This is sort of a general question that has come up in several contexts, the example below is representative but not exhaustive. I am interested in any ways of learning to work with Postgres on imperfect (but close enough) data sources.
The specific case -- I am using Postgres with PostGIS for working with government data published in shapefiles and xml. Using the shp2pgsql module distributed with PostGIS (for example on this dataset) I often get schema like this:
Column | Type | ------------+-----------------------+- gid | integer | st_fips | character varying(7) | sfips | character varying(5) | county_fip | character varying(12) | cfips | character varying(6) | pl_fips | character varying(7) | id | character varying(7) | elevation | character varying(11) | pop_1990 | integer | population | character varying(12) | name | character varying(32) | st | character varying(12) | state | character varying(16) | warngenlev | character varying(13) | warngentyp | character varying(13) | watch_warn | character varying(14) | zwatch_war | bigint | prog_disc | bigint | zprog_disc | bigint | comboflag | bigint | land_water | character varying(13) | recnum | integer | lon | numeric | lat | numeric | the_geom | geometry |
I know that at least 10 of those varchars -- the fips, elevation, population, etc., should be ints; but when trying to cast them as such I get errors. In general I think I could solve most of my problems by allowing Postgres to accept an empty string as a default value for a column -- say 0 or -1 for an int type -- when altering a column and changing the type. Is this possible?
If I create the table before importing with the type declarations generated from the original data source, I get better types than with shp2pgsql, and can iterate over the source entries feeding them to the database, discarding any failed inserts. The fundamental problem is that if I have 1% bad fields, evenly distributed over 25 columns, I will lose 25% of my data since a given insert will fail if any field is bad. I would love to be able to make a best-effort insert and fix any problems later, rather than lose that many rows.
Any input from people having dealt with similar problems is welcome -- I am not a MySQL guy trying to batter PostgreSQL into making all the same mistakes I am used to -- just dealing with data I don't have full control over.