Skip to content

Pulling together LTER and iOOS data in a convenient pull-and-play tool to work towards fostering a metacommunity for ecologists, oceanographers, and physicsts.

License

Notifications You must be signed in to change notification settings

eldobbins/ohw_lter_vis

 
 

Repository files navigation

Uniting LTER and iOOS Data Communities

This repository contains the tools/tutorials for pulling together LTER and iOOS Datasets for encouraging cross-talk between ecology, oceanography, and physics communities.

What is the Challenge for this Hackweek Project?

There are a number of communities which have curated comprehensive datasets for environmental data. The data formats across these communities is not necessarily uniform in formatting/metadata standards, querying information is not necessarily straightforward for first time users, and discovering connections between these fields is obfuscated.

Why is this a Challenge?

In terms of engineering the data, some of the challenge is querying and compiling the data into a usable and comprehensive set. There are a number of factors that need to be considered is nontrivial and the documentation maintained in the combination process.

In terms of science it is important to foster data discovery to encourage hypothesis development, novel collaborations, and provide access to fundamental datastreams.

Steps to Address

There are two key tools that need to be developed for a minimum viable product:

  • Data Combiner: A tool that will allow a user to query specific datastreams of interest (time, region, fundmental topics) and will pull, unite, and provide meta-data about the stream(s)
  • Data Visualizer: A tool that will read in the common frame, and will allow a user to specify the variables of interest, and will generate initial, interactive plots for discovery and exploration

About

Pulling together LTER and iOOS data in a convenient pull-and-play tool to work towards fostering a metacommunity for ecologists, oceanographers, and physicsts.

Resources

License

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Jupyter Notebook 99.8%
  • Other 0.2%