``` ## Introduction This is a getting-started guide for the **Repo** R package, which implements an R objects repository manager. It is a **data-centered data flow manager**. The Repo package builds one (or more) centralized local repository where R objects are stored together with corresponding annotations, tags, dependency notes, provenance traces, source code. Once a repository has been populated, stored objects can be easily searched, navigated, edited, imported/exported. Annotations can be exploited to reconstruct data flows and perform typical pipeline management operations. Additional information can be found in the paper: Napolitano, F. [*repo: an R package for data-centered management of bioinformatic pipelines*](https://bmcbioinformatics.biomedcentral.com/articles/10.1186/s12859-017-1510-6). **BMC Bioinformatics** 18, 112 (2017). Repo latest version can be found at: https://github.com/franapoli/repo Repo is also on CRAN at: https://cran.r-project.org/package=repo ## Preparation The following command creates a new repository in a temporary path (the default would be "~/.R_repo"). The same function opens existing repositories. The variable `rp` will be used as the main interface to the repository throughout this guide. ```{r} library(repo) rp <- repo_open(tempdir(), force=T) ``` This document is produced by a script named `index.Rmd`. The script itself can be added to the repository and newly created resources annotated as being produced by it. The annotation is made automatic using the `options` command. ```{r} rp$attach("index.Rmd", "Source code for Repo vignette") rp$options(src="index.Rmd") ``` ## Populating the repository Here is a normalized version of the *Iris* dataset to be stored in the repository: ```{r, eval=F} myiris <- scale(as.matrix(iris[,1:4])) ``` The shortest way to permanently store the `myiris` object in the repository is simply: ```{r, eval=F} rp$put(myiris) ``` However, richer annotation is possible, for example: ```{r} ## chunk "myiris" { myiris <- scale(as.matrix(iris[,1:4])) rp$put( obj = myiris, name = "myiris", description = paste( "A normalized version of the iris dataset coming with R.", "Normalization is made with the scale function", "with default parameters." ), tags = c("dataset", "iris", "repodemo") ) ## } ``` The call provides the data to be stored (`obj`), an identifier (`name`), a longer `description`, a list of `tags`. The comment lines (`## chunk "myiris" {` and `## }`) have a special meaning: they associate the corresponding code to the resource. The code can be showed as follows: ```{r} rp$chunk("myiris") ``` The code associated with an item should take care of building and storing it. The *build* command executes the code in the current environment. It can automatically build dependencies, too. ```{r} rp$rm("myiris") rp$build("myiris", "index.Rmd") ``` In this example, the Iris class annotation will be stored separately: ```{r} rp$put(iris$Species, "irisLabels", tags = c("labels", "iris", "repodemo")) ``` ### Attaching figures The following code produces a 2D visualization of the Iris data and shows it: ```{r} irispca <- princomp(myiris) iris2d <- irispca$scores[,c(1,2)] plot(iris2d, main="2D visualization of the Iris dataset", col=rp$get("irisLabels")) ``` Note that `irisLabels` is loaded on the fly from the repository. It would be nice to store the figure itself in the repo together with the Iris data. This is done using the `attach` method, which stores any file in the repo as is (as opposed to R objects), plus annotations. Two parameters differ from `put`: * **filepath** Instead of an identifier, `attach` takes a file name (with path). The file name will be also the item identifier. * **to** This optional parameter tells Repo which item the new one is attached to. Can be empty. ```{r} fpath <- file.path(rp$root(), "iris2D.pdf") pdf(fpath) plot(iris2d, main="2D visualization of the Iris dataset", col=rp$get("irisLabels")) invisible(dev.off()) rp$attach(fpath, "Iris 2D visualization obtained with PCA.", c("visualization", "iris", "repodemo"), to="myiris") ``` The attached PDF can be accessed using an external PDF viewer directly from within Repo through the `sys` command. On a Linux system, this command runs the Evince document viewer and shows `iris2D.pdf`: ```{r, eval=FALSE} rp$sys("iris2D.pdf", "evince") ``` The following code makes a clustering of the Iris data and stores it in the repository. There is one parameter to note: * **depends** Tells Repo that, in order to compute the `kiris` variable, `myiris` is necessary. (This information is used by `build` to build dependencies and by `dependencies` to show them). ```{r} kiris <- kmeans(myiris, 5)$cluster rp$put(kiris, "iris_5clu", "Kmeans clustering of the Iris data, k=5.", c("metadata", "iris", "kmeans", "clustering", "repodemo"), depends="myiris") ``` The following shows what the clustering looks like. The figure will be attached to the repository as well. ```{r} plot(iris2d, main="Iris dataset kmeans clustering", col=kiris) ``` ```{r} fpath <- file.path(rp$root(), "iris2Dclu.pdf") pdf(fpath) plot(iris2d, main="Iris dataset kmeans clustering", col=kiris) invisible(dev.off()) rp$attach(fpath, "Iris K-means clustering.", c("visualization", "iris", "clustering", "kmeans", "repodemo"), to="iris_5clu") ``` Finally, a contingency table of the Iris classes versus clusters is computed below. The special tag *hide* prevents an item from being shown unless explicitly requested. ```{r} res <- table(rp$get("irisLabels"), kiris) rp$put(res, "iris_cluVsSpecies", paste("Contingency table of the kmeans clustering versus the", "original labels of the Iris dataset."), c("result", "iris","validation", "clustering", "repodemo", "hide"), src="index.Rmd", depends=c("myiris", "irisLabels", "iris_5clu")) ``` ## Looking at the repository The `info` command summarizes some information about a repository: ```{r} rp$info() ``` The Repo library supports an S3 `print` method that shows the contents