Scientists in all fields face challenges in managing and sustaining access to their research data. The larger and longer term the research project, the more likely that scientists are to have resources and dedicated staff to manage their technology and data, leaving those scientists whose work is based on smaller and shorter term projects at a disadvantage. The volume and variety of data to be managed varies by many factors, only two of which are the number of collaborators and length of the project. As part of an NSF project to conceptualize the Institute for Empowering Long Tail Research, we explored opportunities offered by Software as a Service (SaaS). These cloud-based services are popular in business because they reduce costs and labo...
Universities and research institutions are becoming increasingly interested in collecting and provid...
The way knowledge is shared is experiencing a paradigm shift: Digital networks allow new degrees of ...
Current data-management systems and analysis tools fail to meet scientists’ data-intensive needs. A ...
Scientists in all fields face challenges in managing and sustaining access to their research data. T...
Data driven science is seen as the fourth paradigm of scientific research after experimental science...
Scientific data often are expensive to produce or impossible to reproduce. Those data may be of grea...
The promise of technology-enabled, data-intensive scholarship is predicated upon access to knowledge...
One of the primary outputs of the scientific enterprise is data, but many institutions such as libra...
Data sharing and related infrastructure dilemmas are of interest across a wide variety of scientists...
In recent years enormous amounts of digital data have become available to scientific researchers. Th...
The more recent discussion of research data practices at relevant conferences, workshops and respect...
While large research collaborations can dedicate vast resources to the storage, analysis and sharing...
Computer scientists undertaking research often find themselves struggling to find or generate the ri...
Major societal challenges such as health, climate change, energy, food availability, migration and p...
There are a growing number of institutional services aimed at collecting research data sets that fa...
Universities and research institutions are becoming increasingly interested in collecting and provid...
The way knowledge is shared is experiencing a paradigm shift: Digital networks allow new degrees of ...
Current data-management systems and analysis tools fail to meet scientists’ data-intensive needs. A ...
Scientists in all fields face challenges in managing and sustaining access to their research data. T...
Data driven science is seen as the fourth paradigm of scientific research after experimental science...
Scientific data often are expensive to produce or impossible to reproduce. Those data may be of grea...
The promise of technology-enabled, data-intensive scholarship is predicated upon access to knowledge...
One of the primary outputs of the scientific enterprise is data, but many institutions such as libra...
Data sharing and related infrastructure dilemmas are of interest across a wide variety of scientists...
In recent years enormous amounts of digital data have become available to scientific researchers. Th...
The more recent discussion of research data practices at relevant conferences, workshops and respect...
While large research collaborations can dedicate vast resources to the storage, analysis and sharing...
Computer scientists undertaking research often find themselves struggling to find or generate the ri...
Major societal challenges such as health, climate change, energy, food availability, migration and p...
There are a growing number of institutional services aimed at collecting research data sets that fa...
Universities and research institutions are becoming increasingly interested in collecting and provid...
The way knowledge is shared is experiencing a paradigm shift: Digital networks allow new degrees of ...
Current data-management systems and analysis tools fail to meet scientists’ data-intensive needs. A ...