I am storing a series of events to a CSV file, each event type comes with a different set of data.
To illustrate, say I have two events (there will be many more):
- Running, which has a data set containing speed and incline.
- Sleeping, which has a data set containing snores.
There are two options to store this data in CSV records:
Storing each possible item of data in it's own field...
speed, incline, snores
15mph, 20%, , , , 12 16mph, 20%, , 14mph, 20%, ,
Storing each event in its own record...
running, 15mph, 20% sleeping, 12 running, 16mph, 20% running, 14mph, 20%
Without a specific CSV specification, the consensus seems to be:
Each record "should" contain the same number of comma-separated fields.
- There are a number of events which each have a large & different set of data values.
- CSV data is to be of use to other developers (I will/could/should/won't use either structure).
- The 'other developers' to be toward the novice end of the spectrum and/or using resource limited systems. CSV is accessible.
- The CSV format is being provided non-exclusively as feature not requirement. Although, if said application is providing a CSV file it should be provided in the correct manner from now on.
Would it be valid – in this case - to go with Option B?
Option B maintains a level of human readability, which is an advantage say CSV is read by human not processor. Neither method is more complex to parse using a custom parser, but will Option B void the usefulness of a CSV format with other libraries, frameworks, applications et al. With Option A future changes/versions to the data set of an individual event may break the CSV structure (zombie
, , to maintain forwards compatibility); whereas Option B will fail gracefully.
This may be aimed at students and frameworks like OpenFrameworks, Plask, Proccessing et al. where CSV is easier to implement.