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Workshops

Open research workshops and resources

Data Management for Reproducibility

Approaches to ensuring reproducible research are many and varied.  This workshop presents a forensic approach to identifying data, processes, equipment and environmental factors which influence the variability and outcome of research and therefore impact its reproducibility. Using this approach, we will analyse the elements of traditional Data Management Plans. Participants will identify the content required to demonstrate that research methods are robustly documented, and that data and metadata, which shows the extent to which variability has been controlled, are available for external scrutiny.

This workshop is designed for researchers using primarily quantitative methods and for those in life and biomedical sciences.  Familiarity with FAIR principles is recommended.

Learning Objectives

  • Describe data integrity in relation to research data, understand the concept of critical data as it relates to research data integrity
  • Learn the basics of process mapping
  • Articulate the benefits of process mapping in defining robust research protocols and identifying data which is critical to reproducibility
  • Conduct data integrity assessments on process maps to identify critical research data
  • Analyse the research process to identify risks to critical data e.g. sources of variability.
  • Categorise the critical research data and associated data which can demonstrate the extent to which different types of variability have been controlled.
  • Identify metadata for critical data and data associated with variables
  • Understand the elements of the data management plan which are key to documenting how critical research data has been robustly generated, recorded, checked and stored
  • Describe the key elements of metadata and be able to articulate methods for documenting these within a DMP
  • Take a generic DMP template and describe the modifications, annotations etc required to ensure that it captures critical research data, associated data on control of variability and metadata within your discipline
  • Dos and don’ts of working with data in MS Excel

Audience

The course would suit researchers who use mainly quantitative methods and is ideal for life and biomedical sciences. The course level is considered to be introductory-intermediate.

Prerequisites 

  • General familiarity with research processes
  • This workshop is designed for researchers using primarily quantitative methods and is ideal for those in life and biomedical sciences.  It may be less relevant to those working in qualitative and arts and humanities research.
  • Familiarity with FAIR principles

Completion Criteria

Attend both of the online workshops (2 hours each) and complete a process mapping exercise (1 hour) between the two online sessions.

Following the second online session, create a customised DMP for your discipline, either alone or with colleagues.  The plan needs to be accompanied with a process map which identifies critical research data and associated variability data (data which demonstrates control of variability).

The plan needs to be presented to the workshop facilitators via an online appointment.

We request that any new or adapted materials developed by participants be shared with an appropriate license on OSF

Time Commitment

  • 2 x 2 training hours
  • 1 office hour
  • 6-8 hours creating and presenting deliverables

Event Details

  • Dates/times: 17/09/24 1000-1200 and 26/09/24 1000-1200
  • Location: Online
  • Cost (to Institution): £500
  • Training Partner: University of Bristol

Register

To express your interest in completing this training please complete the course registration form.

Register