of the repository. All non-hidden items will be shown, together with some details, which by defaults are: name, dimensions, size. ```{r} rp ## resolves to print(rp) ``` Hidden items are... hidden. The following will show them too: ```{r} print(rp, all=T) ``` Items can also be filtered. With the following call, only items tagged with "clustering" will be shown: ```{r} print(rp, tags="clustering", all=T) ``` `print` can show information selectively. This command shows tags and size on disk: ```{r} rp$print(show="st") ``` The `find` command will match a search string against all item fields in the repository: ```{r} rp$find("clu", all=T) ``` It is also possible to obtain a visual synthetic summary of the repository by using the `pies` command: ```{r} rp$pies() ``` Finally, the `check` command runs an integrity check verifying that the stored data has not been modified/corrupted. The command will also check the presence of extraneous (not indexed) files. Since the `rp` repository was created in a temporary directory, a few extraneous files will pop up. ```{r} rp$check() ``` ### Showing dependencies In Repo, the relations "generated by", "attached to" and "dependent on" are summarized in a *dependency graph*. The formal representation of the graph is a matrix, in which the entry (i,j) represent a relation from i to j of type 1, 2 or 3 (*dependency*, *attachment* or *generation*). Here's how it looks like: ```{r} depgraph <- rp$dependencies(plot=F) library(knitr) kable(depgraph) ``` Omitting the `plot=F` parameter, the *dependencies* method will plot the dependency graph. This plot requires the *igraph* library. ```{r} if(require("igraph", NULL, T, F)) rp$dependencies() ``` The three types of edges can be shown selectively, so here's how the graph looks like without the "generated" edges: ```{r} if(require("igraph")) rp$dependencies(generated=F) ``` ## Accessing items in the repo The `get` command is used to retrieve items from a repository. In the following the variable `myiris` is loaded into the variable `x` in the current environment. ```{r} x <- rp$get("myiris") ``` An even simpler command is `load`, which uses the item name also as variable name: ```{r} rm("myiris") rp$load("myiris") "myiris" %in% ls() ``` The `info` command can provide additional information about an entry: ```{r} rp$info("myiris") ``` ## Item versions, temporary items, remote contents There are actually 3 different ways of adding an object to a repository: * Add a new object (`rp$put`) * Overwrite an existing object (`rp$put(replace=T)`) * Add a new version of an existing object (`rp$put(replace="addversion")`) Plus, item contents for an existing entry can be downloaded if an URL is provided with it (`rp$pull`). ### Versioning The K-means algorithm will likely provide different solutions over multiple runs. Alternative solutions can be stored as new versions of the `iris_5clu` item as follows: ```{r} kiris2 <- kmeans(myiris, 5)$cluster rp$put(kiris2, "iris_5clu", "Kmeans clustering of the Iris data, k=5. Today's version!", depends="myiris", replace="addversion") ``` * **addversion** when replace is set to "addversion", Repo will add a new version of an existing object. The new object will replace the old one and the old one will be renamed adding the suffix "#N", with N being an incremental integer. The new repository looks like the old one: ```{r} rp ``` Except that `iris_5clu` is actually the one just put (look at the description): ```{r} rp$info("iris_5clu") ``` The old one has been renamed and hidden: ```{r} rp$info("iris_5clu#1") ``` ### Caching It is also possible to use the repository for caching purposes by using the `lazydo` command. It will run an expression and store the results. When the same expression is run again, the results will be loaded from the repository instead of being built again. ```{r} ## First run system.time(rp$lazydo( { Sys.sleep(.5) result <- "This took half a second to compute" } )) ## Second run system.time(rp$lazydo( { Sys.sleep(.5) result <- "This took half a second to compute" } )) ``` ### Pulling Existing items can feature an *URL* property. The `pull` function is meant to update item contents by downloading them from the Internet. This allows for the distribution of "stub" repositories containing all items information without the actual data. The following code creates an item provided with a remote URL. A call to `pull` overwrites the stub local content with the remote content. ```{r} rp$put("Local content", "item1", "This points to big data you may want to download", "tag", URL="http://exampleURL/repo") print(rp$get("item1")) ``` ```{r, eval=F} rp$pull("item1", replace=T) ``` ```{r, include=F} rp$set("item1", obj="Remote content") ``` ```{r} print(rp$get("item1")) ``` ## Handlers The `handlers` method returns a list of functions by the same names of the items in the repo. Each of these functions can call Repo methods (`get` by default) on the corresponding items. In this way all item names are loaded, which may be useful for example to exploit auto-completion features of the editor. ```{r} h <- rp$handlers() names(h) ``` Handlers call `get` by default: ```{r} print(h$iris_cluVsSpecies()) ``` The `tag` command (not yet described) adds a tag to an item: ```{r} h$iris_cluVsSpecies("tag", "onenewtag") h$iris_cluVsSpecies("info") ``` One may want to open a repo directly with: ```{r} h <- repo_open(rp$root())$handlers() ``` In that case, the handler to the repo itself will come handy: ```{r} h$repo ``` If items are removed or added, handlers may need a refresh: ```{r} h <- h$repo$handlers() ``` ## Further documentation The repo manual starts at: ```{r, eval=FALSE} help(repo) ``` In order to get help on the function "func", try the following: ```{r, eval=FALSE} help(repo_func) ``` ```{r, include=F} ## cleaning the tempdir causes CRAN checks to fail on some platforms, ## so it is now left behind ## ## unlink(rp$root(), recursive=T) ```
Based on Repo build `r packageVersion("repo")`