Jan 7-8, 2016
9:00 am - 4:30 pm
Instructors: Bernease Herman, Jes Ford, Dave Beck, Rahul Biswas, Allison Smith, Valentina Staneva, Ariel Rokem, Adam Richie Halford, Ben Weinstein
Helpers: Emilia Gan, Sean Patrick Santos, Qian Sophia Zhang, Jeff Arnold, Ben Weinstein, Sam White, Jason Portenoy
Software Carpentry's mission is to help scientists and engineers get more research done in less time and with less pain by teaching them basic lab skills for scientific computing. This hands-on workshop will cover basic concepts and tools, including program design, version control, data management, and task automation. Participants will be encouraged to help one another and to apply what they have learned to their own research problems.
For more information on what we teach and why, please see our paper "Best Practices for Scientific Computing".
Who: The course is aimed at graduate students and other researchers. You don't need to have any previous knowledge of the tools that will be presented at the workshop.
Where: WRF Data Science Studio, Physics/Astronomy Tower (6th Floor), University of Washington, Seattle, WA. Get directions with OpenStreetMap or Google Maps.
Requirements: Participants must bring a laptop with a few specific software packages installed (listed below). They are also required to abide by Software Carpentry's Code of Conduct.
Contact: Please mail arokem@gmail.com for more information.
We are running two full concurrent sessions, one in each room. There
are two key differences between the sessions. First is that one
session will teach programming with Python and the other
session will teach programming with R, all the other class
content will be the same.
As a rough guide to choosing which language to learn, Python might be
best for you if you're working in the natural or physical sciences,
and if you're in the social sciences and humanities then R might be
more valuable.
The second difference between the two sessions is that the instructors
in the Python session mostly come from the natural and physical
sciences, while the instructors in the R session mostly come from the
social sciences and humanities. These is simply a convenient way to
organise the lessons, and of course you're welcome to join whichever
session you think will benefit you the most. The choice is completely
up to you.
09:00 | Automating tasks with the Unix shell |
10:30 | Coffee break |
11:00 | Automating tasks with the Unix shell (cotd.) |
12:15 | Lunch break |
13:00 | Intro to Python or R |
14:30 | Coffee break |
14:45 | Intro to Python or R (cotd.) |
16:00 | Wrap-up |
09:00 | Version control with Git |
10:30 | Coffee break |
10:45 | Version control with Git (cotd.) |
12:00 | Lunch break |
13:00 | Building programs with Python or R |
14:30 | Coffee break |
14:45 | Building programs with Python or R (cotd.) |
16:00 | Wrap-up |
Etherpad: http://pad.software-carpentry.org/2016-01-07-uw.
We will use this Etherpad for chatting, taking notes, and sharing URLs and bits of code.
add
, commit
, ...status
, diff
, ...clone
, pull
, push
, ...To participate in a Software Carpentry workshop, you will need access to the software described below. In addition, you will need an up-to-date web browser.
We maintain a list of common issues that occur during installation as a reference for instructors that may be useful on the Configuration Problems and Solutions wiki page.
Bash is a commonly-used shell that gives you the power to do simple tasks more quickly.
This will provide you with both Git and Bash in the Git Bash program.
The default shell in all versions of Mac OS X is Bash, so no
need to install anything. You access Bash from the Terminal
(found in
/Applications/Utilities
). You may want to keep
Terminal in your dock for this workshop.
The default shell is usually Bash, but if your
machine is set up differently you can run it by opening a
terminal and typing bash
. There is no need to
install anything.
Git is a version control system that lets you track who made changes to what when and has options for easily updating a shared or public version of your code on github.com. You will need a supported web browser (current versions of Chrome, Firefox or Safari, or Internet Explorer version 9 or above).
Git should be installed on your computer as part of your Bash install (described above).
For OS X 10.9 and higher, install Git for Mac
by downloading and running the most recent "mavericks" installer from
this list.
After installing Git, there will not be anything in your /Applications
folder,
as Git is a command line program.
For older versions of OS X (10.5-10.8) use the
most recent available installer labelled "snow-leopard"
available here.
If Git is not already available on your machine you can try to
install it via your distro's package manager. For Debian/Ubuntu run
sudo apt-get install git
and for Fedora run
sudo yum install git
.
When you're writing code, it's nice to have a text editor that is
optimized for writing code, with features like automatic
color-coding of key words. The default text editor on Mac OS X and
Linux is usually set to Vim, which is not famous for being
intuitive. if you accidentally find yourself stuck in it, try
typing the escape key, followed by :q!
(colon, lower-case 'q',
exclamation mark), then hitting Return to return to the shell.
nano is a basic editor and the default that instructors use in the workshop. To install it, download the Software Carpentry Windows installer and double click on the file to run it. This installer requires an active internet connection.
Others editors that you can use are Notepad++ or Sublime Text. Be aware that you must add its installation directory to your system path. Please ask your instructor to help you do this.
nano is a basic editor and the default that instructors use in the workshop. It should be pre-installed.
Others editors that you can use are Text Wrangler or Sublime Text.
nano is a basic editor and the default that instructors use in the workshop. It should be pre-installed.
Others editors that you can use are Gedit, Kate or Sublime Text.
Python is a popular language for scientific computing, and great for general-purpose programming as well. Installing all of its scientific packages individually can be a bit difficult, so we recommend Anaconda, an all-in-one installer.
Regardless of how you choose to install it, please make sure you install Python version 3.x (e.g., 3.4 is fine).
We will teach Python using the IPython notebook, a programming environment that runs in a web browser. For this to work you will need a reasonably up-to-date browser. The current versions of the Chrome, Safari and Firefox browsers are all supported (some older browsers, including Internet Explorer version 9 and below, are not).
bash Anaconda-and then press tab. The name of the file you just downloaded should appear.
yes
and
press enter to approve the license. Press enter to approve the
default location for the files. Type yes
and
press enter to prepend Anaconda to your PATH
(this makes the Anaconda distribution the default Python).
Once you are done installing the software listed above, please go to this page, which has instructions on how to test that everything was installed correctly.
R is a programming language that is especially powerful for data exploration, visualization, and statistical analysis. To interact with R, we use RStudio.
Install R by downloading and running this .exe file from CRAN. Also, please install the RStudio IDE.
Install R by downloading and running this .pkg file from CRAN. Also, please install the RStudio IDE.
You can download the binary files for your distribution
from CRAN. Or
you can use your package manager (e.g. for Debian/Ubuntu
run sudo apt-get install r-base
and for Fedora run
sudo yum install R
). Also, please install the
RStudio IDE.