Commit 828112bd authored by Wohlgemuth, Jason's avatar Wohlgemuth, Jason
Browse files

docs(paper): Add statement of need

parent d2c72fff
Loading
Loading
Loading
Loading
+7 −1
Original line number Diff line number Diff line
@@ -29,7 +29,13 @@ bibliography: paper.bib
> Accessible Content Optimization for Research Needs (ACORN) applies standardization, automation, linked data, and institutional knowledge to research activity data (RAD) to draw insights that benefit multiple audiences and aims. ACORN is a command line multitool that creates analysis-ready data from RAD and can also run on remote continuous integration servers for shared RAD repositories. ACORN employs a set of automated processes for informing and/or enforcing defined content schemas to create standardized and highly structured data. Because of its standardized data source, ACORN easily applies computer automation to generate communication assets such as PDFs, PPTs, and web pages. Built using memory-safe Rust, ACORN is portable and accessible for use on any Windows, Mac, or Linux machine.

# Statement of need
> 🚧 Under construction
Communicating research can be difficult — from the high-level scope of a science-focused organization, down to singular projects within that organization. Researchers are asked to communicate their research, limited by their lacking skills in professional communication. Science communicators are asked to promote research, limited by their understanding of complex contexts and domain-specific details. Finally, research communication is further complicated by a lack of standardization in research data and metadata, preventing external audiences, such as jobseekers, policymakers, funders, and the general public from finding the information they need.

Traditional research practices are built on antiquated processes that have become old habits. These are particularly dangerous in an environment in which getting published is critical to career livelihood. Researchers may be tempted to do the bare minimum, skip steps, and pursue sensational or novel paths in the name of journal acceptance and gaining credibility. These practices have led to the twin reproducibility [@Baker: 2016] and replicability [@Camerer: 2018] crises.

Trustworthy research is hard work — harder than closed-model research. But automation and data architecture, enabled through ACORN, can make it easier.

ACORN can enable quick analysis of research project portfolios, allowing decision-makers to pick and pull solutions for execution, sponsor discussions, and mission applications. ACORN has three main outputs: analysis-ready data applicable to AI/ML research; target artifacts: from the ACORN-enabled content process that creates a single source of truth for research activity data from which users can generate content pieces; and understanding: maintaining data in the same format for programmatic analysis and enhanced understanding and better application of AI/ML practices. This collection of tools allows researchers to leverage the benefits of connected data and automate numerous tasks essential to science and communication.

# References
> 🚧 Under construction
 No newline at end of file