GCDkit version 6.0 was released on August 16, 2019.
Full GCDkit 6.0 install in the Download sectionMeet the authors at the Goldschmidt 2019 Conference in Barcelona! Discuss multiplatform installation and new features, share your experience, report bugs.
Poster board 43 in Session 02f, Wednesday @ 17:30 - 19:30
Flash Talk Theatre 1, Thursday @ 09:55 - 10:00
Poster board 43 in Session 02f, Wednesday @ 17:30 - 19:30
Flash Talk Theatre 1, Thursday @ 09:55 - 10:00
The Comprehensive R Archive Network Your browser seems not to support frames, here is the contents page of CRAN. Liquibase 4.1.1. 4.1.1 Installer for Windows includes everything you need to run Liquibase (including Java) to make getting started easier than ever.
Geochemical modelling of igneous processes – principles and recipes in R Language is a book we have recently published at Springer. Read more:
book at Springer
book home
related blogspot
The GeoChemical Data ToolKIT, or in short GCDkit, is a system for handling and recalculation of whole-rock analyses from igneous rocks. It is written in R, a language and environment for statistical computing and graphics.
Main features of GCDkit are:
- Standard geochemical calculations involving major-, trace-element as well as Sr-Nd data
- Effective data management (searching, grouping)
- Common plots (binary, ternary, spider diagrams)
- Graphic output to publication quality
- Modular architecture (= easily expandable and modifiable)
- Transparent functionality & availability (open source freeware, WWW)
GCDkit works under the Windows graphical user interface (GUI), and Windows Vista/7/8/10 are the recommended operation systems. However, the current version is platform independent, and should also run under Mac OSX and Linux systems, both with GUI and from command-line (in batch mode)
As you may imagine, we have invested hours of our time into this free project. Do you like GCDkit? Do you want to support us somehow? Then please link to our page, let us know your comments or submit a bug report. Have you known that you can even contribute some code? In any case, we would appreciate if you quote the key paper concerned with the GCDkit software:
Do you want to know GCDkit news and updates? Send us a message, or subscribe to our Twitter feed
Enjoy!
on behalf of the authors
Every time there is a new major update from The RFoundation (like the recent 3.6.0release in April). I’m always happy to seethe continuing progress and the combination of new features and bugfixes, but I also dread the upgrade because it means I have to addressthe issue of what to do about the burgeoning number of packages(libraries) I have installed.
Up until now I confess I simply have sort of “winged it”, done theupgrade and either manually thought about what packages I “really”needed or just grabbed a few essentials and then let my needs dictatewhatever else I reloaded. This time I decided to get serious about theprocess and pay attention to not only what I was doing but documentingit and keeping a record via some amount of coding (and this post).
I’m aware that there are full-fledged packagemanagers like
packrat
and checkpoint
and even a package designed to manage theupgrade for you on windows, but I’m a Mac user and wanted to do thingsmy own way and I don’t need that level of sophistication.So I set out to do the following:
- Capture a list of everything I had installed under
R 3.5.3
and,very importantly, as much as I could about where I got the packagee.g.CRAN
orGitHub
or ??? - Keep a copy for my own edification and potential future use.
- Do a clean
R 3.6.0
install and not copy any library directoriesmanually. - Take a look at the list I produced in #1 above but mainly to justdownload and install the exact same packages if I can find them.
- Make the process mainly scripted and automatic and available againfor the future.
Helpful background
As I was searching the web I found a few helpful posts that saved metime in building my own solution. The primary was thisposton
Stack Overflow
. I wanted to extend the function listed there to doa little more of my work for me. Instead of just being able to generatea listing of what I had installed from GitHub I wanted to be able todetermine most of the places I get packages from, which are CRAN
,GitHub
and R-Forge
.So let’s load
tidyverse
to have access to all it’s various functionsand features and then build a dataframe called allmypackages
with thebasic information about the packages I currently have installed in R3.5.3.Note - I’m writing this after already upgrading so there will be a fewinconsistencies in the output
- This could just as easily be a
tibble
but I choseas.data.frame
- I am deliberately removing base packages from the dataframe by
filter
- I am eliminating columns I really don’t care about with
select
A function to do the hard work
As I mentioned above the stack overflow post was a good start but Iwanted more information from the function. Rather than TRUE/FALSE to isit github I would like as much information as possible about where I gotthe package. The
package~source
function will be applied to thePackage
column for each row of our dataframe. For exampleas.character(packageDescription('ggplot2')$Repository)
will get back“CRAN”, and as.character(packageDescription('CHAID')$Repository)
will yield “R-Forge”. For GitHub packages the result is character(0)
which has a length
of zero. So we’ll test with an if else
clause. Ifwe get an answer like “CRAN” we’ll just return
it. If not, we’ll seeif there is a GitHub repo listed withas.character(packageDescription(pkg)$GithubRepo)
as well as a GitHubusername as.character(packageDescription(pkg)$GithubUsername)
. If theyexist we’ll concatenate and return. If not we’ll return “Other”. Besidesbeing good defensive programming this may catch the package you havebuilt for yourself as is the case for me.What’s in your libraries?
Now that we have the
package_source
function we can add a column toour data frame and do a little looking.R For Mac Os X
![Download Download](/uploads/1/2/6/6/126654374/144913816.png)
![Mac Mac](/uploads/1/2/6/6/126654374/438790556.jpg)
And just to be on the safe side we’ll also write a copy out as a csvfile so we have it around in case we ever need to refer back.
Go ahead and install R 3.6.0
At this point we have what we need, so go ahead and download and installR 3.6.0. At the end of the installation process you’ll have a pristinecopy with a new library directory. When next you restart R and R Studioyou’ll see a clean new version. Let’s make use of our data frame toautomate most of the process of getting nice clean copies of thelibraries we want.
We’ll start by getting the entire
tidyverse
since we need severalparts and because installing it will trigger the installation of quite afew dependencies and bootstrap our work.R For Mac Download
Now we have R 3.6.0 and some additional packages. Let’s see what we cando. First let’s create two dataframes, one with our old list and onewith what we have right now. Then we can use
anti_join
to make adataframe that lists the differences thediff
. We can use filter
andpull
to generate a vector of just the the packages that are on CRAN wewant to install.**Note – I’m faking the output rather than reinstalling all thesepackages on my machine so you will see packages from the
tidyverse
inthe listing **Just do it!
Now that you have a nice automated list of everything that is a CRANpackage you can give it a final look and see if there is anything elseyou’d like to filter out. Once you are sure the list is right one finalpipe will set the process in motion.
Depending on the speed of your network connection and the number ofpackages you have that will run for a few minutes.
That takes care of our CRAN packages. What about GitHub?
Here’s another chance to review what you have and whether you still wantneed these packages. I could automate the process and once again feedthe right vector to
devtools::install_github()
but instead I choose tohandle these manually as indevtools::install_github('leeper/slopegraph')
.Same with the one package I get from R-Forge…
At the end of this process you should have a nice clean R install thathas all the packages you choose to maintain as well as a detailedlisting of what those are.
Done!
R-studio Download For Mac
I hope you’ve found this useful. I am always open to comments,corrections and suggestions.
Chuck (ibecav at gmail dot com)