We're getting a huge dataset with over 600 columns, TB in size total. I'd been using redshift for most import jobs, but I've had problems importing rows with a total column size over a certain limit. I've thought of a few options.
- Create a surrogate key from a random UUID. Fully normalize the table, because many columns are very sparse. Problem with this is redshift is not really create for foreign key relationships between many tables.
- Only import the fields that look relevant, this is a problem because the business will continue to ask for new fields and I need to reprocess the whole dataset
- Use a different database like Cassandra, Hive, Riak. But aren't these DBs more like key value stores?
Any experiences you can share in solving this kind of problem is appreciated.