sfbrigade/datasci_civic-anomaly-detector

Name: datasci_civic-anomaly-detector

Owner: SFBrigade

Description: Abstracted, parameterized super hack for detecting temporal-spatial anomalies in a variety of civic locales/applications.

Created: 2016-10-25 06:40:40.0

Updated: 2017-08-25 06:17:23.0

Pushed: 2016-10-25 16:22:55.0

Homepage: null

Size: 257

Language: JavaScript

GitHub Committers

UserMost Recent Commit# Commits

Other Committers

UserEmailMost Recent Commit# Commits

README

Universal Civic Anomaly Detector

A project by the Data Science Working Group @ Code for San Francisco
Project Lead: Jude Calvillo

The aim of this project is to develop a highly versatile temporal-spatial anomaly detection app for all levels and agencies of government (and NGOs). Such an anomaly detector would not just reveal truly significant events (or summary events), given such events' underlying seasonality and trend, but it would also provide time-series and local news context. Thus, it would point civic authorities to events that actually warrant a tactical response, and it would better prepare them for that response, all of which would improve efficiency (saving time, funds, etc).

Abstraction and Parameterization of Existing App

This app will be an abstraction of the DSWG's Dept. of Transportation Hazmat Incident Anomaly Detector, where its interface and purported relevance will be generalized, while its inputs and parameters will be as follows:

Responsible DSWG Teammates
Stack
Status, as of Oct. 25, 2016
Keywords

Shiny, Shiny app, anomaly detection, Leaflet, data science working group, code for san francisco, R, r programming, jude calvillo, inferential statistics, code for america, brigade


This work is supported by the National Institutes of Health's National Center for Advancing Translational Sciences, Grant Number U24TR002306. This work is solely the responsibility of the creators and does not necessarily represent the official views of the National Institutes of Health.