## How Many Observations Can You Analyze?

SAS/IML Studio provides the data analyst with interactive and dynamic statistical graphics. By definition, interactive graphics
must respond quickly to the changes and manipulations of the analyst. This quick response restricts the size of data sets
that can be handled while still maintaining interactivity.

Wegman (1995) points out that the number of observations you can analyze depends on the algorithmic complexity of the statistical algorithms
you are using. For example, if you have n observations, computing a mean and variance is , sorting is , and solving a least squares regression on p variables is Furthermore, visualization of individual observations is limited by the number of pixels that can be represented on a display
device.

Wegman’s conclusion is that "visualization of data sets say of size or more is clearly a wide open field." More recently, Unwin, Theus, and Hofmann (2006) discuss the challenges of "visualizing a million," including a chapter dedicated to interactive graphics.

On a typical PC (for example, a 1.8 GHz CPU with 512 MB of RAM), SAS/IML Studio can help you analyze dozens of variables and
tens of thousands of observations. Visualization of data with graphics such as histograms and box plots remains feasible for
hundreds of thousands of observations, although the interactive graphics become less responsive. Scatter plots of this many
observations suffer from overplotting.

SAS/IML Studio uses the RAM on your PC to facilitate interaction and linking between plots and data tables. If you routinely
analyze large data sets, increasing the RAM on your PC might increase SAS/IML Studio’s interactivity. For example, if you
routinely examine hundreds of thousands of observations in dozens of variables, 1 GB of RAM is preferable to 512 MB.