Regarding growing data, let's take an example where, on a production line, you would measure different sources with different sensors:
Experiment.Date = '2014-07-18 @ 07h28';
Experiment.SensorType = 'A';
Experiment.SensorSerial = 'SENSOR-00012-A';
Experiment.SourceType = 'C';
Experiment.SourceSerial = 'SOURCE-00143-C';
Experiment.SensorPositions = 180 * linspace(0, 359, 360) / pi;
Experiment.SensorResponse = rand(1, 360);
And store these experiments on disk using .mat files:
So now, if I ask you:
- "what is the typical response of sensors of type
B when the source is of type
- "Which sensor has best performances to measure sources of type
C ? Sensors
A or sensors
- "How performances of these sensors degrade with time ?"
- "Did modification we made last july to production line improved lifetime of sensors
Loading in memory all these
.mat files, to check if date, sensor and source type are correct and then calculate min,mean,max responses, and other statistics is gonna be very painful and time consuming + writing custom code for file selection!
Building a data-base on top of these .mat files can be very useful to "SELECT/JOIN/..." elements of interest and then perform further statistic or operations.
NB: The database does not replace .mat files (i.e. the information), it just a practical and standard way to quickly select some of them upon conditions without having to load and parse everything.