I am currently performing some custom analysis of the database results with Spark and I find it quite uncomfortable to parse certain columns, specially the ones that reflect integer values as formal text.
IMHO, some columns are too human readable which discourages an easy way of analyzing them automatically. Moreover, considering that the database size is 196MB and has almost 100000 rows, I don't think this results are intended to be used for manual analysis.
I would like to suggest that the database columns are designed in a way that are easier to parse by machines/applications which I think it would encourage extra analyses to be made by our community members.
Find below a few examples that should make my point easier to understand:
================================================================================
- Columns that are easy to transform since they have fixed values.
+------------------------+
| JobSatisfaction |
+------------------------+
| Slightly dissatisfied |
| Moderately satisfied |
| Extremely dissatisfied |
| Slightly satisfied |
+------------------------+
I have no problem with this because I can assign fixed integer values to each possible value (Extremely dissatisfied -> 0, Slightly satisfied -> 1, ...)
- Columns that are uncomfortable to deal with since they require removing text, regex matching or other techniques.
+-----------------------+-------------------------+
| YearsCodingProf | Company size |
+-----------------------+-------------------------+
| 24-26 years | 20 to 99 employees |
| 30 or more years | Fewer than 10 employees |
+-----------------------+-------------------------+
The title of the column makes it clear that the values are years/employees so it is unnecessary to use those terms in the cell values. Additionally you could even create the YearsCodingProfMin, YearsCodingProfMax, CompanySizeMin, CompanySizeMax columns which would contain a single integer value each.
- Columns with excessive information
+------------------------------------------------------------------------------------+
| FormalEducation |
+------------------------------------------------------------------------------------+
| Bachelor’s degree (BA, BS, B.Eng., etc.) |
| Master’s degree (MA, MS, M.Eng., MBA, etc.) |
| Secondary school (e.g. American high school, German Realschule or Gymnasium, etc.) |
+------------------------------------------------------------------------------------+
I understand that when filling the survey the information inside the parenthesis is useful, but at the time of analyzing the results might not. You are delivering the database schema and the survey instruments which already gives a lot of information and context about the possible values of the cells.
================================================================================
These are not meant to be direct suggestions, just example use cases, but I think you could really rethink the database structure for the next survey to allow data analysis frameworks and developers to parse/extract/transform/normalize the data with less effort.
Big data gurus can for sure handle the results better than I do, but the whole point of this is that analyzing the results can be made as easy as possible.
Let's try to make the StackOverflow database the standard example for learning technologies such as Spark and we might even encourage more members to take part in the survey so that we can make the results reflect the current market situation better :-)