Create an account

Very important

  • To access the important data of the forums, you must be active in each forum and especially in the leaks and database leaks section, send data and after sending the data and activity, data and important content will be opened and visible for you.
  • You will only see chat messages from people who are at or below your level.
  • More than 500,000 database leaks and millions of account leaks are waiting for you, so access and view with more activity.
  • Many important data are inactive and inaccessible for you, so open them with activity. (This will be done automatically)


Thread Rating:
  • 310 Vote(s) - 3.59 Average
  • 1
  • 2
  • 3
  • 4
  • 5
Will UUID as primary key in PostgreSQL give bad index performance?

#1
I have created an app in Rails on Heroku using a PostgreSQL database.

It has a couple of tables designed to be able to sync with mobile devices where data can be created on different places. Therefor I have a uuid field that is a string storing a GUID in addition to an auto increment primary key. The uuid is the one that is communicated between the server and the clients.

I realised after implementing the sync engine on the server side that this leads to performance issues when needing to map between uuid<->id all the time (when writing objects, I need to query for the uuid to get the id before saving and the opposite when sending back data).

I'm now thinking about switching to only using UUID as primary key making the writing and reading much simpler and faster.

I've read that UUID as primary key can sometimes give bad index performance (index fragmentation) when using clustered primary key index. Does PostgreSQL suffer from this problem or is it OK to use UUID as primary key?

I already have a UUID column today so storage wise it will be better because I drop the regular id column.

Reply

#2
As the accepted answer states, range queries may be slow in this case, but not only on `id`.

Autoincrement is naturally sorted by date, so when autoincrement is used the data is stored chronologically on disk (see B-Tree) which speeds up reads (no seeking for HDDs). For example, if one lists all the users the natural order would be by date created which is the same as autoincrement and so range queries execute faster on HDDs while on SSD, i guess, the difference would be nonexistent since SSDs are by design always random access (no head seeking, no mechanical parts involved, just pure electricity)
Reply

#3
(I work on Heroku Postgres)

We use UUIDs as primary keys on a few systems and it works great.

I recommend you use the `uuid-ossp` extension, and even have postgres generate UUIDs for you:

heroku pg:psql
psql (9.1.4, server 9.1.6)
SSL connection (cipher: DHE-RSA-AES256-SHA, bits: 256)
Type "help" for help.

dcvgo3fvfmbl44=> CREATE EXTENSION "uuid-ossp";
CREATE EXTENSION
dcvgo3fvfmbl44=> CREATE TABLE test (id uuid primary key default uuid_generate_v4(), name text);
NOTICE: CREATE TABLE / PRIMARY KEY will create implicit index "test_pkey" for table "test"
CREATE TABLE
dcvgo3fvfmbl44=> \d test
Table "public.test"
Column | Type | Modifiers
--------+------+-------------------------------------
id | uuid | not null default uuid_generate_v4() name | text |
Indexes:
"test_pkey" PRIMARY KEY, btree (id)

dcvgo3fvfmbl44=> insert into test (name) values ('hgmnz');
INSERT 0 1
dcvgo3fvfmbl44=> select * from test;
id | name
--------------------------------------+-------
e535d271-91be-4291-832f-f7883a2d374f | hgmnz
(1 row)


EDIT performance implications

It will *always* depend on your workload.

The integer primary key has the advantage of locality where like-data sits closer together. This can be helpful for eg: range type queries such as `WHERE id between 1 and 10000` although lock contention is worse.

If your read workload is totally random in that you always make primary key lookups, there shouldn't be any measurable performance degradation: you only pay for the larger data type.

Do you write a lot to this table, and is this table very big? It's possible, although I haven't measured this, that there are implications in maintaining that index. For lots of datasets UUIDs are just fine though, and using UUIDs as identifiers has some nice properties.

Finally, I may not be the most qualified person to discuss or advice on this, as I have never run a table large enough with a UUID PK where it has become a problem. YMMV. (Having said that, I'd love to hear of people who run into problems with the approach!)
Reply



Forum Jump:


Users browsing this thread:
1 Guest(s)

©0Day  2016 - 2023 | All Rights Reserved.  Made with    for the community. Connected through