I have a table that will have about 3 * 10 ^ 12 lines (3 trillion), but with only 3 attributes.

In this table you will have the IDs of 2 individuals and the similarity between them (it is a number between 0 and 1 that I multiplied by 100 and put as a smallint to decrease the space).

It turns out that I need to perform, for a certain individual that I want to do the research, the summarization of these columns and returning how many individuals have up to 10% similarity, 20%, 30%. These values ​​are fixed (every 10) until identical individuals (100%).

However, as you may know, the query will be very slow, so I thought about:

  • Create a new table to save summarized values
  • Create a VIEW to save these values.

As individuals are about 1.7 million, the search would not be so time consuming (if indexed, returns quite fast). So, what can I do?

I would like to point out that my population will be almost fixed (after the DB is fully populated, it is expected that almost no increase will be made).


A view won't help, but a materialized view sounds like it would fit the bill, if you can afford a sequential scan of the large table whenever the materialized view gets updated.

It should probably contain a row per user with a count for each percentile range.

Alternatively, you could store the aggregated data in an independent table that is updated by a trigger on the large table whenever something changes there.

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