back up to How to plan data ingest for VIVO

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Note: these discussions reflect primarily the approaches and workflow that have been used at Cornell. Other approaches are used at other sites, and please update or annotate as appropriate to point out different requirements and/or solutions.

Introduction

Some VIVO sites do not allow manual editing by users, but reflect data from one or more other systems of record with VIVO being a point of integration and for syndicating integrated data to other websites or reporting tools. This can simplify data management after it's in VIVO but still very likely requires data alignment unless all the sources of data are internally consistent and share common unique identifiers.

When data in VIVO have been created or augmented by interactive editing, and when users can edit their own pages (typically called self-editing), there are more complexities to plan for.

Ideally ingest processes are made repeatable and incremental so that changes do not require removing and then adding large amounts of data, but sometimes a source is only updated annually or the source system goes through changes that require large batch changes.

Designing a repeatable ingest process that tests new data against what is already in VIVO

Concepts

The process of developing a data ingest plan for VIVO often focuses on each different data source independently, but in fact there may be some overlap among sources, whether those sources represent different types of data or different sources of the same type of data. 

For example, people will probably come first from a human resource database – employees, departments, and the positions that connect employees and departments. But a grants ingest process will also bring in new people, as there may be investigators from other organizations listed.  And when publications are ingested, a large institution may find there are tens of thousands of people records to keep straight.

In some future world that organizations like ORCID are working achieve, every researcher will have a unique international identifier, and this identifier will help disambiguate whether the John Doe that co-authored with a researcher at your institution is the same John H. Doe serving as an investigator on a grant. For now, the mechanisms of identifiers and the heuristics of disambiguation are important to recognize but not to solve – it's primarily important in planning your ingest processes to recognize that these questions are out there.

Addressing identity

We don't recommend using a person's name as part of their URI for the simple reason that their name may change.  In fact, many data architects remember always using completely randomized, meaningless identifiers within URIs (for the part after the last / in the URI, known as the local name).

 

 


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