Resources
5 Results (showing 1 - 5)
Results sorted by updated date (newest first)
Results sorted by updated date (newest first)
Posted 12/23/2020 (updated 4/4/2024)
This technical package provides evidence of the effectiveness of strategies and approaches for supporting successful planning, design, implementation, and sustainability of syringe services programs (SSPs). It provides a broad framework for new and existing SSPs to ensure needs-based service delivery, reduce harms related to injection drug use, and link participants to services that support their health and wellness.
Posted 8/11/2020 (updated 3/28/2024)
Corporation for Supportive Housing (CSH) developed a Racial Disparities and Disproportionality Index that looks at 16 unique systems and measures whether a racial and/or ethnic group’s representation in a particular public system is proportionate to, over or below their representation in the overall population and also allows for the examination of systematic differences between groups and geographies .
Posted 11/9/2023 (updated 3/28/2024)
The Recovery-Ready Workplace Toolkit: Guidance and Resources for Private and Public Sector Employers was created through the efforts of the Office of National Drug Control Policy, the Domestic Policy Council, and 12 federal departments and independent agencies. It is designed to help businesses and other employers prevent and respond more effectively to substance misuse among employees, build their workforces through hiring of people in recovery, and develop a recovery-supportive culture.
Posted 11/11/2022 (updated 3/27/2024)
OMNI Institute, in partnership with the JBS RCORP-TA team, created the 2022-2023 RCORP-TA Data Learning Collaborative (LC) for grantees to come together and share knowledge, talk through challenges, and build relationships with one another. This LC will build upon the foundation established in the prior 2022 RCORP-TA Data Learning Collaborative.
Posted 4/12/2022 (updated 3/27/2024)
OMNI Institute, in partnership with the JBS RCORP-TA team, had five sessions of the Data Learning Collaborative (LC).