Are you interested in using R to teach data visualization and/or data
analysis in your undergraduate biology course? Are you looking for tools and
modules to reduce barriers for students with little to no prior programming
experience? Apply now to join us for a Fall 2018 Quantitative Undergraduate
Biology Education and Synthesis (QUBES) Faculty Mentoring Network (FMN) on
Reducing Barriers to Teaching with R in Undergraduate Biology.

In this FMN, participants will focus on developing, implementing, and
sharing modules for teaching statistical and biological concepts in R with
Swirl, an interactive platform for learning and teaching R in the RStudio
console. Swirl lessons simplify the R learning process by providing a
guided, interactive experience through on-screen prompts and exercises which
students answer directly in R. Swirl lessons can incorporate diverse
biological datasets and can be used to seamlessly integrate learning of
biology content, programming, and data analysis. The associated Swirlify
package features a user-friendly shiny app for developing custom lessons.
Over the course of the six-week FMN, participants will be introduced to the
Swirl program, implement an existing Swirl lesson to teach a biological or
data analysis concept in their undergraduate biology course, and develop and
implement a new Swirl lesson customized to their course needs. Participation
in the course includes access to a collection of Swirl modules covering
undergraduate biostatistics themes including data visualization, hypothesis
testing, and regression, as well as user-contributed modules developed in
this FMN. Participants will contribute one new lesson and will leave the FMN
with >10 ready-to-use Swirl lessons covering diverse biology and data
analysis concepts.

This course is intended for undergraduate biology instructors with prior R
programming experience who are interested in learning ways to teach R
effectively to students with little to no programming experience.
Participants should have at least a basic working knowledge of R, be
comfortable performing basic data analysis operations in R including reading
in and manipulating data, plotting data, performing t-tests and ANOVA, and
constructing linear regression models. Individuals with no prior experience
in R are unlikely to benefit significantly from participation in this FMN.

Dates and Location:

A 2-hour online kick-off will take place in early September, 2018 (date and
time TBD). The faculty mentoring network will continue online for six weeks
to support the development and implementation of activities in your course
during the Fall 2018 semester. Participants will meet virtually for ~1 hour
each week during the six week period.

Commitment:

To qualify, participants must be willing to implement one existing Swirl
module into their course(s) during the Fall 2018 semester, and to create,
implement, and share a new, custom Swirl module in the same semester. These
new modules can be brief and should emphasize a topic relevant to the
participant’s course goals. Participants must also be able to commit ~1 hour
per week for working with the facilitator and collaborating with other
participants around the customization and implementation of the teaching
materials. Additional time outside of these discussions may be required for
independent work on adapting and developing modules. Participants must also
have experience with R and should be comfortable performing basic data
analysis operations in R including reading in and manipulating data,
plotting data, performing t-tests and ANOVA, and constructing linear
regression models.

Benefits of Participation:

*Access ready-to-use teaching modules. Participants will gain access to an
existing collection of Swirl courses designed for an undergraduate
biostatistics course, as well as user-contributed Swirl lessons developed in
this FMN.
*Online support throughout the process of implementing new materials in your
course.  
*Access to peer mentors on R, Swirl, and lecture/classroom/lab effective
tips and strategies in online weekly meetings.

How to Apply:

Applications are due by July 25, 2018. Follow this link (shorturl.at/lGU17)
to view the application form. Accepted applicants will be notified by August
1, 2018. Space is limited; only 15 participants will be selected.

This opportunity stems from the QUBES Faculty Mentoring Fellowship program
that seeks to promote emerging and established leaders in quantitative
biology education along with their excellent teaching resources and
effective pedagogical approaches. Do you have teaching ideas or resources
that need a bigger audience? See
https://qubeshub.org/community/groups/mentorbridge and/or contact Jeremy
Wojdak at jmwoj...@radford.edu.

Reply via email to