Remove Housing Remove Regulations Remove Stewardship
article thumbnail

What Policymakers Need to Know About New and Evolving Publicly-Driven Housing Development Models in the U.S.

The Stoop (NYU Furman Center)

State and local governments are exploring ways to take a more direct role in financing, preserving, and developing housing to address the nation’s housing shortage with an array of public development models, according to a new policy brief by the NYU Furman Center and its Housing Solutions Lab. A Decline In U.S.

Housing 97
article thumbnail

The Philosophy of the Federal Cyber Data Lake (CDL): A Thought Leadership Approach

Microsoft Public Sector

A CDL is a capability to assimilate and house vast quantities of security data, whether in its raw form or as derivatives of original logs. If data is consolidated in a central monolithic, stringent data stewardship is crucial, especially concerning data segmentation, access controls, and classification.

article thumbnail

CRA Podcast Episodes

CRA Today

Previously, he served as Director of Resource Development and Public Affairs for Neighborhood Housing Services of Greater Cleveland providing fund development and policy leadership. CRA Partners is a turnkey CRA compliance program powered by the Senior Housing Crime Prevention Foundation.

article thumbnail

Crain's Chicago Business: Crain's Forum on Rebranding Chicago

Rebuilding Place in Urban Space

must be consistent and focused on making the right decisions, the decisions that collectively achieve and support the realization of the community’s desired vision and positioning in terms of quality of life/placemaking, economic health, and the stewardship of physical assets and the built and natural environment.

article thumbnail

How AWS can enable the Government of Canada’s 2023-2026 Data Strategy

AWS Public Sector Blog

Advancing data governance and stewardship practices to build trust and enable secure data sharing between departments, including safeguarding privacy. Just as a shaky foundation undermines even the sturdiest house, flawed data diminishes the value of the most advanced algorithms.