Uncertainty is a normal part of everyday life. It appears in the environment around us from the weather to the stock market, internally to some degree in almost every plan or decision we make, and is inherent in our daily communication, both verbal and visual. The form this uncertainty takes is often qualitative or unquantified and so fits poorly with the initial issues of representation, computability, and efficiency often the driving forces in initial visualizations of information. Understanding what may assist in visualizing uncertainty is the subject of this research. Initially I provide a literature review of existing work in uncertainty visualization. This review continues with an exploration of heuristic evaluation specifically on uncertainty visualization but then looks deeper at the process of heuristic evaluation itself. Moving toward user constraints and cognitive tasks I coalesce existing work relating to reasoning under uncertainty. From this I propose further linking and integrating the uncertainty visualizations into the process of reasoning which encompasses all visualization tasks. The second half of the dissertation turns to investigate uncertainty visualization in spe cific domains. In the first domain, results of research into visualizing temporal uncertainty in archaeological reconstructions are provided. This is followed by visualizations devel oped for uncertainty in rock property modelling in the seismic domain. The final domain of evidence-based medical diagnosis is explored with an observational study, participatory design of new visual support, and a final evaluation. Finally I present a framework for assisting with the development of visualizations deal ing with uncertainty by breaking out several important factors and cognitive tasks to con sider based on generalizing and applying the practical and theoretical developments. In summary my contributions include specific visualizations for particular application do mains along with more general aspects relating to evaluation, applicability of cognitive theory, and a framework to aid uncertainty visualization. iii This dissertation is the result of the work and support of many people. First and foremost I would like to thank all of my family for all their patience and support. I deeply thank my supervisor Sheelagh Carpendale for all the direction, time, and effort; all my domain collaborators for their contributions-Bill Glanzman for the archaeological discussions over beer, Bill Ghali and Barry Baylis and the the rest of the Ward of the 21 st Century research group for their insights and ideas, and Jon Downton and Dave Gray for their anisotropic discussions; and all my other co-authors for their contribution: Petra Isenberg,