Is it a surprise that OLTP is not efficient at aggregation and analytics?
There's nothing Clickhouse does that other OLAP DBs can't do, but the killer feature for us was just how trivially easy it was to replicate InnoDB data into Clickhouse and get great general performance out of the box. It was a very accessible option for a bunch of Rails developers who were moonlighting as DBAs in a small company.
The heart of Clickhouse are these table engines (they don't exist in Postgres) https://clickhouse.com/docs/engines/table-engines . The primary column (or columns) is ordered in some way and adjacent values in memory are from the same column in the table. Index entries span wide areas (EG: By default there's only one key record in the primary index for every 8192 rows) because most operations in Clickhouse are aggregate in nature. Inserts are also expected to be in bulk (They are initially a new physical part that is later merged into the main table structure). A single DELETE is an ALTER TABLE operation in the MergeTree engine. :)
This structure allows it to literally crunch billions of values per second (brutally, not with pre-processing, erm, "tricks" although there is a lot of support for that in Clickhouse as well). I've had tables with hundreds of columns and 100+ billion rows that are nearly as performant as a million row table if I can structure the query to work with the table's physical ordering.
Clickhouse recommends not using nullable fields because of the performance implications (it requires storing a bit somewhere for each value). That's how much they care about perf and how close to the raw data type it is that their memory allocation uses. :)
> They are initially a new physical part that is later merged into the main table structure
> A single DELETE is an ALTER TABLE operation
Can you explain these two further?
The reason I mentioned it is because it's a huge surprise to some people that... from the docs: "The ALTER TABLE prefix makes this syntax different from most other systems supporting SQL. It is intended to signify that unlike similar queries in OLTP databases this is a heavy operation not designed for frequent use. ALTER TABLE is considered a heavyweight operation that requires the underlying data to be merged before it is deleted."
There's also a "lightweight delete" available in many circumstances https://clickhouse.com/docs/sql-reference/statements/delete. Something really nice about the ClickHouse docs is that they devote quite a bit of text to describing the design and performance implications of using an operation. It reiterates the focus on performance that is pervasive across the product.
Edit: Per the other part of your question, why inserts create new parts and how they are merged is best described here https://clickhouse.com/docs/engines/table-engines/mergetree-...
The database is OLAP where Postgres is an OLTP database. Essentially it very fast at complex queries, and is targeted at analytics workloads.
ClickHouse spun out of Yandex & is open source, https://github.com/ClickHouse/clickhouse
Disclosure: I started at Citus & ended up at ClickHouse
It's fast, it's........ really fast!!
But you need to get comfortable with their extended SQL dialect that forces you to think a little different than with usual SQL if you want to keep perf high.
Roughly speaking, Postgres is to SQLite what Clickhouse is to DuckDB.
OLTP -> Online Transaction Processing. Postgres and traditional RDBMS. Mainly focused on transactions and addressing specific rows. Queries like "show me all orders for customer X".
OLAP -> Online Analytical Processing. Clickhouse and other columnar oriented. For analytical and calculation queries, like "show me the total value of all orders in March 2024". OLTP database typically store data by column rather than row, and usually have optimizations for storage space and query speed based on that. As a tradeoff they're typically slower for OLTP type queries. Often you'd bring in an OLAP db like Clickhouse when you have a huge volume of data and your OLTP database is struggling to keep up.
ClickHouse is designed so you can build dashboard with it. Other offline system are designed so you can build reports that you send in PDF over email with them.
Here "Online" means results while connected to the system, not real time since there is no time requirement for results.
Source: me
I almost wish it didn’t use SQL so that it was clear how different it is. Nothing works like you are used to, footguns galore, and I hate zookeeper.
I’d replace it with Postgres in a heartbeat if I thought I could get away with it, I don’t think our data size really needs CH. Unfortunately, my options are “spin up a Custer on company resources to prove my point” or “spin it up on my own infra” (which is not possible since that would require pulling company data to my servers which I would never do). So instead I’m stuck dealing with CH.