Skip to content Skip to main navigation Report an accessibility issue

FAIR Data & Code Sharing

Resources for sharing CAMM research data, code, and documentation.

FAIR data and code practices help make research outputs Findable, Accessible, Interoperable, and Reusable.

These principles support NSF expectations for responsible data management and sharing, including clear documentation, useful metadata, appropriate repository practices, and connections between publications, datasets, code, and research workflows.

This page provides a starting point for the CAMM GitHub repository and CAMM data and code sharing practices.

Code and research resources from CAMM.

The CAMM GitHub organization provides a central location for code, workflows, reporting templates, and related research resources developed by CAMM researchers.

CAMM researchers can use this space to share project code, documentation, computational workflows, and supporting materials connected to CAMM-supported publications and datasets.

Visit the CAMM GitHub Repository

Make research outputs easier to discover, understand, and reuse.

FAIR stands for Findable, Accessible, Interoperable, and Reusable. These principles support responsible sharing of research data, code, metadata, and documentation.

Findable

Research outputs should be easy to locate through clear titles, repository organization, descriptions, keywords, and persistent links when available.

Accessible

Data and code should be stored where authorized researchers, collaborators, or readers can access them according to project, publication, and sponsor requirements.

Interoperable

Files, metadata, and documentation should use formats and descriptions that make it easier to connect outputs across tools, workflows, and research groups.

Reusable

Research outputs should include enough context, documentation, and licensing or access information for others to understand and reuse them appropriately.

Center-level practices supporting FAIR data and code sharing.

CAMM’s data management and sharing activities connect project documentation, shared storage, repository practices, metadata, and AI-ready materials datasets.

FAIR Advocates and DMP support

CAMM’s Data Management Plan identifies roles, responsibilities, and routine reporting mechanisms to support data management and sharing across the Center.

Shared data infrastructure

CAMM uses shared storage and transfer tools to help team members store, access, and share CAMM-generated data with collaborators.

Center-Level Data Sharing Initiative

CAMM is developing a Center-level data-sharing platform to support AI-ready materials datasets, metadata tagging, discoverability, and common formats.

Structured experimental data workflows

CAMM is also developing sample tracking and experimental data management workflows that connect sample metadata, characterization data, analysis outputs, and reports.

Preparing data and code for CAMM projects.

Please add details here regarding CAMM’s data management plan.