Simulating Alternative Responses to Calls for Service
Partner: Arlo Malmberg, Berkeley Police Department, Government
Overview
Project Description
The Berkeley City Council recently voted to audit the ““calls for service”” (CFS) received by the Berkeley Police Department (BPD) to determine the feasibility of transferring the response to certain types of calls to alternative emergency response agencies. Using historical CFS data provided by BPD, this project seeks to simulate the effects on response time, staffing levels, and racial disparities of alternative emergency response strategies. The project will advance in complexity throughout the semester and perhaps through multiple semesters. We’ll start with a cursory analysis of historical data to determine baseline measures, advance to create a multi-agent simulation, and finally explore the possibility of reinforcement learning to simulate more complex emergency CFS patterns. This is a project for students who want to explore the intersection of machine learning and public policy analysis, engage directly with policy makers, and stretch their data science skillset.”
Expected Deliverable
Summary statistics, sensitivity analysis, and simulation visualization
What would a successful semester look like to you?
Gaining a strong grasp of the data, working through a first iteration of a simulation.
Additional Skills from ideal candidates
Experience with Java could be useful to work with simulation softwares like Repast and MASON
Data
Models
Conclusion