// Databricks notebook source exported at Tue, 28 Jun 2016 09:54:51 UTC
Scalable Data Science
prepared by Raazesh Sainudiin and Sivanand Sivaram
The html source url of this databricks notebook and its recorded Uji :
What is Geospatial Analytics?
(watch now 3 minutes and 23 seconds):
Some Concrete Examples of Scalable Geospatial Analytics
1. Let us check out cross-domain data fusion in MSR's Urban Computing Group
- lots of interesting papers to read at http://research.microsoft.com/en-us/projects/urbancomputing/.
//This allows easy embedding of publicly available information into any other notebook
//when viewing in git-book just ignore this block - you may have to manually chase the URL in frameIt("URL").
//Example usage:
// displayHTML(frameIt("https://en.wikipedia.org/wiki/Latent_Dirichlet_allocation#Topics_in_LDA",250))
def frameIt( u:String, h:Int ) : String = {
"""<iframe
src=""""+ u+""""
width="95%" height="""" + h + """"
sandbox>
<p>
<a href="http://spark.apache.org/docs/latest/index.html">
Fallback link for browsers that, unlikely, don't support frames
</a>
</p>
</iframe>"""
}
displayHTML(frameIt("http://research.microsoft.com/en-us/projects/urbancomputing/",700))
1. Several sciences are naturally geospatial
- forestry,
- geography,
- geology,
- seismology,
- etc. etc.
See for example the global EQ datastreams from US geological Service below.
A bold idea: Imagine the non-parametric inference problem of estimating co-exciting Hawkes-like processes for modelling earth quakes on the entire planet!
For a global data source, see US geological Service's Earthquake hazards Program "http://earthquake.usgs.gov/data/.
displayHTML(frameIt("http://earthquake.usgs.gov/data/",700))