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Python in the Geosciences

Ongoing (Fall 2016-present) Seminar - University of Washington

Time:

1st Tuesday of the month, 3:30PM with Happy Hour or another eScience Institute seminar to follow.

Location:

6th floor of the Physics/Astronomy Tower (PAT), WRF Data Science Studio, Seminar Room C607 or C610

Background:

In recent years, the Python programming language has emerged as a popular choice for geoscientists. Python is an easy to learn, easy to read, fast to write, open source, multi-platform platform language. Accompanying the Python language is a large community of free, open source projects that have facilitated rapid scientific development and data analysis. This informal seminar will focus on new and existing Python tools and applications within the geoscience community and aims to connect Python users across the UW campus.

This is the second year this seminar series is held.

Schedule

Date Speaker Title
Oct. 4, 2016 Christina Bandaragoda and Ronda Strauch Learning about landsliding by launching a Landlab Jupyter Notebook from a HydroShare server
Nov. 1, 2016 Cancelled No seminar, but please attend a UW GeoHack Week open event on Google Earth Engine and Python, on Nov. 14. Same venue.
Dec. 6, 2016 TBD
--- Winter 2017 Quarter ---
Jan. 10, 2017 (note changed date) David Shean, UW-APL glaciers

Seminars from 2015-2016 academic year

See the seminar listing and access materials from most of the seminars.

Other Workshops / Seminars / Resources:

  • Link to AMS September 2016 Python session/workshop
  • Atmos-Python Workshop:[email protected] - (Andre or Jeremy)
  • AGU Fall Meeting 2016 Session analogous to last year's Python Solutions for the Earth Sciences (IN041)?
  • UW eScience Python Seminar, Fall 2016? Or is this not happening this year?

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  • Jupyter Notebook 100.0%